Showing 1 - 20 results of 1,753 for search 'Computer science' Narrow Search
1
Conference

Contributors: Department of Electrical Engineering and Computer Science, Ann Arbor

File Description: application/pdf

Relation: https://hdl.handle.net/2027.42/174145; https://dx.doi.org/10.7302/5876; orcid:0000-0002-8245-9215; orcid:0000-0001-8020-1619; orcid:0000-0002-5627-5113; orcid:0000-0002-5552-4392; Du, Zhe; 0000-0002-8245-9215; Liu, Zexiang; 0000-0001-8020-1619; Weitze, Jack; 0000-0002-5627-5113; Ozay, Necmiye; 0000-0002-5552-4392

2
Report

Contributors: Electrical Engineering and Computer Science, Department of, Robotics Department, Ecology and Evolutionary Biology, Applied Physics Program, Ann Arbor

File Description: application/pdf

Relation: https://hdl.handle.net/2027.42/176784; https://dx.doi.org/10.7302/7633; orcid:0000-0002-2989-0356; orcid:0000-0002-4543-6815; Revzen, Shai; 0000-0002-2989-0356; Wu, Ziyou; 0000-0002-4543-6815

4
Academic Journal

File Description: application/pdf

Relation: Su, Hung-Chung; Rungtusanatham, M. Johnny; Linderman, Kevin (2023). "Retail inventory shrinkage, sensing weak security breach signals, and organizational structure." Decision Sciences 54(1): 8-28.; https://hdl.handle.net/2027.42/176106; Decision Sciences; Rerup, C., ( 2009 ). Attentional triangulation: Learning from unexpected rare crises. Organization Science, 20, 876 – 893.; Schulman, P.R., ( 1993 ). The negotiated order of organizational reliability. Administration & Society, 25, 353 – 372.; See, J.E., Howe, S.R., Warm, J.S. & Dember, W.N., ( 1995 ). Meta-analysis of the sensitivity decrement in vigilance. Psychological Bulletin, 117, 230 – 249.; Sheremata, W.A., ( 2000 ). Centrifugal and centripetal forces in radical new product development under time pressure. Academy of Management Review, 25, 389 – 408.; Simon, H.A., ( 1997 ). Models of bounded rationality, Volume 3: Empirically grounded economic reason. Boston, MA: MIT Press.; Simons, R., ( 1991 ). Strategic orientation and top management attention to control systems. Strategic Management Journal, 12, 49 – 62.; Simsek, Z. & Veiga, J.F., ( 2000 ). The electronic survey technique: An integration and assessment. Organizational Research Methods, 3, 93 – 115.; Soteriou, A.C. & Chase, R.B., ( 1998 ). Linking the customer contact model to service quality. Journal of Operations Management, 16, 495 – 508.; Stock, J. & Yogo, M., ( 2005 ). Testing for weak instruments in linear IV regression. In: Stock, J.H. & Andrews, D. (Eds.) Identification and inference for econometric models, essays in honor of Thomas Rothenberg. Cambridge, UK: Cambridge University Press, pp. 80 – 108.; Su, H.-C., ( 2017 ). The impact of mindful organizing on operational performance: An explorative study. Operations Management Research, 10, 148 – 157.; Su Hung-Chung, Linderman Kevin, Schroeder Roger G., Van de Ven Andrew H. ( 2014 ) A comparative case study of sustaining quality as a competitive advantage. Journal of Operations Management, 32 ( 7-8 ), 429 – 445. https://doi.org/10.1016/j.jom.2014.09.003.; Su, H.-C. & Linderman, K., ( 2016 ). An empirical investigation in sustaining high-quality performance. Decision Sciences, 47, 787 – 819.; Thomas, J.P., Whitman, D.S. & Viswesvaran, C., ( 2010 ). Employee proactivity in organizations: A comparative meta-analysis of emergent proactive constructs. Journal of Occupational and Organizational Psychology, 83, 275 – 300.; Tsai, W., ( 2002 ). Social structure of “coopetition” within a multiunit organization: Coordination, competition, and intraorganizational knowledge sharing. Organization Science, 13, 179 – 190.; Van den Bergh, J., Beliën, J., De Bruecker, P., Demeulemeester, E. & De Boeck, L., ( 2013 ). Personnel scheduling: A literature review. European Journal of Operational Research, 226, 367 – 385.; Vlaar, P.W.L., Van den Bosch, F.A.J. & Volberda, H.W., ( 2006 ). Coping with problems of understanding in interorganizational relationships: Using formalization as a means to make sense. Organization Studies, 27, 1617 – 1638.; Vogus, T.J. & Sutcliffe, K.M., ( 2007 ). The impact of safety organizing, trusted leadership, and care pathways on reported medication errors in hospital nursing units. Medical Care, 45, 997 – 1002.; Watkins, M.D. & Bazerman, M.H., ( 2003 ). Predictable surprises: The disasters you should have seen coming. Harvard Business Review, 81 ( March ), 72 – 80.; Weick, K.E. & Sutcliffe, K.M., ( 2001 ). Managing the unexpected: Assuring high performance in an age of complexity. San Francisco, CA: Jossey-Bass.; Weick, K.E., Sutcliffe, K.M. & Obstfeld, D., ( 1999 ). Organizing for high reliability: Processes of collective mindfulness. In: Staw, B.M. & Cummings, L.L. (Eds.) Research in organizational behavior. JAI Press, p. 81 – 123.; Whetten, D.A., ( 1989 ). What constitutes a theoretical contribution? Academy of Management Review, 14, 490 – 495.; White, R.E., ( 1986 ). Generic business strategies, organizational context and performance: An empirical investigation. Strategic Management Journal, 7, 217 – 231.; Wildavsky, A., ( 1991 ). Searching for safety. transaction books. New Brunswick, NJ: Transaction Books.; Wooldridge, J.M., ( 2010 ). Econometric analysis of cross section and panel data. Cambridge, MA: The MIT Press.; Zaefarian, G., Kadile, V., Henneberg, S.C. & Leischnig, A., ( 2017 ). Endogeneity bias in marketing research: Problem, causes and remedies. Industrial Marketing Management, 65, 39 – 46.; Zaheer, A. & Zaheer, S., ( 1997 ). Catching the wave: Alertness, responsiveness, and market influence in global electronic networks. Management Science, 43, 1493 – 1509.; Adler, P.S. & Borys, B., ( 1996 ). Two types of bureaucracy: Enabling and coercive. Administrative Science Quarterly, 41, 61 – 89.; Aiken, M., Bacharach, S. & French, L., ( 1980 ). Organizational structure, work process, and proposal making in administrative bureaucracies. Academy of Management Journal, 23, 631 – 652.; Anderson, J.C. & Gerbing, D.W., ( 1988 ). Structural equation modeling in practice: A review and recommended two-step approach. Psychological Bulletin, 103, 411 – 423.; Anderson, J.C., Rungtusanatham, M., Schroeder, R.G. & Devaraj, S., ( 1995 ). A path analytic model of a theory of quality management underlying the Deming management method: Preliminary empirical findings. Decision Sciences, 26, 637 – 658.; Angrist, J.D. & Pischke, J.-S., ( 2009 ). Mostly harmless econometrics: An empiricist’s companion. Princeton, NJ: Princeton University Press.; Antonakis, J., Bendahan, S., Jacquart, P. & Lalive, R., ( 2010 ). On making causal claims: A review and recommendations. The Leadership Quarterly, 21, 1086 – 1120.; Atuahene-Gima, K., ( 2003 ). The effects of centrifugal and centripetal forces on product development speed and quality: How does problem solving matter? Academy of Management Journal, 46, 359 – 373.; Auh, S. & Menguc, B., ( 2007 ). Performance implications of the direct and moderating effects of centralization and formalization on customer orientation. Industrial Marketing Management, 36, 1022 – 1034.; Avery, D.R., Mckay, P.F. & Hunter, E.M., ( 2012 ). Demography and disappearing merchandise: How older workforces influence retail shrinkage. Journal of Organizational Behavior, 33, 105 – 120.; Bailey, A.A., ( 2006 ). Retail employee theft: A theory of planned behavior perspective. International Journal of Retail & Distribution Management, 34, 802 – 816.; Bamfield, J., ( 2004 ). Shrinkage, shoplifting and the cost of retail crime in Europe: A cross-sectional analysis of major retailers in 16 European countries. International Journal of Retail & Distribution Management, 32, 235 – 241.; Barney, J., ( 1991 ). Firm Resources and Sustained Competitive Advantage. Journal of Management, 17, 99 – 120.; Battilana, J., Sengul, M., Pache, A.-C. & Model, J., ( 2015 ). Harnessing productive tensions in hybrid organizations: The case of work integration social enterprises. Academy of Management Journal, 58, 1658 – 1685.; Baum, C.F., Schaffer, M.E. & Stillman, S., ( 2003 ). Instrumental variables and GMM: Estimation and testing. The Stata Journal, 3, 1 – 31.; Baum, J. & Wally, S., ( 2003 ). Strategic decision speed and firm performance. Strategic Management Journal, 24, 1107 – 1129.; Bigley, G.A. & Roberts, K.H., ( 2001 ). The incident command system: High-reliability organizing for complex and volatile task environments. Academy of Management Journal, 44, 1281 – 1299.; Boisot, M. & Child, J., ( 1999 ). Organizations as adaptive systems in complex environments: The case of China. Organization Science, 10, 237 – 252.; Boyle, M., ( 2019 ). Home Depot ties opioid crisis to recent surge in store theft. Available at: https://www.msn.com/en-us/news/finance-companies/home-depot-ties-opioid-crisis-to-recent-surge-in-store-theft/ar-AAK1gSN (accessed December 20, 2019).; Browne, M.W. & Cudeck, R., ( 1992 ). Alternative ways of assessing model fit. Sociological Methods & Research, 21, 230 – 258.; Bushe, G.R., ( 1988 ). Cultural contradictions of statistical process control in American manufacturing organizations. Journal of Management, 14, 19 – 31.; Busse, C., Kach, A.P. & Wagner, S.M., ( 2017 ). Boundary conditions: What they are, how to explore them, why we need them, and when to consider them. Organizational Research Methods, 20, 574 – 609.; Calantone, R., Whipple, J.M., Wang, J.F., Sardashti, H. & Miller, J.W., ( 2017 ). A Primer on moderated mediation analysis: Exploring logistics involvement in new product development. Journal of Business Logistics, 38, 151 – 169.; Cameron, A.C. & Trivedi, P.K., ( 2009 ). Microeconometrics using stata. College Station, TX: Stata Press.; Campbell, D.J., ( 1988 ). Task complexity: A review and analysis. Academy of Management Review, 13, 40 – 52.; Carbonell, P. & Escudero, A.I.R., ( 2016 ). The effects of decentralization in strategy-making and national culture on NPD portfolio planning. Journal of Product Innovation Management, 33, 101 – 116.; Cardinal, L.B., ( 2001 ). Technological innovation in the pharmaceutical industry: The use of organizational control in managing research and development. Organization Science, 12, 19 – 36.; Carmel-Gilfilen, C., ( 2013 ). Bridging security and good design: Understanding perceptions of expert and novice shoplifters. Security Journal, 26, 80 – 105.; Chase, R.B. & Tansik, D.A., ( 1983 ). The customer contact model for organization design. Management Science, 29, 1037 – 1050.; Chen, C.X. & Sandino, T., ( 2012 ). Can wages buy honesty? The relationship between relative wages and employee theft. Journal of Accounting Research, 50, 967 – 1000.; Child, J., ( 1972 ). Organizational structure, environment and performance: The role of strategic choice. Sociology, 6, 1 – 22.; Choi, M., Rabinovich, E. & Richards, T.J., ( 2019 ). Supply chain contracts and inventory shrinkage: An empirical analysis in the grocery retailing industry. Decision Sciences, 50, 694 – 725.; Chuang, H.H.-C. & Oliva, R., ( 2015 ). Inventory record inaccuracy: Causes and labor effects. Journal of Operations Management, 39–40, 63 – 78.; Ton, Z., ( 2009 ). The effect of labor on profitability: The role of quality. Working paper 09–040. Boston, MA: Harvard Business School.; Chuang, H.H.-C., Oliva, R. & Liu, S., ( 2016 ). On-shelf availability, retail performance, and external audits: A field experiment. Production and Operations Management, 25, 935 – 951.; Cohen, J., Cohen, P., West, S.G. & Aiken, L.S. ( 2003 ). Applied multiple regression/correlation analysis for the behavioral sciences ( 3rd ed. ). Mahwah, NJ: Lawrence Erlbaum Associates Publishers.; Corley, K.G. & Gioia, D.A., ( 2011 ). Building theory about theory building: What constitutes a theoretical contribution? Academy of Management Review, 36, 12 – 32.; Cragg, J.G. & Donald, S.G., ( 1993 ). Testing identifiability and specification in instrumental variable models. Econometric Theory, 9, 222 – 240.; Damanpour, F., ( 1991 ). Organizational innovation: A meta-analysis of effects of determinants and moderators. Academy of Management Journal, 34, 555 – 590.; Davidson, R. & MacKinnon, J.G., ( 1993 ). Estimation and inference in econometrics. Oxford, England: Oxford University Press.; de Bérail, P., Guillon, M. & Bungener, C., ( 2019 ). The relations between YouTube addiction, social anxiety and parasocial relationships with YouTubers: A moderated-mediation model based on a cognitive-behavioral framework. Computers in Human Behavior, 99, 190 – 204.; DeHoratius, N. & Raman, A., ( 2008 ). Inventory record inaccuracy: An empirical analysis. Management Science, 54, 627 – 641.; Delmar, F. & Shane, S., ( 2003 ). Does business planning facilitate the development of new ventures? Strategic Management Journal, 24, 1165 – 1185.; Desphandé, R. & Zaltman, G., ( 1982 ). Factors affecting the use of market research information: A path analysis. Journal of Marketing Research, 19, 14 – 31.; Dewar, R. & Hage, J., ( 1978 ). Size, technology, complexity, and structural differentiation: Toward a theoretical synthesis. Administrative Science Quarterly, 23, 111 – 136.; Diamantopoulos, A., Davvetas, V., Bartsch, F., Mandler, T., Arslanagic-Kalajdzic, M. & Eisend, M., ( 2019 ). On the interplay between consumer dispositions and perceived brand globalness: Alternative theoretical perspectives and empirical assessment. Journal of International Marketing, 27, 39 – 57.; Edwards, M.C. & Wirth, R.J., ( 2009 ). Measurement and the study of change. Research in Human Development, 6, 74 – 96.; Fan, T., Tao, F., Deng, S. & Li, S., ( 2015 ). Impact of RFID technology on supply chain decisions with inventory inaccuracies. International Journal of Production Economics, 159, 117 – 125.; Fornell, C. & Larcker, D.F., ( 1981 ). Evaluating structural equation models with unobservable variables and measurement error. Journal of Marketing Research, 18, 39 – 50.; Fredrickson, J.W., ( 1986 ). The strategic decision process and organizational structure. Academy of Management Review, 11, 280 – 297.; Fry, L.W. & Slocum, J.W. Jr, ( 1984 ). Technology, structure, and workgroup effectiveness: A test of a contingency model. Academy of Management Journal, 27, 221 – 246.; Glick, W.H., ( 1985 ). Conceptualizing and measuring organizational and psychological climate: Pitfalls in multilevel research. Academy of Management Review, 10, 601 – 616.; Greene, W.H., ( 2003 ). Econometric analysis. New Jersey, USA: Prentice Hall.; Hage, J. & Aiken, M., ( 1967 ). Relationship of centralization to other structural properties. Administrative Science Quarterly, 12, 72 – 92.; Hair, J.F., Black, W.C., Babin, B.J., Anderson, R.E. & Tatjam, R.L., ( 2006 ). Multivariate data analysis. Upper Saddle River, NJ: Pearson Education International.; Hamilton, B.H. & Nickerson, J.A., ( 2003 ). Correcting for endogeneity in strategic management research. Strategic Organization, 1, 51 – 78.; Hannan, M.T. & Freeman, J., ( 1977 ). The population ecology of organizations. American Journal of Sociology, 82, 929 – 964.; Hassan, L.M., Shiu, E. & Shaw, D., ( 2016 ). Who says there is an intention–behaviour gap? Assessing the empirical evidence of an intention–behaviour gap in ethical consumption. Journal of Business Ethics, 136, 219 – 236.; Hayes, A.F., ( 2017 ). Introduction to mediation, moderation, and conditional process analysis: A regression-based approach. New York: Guilford Publications.; Hollinger, R. & Adams, A., ( 2011 ). National retail survey final report. Gainesville, GA: University of Florida.; Howell, S.D. & Proudlove, N.C., ( 2007 ). A statistical investigation of inventory shrinkage in a large retail chain. The International Review of Retail. Distribution and Consumer Research, 17, 101 – 120.; Hu, L. & Bentler, P.M., ( 1999 ). Cutoff criteria for fit indexes in covariance structure analysis: Conventional criteria versus new alternatives. Structural Equation Modeling: A Multidisciplinary Journal, 6, 1 – 55.; James, L.R., Demaree, R.G. & Wolf, G. ( 1993 ). rwg: An assessment of within-group interrater agreement. Journal of Applied Psychology, 78, 306 – 309.; Jansen, J.J.P., Simsek, Z. & Cao, Q., ( 2012 ). Ambidexterity and performance in multiunit contexts: Cross-level moderating effects of structural and resource attributes. Strategic Management Journal, 33, 1286 – 1303.; Jansen, J.J.P., Van Den Bosch, F.A.J. & Volberda, H.W., ( 2006 ). Exploratory innovation, exploitative innovation, and performance: Effects of organizational antecedents and environmental moderators. Management Science, 52, 1661 – 1674.; Jaworski, B.J., ( 1988 ). Toward a theory of marketing control: Environmental context, control types, and consequences. Journal of Marketing, 52, 23 – 39.; Jaworski, B.J. & Kohli, A.K., ( 1993 ). Market orientation: Antecedents and consequences. Journal of Marketing, 57, 53 – 70.; Jensen, M.C. & Meckling, W.H., ( 1976 ). Theory of the firm: Managerial behavior, agency costs and ownership structure. Journal of Financial Economics, 3, 305 – 360.; Joseph, J. & Ocasio, W., ( 2012 ). Architecture, attention, and adaptation in the multibusiness firm: General electric from 1951 to 2001. Strategic Management Journal, 33, 633 – 660.; Kajalo, S. & Lindblom, A., ( 2011 ). An empirical analysis of retail entrepreneurs’ approaches to prevent shoplifting. Security Journal, 24, 269 – 282.; Kaynak, H., ( 2003 ). The relationship between total quality management practices and their effects on firm performance. Journal of Operations Management, 21, 405 – 435.; Keele, L., Stevenson, R.T. & Elwert, F., ( 2020 ). The causal interpretation of estimated associations in regression models. Political Science Research and Methods, 8, 1 – 13.; Kennedy, J.P., ( 2016 ). Sharing the keys to the kingdom: Responding to employee theft by empowering employees to be guardians, place managers, and handlers. Journal of Crime and Justice, 39, 512 – 527.; Kleibergen, F. & Paap, R., ( 2006 ). Generalized reduced rank tests using the singular value decomposition. Journal of Econometrics, 133, 97 – 126.; Kohli, A.K., ( 2011 ). From the editor: Reflections on the review process. Journal of Marketing, 75, 1 – 4.; Koryak, O., Lockett, A., Hayton, J., Nicolaou, N. & Mole, K., ( 2018 ). Disentangling the antecedents of ambidexterity: Exploration and exploitation. Research Policy, 47, 413 – 427.; Langton, L. & Hollinger, R.C., ( 2005 ). Correlates of crime losses in the retail industry. Security Journal, 18, 27 – 44.; Lau, R.S. & Cheung, G.W., ( 2010 ). Estimating and comparing specific mediation effects in complex latent variable models. Organizational Research Methods, 15, 3 – 16.; Lau, V.C., Au, W.T. & Ho, J.M., ( 2003 ). A qualitative and quantitative review of antecedents of counterproductive behavior in organizations. Journal of Business and Psychology, 18, 73 – 99.; Lawrence, P.R. & Dyer, D., ( 1983 ). Renewing American industry: Organizing for efficiency and innovation. New York: Free Press.; Levine, S.Z. & Jackson, C.J., ( 2002 ). Aggregated personality, climate and demographic factors as predictors of departmental shrinkage. Journal of Business and Psychology, 17, 287 – 297.; Levinthal, D. & Rerup, C., ( 2006 ). Crossing an apparent chasm: Bridging mindful and less-mindful perspectives on organizational learning. Organization Science, 17, 502 – 513.; MacKinnon, D.P., Lockwood, C.M. & Williams, J., ( 2004 ). Confidence limits for the indirect effect: Distribution of the product and resampling methods. Multivariate Behavioral Research, 39, 99 – 128.; Maddala, G.S., ( 1983 ). Limited-dependent and qualitative variables in econometrics. Cambridge, UK: Cambridge University Press.; Mani, V., Kesavan, S. & Swaminathan, J.M., ( 2015 ). Estimating the impact of understaffing on sales and profitability in retail stores. Production and Operations Management, 24, 201 – 218.; Matthews, C., ( 2015 ). Here’s how much Walmart loses every year to theft. Fortune. Available for: http://fortune.com/2015/06/05/walmart-theft/ (accessed May 9, 2016).; McDaniel, R.R., Jordan, M.E. & Fleeman, B.F., ( 2003 ). Surprise, surprise, surprise! A complexity science view of the unexpected. Health Care Management Review, 28, 266 – 278.; Michaels, R.E., Cron, W.L., Dubinsky, A.J. & Joachimsthaler, E.A., ( 1988 ). Influence of formalization on the organizational commitment and work alienation of salespeople and industrial buyers. Journal of Marketing Research, 25, 376 – 383.; Miller, J., Davis-Sramek, B., Fugate, B.S., Pagell, M. and Flynn, B.B. ( 2021 ), Editorial Commentary: Addressing Confusion in the Diffusion of Archival Data Research. Journal of Supply Chain Management. https://doi.org/10.1111/jscm.12236; Nederhof, A.J., ( 1985 ). Methods of coping with social desirability bias: A review. European Journal of Social Psychology, 15, 263 – 280.; Ocasio, W., ( 1997 ). Towards an attention-based view of the firm. Strategic Management Journal, 18, 187 – 206.; Ocasio, W. & Joseph, J., ( 2005 ). An attention-based theory of strategy formulation: Linking micro- and macroperspectives in strategy processes. Advances in Strategic Management, 22, 39 – 61.; Parker, S.K., Williams, H.M. & Turner, N., ( 2006 ). Modeling the antecedents of proactive behavior at work. Journal of Applied Psychology, 91, 636 – 652.; Podsakoff, P.M., MacKenzie, S.B., Lee, J.-Y. & Podsakoff, N.P., ( 2003 ). Common method biases in behavioral research: A critical review of the literature and recommended remedies. Journal of Applied Psychology, 88, 879 – 903.; Pugh, D.S., Hickson, D.J., Hinings, C.R. & Turner, C., ( 1968 ). Dimensions of organization structure. Administrative Science Quarterly, 13, 65 – 105.; Rabe-Hesketh, S. & Skrondal, A., ( 2008 ). Multilevel and longitudinal modeling using stata. College Station, TX: Stata Press.; Ramanujam, R. & Goodman, P.S., ( 2003 ). Latent errors and adverse organizational consequences: A conceptualization. Journal of Organizational Behavior, 24, 815 – 836.; Reiner, G., Teller, C. & Kotzab, H., ( 2013 ). Analyzing the efficient execution of in-store logistics processes in grocery retailing––The case of dairy products. Production and Operations Management, 22, 924 – 939.; Rekik, Y., Sahin, E. & Dallery, Y., ( 2008 ). Analysis of the impact of the RFID technology on reducing product misplacement errors at retail stores. International Journal of Production Economics, 112, 264 – 278.; Roberts, K.H., ( 1990 ). Some characteristics of one type of high reliability organization. Organization Science, 1, 160 – 176.; Roberts, K.H. & Bea, R., ( 2001 ). Must accidents happen? Lessons from high-reliability organizations. Academy of Management Perspectives, 15, 70 – 78.; Rogelberg, S.G. & Stanton, J.M., ( 2007 ). Understanding and dealing with organizational survey nonresponse. Los Angeles, CA: Sage Publications.; Roth, E.M., ( 1997 ). Analysis of decision making in nuclear power plant emergencies: An investigation of aided decision making. In: Zsambok, C. & Klein, G. Eds.) Naturalistic decision making. Mahwah, NJ: Lawrence Erlbaum Associates, Inc., pp. 175 – 182.; Rungtusanatham, M., Anderson, J.C. & Dooley, K.J., ( 1997 ). Conceptualizing organizational implementation and practice of statistical process control. Journal of Quality Management, 2, 113 – 137.; Rybowiak, V., Garst, H., Frese, M. & Batinic, B., ( 1999 ). Error orientation questionnaire (EOQ): Reliability, validity, and different language equivalence. Journal of Organizational Behavior, 20, 527 – 547.; Samson, D. & Terziovski, M., ( 1999 ). The relationship between total quality management practices and operational performance. Journal of Operations Management, 17, 393 – 409.

5
Academic Journal

Subject Terms: Computer Science, Engineering

File Description: application/pdf

Relation: Bondi-Kelly, Elizabeth; Chen, Haipeng; Golden, Christopher D.; Behari, Nikhil; Tambe, Milind (2023). "Predicting micronutrient deficiency with publicly available satellite data." AI Magazine 44(1): 30-40.; https://hdl.handle.net/2027.42/176274; AI Magazine; Ribeiro, M. T., S. Singh, and C. Guestrin. 2016. “ “Why Should I Trust You?” Explaining the Predictions of Any Classifier.” In KDD, 1135 – 44.; Kroodsma, D. A., J. Mayorga, T. Hochberg, N. A. Miller, K. Boerder, F. Ferretti, A. Wilson, et al. 2018. “ Tracking the Global Footprint of Fisheries.” Science 359 ( 6378 ): 904 – 8.; Lundberg, S. M., and S.-I. Lee. 2017. “ A Unified Approach to Interpreting Model Predictions.” In NeurIPS 30: 4765 – 74.; McNally, A., K. Arsenault, S. Kumar, S. Shukla, P. Peterson, S. Wang, C. Funk, C. D. Peters-Lidard, and J. P. Verdin. 2017. “ A Land Data Assimilation System for Sub-Saharan Africa Food and Water Security Applications.” Scientific Data 4 ( 1 ): 1 – 19.; Micha, R., V. Mannar, A. Afshin, L. Allemandi, P. Baker, J. Battersby, Z. Bhutta, K. Chen, C. Corvalan, M. Di Cesare, et al. 2020. “ 2020 Global Nutrition Report: Action on Equity to End Malnutrition.” Development Initiatives.; Nakalembe, C. 2020. “ Urgent and Critical Need for Sub-Saharan African Countries to Invest in Earth Observation-Based Agricultural Early Warning and Monitoring Systems.” Environmental Research Letters 15 ( 12 ): 121002.; NASA GSFC HSL. 2018. “ FLDAS Noah Land Surface Model L4 Global Monthly 0.1 x 0.1 degree (MERRA-2 and CHIRPS) V001.”; NASA JPL. 2020. “ NASADEM Merged DEM Global 1 arc second V001 [Data set], NASA EOSDIS Land Processes DAAC.” (accessed December 30, 2020).; Park, H.-S., and C.-H. Jun. 2009. “ A Simple and Fast Algorithm for K-Medoids Clustering.” Expert Systems with Applications 36 ( 2 ): 3336 – 41.; Pekel, J.-F., A. Cottam, N. Gorelick, and A. S. Belward. 2016. “ High-Resolution Mapping of Global Surface Water and Its Long-Term Changes.” Nature 540 ( 7633 ): 418 – 22.; Poortinga, A., Q. Nguyen, K. Tenneson, A. Troy, D. Saah, B. Bhandari, W. L. Ellenburg, et al. 2019. “ Linking Earth Observations for Assessing the Food Security Situation in Vietnam: A Landscape Approach.” Frontiers in Environmental Science 7: 186.; Rasolofoson, R. A., M. M. Hanauer, A. Pappinen, B. Fisher, and T. H. Ricketts. 2018. “ Impacts of Forests on Children’s Diet in Rural Areas Across 27 Developing Countries.” Science Advances 4 ( 8 ): eaat2853.; Robinson, T. P., G. W. Wint, G. Conchedda, T. P. Van Boeckel, V. Ercoli, E. Palamara, G. Cinardi, L. D’Aietti, S. I. Hay, and M. Gilbert. 2014. “ Mapping the Global Distribution of Livestock.” PloS One 9 ( 5 ): e96084.; Ronneberger, O., P. Fischer, and T. Brox. 2015. “ U-Net: Convolutional Networks for Biomedical Image Segmentation.” In MICCAI, 234 – 41.; Shi, Z. R., C. Wang, and F. Fang. 2020. “ Artificial Intelligence for Social Good: A Survey.” arXiv preprint arXiv:2001.01818. (accessed March 23, 2023).; Shimada, M., T. Itoh, T. Motooka, M. Watanabe, T. Shiraishi, R. Thapa, and R. Lucas. 2014. “ New Global Forest/Non-Forest Maps from ALOS PALSAR Data (2007–2010).” Remote Sensing of Environment 155: 13 – 31.; Steyn, N. P., J. H. Nel, G. Nantel, G. Kennedy, and D. Labadarios. 2006. “ Food Variety and Dietary Diversity Scores in Children: Are They Good Indicators of Dietary Adequacy? ” Public Health Nutrition 9 ( 5 ): 644 – 50.; Sun, B., J. Feng, and K. Saenko. 2016. “ Return of Frustratingly Easy Domain Adaptation.” In AAAI, volume 30.; Sunderland, T., and A. O’Connor. 2020. “ Forests and Food Security: A Review.” CAB Reviews 15 ( 019 ): 1 – 10.; von Grebmer, K., A. Saltzman, E. Birol, D. Wiesman, N. Prasai, S. Yin, Y. Yohannes, P. Menon, J. Thompson, A. Sonntag. 2014. 2014 Global Hunger Index: The Challenge of Hidden Hunger. Washington, D.C., USA: IFPRI Books.; Xiong, J., P. Thenkabail, J. Tilton, M. Gumma, P. Teluguntla, R. Congalton, K. Yadav, et al. 2017. “ NASA Making Earth System Data Records for Use in Research Environments (MEaSUREs) Global Food Security-support Analysis Data (GFSAD) Cropland Extent 2015 Africa 30 m V001.” NASA EOSDIS Land Processes DAAC.; Abdur, Rehman, N., U. Saif, and R. Chunara. 2019. “ Deep Landscape Features for Improving Vector-Borne Disease Prediction.” In CVPR Workshops, 44 – 51.; Ayush, K., B. Uzkent, M. Burke, D. Lobell, and S. Ermon. 2020. “ Generating Interpretable Poverty Maps Using Object Detection in Satellite Images.” In IJCAI, 4410 – 6.; Brown, M. E., K. Grace, G. Shively, K. B. Johnson, and M. Carroll. 2014. “ Using Satellite Remote Sensing and Household Survey Data to Assess Human Health and Nutrition Response to Environmental Change.” Population and Environment 36 ( 1 ): 48 – 72.; Buchhorn, M., M. Lesiv, N.-E. Tsendbazar, M. Herold, L. Bertels, and B. Smets. 2020. “ Copernicus Global Land Cover Layers—Collection 2.” Remote Sensing 12 ( 6 ): 1044.; CIESIN. 2017. “ Gridded Population of the World, Version 4 (GPWv4): Population Density, Revision 11.”; Elvidge, C. D., K. Baugh, M. Zhizhin, F. C. Hsu, and T. Ghosh. 2017. “ VIIRS Night-Time Lights.” International Journal of Remote Sensing 38 ( 21 ): 5860 – 79.; Gadiraju, K. K., B. Ramachandra, Z. Chen, and R. R. Vatsavai. 2020. “ Multimodal Deep Learning Based Crop Classification Using Multispectral and Multitemporal Satellite Imagery.” In KDD, 3234 – 42.; Giglio, L., and LANCE FIRMS. 2016. “ MODIS Aqua & Terra 1 km Thermal Anomalies and Fire Locations V006 NRT.”; Golden, C. D., B. L. Rice, H. J. Randriamady, A. M. Vonona, J. F. Randrianasolo, A. N. Tafangy, M. Y. Andrianantenaina, et al. 2020. “ Study Protocol: A Cross-Sectional Examination of Socio-Demographic and Ecological Determinants of Nutrition and Disease Across Madagascar.” Frontiers in Public Health 8: 500.; Hansen, M. C., P. V. Potapov, R. Moore, M. Hancher, S. A. Turubanova, A. Tyukavina, D. Thau, et al. 2013. “ High-Resolution Global Maps of 21st-Century Forest Cover Change.” Science 342 ( 6160 ): 850 – 3.; Huang, J., A. Gretton, K. Borgwardt, B. Schölkopf, and A. Smola. 2006. “ Correcting Sample Selection Bias by Unlabeled Data.” In NIPS 19: 601 – 8.; Humanitarian Data Exchange. 2020. Madagascar Healthsites. https://data.humdata.org/dataset/madagascar-healthsites (accessed December 20, 2021).; Ickowitz, A., B. Powell, M. A. Salim, and T. C. Sunderland. 2014. “ Dietary Quality and Tree Cover in Africa.” Global Environmental Change 24: 287 – 94.; International Food Policy Research Institute. 2020. “ Spatially-Disaggregated Crop Production Statistics Data in Africa South of the Sahara for 2017.” Harvard Dataverse.; Keeley, B., C. Little, and E. Zuehlke. 2019. The State of the World’s Children 2019: Children, Food and Nutrition–Growing Well in a Changing World. UNICEF.; Koppmair, S., M. Kassie, and M. Qaim. 2017. “ Farm Production, Market Access and Dietary Diversity in Malawi.” Public health nutrition 20 ( 2 ): 325 – 35.

9
Academic Journal

File Description: application/pdf

Relation: Gong, Shoulu; Ding, Qifan; Wu, Jiahao; Li, Wen-Bo; Guo, Xin-Yu; Zhang, Wen-Ming; Shao, Lei (2022). "Bioinspired Multifunctional Mechanoreception of Soft–Rigid Hybrid Actuator Fingers." Advanced Intelligent Systems 4(5): n/a-n/a.; https://hdl.handle.net/2027.42/172845; Advanced Intelligent Systems; Y.-C. Lai, J. Deng, R. Liu, Y.-C. Hsiao, S. L. Zhang, W. Peng, H.-M. Wu, X. Wang, Z. L. Wang, Adv. Mater. 2018, 30, 1801114.; K. Senthil Kumar, P.-Y. Chen, H. Ren, Research 2019, 2019, 1.; H. Liu, H. Zhang, W. Han, H. Lin, R. Li, J. Zhu, W. Huang, Adv. Mater. 2021, 33, 1.; C. M. Boutry, M. Negre, M. Jorda, O. Vardoulis, A. Chortos, O. Khatib, Z. Bao, Sci. Rob. 2018, 3, eaau6914.; J. Byun, Y. Lee, J. Yoon, B. Lee, E. Oh, S. Chung, T. Lee, K. J. Cho, J. Kim, Y. Hong, Sci. Rob. 2018, 3, eaas9020.; Q. Hua, J. Sun, H. Liu, R. Bao, R. Yu, J. Zhai, C. Pan, Z. L. Wang, Nat. Commun. 2018, 9, 244.; Y. Hao, Z. Liu, J. Liu, X. Fang, B. Fang, S. Nie, Y. Guan, F. Sun, T. Wang, L. Wen, Smart Mater. Struct. 2020, 29, 35006.; X. Wang, H. Zhang, L. Dong, X. Han, W. Du, J. Zhai, C. Pan, Z. L. Wang, Adv. Mater. 2016, 28, 2896.; S. Liu, Y. Li, W. Guo, X. Huang, L. Xu, Y. C. Lai, C. Zhang, H. Wu, Nano Energy 2019, 65, 104005.; H. Chen, Y. Song, X. Cheng, H. Zhang, Nano Energy 2019, 56, 252.; J. Chen, B. Chen, K. Han, W. Tang, Z. L. Wang, Adv. Mater. Technol. 2019, 4, 337.; S. Chen, Y. Pang, H. Yuan, X. Tan, C. Cao, Adv. Mater. Technol. 2020, 5, 1075.; G. Yao, L. Xu, X. Cheng, Y. Li, X. Huang, W. Guo, S. Liu, Z. L. Wang, H. Wu, Adv. Funct. Mater. 2020, 30, 2070035.; X. Wu, J. Zhu, J. W. Evans, A. C. Arias, Adv. Mater. 2020, 32, 5970.; R. L. Truby, M. Wehner, A. K. Grosskopf, D. M. Vogt, S. G. M. Uzel, R. J. Wood, J. A. Lewis, Adv. Mater. 2018, 30, 6383.; J. H. Low, W. W. Lee, P. M. Khin, N. V. Thakor, S. L. Kukreja, H. L. Ren, C. H. Yeow, IEEE Rob. Autom. Lett. 2017, 2, 880.; J. Sun, J. Zhao, presented at 2020 IEEE/RSJ Inter. Conf. on Intelligent Robots and Systems (IROS), IEEE, Las Vegas, NV, October 2020.; Z. Liang, J. Cheng, Q. Zhao, X. Zhao, Z. Han, Y. Chen, Y. Ma, X. Feng, Adv. Mater. Technol. 2019, 4, 317.; Z. Xie, F. Yuan, Z. Liu, Z. Sun, E. M. Knubben, L. Wen, IEEE/ASME Trans. Mechatron. 2020, 25, 1841.; S. Lee, A. Reuveny, J. Reeder, S. Lee, H. Jin, Q. Liu, T. Yokota, T. Sekitani, T. Isoyama, Y. Abe, Z. Suo, T. Someya, Nat. Nanotechnol. 2016, 11, 472.; Z. Liu, Y. Zheng, L. Jin, K. Chen, H. Zhai, Q. Huang, Z. Chen, Y. Yi, M. Umar, L. Xu, G. Li, Q. Song, P. Yue, Y. Li, Z. Zheng, Adv. Funct. Mater. 2021, 31, 7622.; J.-Y. Yoo, M.-H. Seo, J.-S. Lee, K.-W. Choi, M.-S. Jo, J.-B. Yoon, Adv. Funct. Mater. 2018, 28, 4721.; S. Kim, M. Amjadi, T.-I. Lee, Y. Jeong, D. Kwon, M. S. Kim, K. Kim, T.-S. Kim, Y. S. Oh, I. Park, ACS Appl. Mater. Interfaces 2019, 11, 23639.; Q. M. Wang, L. Eric Cross, J. Am. Ceram. Soc. 1999, 82, 103.; B. Mosadegh, P. Polygerinos, C. Keplinger, S. Wennstedt, R. F. Shepherd, U. Gupta, J. Shim, K. Bertoldi, C. J. Walsh, G. M. Whitesides, Adv. Funct. Mater. 2014, 24, 2109.; H. Yuk, X. Zhao, Adv. Mater. 2017, 30, 4028.; J. Shintake, V. Cacucciolo, D. Floreano, H. Shea, Adv. Mater. 2018, 30, 7035.; D. Rus, M. T. Tolley, Nature 2015, 521, 467.; S. Kim, C. Laschi, B. Trimmer, Trends Biotechnol. 2013, 31, 287.; W. Wang, S. H. Ahn, Soft Rob. 2017, 4, 379.; A. Firouzeh, M. Salerno, J. Paik, presented at 2015 IEEE Int. Conf. Intell. Robot. Syst (IROS), IEEE, Hamburg, Germany, September 2015.; J. Zhou, Y. Chen, Y. Hu, Z. Wang, Y. Li, G. Gu, Y. Liu, Soft Rob. 2020, 7, 743.; Y. Wei, Y. Chen, T. Ren, Q. Chen, C. Yan, Y. Yang, Y. Li, Soft Rob. 2016, 3, 134.; Y. F. Zhang, N. Zhang, H. Hingorani, N. Ding, D. Wang, C. Yuan, B. Zhang, G. Gu, Q. Ge, Adv. Funct. Mater. 2019, 29, 6698.; Z. Wang, Y. Torigoe, S. Hirai, IEEE Rob. Autom. Lett. 2017, 2, 1909.; U. Culha, J. Hughes, A. Rosendo, F. Giardina, F. Iida, Biosyst. Biorobotics 2017, 17, 87.; M. Haghshenas-Jaryani, W. Carrigan, M. B. Wijesundara, presented at 39th Mechanisms and Robotics Conf., Boston, Massachusetts, August 2015.; L. Liu, J. Zhang, M. Luo, H. Chen, Z. Yang, D. Li, P. Li, Appl. Mater. Today 2020, 21, 100814.; A. A. Stokes, R. F. Shepherd, S. A. Morin, F. Ilievski, G. M. Whitesides, Soft Rob. 2014, 1, 70.; J. Zhang, T. Wang, J. Wang, M. Y. Wang, B. Li, J. X. J. Zhang, J. Hong, Soft Rob. 2020, 7, 574.; X. Liu, Y. Zhao, D. Geng, S. Chen, X. Tan, C. Cao, Soft Rob. 2021, 8, 175.; H. Liu, M. Li, S. Liu, P. Jia, X. Guo, S. Feng, T. J. Lu, H. Yang, F. Li, F. Xu, Mater. Horiz. 2020, 7, 203.; Y. Li, T. Ren, Y. Chen, M. Z. Q. Chen, presented at 2020 IEEE Int. Conf. Robot. Autom (ICRA), IEEE, Paris, France, May 2020.; T. P. Chenal, J. C. Case, J. Paik, R. K. Kramer, presented at 2014 IEEE Int. Conf. Intell. Robot. Syst (IROS), IEEE, Chicago, IL, September 2014.

10
Academic Journal

File Description: application/pdf

Relation: Wang, Qiwen; Park, Yongmo; Lu, Wei D. (2022). "Device Variation Effects on Neural Network Inference Accuracy in Analog In‐Memory Computing Systems." Advanced Intelligent Systems 4(8): n/a-n/a.; https://hdl.handle.net/2027.42/174816; Advanced Intelligent Systems; R. D. Clay, C. H. Sequin, in JCNN Int. Jt. Conf. Neural Networks, Baltimore 1992, pp. 769 – 774.; Q. Wang, Y. Park, W. D. Lu, in 2021 IEEE Int. Symp. Circuits Systems, IEEE, Piscataway, NJ 2021, pp. 1 – 5.; X. Wang, Q. Wang, F. H. Meng, S. H. Lee, W. D. Lu, in Proc.—2020 IEEE Int. Conf. Artificial Intelligence Circuits and Systems AICAS 2020, Genoa 2020, pp. 141 – 144.; R. Krishnamoorthi, (Preprint) arXiv:1806.08342, v1, unpublished 2018.; K. Simonyan, A. Zisserman, in 3rd Int. Conf. on Learning Representations, ICLR 2015, San Diego 2015.; B. E. Jonsson, in IMEKO TC4 Int. Workshop ADC Model. Test. Data Convert. Anal. Des. 2011, IWADC 2011, Orvieto 2011, pp. 132 – 137.; S. Zagoruyko, N. Komodakis, in Proc. Br. Mach. Vis. Conf. 2016, York 2016, pp. 87.1 – 87.12.; L.‐H. Tsai, S.‐C. Chang, Y.‐T. Chen, J.‐Y. Pan, W. Wei, D.‐C. Juan, (Preprint) arXiv:2007.03230, v2, unpublished 2020.; M. A. Zidan, Y. Jeong, J. Lee, B. Chen, S. Huang, M. J. Kushner, W. D. Lu, Nat. Electron. 2018, 1, 411.; X. Guo, F. M. Bayat, M. Prezioso, Y. Chen, B. Nguyen, N. Do, D. B. Strukov, in 2017 IEEE Custom Integrated Circuits Conf., Austin 2017, pp. 1 – 4.; Y. Cai, E. F. Haratsch, O. Mutlu, K. Mai, in Design, Automation & Test in Europe Conf. and Exhibition (DATE), 2013, New Jersey 2013, pp. 1285 – 1290.; A. F. Murray, P. J. Edwards, IEEE Trans. Neural Netw. 1993, 4, 722.; G. An, Neural Comput. 1996, 8, 643.; D. P. Kingma, T. Salimans, M. Welling, in Proc. 28th Int. Conf. Neural Inf. Process. Syst., NIPS 2015, Montréal 2015, pp. 2575 – 2583.; H. Noh, T. You, J. Mun, B. Han, in Advances in Neural Information Processing Systems, 2017, pp. 5110 – 5119.; S. Moon, K. Shin, D. Jeon, IEEE Trans. Very Large Scale Integr. Syst. 2019, 27, 1455.; D. Miyashita, S. Kousai, T. Suzuki, J. Deguchi, IEEE J. Solid-State Circuits 2017, 52, 2679.; M. Klachko, M. R. Mahmoodi, D. Strukov, in Proc. Int. Joint Conf. Neural Networks IJCNN’19, Budapest 2019, pp. 1 – 8.; A. S. Rekhi, B. Zimmer, N. Nedovic, N. Liu, R. Venkatesan, M. Wang, B. Khailany, W. J. Dally, C. T. Gray, in Proc. 56th Annual Design Automation Conf. DAC 2019, Las Vegas, 2019, pp. 1 – 6.; Y. Boo, S. Shin, W. Sung, in 2020 IEEE Work. Signal Process. Syst., Coimbra 2020, pp. 1 – 6.; L. N. Smith, in Proc.—2017 IEEE Winter Conf. Appl. Comput. Vision, WACV 2017, Santa Rosa 2017, pp. 464 – 472.; A. P. James, L. O. Chua, IEEE Trans. Circuits Syst. I. Regul. Pap. 2021, 68, 4470.; S.‐S. Sheu, M.‐F. Chang, K.‐F. Lin, C.‐W. Wu, Y.‐S. Chen, P.‐F. Chiu, C.‐C. Kuo, Y.‐S. Yang, P.‐C. Chiang, W.‐P. Lin, C.‐H. Lin, H.‐Y. Lee, P.‐Y. Gu, S.‐M. Wang, F. T. Chen, K.‐L. Su, C.‐H. Lien, K.‐H. Cheng, H.‐T. Wu, T.‐K. Ku, M.‐J. Kao, M.‐J. Tsai, in 2011 IEEE Int. Solid-State Circuits Conf., ISSCC 2011, San Francisco 2011, pp. 200 – 202.; N. Papandreou, H. Pozidis, A. Pantazi, A. Sebastian, M. Breitwisch, C. Lam, E. Eleftheriou, in 2011 IEEE Int. Symp. Circuits Systems, Rio de Janeiro 2011, pp. 329 – 332.; E. Strubell, A. Ganesh, A. McCallum, in AAAI 2020—34th AAAI Conf. Artif. Intell., New York 2020, pp. 1393 – 13696.; S. Yu, H. Jiang, S. Huang, X. Peng, A. Lu, IEEE Circuits Syst. Mag. 2021, 21, 31.; M. A. Zidan, W. D. Lu, in Memristive Devices for Brain-Inspired Computing, Elsevier, San Diego 2020, pp. 221 – 254.; X. Peng, S. Huang, Y. Luo, X. Sun, S. Yu, Technical Digest ‐ Int. Electron Devices meeting, IEDM 2019, San Francisco 2019, pp. 32.5.1 – 32.5.4.; V. Joshi, M. Le Gallo, S. Haefeli, I. Boybat, S. R. Nandakumar, C. Piveteau, M. Dazzi, B. Rajendran, A. Sebastian, E. Eleftheriou, Nat. Commun. 2020, 11, 2473.; F. Cai, J. M. Correll, S. H. Lee, Y. Lim, V. Bothra, Z. Zhang, M. P. Flynn, W. D. Lu, Nat. Electron. 2019, 2, 290.; P. Yao, H. Wu, B. Gao, J. Tang, Q. Zhang, W. Zhang, J. J. Yang, H. Qian, Nature 2020, 577, 641.; O. Krestinskaya, B. Choubey, A. P. James, Sci. Rep. 2020, 10, 5838.; O. Krestinskaya, A. Irmanova, A. P. James, in 2019 IEEE Int. Symp. Circuits Syst., Sapporo, 2019, pp. 1–5.; B. Murmann, Boris Murmann: ADC Performance Survey, https://web.stanford.edu/~murmann/adcsurvey.html, 2021.; Y. Jeong, M. A. Zidan, W. D. Lu, IEEE Trans. Nanotechnol. 2018, 17, 184.; Q. Wang, X. Wang, S. H. Lee, F.‐H. Meng, W. D. Lu, in Technical Digest ‐ Int. Electron Devices Meeting, IEDM 2019, San Francisco 2019, pp. 14.4.1 – 14.4.4.; W. Ma, F. Cai, C. Du, Y. Jeong, M. Zidan, W. D. Lu, in Technical Digest—Int. Electron Devices Meeting IEDM 2017, San Francisco 2017, p. 16.7.1.

11
Academic Journal

File Description: application/pdf

Relation: Hall, Brian D.; Liu, Yang; Jansen, Yvonne; Dragicevic, Pierre; Chevalier, Fanny; Kay, Matthew (2022). "A Survey of Tasks and Visualizations in Multiverse Analysis Reports." Computer Graphics Forum 41(1): 402-426.; https://hdl.handle.net/2027.42/172086; Computer Graphics Forum; [Pap64] Pap A.: Theory of definition. Philosophy of Science 31, 1 ( 1964 ), 49 – 54.; Orben Amy, Przybylski Andrew K. ( 2019 ) The association between adolescent well‐being and digital technology use. Nature Human Behaviour, 3, ( 2 ), 173 – 182. https://doi.org/10.1038/s41562‐018‐0506‐1; Orben Amy, Przybylski Andrew K. ( 2019 ) Screens, Teens, and Psychological Well‐Being: Evidence From Three Time‐Use‐Diary Studies. Psychological Science, 30, ( 5 ), 682 – 696. https://doi.org/10.1177/0956797619830329; Patel Chirag J., Burford Belinda, Ioannidis John P.A. ( 2015 ) Assessment of vibration of effects due to model specification can demonstrate the instability of observational associations. Journal of Clinical Epidemiology, 68, ( 9 ), 1046 – 1058. https://doi.org/10.1016/j.jclinepi.2015.05.029; Perin Charles, Dragicevic Pierre, Fekete Jean‐Daniel ( 2014 ) Revisiting Bertin Matrices: New Interactions for Crafting Tabular Visualizations. IEEE Transactions on Visualization and Computer Graphics, 20, ( 12 ), 2082 – 2091. https://doi.org/10.1109/tvcg.2014.2346279; [PV17] Piironen J., Vehtari A.: Comparison of Bayesian predictive methods for model selection. Statistics and Computing 27, 3 ( 2017 ), 711 – 735.; [PVB19] Poarch G. J., Vanhove J., Berthele R.: The effect of bidialectalism on executive function. International Journal of Bilingualism 23, 2 ( 2019 ), 612 – 628.; [RES17] Rohrer J. M., Egloff B., Schmukle S. C.: Probing birth‐order effects on narrow traits using specification‐curve analysis. Psychological Science 28, 12 ( 2017 ), 1821 – 1832.; Sedlmair Michael, Heinzl Christoph, Bruckner Stefan, Piringer Harald, Moller Torsten ( 2014 ) Visual Parameter Space Analysis: A Conceptual Framework. IEEE Transactions on Visualization and Computer Graphics, 20, ( 12 ), 2161 – 2170. https://doi.org/10.1109/tvcg.2014.2346321; Simmons Joseph P., Nelson Leif D., Simonsohn Uri ( 2011 ) False‐Positive Psychology. Psychological Science, 22, ( 11 ), 1359 – 1366. https://doi.org/10.1177/0956797611417632; Sagi Omer, Rokach Lior ( 2018 ) Ensemble learning: A survey. WIREs Data Mining and Knowledge Discovery, 8, ( 4 ), https://doi.org/10.1002/widm.1249; Simonsohn Uri, Simmons Joseph P., Nelson Leif D. Specification Curve: Descriptive and Inferential Statistics on All Reasonable Specifications. SSRN Electronic Journal, https://doi.org/10.2139/ssrn.2694998; Simonsohn Uri, Simmons Joseph P., Nelson Leif D. ( 2020 ) Specification curve analysis. Nature Human Behaviour, 4, ( 11 ), 1208 – 1214. https://doi.org/10.1038/s41562‐020‐0912‐z; Steegen Sara, Tuerlinckx Francis, Gelman Andrew, Vanpaemel Wolf ( 2016 ) Increasing Transparency Through a Multiverse Analysis. Perspectives on Psychological Science, 11, ( 5 ), 702 – 712. https://doi.org/10.1177/1745691616658637; Silberzahn R., Uhlmann E. L., Martin D. P., Anselmi P., Aust F., Awtrey E., Bahník Š., Bai F., Bannard C., Bonnier E., Carlsson R., Cheung F., Christensen G., Clay R., Craig M. A., Dalla Rosa A., Dam L., Evans M. H., Flores Cervantes I., Fong N., Gamez‐Djokic M., Glenz A., Gordon‐McKeon S., Heaton T. J., Hederos K., Heene M., Hofelich Mohr A. J., Högden F., Hui K., Johannesson M., Kalodimos J., Kaszubowski E., Kennedy D. M., Lei R., Lindsay T. A., Liverani S., Madan C. R., Molden D., Molleman E., Morey R. D., Mulder L. B., Nijstad B. R., Pope N. G., Pope B., Prenoveau J. M., Rink F., Robusto E., Roderique H., Sandberg A., Schlüter E., Schönbrodt F. D., Sherman M. F., Sommer S. A., Sotak K., Spain S., Spörlein C., Stafford T., Stefanutti L., Tauber S., Ullrich J., Vianello M., Wagenmakers E.‐J., Witkowiak M., Yoon S., Nosek B. A. ( 2018 ) Many Analysts, One Data Set: Making Transparent How Variations in Analytic Choices Affect Results. Advances in Methods and Practices in Psychological Science, 1, ( 3 ), 337 – 356. https://doi.org/10.1177/2515245917747646; [Vic11] Victor B.: Explorable explanations. Online. http://worrydream.com/ExplorableExplanations/ (2011).; [VKT19] Voracek M., Kossmeier M., Tran U. S.: Which data to meta‐analyze, and how? Zeitschrift für Psychologie 227 ( 2019 ), 64 – 82.; [Wah83] Wahba G.: Bayesian “confidence intervals” for the cross‐validated smoothing spline. Journal of the Royal Statistical Society: Series B (Methodological) 45, 1 ( 1983 ), 133 – 150.; Wang Junpeng, Hazarika Subhashis, Li Cheng, Shen Han‐Wei ( 2019 ) Visualization and Visual Analysis of Ensemble Data: A Survey. IEEE Transactions on Visualization and Computer Graphics, 25, ( 9 ), 2853 – 2872. https://doi.org/10.1109/tvcg.2018.2853721; Wicherts Jelte M., Veldkamp Coosje L. S., Augusteijn Hilde E. M., Bakker Marjan, van Aert Robbie C. M., van Assen Marcel A. L. M. ( 2016 ) Degrees of Freedom in Planning, Running, Analyzing, and Reporting Psychological Studies: A Checklist to Avoid p‐Hacking. Frontiers in Psychology, 7, https://doi.org/10.3389/fpsyg.2016.01832; Young Cristobal, Holsteen Katherine ( 2017 ) Model Uncertainty and Robustness. Sociological Methods & Research, 46, ( 1 ), 3 – 40. https://doi.org/10.1177/0049124115610347; Young Cristobal ( 2018 ) Model Uncertainty and the Crisis in Science. Socius: Sociological Research for a Dynamic World, 4, 237802311773720. https://doi.org/10.1177/2378023117737206; [AES05] Amar R., Eagan J., Stasko J.: Low‐level components of analytic activity in information visualization. In INFOVIS: Proceedings of the IEEE Symposium on Information Visualization, ( 2005 ), IEEE, pp. 111 – 117. http://doi.org/10.1109/INFVIS.2005.1532136; Arslan Ruben C., Schilling Katharina M., Gerlach Tanja M., Penke Lars ( 2021 ) Using 26,000 diary entries to show ovulatory changes in sexual desire and behavior. Journal of Personality and Social Psychology, 121, ( 2 ), 410 – 431. https://doi.org/10.1037/pspp0000208; [BBHR*16] Behrisch M., Bach B., Henry Riche N., Schreck T., Fekete J.‐D.: Matrix reordering methods for table and network visualization. Computer Graphics Forum 35, ( 2016 ), 693 – 716.; Berry D. ( 2012 ) Multiplicities in Cancer Research: Ubiquitous and Necessary Evils. JNCI Journal of the National Cancer Institute, 104, ( 15 ), 1125 – 1133. https://doi.org/10.1093/jnci/djs301; [BHJ*14] Bonneau, G.‐P., Hege, H.‐C., Johnson C. R., Oliveira M. M., Potter K., Rheingans P., Schultz T.: Overview and state‐of‐the‐art of uncertainty visualization. In Scientific Visualization. London: Springer ( 2014 ), pp. 3 – 27. https://doi.org/10.1007/978‐1‐4471‐6497‐5_1; Bruns Stephan B., Ioannidis John P. A. ( 2016 ) p‐Curve and p‐Hacking in Observational Research. PLOS ONE, 11 ( 2 ), e0149144. https://doi.org/10.1371/journal.pone.0149144; Bierkens Marc F. P. ( 2015 ) Global hydrology 2015: State, trends, and directions. Water Resources Research, 51 ( 7 ), 4923 – 4947. https://doi.org/10.1002/2015wr017173; Bastiaansen Jojanneke A., Kunkels Yoram K., Blaauw Frank J., Boker Steven M., Ceulemans Eva, Chen Meng, Chow Sy‐Miin, de Jonge Peter, Emerencia Ando C., Epskamp Sacha, Fisher Aaron J., Hamaker Ellen L., Kuppens Peter, Lutz Wolfgang, Meyer M. Joseph, Moulder Robert, Oravecz Zita, Riese Harriëtte, Rubel Julian, Ryan Oisín, Servaas Michelle N., Sjobeck Gustav, Snippe Evelien, Trull Timothy J., Tschacher Wolfgang, van der Veen Date C., Wichers Marieke, Wood Phillip K., Woods William C., Wright Aidan G.C., Albers Casper J., Bringmann Laura F. ( 2020 ) Time to get personal? The impact of researchers choices on the selection of treatment targets using the experience sampling methodology. Journal of Psychosomatic Research, 137, 110211. https://doi.org/10.1016/j.jpsychores.2020.110211; Botvinik‐Nezer Rotem, Holzmeister Felix, Camerer Colin F., Dreber Anna, Huber Juergen, Johannesson Magnus, Kirchler Michael, Iwanir Roni, Mumford Jeanette A., Adcock R. Alison, Avesani Paolo, Baczkowski Blazej M., Bajracharya Aahana, Bakst Leah, Ball Sheryl, Barilari Marco, Bault Nadège, Beaton Derek, Beitner Julia, Benoit Roland G., Berkers Ruud M. W. J., Bhanji Jamil P., Biswal Bharat B., Bobadilla‐Suarez Sebastian, Bortolini Tiago, Bottenhorn Katherine L., Bowring Alexander, Braem Senne, Brooks Hayley R., Brudner Emily G., Calderon Cristian B., Camilleri Julia A., Castrellon Jaime J., Cecchetti Luca, Cieslik Edna C., Cole Zachary J., Collignon Olivier, Cox Robert W., Cunningham William A., Czoschke Stefan, Dadi Kamalaker, Davis Charles P., Luca Alberto De, Delgado Mauricio R., Demetriou Lysia, Dennison Jeffrey B., Di Xin, Dickie Erin W., Dobryakova Ekaterina, Donnat Claire L., Dukart Juergen, Duncan Niall W., Durnez Joke, Eed Amr, Eickhoff Simon B., Erhart Andrew, Fontanesi Laura, Fricke G. Matthew, Fu Shiguang, Galván Adriana, Gau Remi, Genon Sarah, Glatard Tristan, Glerean Enrico, Goeman Jelle J., Golowin Sergej A. E., González‐García Carlos, Gorgolewski Krzysztof J., Grady Cheryl L., Green Mikella A., Guassi Moreira João F., Guest Olivia, Hakimi Shabnam, Hamilton J. Paul, Hancock Roeland, Handjaras Giacomo, Harry Bronson B., Hawco Colin, Herholz Peer, Herman Gabrielle, Heunis Stephan, Hoffstaedter Felix, Hogeveen Jeremy, Holmes Susan, Hu Chuan‐Peng, Huettel Scott A., Hughes Matthew E., Iacovella Vittorio, Iordan Alexandru D., Isager Peder M., Isik Ayse I., Jahn Andrew, Johnson Matthew R., Johnstone Tom, Joseph Michael J. E., Juliano Anthony C., Kable Joseph W., Kassinopoulos Michalis, Koba Cemal, Kong Xiang‐Zhen, Koscik Timothy R., Kucukboyaci Nuri Erkut, Kuhl Brice A., Kupek Sebastian, Laird Angela R., Lamm Claus, Langner Robert, Lauharatanahirun Nina, Lee Hongmi, Lee Sangil, Leemans Alexander, Leo Andrea, Lesage Elise, Li Flora, Li Monica Y. C., Lim Phui Cheng, Lintz Evan N., Liphardt Schuyler W., Losecaat Vermeer Annabel B., Love Bradley C., Mack Michael L., Malpica Norberto, Marins Theo, Maumet Camille, McDonald Kelsey, McGuire Joseph T., Melero Helena, Méndez Leal Adriana S., Meyer Benjamin, Meyer Kristin N., Mihai Glad, Mitsis Georgios D., Moll Jorge, Nielson Dylan M., Nilsonne Gustav, Notter Michael P., Olivetti Emanuele, Onicas Adrian I., Papale Paolo, Patil Kaustubh R., Peelle Jonathan E., Pérez Alexandre, Pischedda Doris, Poline Jean‐Baptiste, Prystauka Yanina, Ray Shruti, Reuter‐Lorenz Patricia A., Reynolds Richard C., Ricciardi Emiliano, Rieck Jenny R., Rodriguez‐Thompson Anais M., Romyn Anthony, Salo Taylor, Samanez‐Larkin Gregory R., Sanz‐Morales Emilio, Schlichting Margaret L., Schultz Douglas H., Shen Qiang, Sheridan Margaret A., Silvers Jennifer A., Skagerlund Kenny, Smith Alec, Smith David V., Sokol‐Hessner Peter, Steinkamp Simon R., Tashjian Sarah M., Thirion Bertrand, Thorp John N., Tinghög Gustav, Tisdall Loreen, Tompson Steven H., Toro‐Serey Claudio, Torre Tresols Juan Jesus, Tozzi Leonardo, Truong Vuong, Turella Luca, van ‘t Veer Anna E., Verguts Tom, Vettel Jean M., Vijayarajah Sagana, Vo Khoi, Wall Matthew B., Weeda Wouter D., Weis Susanne, White David J., Wisniewski David, Xifra‐Porxas Alba, Yearling Emily A., Yoon Sangsuk, Yuan Rui, Yuen Kenneth S. L., Zhang Lei, Zhang Xu, Zosky Joshua E., Nichols Thomas E., Poldrack Russell A., Schonberg Tom ( 2020 ) Variability in the analysis of a single neuroimaging dataset by many teams. Nature, 582 ( 7810 ), 84 – 88. https://doi.org/10.1038/s41586‐020‐2314‐9; [BRRYD20] Bursztyn L., Rao A., Roth C. & Yanagizawa‐Drott D.: Misinformation During a Pandemic. Working paper, University of Chicago, Becker Friedman Institute for Economics, 2020, 1–114. https://www.doi.org/10.3386/w27417; Bryan Christopher J., Yeager David S., O’Brien Joseph M. ( 2019 ) Replicator degrees of freedom allow publication of misleading failures to replicate. Proceedings of the National Academy of Sciences, 116, ( 51 ), 25535 – 25545. https://doi.org/10.1073/pnas.1910951116; [BZ08] Baraldi P., Zio E.: A combined Monte Carlo and possibilistic approach to uncertainty propagation in event tree analysis. Risk Analysis: An International Journal 28, 5 ( 2008 ), 1309 – 1326.; [Car12] Carp J.: On the plurality of (methodological) worlds: Estimating the analytic flexibility of fMRI experiments. Frontiers in Neuroscience 6 ( 2012 ), 149.; [CC14] Christensen B., Christensen S.: Are female hurricanes really deadlier than male hurricanes? Proceedings of the National Academy of Sciences 111, 34 ( 2014 ), E3497 – E3498.; [CGD18] Cockburn A., Gutwin C., Dix A.: Hark no more: On the preregistration of CHI experiments. In Proceedings of the 2018 CHI Conference on Human Factors in Computing Systems ( 2018 ), ACM, pp. 141. https://doi.org/10.1145/3173574.3173715; [CJT19] Cesario J., Johnson D. J., Terrill W.: Is there evidence of racial disparity in police use of deadly force? Analyses of officer‐involved fatal shootings in 2015–2016. Social Psychological and Personality Science 10, 5 ( 2019 ), 586 – 595.; [Coo18] Cookson J. A.: When saving is gambling. Journal of Financial Economics 129, 1 ( 2018 ), 24 – 45.; Cashman Dylan, Perer Adam, Chang Remco, Strobelt Hendrik ( 2020 ) Ablate, Variate, and Contemplate: Visual Analytics for Discovering Neural Architectures. IEEE Transactions on Visualization and Computer Graphics, 26, ( 1 ), 863 – 873. https://doi.org/10.1109/tvcg.2019.2934261; Cirillo Pasquale, Taleb Nassim Nicholas ( 2016 ) On the statistical properties and tail risk of violent conflicts. Physica A: Statistical Mechanics and its Applications, 452, 29 – 45. https://doi.org/10.1016/j.physa.2016.01.050; Cumming Geoff ( 2014 ) The New Statistics. Psychological Science, 25, ( 1 ), 7 – 29. https://doi.org/10.1177/0956797613504966; [DBH19] Donnelly S., Brooks P. J., Homer B. D.: Is there a bilingual advantage on interference‐control tasks? A multiverse meta‐analysis of global reaction time and interference cost. Psychonomic Bulletin & Review 26, 4 ( 2019 ), 1122 – 1147.; [DCCE19] Das S., Cashman D., Chang R., Endert A.: BEAMES: Interactive multimodel steering, selection, and inspection for regression tasks. IEEE Computer Graphics and Applications 39, 5 ( 2019 ), 20 – 32.; Del Giudice Marco, Gangestad Steven W. ( 2021 ) A Traveler’s Guide to the Multiverse: Promises, Pitfalls, and a Framework for the Evaluation of Analytic Decisions. Advances in Methods and Practices in Psychological Science, 4 ( 1 ), 251524592095492. https://doi.org/10.1177/2515245920954925; [DGH*18] Dubois J., Galdi P., Han Y., Paul L. K., Adolphs R.: Resting‐state functional brain connectivity best predicts the personality dimension of openness to experience. Personality Neuroscience 1 ( 2018 ), e6.; [DJS*19] Dragicevic P., Jansen Y., Sarma A., Kay M., Chevalier F.: Increasing the transparency of research papers with explorable multiverse analyses. In Proceedings of the 2019 CHI Conference on Human Factors in Computing Systems ( New York City, NY, USA, 2019 ), Association for Computing Machinery, pp. 1 – 15. https://doi.org/10.1145/3290605.3300295; [DKBK19] Dejonckheere E., Kalokerinos E. K., Bastian B., Kuppens P.: Poor emotion regulation ability mediates the link between depressive symptoms and affective bipolarity. Cognition and Emotion 33, 5 ( 2019 ), 1076 – 1083.; Dejonckheere Egon, Mestdagh Merijn, Houben Marlies, Erbas Yasemin, Pe Madeline, Koval Peter, Brose Annette, Bastian Brock, Kuppens Peter ( 2018 ) The bipolarity of affect and depressive symptoms. Journal of Personality and Social Psychology, 114, ( 2 ), 323 – 341. https://doi.org/10.1037/pspp0000186; [DS18] Denny M. J., Spirling A.: Text preprocessing for unsupervised learning: Why it matters, when it misleads, and what to do about it. Political Analysis 26, 2 ( 2018 ), 168 – 189.; [ESR17] Elsherif M. M., Saban M. I., Rotshtein P.: The perceptual saliency of fearful eyes and smiles: A signal detection study. PloS One 12, 3 ( 2017 ), e0173199.; FiveThirtyEight [Fiv15]: Hack your way to scientific glory, 2015. https://projects.fivethirtyeight.com/p‐hacking/; [FS11] Ferson S., Siegrist J.: Verified computation with probabilities. In Proceedings of the IFIP Working Conference on Uncertainty Quantification ( New York City, NY, USA, 2011 ), Springer, pp. 95 – 122. https://doi.org/10.1007/978‐3‐642‐32677‐6_7; Gildersleeve Kelly, Haselton Martie G., Fales Melissa R. ( 2014 ) Do women’s mate preferences change across the ovulatory cycle? A meta‐analytic review. Psychological Bulletin, 140, ( 5 ), 1205 – 1259. https://doi.org/10.1037/a0035438; [GK75] Gaines B. R., Kohout T. L.: Possible automata. In Proceedings of the International Symposium on Multiple‐Valued Logic ( 1975 ).; [GL13] Gelman A., Loken E.: The Garden of Forking Paths: Why Multiple Comparisons can be a Problem, Even when there is No “Fishing Expedition” or “p‐hacking” and the Research Hypothesis was Posited ahead of Time. Department of Statistics, Columbia University, 2013. http://www.stat.columbia.edu/~gelman/research/unpublished/forking.pdf; Gehlenborg Nils, Wong Bang ( 2012 ) Heat maps. Nature Methods, 9, ( 3 ), 213 – 213. https://doi.org/10.1038/nmeth.1902; [Har07] Harzing A.: Harzing, A.W. ( 2007 ) Publish or Perish, available from https://harzing.com/resources/publish‐or‐perish; Harris Christine R., Chabot Aimee, Mickes Laura ( 2013 ) Shifts in Methodology and Theory in Menstrual Cycle Research on Attraction. Sex Roles, 69, ( 9‐10 ), 525 – 535. https://doi.org/10.1007/s11199‐013‐0302‐3; Hegre Håvard, Sambanis Nicholas ( 2006 ) Sensitivity Analysis of Empirical Results on Civil War Onset. Journal of Conflict Resolution, 50, ( 4 ), 508 – 535. https://doi.org/10.1177/0022002706289303; Jelveh Zubin, Kogut Bruce, Naidu Suresh Political Language in Economics. SSRN Electronic Journal, https://doi.org/10.2139/ssrn.2535453; Jung K., Shavitt S., Viswanathan M., Hilbe J. M. ( 2014 ) Female hurricanes are deadlier than male hurricanes. Proceedings of the National Academy of Sciences, 111, ( 24 ), 8782 – 8787. https://doi.org/10.1073/pnas.1402786111; [KAB*20] Kraus M., Angerbauer K., Buchmüller J., Schweitzer D., Keim D. A., Sedlmair M., Fuchs J.: Assessing 2D and 3D heatmaps for comparative analysis: An empirical study. In Proceedings of the 2020 CHI Conference on Human Factors in Computing Systems ( 2020 ), pp. 1 – 14. https://doi.org/10.1145/3313831.3376675; [LAH20] Liu Y., Althoff T., Heer J.: Paths explored, paths omitted, paths obscured: Decision points & selective reporting in end‐to‐end data analysis. In Proceedings of the 2020 CHI Conference on Human Factors in Computing Systems ( 2020 ), pp. 1 – 14. https://doi.org/10.1145/3313831.3376533; Landy Justin F., Jia Miaolei (Liam), Ding Isabel L., Viganola Domenico, Tierney Warren, Dreber Anna, Johannesson Magnus, Pfeiffer Thomas, Ebersole Charles R., Gronau Quentin F., Ly Alexander, van den Bergh Don, Marsman Maarten, Derks Koen, Wagenmakers Eric‐Jan, Proctor Andrew, Bartels Daniel M., Bauman Christopher W., Brady William J., Cheung Felix, Cimpian Andrei, Dohle Simone, Donnellan M. Brent, Hahn Adam, Hall Michael P., Jiménez‐Leal William, Johnson David J., Lucas Richard E., Monin Benoît, Montealegre Andres, Mullen Elizabeth, Pang Jun, Ray Jennifer, Reinero Diego A., Reynolds Jesse, Sowden Walter, Storage Daniel, Su Runkun, Tworek Christina M., Van Bavel Jay J., Walco Daniel, Wills Julian, Xu Xiaobing, Yam Kai Chi, Yang Xiaoyu, Cunningham William A., Schweinsberg Martin, Urwitz Molly, The Crowdsourcing Hypothesis Tests Collaboration, Uhlmann Eric L. ( 2020 ) Crowdsourcing hypothesis tests: Making transparent how design choices shape research results. Psychological Bulletin, 146, ( 5 ), 451 – 479. https://doi.org/10.1037/bul0000220; Liu Yang, Kale Alex, Althoff Tim, Heer Jeffrey ( 2021 ) Boba: Authoring and Visualizing Multiverse Analyses. IEEE Transactions on Visualization and Computer Graphics, 27, ( 2 ), 1753 – 1763. https://doi.org/10.1109/tvcg.2020.3028985; Lonsdorf Tina B, Klingelhöfer‐Jens Maren, Andreatta Marta, Beckers Tom, Chalkia Anastasia, Gerlicher Anna, Jentsch Valerie L, Meir Drexler Shira, Mertens Gaetan, Richter Jan, Sjouwerman Rachel, Wendt Julia, Merz Christian J ( 2019 ) Navigating the garden of forking paths for data exclusions in fear conditioning research. eLife, 8, https://doi.org/10.7554/elife.52465; Maley Steve ( 2014 ) Statistics show no evidence of gender bias in the public’s hurricane preparedness. Proceedings of the National Academy of Sciences, 111, ( 37 ), E3834 – E3834. https://doi.org/10.1073/pnas.1413079111; Malter D. ( 2014 ) Female hurricanes are not deadlier than male hurricanes. Proceedings of the National Academy of Sciences, 111, ( 34 ), E3496 – E3496. https://doi.org/10.1073/pnas.1411428111; Muhlbacher Thomas, Linhardt Lorenz, Moller Torsten, Piringer Harald ( 2018 ) TreePOD: Sensitivity‐Aware Selection of Pareto‐Optimal Decision Trees. IEEE Transactions on Visualization and Computer Graphics, 24, ( 1 ), 174 – 183. https://doi.org/10.1109/tvcg.2017.2745158; Munafò Marcus R., Nosek Brian A., Bishop Dorothy V. M., Button Katherine S., Chambers Christopher D., Percie du Sert Nathalie, Simonsohn Uri, Wagenmakers Eric‐Jan, Ware Jennifer J., Ioannidis John P. A. ( 2017 ) A manifesto for reproducible science. Nature Human Behaviour, 1, ( 1 ), https://doi.org/10.1038/s41562‐016‐0021; [Mun14] Munzner T.: Visualization Analysis and Design. CRC Press, 2014.; Muñoz John, Young Cristobal ( 2018 ) We Ran 9 Billion Regressions: Eliminating False Positives through Computational Model Robustness. Sociological Methodology, 48, ( 1 ), 1 – 33. https://doi.org/10.1177/0081175018777988; Nosek B. A., Alter G., Banks G. C., Borsboom D., Bowman S. D., Breckler S. J., Buck S., Chambers C. D., Chin G., Christensen G., Contestabile M., Dafoe A., Eich E., Freese J., Glennerster R., Goroff D., Green D. P., Hesse B., Humphreys M., Ishiyama J., Karlan D., Kraut A., Lupia A., Mabry P., Madon T., Malhotra N., Mayo‐Wilson E., McNutt M., Miguel E., Paluck E. Levy, Simonsohn U., Soderberg C., Spellman B. A., Turitto J., VandenBos G., Vazire S., Wagenmakers E. J., Wilson R., Yarkoni T. ( 2015 ) Promoting an open research culture. Science, 348, ( 6242 ), 1422 – 1425. https://doi.org/10.1126/science.aab2374; Orben Amy, Dienlin Tobias, Przybylski Andrew K. ( 2019 ) Social media’s enduring effect on adolescent life satisfaction. Proceedings of the National Academy of Sciences, 116, ( 21 ), 10226 – 10228. https://doi.org/10.1073/pnas.1902058116; Olkin Ingram, Dahabreh Issa J., Trikalinos Thomas A. ( 2012 ) GOSH ‐ a graphical display of study heterogeneity. Research Synthesis Methods, 3, ( 3 ), 214 – 223. https://doi.org/10.1002/jrsm.1053

12
Academic Journal

File Description: application/pdf

Relation: Mohsen, Fadi; Abdelhaq, Hamed; Bisgin, Halil (2022). "Security-centric ranking algorithm and two privacy scores to mitigate intrusive apps." Concurrency and Computation: Practice and Experience 34(14): n/a-n/a.; https://hdl.handle.net/2027.42/172817; Concurrency and Computation: Practice and Experience; Mohsen F, Abdelhaq H, Bisgin H, Jolly A, Szczepanski M. Countering intrusiveness using new security-centric ranking algorithm built on top of elasticsearch. Proceedings of the 17th IEEE International Conference on Trust, Security and Privacy in Computing and Communications / 12th IEEE International Conference on Big Data Science and Engineering, TrustCom/BigDataSE 2018; August 1–3, 2018:1048-1057; ACM, New York, NY.; Li X, Liu J, Huo Y, Zhang R, Yao Y. An android malware detection method based on androidmanifest file. Proceedings of the 2016 4th International Conference on Cloud Computing and Intelligence Systems, CCIS ’16. IEEE; 2016.; Ping X, Xiaofeng W, Wenjia N, Tianqing Z, Gang L. Android malware detection with contrasting permission patterns. China Commmun. 2014; 11 ( 8 ): 1 - 14.; Quay-de la Vallee H, Selby P, Krishnamurthi S. On a (per)mission: building privacy into the app marketplace. Proceedings of the 6th Annual ACM CCS Workshop on Security and Privacy in Smartphones and Mobile Devices, SPSP ’16. ACM; 2016.; Wang Y, Zheng J, Sun C, Mukkamala S. Quantitative security risk assessment of android permissions and applications. Proceedings of the 27th International Conference on Data and Applications Security and Privacy XXVII, DBSec’13. Springer-Verlag; 2013: 226 - 241.; Taylor VF, Martinovic I. Securank: starving permission-hungry apps using contextual permission analysis. Proceedings of the 6th Workshop on Security and Privacy in Smartphones and Mobile Devices, SPSM ’16; 2016:43-52; ACM, New York, NY.; Quay-de la Vallee H, Selby P. A survey on various malware detection techniques on mobile platform. Int J Comput Appl. 2016; 139: 15 – 20.; Amamra A, Talhi C, Robert J-M. Smartphone malware detection: from a survey towards taxonomy. Proceedings of the 2012 7th International Conference on Malicious and Unwanted Software (MALWARE), MALWARE’12. IEEE; 2012.; Provos N, Friedl M, Honeyman P. Preventing privilege escalation. Proceedings of the 12th Conference on USENIX Security Symposium - Volume 12, SSYM’03; 2003; USENIX Association, Berkeley, CA.; Enck W, Ongtang M, McDaniel P. On lightweight mobile phone application certification. Proceedings of the 16th ACM Conference on Computer and Communications Security, CCS ’09; 2009:235-245; ACM, New York, NY.; Sarma BP, Li N, Gates C, Potharaju R, Nita-Rotaru C, Molloy I. Android permissions: a perspective combining risks and benefits. Proceedings of the 17th ACM Symposium on Access Control Models and Technologies, SACMAT ’12; 2012:13-22; ACM, New York, NY.; Frank M, Dong B, Felt AP, Song D. Mining permission request patterns from android and facebook applications. Proceedings of the 2012 IEEE 12th International Conference on Data Mining; December 2012:870-875.; Peng H, Gates C, Sarma B, et al. Using probabilistic generative models for ranking risks of android apps. Proceedings of the 2012 ACM Conference on Computer and Communications Security, CCS ’12; 2012:241-252; ACM, New York, NY.; Elastic. Elasticsearch; February 2018. https://www.elastic.co/; Alepis E, Patsakis C. Unravelling security issues of runtime permissions in android. J Hardware Syst Secur. 2018; 3: 45 – 63.; McClure S, Scambray J, Kurtz G. Hacking Exposed 7: Network Security Secrets and Solutions. 7th ed. McGraw-Hill Education; 2012.; Felt AP, Ha E, Egelman S, Haney A, Chin E, Wagner D. Android Permissions: User Attention, Comprehension, and Behavior. Technical Report UCB/EECS-2012-26. EECS Department, University of California; 2012.; Mohsen F, Shehab M. The listening patterns to system events by benign and malicious android apps. Proceedings of the 2016 IEEE 2nd International Conference on Collaboration and Internet Computing (CIC); November 2016:546-553.; Mylonas A, Theoharidou M, Gritzalis D. Assessing privacy risks in android: a user-centric approach. RISK@ICTSS; 2013.; Barth S, de Jong MD, Junger M, Hartel PH, Roppelt JC. Putting the privacy paradox to the test: online privacy and security behaviors among users with technical knowledge, privacy awareness, and financial resources. Telemat Inform. 2019; 41: 55 - 69.; Amazon. Amazon mechanical turk; 2017.; Wikipedia. Friedman test; 2020.; Wikipedia. Wilcoxon signed-rank test; 2020.; Wikipedia. Bonferroni correction; 2020.; Bogdanas D, Nelson N, Dig D. Analysis and transformations in support of android privacy; 2016.; Mohsen, F. More than a million android apps with two privacy scores. DataverseNL; 2021. https://doi.org/10.34894/CW7PAH; Struse E, Seifert J, Üllenbeck S, Rukzio E, Wolf C. PermissionWatcher: Creating User Awareness of Application Permissions in Mobile Systems. Springer; 2012: 65 - 80.; Rosen S, Qian Z, Mao ZM. Appprofiler: a flexible method of exposing privacy-related behavior in android applications to end users. Proceedings of the 3rd ACM Conference on Data and Application Security and Privacy, CODASPY’13; February 18–20, 2013:221-232; San Antonio, TX.; Zhu H, Xiong H, Ge Y, Chen E. Mobile app recommendations with security and privacy awareness. Proceedings of the 20th ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, KDD ’14; 2014:951-960; ACM, New York, NY.; Statista Number of available applications in the Google Play Store from December 2009 to December 2018; January 2019. https://www.statista.com/statistics/266210/number-of-available-applications-in-the-google-play-store/; Statista. Android permission system; February 2018. https://www.statista.com/statistics/266210/; Wang H, Li H, Li L, Guo Y, Xu G. Why are android apps removed from google play? a large-scale empirical study. Proceedings of the 15th International Conference on Mining Software Repositories, MSR ’18; 2018:231-242; ACM. New York, NY.; Unuchek R, Sinitsyn F. Denis P Alexander L. IT threat evolution in Q3; 2017.; Google. Android permission system; April 2017. https://developer.android.com/guide/topics/permissions/index.html; Mohsen F, Shehab M. Hardening the oauth-webview implementations in android applications by re-factoring the chromium library. Proceedings of the 2nd IEEE International Conference on Collaboration and Internet Computing, CIC 2016; November 1–3; 2016:196-205; Pittsburgh, PA.; Nauman M, Khan S, Zhang X. Apex: extending android permission model and enforcement with user-defined runtime constraints. Proceedings of the 5th ACM Symposium on Information, Computer and Communications Security, ASIACCS ’10; 2010:328-332; ACM, New York, NY.; Fragkaki E, Bauer L, Jia L, Swasey D. Modeling and enhancing android’s permission system. In: Foresti S, Yung M, Martinelli F, eds. Computer Security – ESORICS 2012. Springer; 2012: 1 - 18.; Burguera I, Zurutuza U, Nadjm-Tehrani S. Crowdroid: behavior-based malware detection system for android. Proceedings of the 1st ACM Workshop on Security and Privacy in Smartphones and Mobile Devices, SPSM ’11; 2011:15-26; ACM, New York, NY.; Saracino A, Sgandurra D, Dini G, Martinelli F. Madam: effective and efficient behavior-based android malware detection and prevention. IEEE Trans Depend Sec Comput. 2016; 15 ( 99 ): 1.; Xie L, Pierre Seifert J. pbmds: a behavior-based malware detection system for cellphone devices. Proceedings of the 3rd ACM Conference on Wireless Network Security (WiSec 2010). ACM; 2010: 37 - 48.; Zou S, Zhang J, Lin X. An effective behavior-based android malware detection system. Sec Commun Netw. 2015; 8 ( 12 ): 2079 - 2089.; Jing Y, Ahn GJ, Zhao Z, Hu H. Riskmon: continuous and automated risk assessment of mobile applications. Proceedings of the 4th ACM Conference on Data and Application Security and Privacy, CODASPY ’14; 2014:99-110; ACM, New York, NY.; Xiangyu JU. Android malware detection through permission and package. Proceedings of the 2014 International Conference on Wavelet Analysis and Pattern Recognition, ICWAPR ’14. IEEE; 2014.; Sato R, Chiba D, Goto S. Detecting android malware by analyzing manifest files. Proceedings of the Asia-Pacific Advanced Network 2013, APAN ’13; 2013:23-31.

13
Academic Journal

Subject Terms: Computer Science, Engineering

File Description: application/pdf

Relation: Hamzeh, Yazan; Mohammadi, Alireza; Rawashdeh, Samir A. (2022). "Improving the performance of automotive vision‐based applications under rainy conditions." IET Image Processing 16(5): 1457-1472.; https://hdl.handle.net/2027.42/172089; IET Image Processing; Yasarla, R., Patel, V.M.: rajeevyasarla/UMRL–using‐Cycle‐Spinning ( 2020 ). https://github.com/rajeevyasarla/UMRL–using‐Cycle‐Spinning (Accessed 1 Aug 2021); Tabik, S., Peralta, D., Herrera‐Poyatos, A., Herrera, F.: A snapshot of image pre‐processing for convolutional neural networks: Case study of MNIST. Int. J. Comput. Intell. Syst. 10, 555 – 568 ( 2017 ); Nemade, S., Sonavane, S.: Comparative analysis of geometric transformation effects for image annotation using various CNN models. In: Advances in Intelligent Systems and Computing. pp. 362 – 369. Springer, Singapore ( 2020 ); MathWorks: Augment images for deep learning workflows using image processing toolbox ( 2021 ). https://www.mathworks.com/help/deeplearning/ug/image‐augmentation‐using‐image‐processing‐toolbox.html (Accessed 28 Nov 2021); Geiger, A., Lenz, P., Urtasun, R.: Are we ready for Autonomous Driving? The KITTI vision benchmark suite. In: Conference on Computer Vision and Pattern Recognition (CVPR). Rhode Island ( 2012 ); Hamzeh, Y., El‐Shair, Z.A., Chehade, A., Rawashdeh, S.A.: Dynamic adherent raindrop simulator for automotive vision systems. IEEE Access 9, 114808 – 114820 ( 2021 ); Quan, Y., Deng, S., Chen, Y., Ji, H.: Deep learning for seeing through window with raindrops. In: IEEE/CVF International Conference on Computer Vision (ICCV). Seoul, Korea (South) ( 2019 ); Quan, Y., Deng, S., Chen, Y., Ji, H.: ljm619/raindropAttention. 7 10 ( 2019 ). https://github.com/ljm619/raindropAttention (Accessed 1 July 2021); Qian, R., Tan, R.T., Yang, W., Su, J., Liu, J.: rui1996 /DeRaindrop. GitHub ( 2019 ). https://github.com/rui1996/DeRaindrop. (Accessed 20 Jan 2021); Yasarla, R., Patel, V.M.: Uncertainty guided multi‐scale residual learning‐using a cycle spinning CNN for single image de‐raining. In: The IEEE Conference on Computer Vision and Pattern Recognition (CVPR). Long Beach, CA ( 2019 ); Isola, P., Zhu, J.‐Y., Zhou, T., Efros, A.A.: Image‐to‐image translation with conditional adversarial networks. In: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. Honolulu, HI ( 2017 ); MathWorks: Object detection using YOLO v3 deep learning. MathWorks ( 2021 ). https://www.mathworks.com/help/vision/ug/object‐detection‐using‐yolo‐v3‐deep‐learning.html (Accessed 7 July 2021); Iandola, F.N., Han, S., Moskewicz, M.W., Ashraf, K., Dally, W.J., Keutzer, K.: SqueezeNet: AlexNet‐level accuracy with 50x fewer parameters and; Dollar, P., Wojek, C., Schiele, B., Perona, P.: Pedestrian detection: An evaluation of the state of the art. IEEE Trans. Pattern Anal. Mach. Intell. 8, 743 – 761 ( 2011 ); MathWorks: Semantic segmentation using deep learning. MathWorks ( 2021 ). https://www.mathworks.com/help/vision/ug/semantic‐segmentation‐using‐deep‐learning.html (Accessed 15 July 2021); Chen, L.‐C., Zhu, Y., Papandreou, G., Schroff, F., Adam, H.: Encoder‐decoder with atrous separable convolution for semantic image segmentation. In: Proceedings of the European Conference on Computer Vision (ECCV). Munich, Germany ( 2018 ); Li, S., Araujo, I.B., Ren, W., Wang, Z., Tokuda, E.K., Junior, R.H., Cesar‐Junior, R., Zhang, J., Guo, X. & Cao, X.: Single image deraining: A comprehensive benchmark analysis. Computer Vision and Pattern Recognition, no. arXiv:1903.08558v1 [cs.CV]) ( 2019 ); Pei, Y., Huang, Y., Zou, Q., Lu, Y., Wang, S.: Does haze removal help CNN‐based image classification? In: Proceedings of the European Conference on Computer Vision (ECCV). Munich, Germany ( 2018 ); Shin, S., Sung, W.: Dynamic hand gesture recognition for wearable devices with low complexity recurrent neural networks. In: IEEE International Symposium on Circuits and Systems (ISCAS). Montreal, Canada ( 2016 ); Hamzeh, Y., El‐Shair, Z., Rawashdeh, S.A.: Effect of adherent rain on vision‐based object detection algorithms. SAE Int. J. Adv. Curr. Pract. Mobility 2 ( 6 ), 3051 – 3059 ( 2020 ); Fouad, E., Abdelhak, E., Salma, A.: Modelisation of raindrops based on declivity principle. In: 13th International Conference on Computer Graphics, Imaging and Visualization (CGiV). Beni Mellal, Morocco ( 2016 ); Ishizuka, J., Onoguchi, K.: Detection of raindrop with various shapes on a windshield. In: 5th International Conference on Pattern Recognition Applications and Methods (ICPRAM 2016). Roma, Italy ( 2016 ); Eigen, D., Krishnan, D., Fergus, R.: Restoring an image taken through a window covered with dirt or rain. In: 2013 IEEE International Conference on Computer Vision. Sydney, NSW, Australia ( 2013 ); Hamzeh, Y., Rawashdeh, S.A.: A review of detection and removal of raindrops in automotive vision systems. J. Imaging 7 ( 3 ), 52 ( 2021 ); Roser, M., Kurz, J., Geiger, A.: Realistic modeling of water droplets for monocular adherent raindrop recognition using bézier curves. In: Asian Conference on Computer Vision. Queenstown, New Zealand ( 2010 ); Kurihata, H., Takahashi, T., Ide, k., Mekada, Y., Murase, H., Tamatsu, Y., Miyahara, T.: Rainy weather recognition from in‐vehicle camera images for driver assistance. In: IEEE Proceedings. Intelligent Vehicles Symposium. Las Vegas, NV ( 2005 ); Qian, R., Tan, R.T., Yang, W., Su, J., Liu, J.: Attentive generative adversarial network for raindrop removal from a single image. In: Proceedings of the IEEE Conference on Computer Vision and Pattern Recognition. Salt Lake City, Utah ( 2018 ); Peng, J., Xu, Y., Chen, T., Huang, Y.: Single‐image raindrop removal using concurrent channel‐spatial attention and long‐short skip connections. Pattern Recognit. Lett. 131, 121 – 127 ( 2020 ); Alletto, S., Carlin, C., Rigazio, L., Ishii, Y., Tsukizawa,: Adherent raindrop removal with self‐supervised attention maps and spatio‐temporal generative adversarial networks. In: IEEE/CVF International Conference on Computer Vision Workshops. Seoul, Korea ( 2019 ); Carreira, J., Zisserman, A.: Quo vadis, action recognition? a new model and the kinetics dataset. In: IEEE Conference on Computer Vision and Pattern Recognition. Hawaii ( 2017 ); Heusel, M., Ramsauer, H., Unterthiner, T., Nessler, B. & Hochreiter, S.: GANs trained by a two time‐scale update rule converge to a local nash equilibrium. Proceedings of the 31st International Conference on Neural Information Processing Systems (NIPS 2017), pp. 6629‐6640, Long Beach, California, 2017; Wang, T.‐C., Liu, M.‐Y., Zhu, J.‐Y., Liu, G., Tao, A., Kautz, J., Catanzaro, B.: Video‐to‐video synthesis. In: Conference on Neural Information Processing Systems (NeurIPS). Montreal, Canada ( 2018 ); Talukdar, J., Gupta, S., Rajpura, P.S., Hegde, R.S.: Transfer learning for object detection using stateof‐the‐art deep neural networks. In: 5th International Conference on Signal Processing and Integrated Networks (SPIN). Noida, Delhi‐NCR ( 2018 ); Nguyen, D., Nguyen, K., Sridharan, S., Abbasnejad, I., Dean, D., Fookes, C.: Meta transfer learning for facial emotion recognition. In: 24th International Conference on Pattern Recognition (ICPR). Beijing, China ( 2018 )

14
Academic Journal

File Description: application/pdf

Relation: Yang, Jing Fan; Liu, Albert Tianxiang; Berrueta, Thomas A.; Zhang, Ge; Brooks, Allan M.; Koman, Volodymyr B.; Yang, Sungyun; Gong, Xun; Murphey, Todd D.; Strano, Michael S. (2022). "Memristor Circuits for Colloidal Robotics: Temporal Access to Memory, Sensing, and Actuation." Advanced Intelligent Systems 4(4): n/a-n/a.; https://hdl.handle.net/2027.42/172294; Advanced Intelligent Systems; X. Cao, X. Wei, G. Li, C. Hu, K. Dai, J. Guo, G. Zheng, C. Liu, C. Shen, Z. Guo, Polymer 2017, 112, 1.; A. Censi, 2015 http://arxiv.org/abs/1512.08055.; A. Puglisi, A. Sarracino, A. Vulpiani, Phys. Rep. 2017, 709–710, 1.; A. T. Liu, J. F. Yang, L. N. LeMar, G. Zhang, A. Pervan, T. D. Murphey, M. S. Strano, Faraday Discuss. 2021, 227, 213.; G. G. E. Gielen, H. C. C. Walscharts, W. M. C. Sansen, IEEE J. Solid-State Circuits 1990, 25, 707.; L. A. Villarruel Mendoza, N. A. Scilletta, M. G. Bellino, M. F. Desimone, P. N. Catalano, Front. Bioeng. Biotechnol. 2020, 8, 1.; K. B. Sutradhar, C. D. Sumi, Drug Deliv. 2016, 23, 1.; R. Farra, N. F. Sheppard, L. McCabe, R. M. Neer, J. M. Anderson, J. T. Santini, M. J. Cima, R. Langer, Sci. Transl. Med. 2012, 4, 122ra21.; B. Zinger, L. L. Miller, J. Am. Chem. Soc. 1984, 106, 6861.; J. M. Maloney, S. A. Uhland, B. F. Polito, N. F. Sheppard, C. M. Pelta, J. T. Santini, J. Control. Release 2005, 109, 244.; Y. Li, H. L. H. Duc, B. Tyler, T. Williams, M. Tupper, R. Langer, H. Brem, M. J. Cima, J. Control. Release 2005, 106, 138.; V. Pillay, T. S. Tsai, Y. E. Choonara, L. C. Du Toit, P. Kumar, G. Modi, D. Naidoo, L. K. Tomar, C. Tyagi, V. M. K. Ndesendo, J. Biomed. Mater. Res., Part A 2014, 102, 2039.; J. F. Yang, X. Gong, N. A. Bakh, K. Carr, N. F. B. Phillips, F. Ismail-Beigi, M. A. Weiss, M. S. Strano, Diabetes 2020, 69, 1815.; M. Maheandiran, S. Mylvaganam, C. Wu, Y. El-Hayek, S. Sugumar, L. Hazrati, M. del Campo, A. Giacca, L. Zhang, P. L. Carlen, PLoS One 2013, 8, e83168.; N. A. Bakh, G. Bisker, M. A. Lee, X. Gong, M. S. Strano, Adv. Healthc. Mater. 2017, 6, 1700601.; P. E. Cryer, S. N. Davis, H. Shamoon, Diabetes Care 2003, 26, 1902.; A. GhavamiNejad, J. Li, B. Lu, L. Zhou, L. Lam, A. Giacca, X. Y. Wu, Adv. Mater. 2019, 31, 1901051.; M. H. Smolensky, N. A. Peppas, Adv. Drug Deliv. Rev. 2007, 59, 828.; M. D. Ruben, D. F. Smith, G. A. Fitzgerald, J. B. Hogenesch, Science 2019, 365, 547.; F. Barahona, M. Grötschel, M. Jünger, G. Reinelt, Oper. Res. 1988, 36, 493.; A. Mirhoseini, A. Goldie, M. Yazgan, J. W. Jiang, E. Songhori, S. Wang, Y. J. Lee, E. Johnson, O. Pathak, A. Nazi, J. Pak, A. Tong, K. Srinivasa, W. Hang, E. Tuncer, Q. V. Le, J. Laudon, R. Ho, R. Carpenter, J. Dean, Nature 2021, 594, 207.; S. Choi, S. H. Tan, Z. Li, Y. Kim, C. Choi, P.-Y. Chen, H. Yeon, S. Yu, J. Kim, Nat. Mater. 2018, 17, 335.; S. Goswami, S. P. Rath, D. Thompson, S. Hedström, M. Annamalai, R. Pramanick, B. R. Ilic, S. Sarkar, S. Hooda, C. A. Nijhuis, J. Martin, R. S. Williams, S. Goswami, T. Venkatesan, Nat. Nanotechnol. 2020, 15, 380.; S. Goswami, D. Deb, A. Tempez, M. Chaigneau, S. P. Rath, M. Lal, R. S. Williams, S. Goswami, T. Venkatesan, Adv. Mater. 2020, 32, 1.; A. A. Bessonov, M. N. Kirikova, D. I. Petukhov, M. Allen, T. Ryhänen, M. J. A. Bailey, Nat. Mater. 2015, 14, 199.; S. Y. Cho, X. Gong, V. B. Koman, M. Kuehne, S. J. Moon, M. Son, T. T. S. Lew, P. Gordiichuk, X. Jin, H. D. Sikes, M. S. Strano, Nat. Commun. 2021, 12, 3079.; F. Fan, B. Zhang, Y. Cao, X. Yang, J. Gu, Y. Chen, Nanoscale 2017, 9, 10610.; S. Brivio, G. Tallarida, D. Perego, S. Franz, D. Deleruyelle, C. Muller, S. Spiga, Appl. Phys. Lett. 2012, 101, 223510.; F. Hui, M. Lanza, Nat. Electron. 2019, 2, 221.; Y. Zuo, H. Lin, J. Guo, Y. Yuan, H. He, Y. Li, Y. Xiao, X. Li, K. Zhu, T. Wang, X. Jing, C. Wen, M. Lanza, Adv. Electron. Mater. 2020, 6, 1901226.; F. N. Najm, Circuit Simulation, John Wiley & Sons, Inc., Hoboken, NJ 2010.; M. Sitti, Mobile Microrobotics, MIT Press, Cambridge, MA 2017.; X. Feng, Y. Li, L. Wang, S. Chen, Z. G. Yu, W. C. Tan, N. Macadam, G. Hu, L. Huang, L. Chen, X. Gong, D. Chi, T. Hasan, A. V. Thean, Y. Zhang, K. Ang, Adv. Electron. Mater. 2019, 5, 1900740.; N. Ghods, M. Krstic, J. Dyn. Syst. Meas. Control 2011, 133, 044504.; H. Li, P. Huang, B. Gao, B. Chen, X. Liu, J. Kang, IEEE Electron Device Lett. 2014, 35, 211.; A. Hey, in Feynman and Computation, CRC Press 2018, pp. 63 – 76.; P. Fischer, B. J. Nelson, Sci. Robot. 2021, 6, eabh3168.; M. Sitti, Nature 2009, 458, 1121.; M. Z. Miskin, A. J. Cortese, K. Dorsey, E. P. Esposito, M. F. Reynolds, Q. Liu, M. Cao, D. A. Muller, P. L. McEuen, I. Cohen, Nature 2020, 584, 557.; A. T. Liu, Y. Kunai, A. L. Cottrill, A. Kaplan, G. Zhang, H. Kim, R. S. Mollah, Y. L. Eatmon, M. S. Strano, Nat. Commun. 2021, 12, 3415.; A. J. Cortese, C. L. Smart, T. Wang, M. F. Reynolds, S. L. Norris, Y. Ji, S. Lee, A. Mok, C. Wu, F. Xia, N. I. Ellis, A. C. Molnar, C. Xu, P. L. McEuen, Proc. Natl. Acad. Sci. 2020, 117, 9173.; B. Esteban-Fernández De Ávila, C. Angell, F. Soto, M. A. Lopez-Ramirez, D. F. Báez, S. Xie, J. Wang, Y. Chen, ACS Nano 2016, 10, 4997.; V. Garcia-Gradilla, J. Orozco, S. Sattayasamitsathit, F. Soto, F. Kuralay, A. Pourazary, A. Katzenberg, W. Gao, Y. Shen, J. Wang, ACS Nano 2013, 7, 9232.; W. Hu, G. Z. Lum, M. Mastrangeli, M. Sitti, Nature 2018, 554, 81.; J. Yu, B. Wang, X. Du, Q. Wang, L. Zhang, Nat. Commun. 2018, 9, 1.; V. K. Bandari, Y. Nan, D. Karnaushenko, Y. Hong, B. Sun, F. Striggow, D. D. Karnaushenko, C. Becker, M. Faghih, M. Medina-Sánchez, F. Zhu, O. G. Schmidt, Nat. Electron. 2020, 3, 172.; A. M. Brooks, M. S. Strano, Nature 2020, 584, 530.; D. Jin, L. Zhang, Nat. Mach. Intell. 2020, 2, 663.; Y. Tang, C. Chen, A. Khaligh, I. Penskiy, S. Bergbreiter, IEEE Trans. Power Electron 2014, 29, 2991.; Y. Chen, H. Zhao, J. Mao, P. Chirarattananon, E. F. Helbling, N. Seung, P. Hyun, D. R. Clarke, R. J. Wood, Nature 2019, 575, 324.; H. Suzuki, R. J. Wood, Nat. Mach. Intell. 2020, 2, 437.; K. Saito, M. Takato, Y. Sekine, F. Uchikoba, Int. J. Adv. Robot. Syst. 2012, 9, https://doi.org/10.5772/54129.; B. Goldberg, R. Zufferey, N. Doshi, E. F. Helbling, G. Whittredge, M. Kovac, R. J. Wood, IEEE Robot. Autom. Lett. 2018, 3, 987.; M. Lok, E. F. Helbling, X. Zhang, R. Wood, D. Brooks, G.-Y. Wei, IEEE Trans. Power Electron. 2018, 33, 3180.; N. T. Jafferis, E. F. Helbling, M. Karpelson, R. J. Wood, Nature 2019, 570, 491.; W. Savoie, T. A. Berrueta, Z. Jackson, A. Pervan, R. Warkentin, S. Li, T. D. Murphey, K. Wiesenfeld, D. I. Goldman, Sci. Robot. 2019, 4, eaax4316.; B. Chen, H. Yang, B. Song, D. Meng, X. Yan, Y. Li, Y. Wang, P. Hu, T. Ou, M. Barnell, Q. Wu, H. Wang, W. Wu, Sci. Robot. 2020, 5, eabb6938.; P. Dario, R. Valleggi, M. C. Carrozza, M. C. Montesi, M. Cocco, J. Micromech. Microeng. 1992, 2, 141.; S. Lee, A. J. Cortese, A. Mok, C. Wu, T. Wang, J. U. Park, C. Smart, S. Ghajari, D. Khilwani, S. Sadeghi, Y. Ji, J. H. Goldberg, C. Xu, P. L. McEuen, A. C. Molnar, J. Microelectromech. Syst. 2020, 29, 720.; S. Lee, A. J. Cortese, A. P. Gandhi, E. R. Agger, P. L. McEuen, A. C. Molnar, IEEE Trans. Biomed. Circuits Syst. 2018, 12, 1256.; C. Shi, T. Costa, J. Elloian, Y. Zhang, K. L. Shepard, IEEE Trans. Biomed. Circuits Syst. 2020, 14, 412.; C. Shi, V. Andino-Pavlovsky, S. A. Lee, T. Costa, J. Elloian, E. E. Konofagou, K. L. Shepard, Sci. Adv. 2021, 7, eabf6312.; K. Malachowski, M. Jamal, Q. Jin, B. Polat, C. J. Morris, D. H. Gracias, Nano Lett. 2014, 14, 4164.; W. Xu, Z. Qin, C. T. Chen, H. R. Kwag, Q. Ma, A. Sarkar, M. J. Buehler, D. H. Gracias, Sci. Adv. 2017, 3, e1701084.; J. Li, P. Angsantikul, W. Liu, B. Esteban-Fernández de Ávila, S. Thamphiwatana, M. Xu, E. Sandraz, X. Wang, J. Delezuk, W. Gao, L. Zhang, J. Wang, Angew. Chem., Int. Ed. 2017, 56, 2156.; Q. Liu, W. Wang, M. F. Reynolds, M. C. Cao, M. Z. Miskin, T. A. Arias, D. A. Muller, P. L. McEuen, I. Cohen, Sci. Robot. 2021, 6, eabe6663.; A. Somasundar, S. Ghosh, F. Mohajerani, L. N. Massenburg, T. Yang, P. S. Cremer, D. Velegol, A. Sen, Nat. Nanotechnol. 2019, 14, 1129.; Y. Alapan, O. Yasa, O. Schauer, J. Giltinan, A. F. Tabak, V. Sourjik, M. Sitti, Sci. Robot. 2018, 3, eaar4423.; J. Palacci, S. Sacanna, A. Abramian, J. Barral, K. Hanson, A. Y. Grosberg, D. J. Pine, P. M. Chaikin, Sci. Adv. 2015, 1, e1400214.; L. Dekanovsky, B. Khezri, Z. Rottnerova, F. Novotny, J. Plutnar, M. Pumera, Nat. Mach. Intell. 2020, 2, 711.; B. Khezri, K. Villa, F. Novotný, Z. Sofer, M. Pumera, Small 2020, 16, 2002111.; J. Ding, V. R. Challa, M. G. Prasad, F. T. Fisher, in Selected Topics in Micro/Nano-Robotics for Biomedical Applications, Springer New York, New York, NY 2013, pp. 59 – 83.; H. Zhang, Z. Qu, H. Tang, X. Wang, R. Koehler, M. Yu, C. Gerhard, Y. Yin, M. Zhu, K. Zhang, O. G. Schmidt, ACS Energy Lett. 2021, 2491.; P. Liu, A. T. Liu, D. Kozawa, J. Dong, J. F. Yang, V. B. Koman, M. Saccone, S. Wang, Y. Son, M. H. Wong, M. S. Strano, Nat. Mater. 2018, 17, 1005.; V. B. Koman, P. Liu, D. Kozawa, A. T. Liu, A. L. Cottrill, Y. Son, J. A. Lebron, M. S. Strano, Nat. Nanotechnol. 2018, 13, 819.; C. Vervacke, C. C. Bof Bufon, D. J. Thurmer, O. G. Schmidt, RSC Adv. 2014, 4, 9723.; M. Hempel, V. Schroeder, C. Park, V. B. Koman, M. Xue, E. McVay, S. Spector, M. Dubey, M. S. Strano, J. Park, J. Kong, T. Palacios, ACS Nano 2021, 15, 8803.; F. Molina-Lopez, T. Z. Gao, U. Kraft, C. Zhu, T. Öhlund, R. Pfattner, V. R. Feig, Y. Kim, S. Wang, Y. Yun, Z. Bao, Nat. Commun. 2019, 10, 2676.; N. Samardzic, M. Mionic, B. Dakic, H. Hofmann, S. Dautovic, G. Stojanovic, IEEE Trans. Electron Devices 2015, 62, 1898.; K. J. Yoon, J. W. Han, D. Il Moon, M. L. Seol, M. Meyyappan, H. J. Kim, C. S. Hwang, Nanoscale Adv. 2019, 1, 2990.; B. J. Carey, J. Z. Ou, R. M. Clark, K. J. Berean, A. Zavabeti, A. S. R. Chesman, S. P. Russo, D. W. M. Lau, Z. Q. Xu, Q. Bao, O. Kevehei, B. C. Gibson, M. D. Dickey, R. B. Kaner, T. Daeneke, K. Kalantar-Zadeh, Nat. Commun. 2017, 8, 14482.; Y. D. Kim, J. Hone, Nature 2017, 544, 167.; E. P. Yalcintas, K. B. Ozutemiz, T. Cetinkaya, L. Dalloro, C. Majidi, O. B. Ozdoganlar, Adv. Funct. Mater. 2019, 29, 1.; A. F. Demirörs, P. P. Pillai, B. Kowalczyk, B. A. Grzybowski, Nature 2013, 503, 99.; A. T. L. Tan, J. Beroz, M. Kolle, A. J. Hart, Adv. Mater. 2018, 30, 1803620.; V. Magdanz, G. Stoychev, L. Ionov, S. Sanchez, O. G. Schmidt, Angew. Chem., Int. Ed. 2014, 53, 2673.; J. Li, B. E.-F. de Ávila, W. Gao, L. Zhang, J. Wang, Sci. Robot. 2017, 2, eaam6431.; J. Li, D. J. Mooney, Nat. Rev. Mater. 2016, 1, 16071.; B. Mostaghaci, O. Yasa, J. Zhuang, M. Sitti, Adv. Sci. 2017, 4, 1700058.; A. A. Solovev, S. Sanchez, O. G. Schmidt, Nanoscale 2013, 5, 1284.; S. Cannon, J. J. Daymude, D. Randall, A. W. Richa, in Proc. 2016 ACM Symp. Princ. Distrib. Comput., ACM Press, New York, NY 2016, pp. 279 – 288.; S. Cannon, J. J. Daymude, C. Gokmen, D. Randall, A. W. Richa, in Proc. 2018 ACM Symp. Princ. Distrib. Comput., ACM, New York, NY, USA, 2018, 483 – 485.; S. Li, R. Batra, D. Brown, H.-D. Chang, N. Ranganathan, C. Hoberman, D. Rus, H. Lipson, Nature 2019, 567, 361.; A. Lamperski, N. Cowan, IEEE Trans. Autom. Control 2015, 1.; C. Lorand, P. H. Bauer, in Proc. 2003 Am. Control Conf., IEEE, Piscataway, NJ n.d., 2003 61, pp. 3323 – 3328.; A. Q. Nilles, A. Pervan, T. A. Berrueta, T. D. Murphey, S. M. LaValle, in Proc. 14th Work. Algorithmic Found. Robot. Springer, Cham, Germany 2021, pp. 210 – 226.; A. M. Turing, Proc. London Math. Soc. 1937, s2–42, 230.; S. M. LaValle, M. Egerstedt, Emergent Problems in Nonlinear Systems and Control, Springer, Berlin, Heidelberg, Germany 2009, pp. 93 – 106.; S. M. LaValle, M. B. Egerstedt, in 2007 46th IEEE Conf. Decis. Control, IEEE, Piscataway, NJ 2007, pp. 1916 – 1922.; L. C. Gerber, L. Rosenfeld, Y. Chen, S. K. Y. Tang, Lab Chip 2014, 14, 4324.; J. Park, J. M. Lim, I. Jung, S.-J. Heo, J. Park, Y. Chang, H. K. Kim, D. Jung, J. H. Yu, S. Min, S. Yoon, S.-R. Cho, T. Park, H. H. Kim, Cell 2021, 184, 1047.; J. A. Rogers, Z. Bao, M. Meier, A. Dodabalapur, O. J. A. Schueller, G. M. Whitesides, Synth. Met. 2000, 115, 5.; A. G. Kelly, T. Hallam, C. Backes, A. Harvey, A. S. Esmaeily, I. Godwin, J. Coelho, V. Nicolosi, J. Lauth, A. Kulkarni, S. Kinge, L. D. A. Siebbeles, G. S. Duesberg, J. N. Coleman, Science 2017, 356, 69.; D. B. Strukov, G. S. Snider, D. R. Stewart, R. S. Williams, Nature 2008, 453, 80.; J. J. Yang, M. D. Pickett, X. Li, D. A. A. Ohlberg, D. R. Stewart, R. S. Williams, Nat. Nanotechnol. 2008, 3, 429.; Z. Wang, H. Wu, G. W. Burr, C. S. Hwang, K. L. Wang, Q. Xia, J. J. Yang, Nat. Rev. Mater. 2020, 5, 173.; Y. N. Joglekar, S. J. Wolf, Eur. J. Phys. 2009, 30, 661.; Z. Biolek, D. Biolek, V. Biolková, Radioengineering 2009, 18, 210.; A. G. Radwan, M. A. Zidan, K. N. Salama, in Proc. Int. Conf. Microelectron. ICM IEEE, Piscataway, NJ 2010, pp. 284 – 287.; L. Chua, Nanotechnology 2013, 24, https://doi.org/10.1088/0957-4484/24/38/383001.; S. Kim, S. Choi, W. Lu, ACS Nano 2014, 8, 2369.; A. Padovani, L. Larcher, O. Pirrotta, L. Vandelli, G. Bersuker, IEEE Trans. Electron Devices 2015, 62, 1998.; W. Sun, B. Gao, M. Chi, Q. Xia, J. J. Yang, H. Qian, H. Wu, Nat. Commun. 2019, 10, 3453.; R. S. Williams, Faraday Discuss. 2019, 213, 579.; L. Cao, G. Fang, H. Cao, X. Duan, Langmuir 2019, 35, 16079.; X. D. Zhuang, Y. Chen, G. Liu, B. Zhang, K. G. Neoh, E. T. Kang, C. X. Zhu, Y. X. Li, L. J. Niu, Adv. Funct. Mater. 2010, 20, 2916.; A. H. Edwards, H. J. Barnaby, K. A. Campbell, M. N. Kozicki, W. Liu, M. J. Marinella, Proc. IEEE 2015, 103, 1004.; Y. Chen, G. Liu, C. Wang, W. Zhang, R. W. Li, L. Wang, Mater. Horizons 2014, 1, 489.; T. Fu, X. Liu, H. Gao, J. E. Ward, X. Liu, B. Yin, Z. Wang, Y. Zhuo, D. J. F. Walker, J. Joshua Yang, J. Chen, D. R. Lovley, J. Yao, Nat. Commun. 2020, 11, 1861.; T. McFarlane, Y. Bandera, B. Grant, B. Zdyrko, S. H. Foulger, J. Vilčáková, P. Sáha, J. Pfleger, Adv. Electron. Mater. 2020, 6, 2000042.; W. Qian, X. Cheng, J. Zhou, J. He, H. Li, Q. Xu, N. Li, D. Chen, Z. Yao, J. Lu, InfoMat 2020, 2, 743.; M. Qi, S. Cao, L. Yang, Q. You, L. Shi, Z. Wu, Appl. Phys. Lett. 2020, 116, 163503.; M. Hempel, V. Schröder, C. Park, M. Xue, J. Park, T. Swager, J. Kong, T. Palacios, SynCells - Electronic Microparticles For Sensing Applications, Cambridge, MA 2019.; C. W. Lee, J. M. Suh, H. W. Jang, Front. Chem. 2019, 7, 708.; S. Ammu, V. Dua, S. R. Agnihotra, S. P. Surwade, A. Phulgirkar, S. Patel, S. K. Manohar, J. Am. Chem. Soc. 2012, 134, 4553.; N. Yamazoe, G. Sakai, K. Shimanoe, Catal. Surv. from Asia 2003, 7, 63.; V. S. Turkani, D. Maddipatla, B. B. Narakathu, B. J. Bazuin, M. Z. Atashbar, Sensors Actuators A Phys. 2018, 279, 1.; A. Pervan, T. D. Murphey, in Proc. 13th Work. Algorithmic Found. Robot. Springer, Cham, Germany 2018.; R. Nishikubo, A. Saeki, J. Phys. Chem. Lett. 2018, 9, 5392.; B. W. Bequette, Process Dynamics: Modeling, Analysis, and Simulation, Prentice Hall PTR, Upper Saddle River, NJ 1998.; The MathWorks Inc., Non-adiabatic continuous stirred tank reactor: MATLAB file modeling with simulations in Simulink, can be found under https://www.mathworks.com/help/ident/ug/non-adiabatic-continuous-stirred-tank-reactor-matlab-file-modeling-with-simulations-in-simulink.html#d122e43522 (accessed: December 2021), n.d.; Q. Jin, Y. Yang, J. A. Jackson, C. Yoon, D. H. Gracias, Nano Lett. 2020, 20, 5383.; N. Kamaly, B. Yameen, J. Wu, O. C. Farokhzad, Chem. Rev. 2016, 116, 2602.; V. P. Torchilin, Nat. Rev. Drug Discov. 2014, 13, 813.; O. Veiseh, B. C. Tang, K. A. Whitehead, D. G. Anderson, R. Langer, Nat. Rev. Drug Discov. 2014, 14, 45.; T. Hoeg-Jensen, Mol. Metab. 2020, 46, 101107.; M. J. Webber, D. G. Anderson, J. Drug Target. 2015, 23, 651.; J. T. Santini, M. J. Cima, R. Langer, Nature 1999, 397, 335.

15
Academic Journal

Subject Terms: Computer Science, Engineering

File Description: application/pdf

Relation: Cafarella, Michael; Anderson, Michael; Beltagy, Iz; Cattan, Arie; Chasins, Sarah; Dagan, Ido; Downey, Doug; Etzioni, Oren; Feldman, Sergey; Gao, Tian; Hope, Tom; Huang, Kexin; Johnson, Sophie; King, Daniel; Lo, Kyle; Lou, Yuze; Shapiro, Matthew; Shen, Dinghao; Subramanian, Shivashankar; Wang, Lucy Lu; Wang, Yuning; Wang, Yitong; Weld, Daniel S.; Vo-Phamhi, Jenny; Zeng, Anna; Zou, Jiayun (2022). "Infrastructure for rapid open knowledge network development." AI Magazine 43(1): 59-68.; https://hdl.handle.net/2027.42/172012; AI Magazine; Barman, S., S. Chasins, R. Bodík, and S. Gulwani. 2016. “ Ringer: Web Automation by Demonstration.” In Proceedings of the 2016 ACM SIGPLAN International Conference on Object‐Oriented Programming, Systems, Languages, and Applications, OOPSLA 2016, part of SPLASH 2016, eds. E. Visser, and Y. Smaragdakis, 748 – 64. Amsterdam, The Netherlands: ACM. October 30–November 4, 2016.; 2019. “ Welcome to MusicBrainz! ” https://musicbrainz.org/ (accessed May 30, 2019).; GeoNames. 2019. GeoNames. http://www.geonames.org/ (accessed May 30, 2019).; Ferreira, A. A., M. A. Gonçalves, and A. H. Laender. 2012. “ A Brief Survey of Automatic Methods for Author Name Disambiguation.” SIGMOD Rec. 41 ( 2 ): 15 – 26.; Etzioni, O., M. J. Cafarella, D. Downey, S. Kok, A. Popescu, T. Shaked, S. Soderland, D. S. Weld, and A. Yates. 2004. “ Web‐Scale Information Extraction in KnowItAll: (Preliminary Results).” In Proceedings of the 13th International Conference on World Wide Web, WWW 2004, 100 – 10. New York, NY, USA; ACM. May 17–20, 2004.; Cybulska, A., and P. Vossen. 2014. “ Using a Sledgehammer to Crack a Nut? Lexical Diversity and Event Coreference Resolution.” In Proceedings of the LREC, 4545 – 52. Reykjavik: Iceland. https://aclanthology.org/L14-1646/; Cohan, A., S. Feldman, I. Beltagy, D. Downey, and D. Weld. 2020. “ SPECTER: Document‐level Representation Learning using Citation‐informed Transformers.” In Proceedings of the 58th Annual Meeting of the Association for Computational Linguistics, 2270 – 82. Association for Computational Linguistics. https://www.researchgate.net/publication/343302079_SPECTER_Document-level_Representation_Learning_using_Citationinformed_Transformers; Cattan, A., S. Johnson, D. Weld, I. Dagan, I. Beltagy, D. Downey, and T. Hope. 2021. SciCo: Hierarchical Cross‐Document Coreference for Scientific Concepts.; Cattan, A., A. Eirew, G. Stanovsky, M. Joshi, and I. Dagan. 2020. “ Streamlining Cross‐Document Coreference Resolution: Evaluation and Modeling.” https://arxiv.org/abs/2009.11032; Bizer, C. 2009. “ The Emerging Web of Linked Data.” IEEE Intelligent Systems 24 ( 5 ): 87 – 92.; Auer, S., C. Bizer, G. Kobilarov, J. Lehmann, R. Cyganiak, and Z. Ives. 2007. “ DBpedia: A Nucleus for a Web of Open Data.” In Proceedings of the 6th International The Semantic Web and 2Nd Asian Conference on Asian Semantic Web Conference, ISWC’07/ASWC’07, 722 – 35. Berlin, Heidelberg: Springer‐Verlag. https://doi.org/10.1007/978-3-540-76298-0_52; Zeng, A., I. Sabek, and M. Cafarella. 2021. Unpublished Analysis of Wikidata Dumps.; Wang, L. L., K. Lo, Y. Chandrasekhar, R. Reas, J. Yang, D. Burdick, D. Eide, K. Funk, Y. Katsis, R. M. Kinney, Y. Li, Z. Liu, W. Merrill, P. Mooney, D. A. Murdick, D. Rishi, J. Sheehan, Z. Shen, B. Stilson, A. D. Wade, K. Wang, N. X. R. Wang, C. Wilhelm, B. Xie, D. M. Raymond, D. S. Weld, O. Etzioni, and S. Kohlmeier. 2020. “ CORD‐19: The COVID‐19 Open Research Dataset.” In Proceedings of the 1st Workshop on NLP for COVID‐19 at ACL 2020. Association for Computational Linguistics; Seattle, WA. https://arxiv.org/abs/2004.10706; Vrandečić, D., and M. Krötzsch 2014. “ Wikidata: A Free Collaborative Knowledgebase.” Communications of the ACM 57 ( 10 ): 78 – 85.; TheUniProtConsortium. 2018. “ UniProt: A Worldwide Hub of Protein Knowledge.” Nucleic Acids Research 47: D506 – 15.; Suchanek, F. M., G. Kasneci, and G. Weikum. 2007. “ Yago: A Core of Semantic Knowledge.” In Proceedings of the 16th International Conference on World Wide Web, WWW’07, 697 – 706. New York, NY, USA: ACM. https://dblp.org/rec/conf/www/SuchanekKW07.html?view=bibtex; Subramanian, S., D. King, D. Downey, and S. Feldman. 2021. “ S2AND: A Benchmark and Evaluation System for Author Name Disambiguation.”; Singhal, A. 2012. “ Introducing the Knowledge Graph: Things, Not Strings.” https://googleblog.blogspot.com/2012/05/introducing‐knowledge‐graph‐things‐not.html (accessed May 30, 2019).; Shen, Z., R. Zhang, M. Dell, B. C. G. Lee, J. Carlson, and W. Li. 2021. LayoutParser: A Unified Toolkit for Deep Learning Based Document Image Analysis.; Roberts, K., T. Alam, S. Bedrick, D. Demner‐Fushman, K. Lo, I. Soboroff, E. Voorhees, L. L. Wang, and W. Hersh. 2020. “ TREC‐COVID: Rationale and Structure of an Information Retrieval Shared Task for COVID‐19.” Journal of the American Medical Informatics Association: JAMIA 27: 1431 – 6.; Neumann, M., Z. Shen, and S. Skjonsberg. 2021. PAWLS: PDF Annotation With Labels and Structure.

20
Academic Journal

File Description: application/pdf

Relation: Salamon, Janos; Blume, Brian D.; Orosz, Gábor; Nagy, Tamás (2021). "The interplay between the level of voluntary participation and supervisor support on trainee motivation and transfer." Human Resource Development Quarterly 32(4): 459-481.; https://hdl.handle.net/2027.42/171051; Human Resource Development Quarterly; Podsakoff, P. M., MacKenzie, S. B., & Podsakoff, N. P. ( 2012 ). Sources of method bias in social science research and recommendations on how to control it. Annual Review of Psychology, 63, 539 – 569. https://doi.org/10.1146/annurev-psych-120710-100452; Massenberg, A.‐C., Schulte, E.‐M., & Kauffeld, S. ( 2017 ). Never too early: Learning transfer system factors affecting motivation to transfer before and after training programs. Human Resource Development Quarterly, 28, 55 – 85. https://doi.org/10.1002/hrdq.21256; Mathieu, J. E., Tannenbaum, S. I., & Salas, E. ( 1992 ). Influences of individual and situational characteristics on measures of training effectiveness. Academy of Management Journal, 35, 828 – 847. https://doi.org/10.5465/256317; Nijman, D.‐J., & Gelissen, J. ( 2011 ). Direct and indirect effects of supervisor support on transfer of training. In R. F. Poell & M. van Woerkom (Eds.), Supporting workplace learning (pp. 89 – 106 ). Dordrecht, Netherlands: Springer. https://doi.org/10.1007/978-90-481-9109-3_6; Noe, R. A., & Schmitt, N. ( 1986 ). The influence of trainee attitudes on training effectiveness: Test of a model. Personnel Psychology, 39, 497 – 523. https://doi.org/10.1111/j.1744-6570.1986.tb00950.x; Paluck, E. L. ( 2006 ). Diversity training and intergroup contact: A call to action research. Journal of Social Issues, 62, 577 – 595. https://doi.org/10.1111/j.1540-4560.2006.00474.x; R Core Team. ( 2020 ). R: A language and environment for statistical computing. Vienna, Austria: R Foundation for Statistical Computing Retrieved from https://www.R-project.org/; Reeve, J. ( 2002 ). Self‐determination theory applied to educational settings. In E. L. Deci & R. M. Ryan (Eds.), Handbook of self‐determination research (Vol. 2, pp. 183 – 204 ). Rochester, NY: The University of Rochester Press.; Regulation, G. D. P. ( 2016 ). Regulation (EU) 2016/679 of the European Parliament and of the Council of 27 April 2016 on the protection of natural persons with regard to the processing of personal data and on the free movement of such data, and repealing Directive 95/46. Official Journal of the European Union, 59, 1 – 88.; Reio, T. G. ( 2010 ). The threat of common method variance bias to theory building. Human Resource Development Review, 9, 405 – 411. https://doi.org/10.1177/1534484310380331; Renaud, S., Lakhdari, M., & Morin, L. ( 2004 ). The determinants of participation in non‐mandatory training. Relations Industrielles/Industrial Relations, 59, 724 – 743. https://doi.org/10.7202/011336ar; Richter, S., & Kauffeld, S. ( 2020 ). Beyond supervisors’ support: influencing (international) technical training transfer. European Journal of Training and Development, 44, 391 – 403. https://doi.org/10.1108/EJTD-08-2019-0141.; Rosen, C. C., Ferris, D. L., Brown, D. J., Chen, Y., & Yan, M. ( 2014 ). Perceptions of organizational politics: A need satisfaction paradigm. Organization Science, 25, 1026 – 1055. https://doi.org/10.1287/orsc.2013.0857; Ryan, R. M., & Deci, E. L. ( 2000 ). Self‐determination theory and the facilitation of intrinsic motivation, social development, and well‐being. American Psychologist, 55, 68 – 78. https://doi.org/10.1037//0003-066X.55.1.68; Ryan, R. M., & Deci, E. L. ( 2017 ). Self‐determination theory: Basic psychological needs in motivation, development, and wellness. New York: Guilford Press.; Ryman, D. H., & Biersner, R. J. ( 1975 ). Attitudes predictive of diving training success. Personnel Psychology, 28, 181 – 188. https://doi.org/10.1111/j.1744-6570.1975.tb01379.x; Salas, E., Tannenbaum, S. I., Kraiger, K., & Smith‐Jentsch, K. A. ( 2012 ). The science of training and development in organizations: What matters in practice. Psychological Science in the Public Interest, 13, 74 – 101. https://doi.org/10.1177/1529100612436661; Siemsen, E., Roth, A., & Oliveira, P. ( 2010 ). Common method bias in regression models with linear, quadratic, and interaction effects. Organizational Research Methods, 13, 456 – 476. https://doi.org/10.1177/1094428109351241; Tai, W.‐T. ( 2006 ). Effects of training framing, general self‐efficacy and training motivation on trainees’ training effectiveness. Personnel Review, 35, 51 – 65. https://doi.org/10.1108/00483480610636786; Taylor, P. J., Russ‐Eft, D. F., & Taylor, H. ( 2009 ). Transfer of management training from alternative perspectives. Journal of Applied Psychology, 94, 104 – 121. https://doi.org/10.1037/a0013006; Tesluk, P. E., Farr, J. L., Mathieu, J. E., & Vance, R. J. ( 1995 ). Generalization of employee involvement training to the job setting: Individual and situational effects. Personnel Psychology, 48, 607 – 632. https://doi.org/10.1111/j.1744-6570.1995.tb01773.x; Tsai, W., & Tai, W. ( 2003 ). Perceived importance as a mediator of the relationship between training assignment and training motivation. Personnel Review, 32, 151 – 163. https://doi.org/10.1108/00483480310460199; Vansteenkiste, M., Aelterman, N., De Muynck, G.‐J., Haerens, L., Patall, E., & Reeve, J. ( 2018 ). Fostering personal meaning and self‐relevance: A self‐determination theory perspective on internalization. The Journal of Experimental Education, 86, 30 – 49. https://doi.org/10.1080/00220973.2017.1381067; Vansteenkiste, M., Simons, J., Lens, W., Sheldon, K. M., & Deci, E. L. ( 2004 ). Motivating learning, performance, and persistence: The synergistic effects of intrinsic goal contents and autonomy‐supportive contexts. Journal of Personality and Social Psychology, 87, 246 – 260. https://doi.org/10.1037/0022-3514.87.2.246; Vroom, V. H. ( 1964 ). Work and motivation. New York: Wiley.; Warr, P., Allan, C., & Birdi, K. ( 1999 ). Predicting three levels of training outcome. Journal of Occupational and Organizational Psychology, 72, 351 – 375. https://doi.org/10.1348/096317999166725; Wickham, H., Averick, M., Bryan, J., Chang, W., McGowan, L., François, R., … Yutani, H. ( 2019 ). Welcome to the Tidyverse. Journal of Open Source Software, 4, 1686. https://doi.org/10.21105/joss.01686; Yang, B., Wang, Y., & Drewry, A. W. ( 2009 ). Does it matter where to conduct training? Accounting for cultural factors. Human Resource Management Review, 19, 324 – 333. https://doi.org/10.1016/j.hrmr.2009.03.002; Yaghi, A., & Bates, R. ( 2020 ). The role of supervisor and peer support in training transfer in institutions of higher education. International Journal of Training and Development, 24, 89 – 104. https://doi.org/10.1111/ijtd.12173.; Yelon, S., Sheppard, L., Sleight, D., & Ford, J. K. ( 2004 ). Intention to transfer: How do autonomous professionals become motivated to use new ideas? Performance Improvement Quarterly, 17, 82 – 103. https://doi.org/10.1111/j.1937-8327.2004.tb00309.x; Yelon, S. L., & Ford, J. K. ( 1999 ). Pursuing a multidimensional view of transfer. Performance Improvement Quarterly, 12, 55 – 78. https://doi.org/10.1111/j.1937-8327.1999.tb00138.x; Alvarez, K., Salas, E., & Garofano, C. M. ( 2004 ). An integrated model of training evaluation and effectiveness. Human Resource Development Review, 3, 385 – 416. https://doi.org/10.1177/1534484304270820; Appelbaum, E., Bailey, T., Berg, P., & Kalleberg, A. L. ( 2000 ). Manufacturing advantage: Why high‐performance work systems pay off. Ithaca, NY: Cornell University Press.; Baldwin, T. T., & Ford, J. K. ( 1988 ). Transfer of training: A review and directions for future research. Personnel Psychology, 41, 63 – 105. https://doi.org/10.1111/j.1744-6570.1988.tb00632.x; Baldwin, T. T., Ford, J. K., & Blume, B. D. ( 2009 ). Transfer of training 1988–2008: An updated review and new agenda for future research. In G. P. Hodgkinson & J. K. Ford (Eds.), International review of industrial and organizational psychology (Vol. 24, pp. 41 – 70 ). Chichester, UK: Wiley.; Baldwin, T. T., Ford, J. K., & Blume, B. D. ( 2017 ). The state of transfer of training research: Moving toward more consumer‐centric inquiry. Human Resource Development Quarterly, 28, 17 – 28. https://doi.org/10.1002/hrdq.21278; Baldwin, T. T., & Magjuka, R. J. ( 1991 ). Organizational training and signals of importance: Linking pretraining perceptions to intentions to transfer. Human Resource Development Quarterly, 2, 25 – 36. https://doi.org/10.1002/hrdq.3920020106; Baldwin, T. T., Magjuka, R. J., & Loher, B. T. ( 1991 ). The perils of participation: Effects of choice of training on trainee motivation and learning. Personnel Psychology, 44, 51 – 65. https://doi.org/10.1111/j.1744-6570.1991.tb00690.x; Beaton, D. E., Bombardier, C., Guillemin, F., & Ferraz, M. B. ( 2000 ). Guidelines for the process of cross‐cultural adaptation of self‐report measures. Spine, 25, 3186 – 3191. https://doi.org/10.1097/00007632-200012150-00014; Bezrukova, K., Spell, C. S., Perry, J. L., & Jehn, K. A. ( 2016 ). A meta‐analytical integration of over 40 years of research on diversity training evaluation. Psychological Bulletin, 142, 1227 – 1274. https://doi.org/10.1037/bul0000067; Blair, G., Cooper, J., Coppock, A., Humphreys, M., & Sonnet, L. ( 2020 ). Estimatr: Fast estimators for design‐based inference. R Package version 0.22.0. Retrieved from https://CRAN.R-project.org/package=estimatr; Blumberg, M., & Pringle, C. D. ( 1982 ). The missing opportunity in organizational research: Some implications for a theory of work performance. Academy of Management Review, 7, 560 – 569. https://doi.org/10.5465/amr.1982.4285240; Blume, B. D., Ford, J. K., Baldwin, T. T., & Huang, J. L. ( 2010 ). Transfer of training: A meta‐analytic review. Journal of Management, 36, 1065 – 1105. https://doi.org/10.1177/0149206309352880; Blume, B. D., Ford, J. K., Surface, E. A., & Olenick, J. ( 2019 ). A dynamic model of training transfer. Human Resource Management Review, 29, 270 – 283. https://doi.org/10.1016/j.hrmr.2017.11.004; Breusch, T. S., & Pagan, A. R. ( 1980 ). The Lagrange multiplier test and its applications to model specification in econometrics. The Review of Economic Studies, 47, 239. https://doi.org/10.2307/2297111; Broad, M. L. ( 1997 ). Overview of transfer of training: From learning to performance. Performance Improvement Quarterly, 10, 7 – 21. https://doi.org/10.1111/j.1937-8327.1997.tb00046.x; Broad, M. L. ( 2003 ). Managing the organizational learning transfer system. In E. F. Holton & T. T. Baldwin (Eds.), Improving learning transfer in organizations (pp. 97 – 118 ). San Francisco, CA: Jossey‐Bass.; Burke, L. A., & Hutchins, H. M. ( 2007 ). Training transfer: An integrative literature review. Human Resource Development Review, 6, 263 – 296. https://doi.org/10.1177/1534484307303035; Chen, H.‐C., Holton, E. F., III, & Bates, R. A. ( 2006 ). Situational and demographic influences on transfer system characteristics in organizations. Performance Improvement Quarterly, 19, 7 – 26. https://doi.org/10.1111/j.1937-8327.2006.tb00375.x; Cheng, E. W. L., & Hampson, I. ( 2008 ). Transfer of training: A review and new insights. International Journal of Management Reviews, 10, 327 – 341. https://doi.org/10.1111/j.1468-2370.2007.00230.x; Chiaburu, D. S., Van Dam, K., & Hutchins, H. M. ( 2010 ). Social support in the workplace and training transfer: A longitudinal analysis: Social support and training transfer. International Journal of Selection and Assessment, 18, 187 – 200. https://doi.org/10.1111/j.1468-2389.2010.00500.x; Colquitt, J. A., LePine, J. A., & Noe, R. A. ( 2000 ). Toward an integrative theory of training motivation: A meta‐analytic path analysis of 20 years of research. Journal of Applied Psychology, 85, 678 – 707. https://doi.org/10.1037/0021-9010.85.5.678; Curado, C., Henriques, P. L., & Ribeiro, S. ( 2015 ). Voluntary or mandatory enrollment in training and the motivation to transfer training: Motivation to transfer training. International Journal of Training and Development, 19, 98 – 109. https://doi.org/10.1111/ijtd.12050; De Rijdt, C., Stes, A., van der Vleuten, C., & Dochy, F. ( 2013 ). Influencing variables and moderators of transfer of learning to the workplace within the area of staff development in higher education: Research review. Educational Research Review, 8, 48 – 74. https://doi.org/10.1016/j.edurev.2012.05.007; Deci, E. L., Eghrari, H., Patrick, B. C., & Leone, D. R. ( 1994 ). Facilitating internalization: The self‐determination theory perspective. Journal of Personality, 62, 119 – 142. https://doi.org/10.1111/j.1467-6494.1994.tb00797.x; Deci, E. L., Olafsen, A. H., & Ryan, R. M. ( 2017 ). Self‐determination theory in work organizations: The state of a science. Annual Review of Organizational Psychology and Organizational Behavior, 4, 19 – 43. https://doi.org/10.1146/annurev-orgpsych-032516-113108; Deci, E. L., & Ryan, R. M. ( 2000 ). The “what” and “why” of goal pursuits: Human needs and the self‐determination of behavior. Psychological Inquiry, 11, 227 – 268. https://doi.org/10.1207/S15327965PLI1104_01; Deci, E. L., & Ryan, R. M. ( 2012 ). Self‐determination theory. In P. A. M. Van Lange, A. W. Kruglanski, & E. T. Higgins (Eds.), Handbook of theories of social psychology: Volume 1 (pp. 416 – 436 ). Sage Publications Ltd.; Ellis, C., & Sonnenfeld, J. A. ( 1994 ). Diverse approaches to managing diversity. Human Resource Management, 33, 79 – 109. https://doi.org/10.1002/hrm.3930330106; Ford, J. K. ( 2020 ). Learning in organizations: An evidence‐based approach. New York: Routledge.; Ford, J. K., Baldwin, T. T., & Prasad, J. ( 2018 ). Transfer of training: The known and the unknown. Annual Review of Organizational Psychology and Organizational Behavior, 5, 201 – 225. https://doi.org/10.1146/annurev-orgpsych-032117-104443; Fox, J., & Weisberg, S. ( 2011 ). An R companion to applied regression ( 2nd ed. ). Thousand Oaks, CA: Sage publications.; Gagné, M., & Deci, E. L. ( 2005 ). Self‐determination theory and work motivation. Journal of Organizational Behavior, 26, 331 – 362. https://doi.org/10.1002/job.322; Gagné, M., Forest, J., Vansteenkiste, M., Crevier‐Braud, L., van den Broeck, A., Aspeli, A. K., Bellerose, J., Benabou, C., Chemolli, E., Güntert, S. T., Halvari, H., Indiyastuti, D. L., Johnson, P. A., Molstad, M. H., Naudin, M., Ndao, A., Olafsen, A. H., Roussel, P., Wang, Z., & Westbye, C. ( 2015 ). The multidimensional work motivation scale: Validation evidence in seven languages and nine countries. European Journal of Work and Organizational Psychology, 24, 178 – 196. https://doi.org/10.1080/1359432X.2013.877892; Garavan, T., McCarthy, A., Lai, Y., Murphy, K., Sheehan, M., & Carbery, R. ( 2020 ). Training and organisational performance: A meta‐analysis of temporal, institutional, and organisational context moderators. Human Resource Management Journal, 31, 1 – 26. https://doi.org/10.1111/1748-8583.12284; Gegenfurtner, A., Knogler, M., & Schwab, S. ( 2020 ). Transfer interest: Measuring interest in training content and interest in training transfer. Human Resource Development International, 23, 146 – 167. https://doi.org/10.1080/13678868.2019.1644002; Gegenfurtner, A., Könings, K. D., Kosmajac, N., & Gebhardt, M. ( 2016 ). Voluntary or mandatory training participation as a moderator in the relationship between goal orientations and transfer of training: Voluntary or mandatory training participation. International Journal of Training and Development, 20, 290 – 301. https://doi.org/10.1111/ijtd.12089; Gegenfurtner, A., Veermans, K., Festner, D., & Gruber, H. ( 2009 ). Integrative literature review: Motivation to transfer training: An integrative literature review. Human Resource Development Review, 8, 403 – 423. https://doi.org/10.1177/1534484309335970; Govaerts, N., & Dochy, F. ( 2014 ). Disentangling the role of the supervisor in transfer of training. Educational Research Review, 12, 77 – 93. https://doi.org/10.1016/j.edurev.2014.05.002; Govaerts, N., Kyndt, E., Vreye, S., & Dochy, F. ( 2017 ). A supervisors’ perspective on their role in transfer of training. Human Resource Development Quarterly, 28, 515 – 552. https://doi.org/10.1002/hrdq.21286; Hair, J. F., Black, W. C., Babin, B. J., & Anderson, R. E. ( 2018 ). Multivariate data analysis ( 8th ed. ). Andover, Hampshire: Cengage.; Hicks, W. D., & Klimoski, R. J. ( 1987 ). Entry into training programs and its effects on training outcomes: A field experiment. Academy of Management Journal, 30, 542 – 552. https://doi.org/10.5465/256013; Holton, E. F., Bates, R. A., Seyler, D. L., & Carvalho, M. B. ( 1997 ). Toward construct validation of a transfer climate instrument. Human Resource Development Quarterly, 8, 95 – 113. https://doi.org/10.1002/hrdq.3920080203; House, J. ( 1981 ). Work stress and social support. Reading, MA: Addison‐Wesley.; Huang, J. L., Blume, B. D., Ford, J. K., & Baldwin, T. T. ( 2015 ). A tale of two transfers: Disentangling maximum and typical transfer and their respective predictors. Journal of Business and Psychology, 30, 709 – 732. https://doi.org/10.1007/s10869-014-9394-1; Hughes, A. M., Zajac, S., Woods, A. L., & Salas, E. ( 2020 ). The role of work environment in training sustainment: A meta‐analysis. Human Factors: The Journal of the Human Factors and Ergonomics Society, 62, 166 – 183. https://doi.org/10.1177/0018720819845988; Jacot, A., Raemdonck, I., & Frenay, M. ( 2015 ). A review of motivational constructs in learning and training transfer. Zeitschrift für Erziehungswissenschaft, 18, 201 – 219. https://doi.org/10.1007/s11618-014-0599-x; Könings, K. D., Seidel, T., & van Merriënboer, J. J. G. ( 2014 ). Participatory design of learning environments: Integrating perspectives of students, teachers, and designers. Instructional Science, 42, 1 – 9. https://doi.org/10.1007/s11251-013-9305-2; Kraiger, K., & Ford, J. K. ( 2020 ). The science of workplace instruction: Learning and development applied to work. Annual Review of Organizational Psychology and Organizational Behavior, 8, 45 – 72. https://doi.org/10.1146/annurev-orgpsych-012420-060109; Lacerenza, C. N., Reyes, D. L., Marlow, S. L., Joseph, D. L., & Salas, E. ( 2017 ). Leadership training design, delivery, and implementation: A meta‐analysis. Journal of Applied Psychology, 102, 1686 – 1718. https://doi.org/10.1037/apl0000241; Laker, D. R., & Powell, J. L. ( 2011 ). The differences between hard and soft skills and their relative impact on training transfer. Human Resource Development Quarterly, 22, 111 – 122. https://doi.org/10.1002/hrdq.20063; Lancaster, S., & Di Milia, L. ( 2015 ). Developing a supportive learning environment in a newly formed organisation. Journal of Workplace Learning, 27, 442 – 456. https://doi.org/10.1108/JWL-08-2014-0061; Lancaster, S., Di Milia, L., & Cameron, R. ( 2013 ). Supervisor behaviours that facilitate training transfer. Journal of Workplace Learning, 25, 6 – 22. https://doi.org/10.1108/13665621311288458; Long, J. S., & Ervin, L. H. ( 2000 ). Using heteroscedasticity consistent standard errors in the linear regression model. The American Statistician, 54, 217 – 224. https://doi.org/10.1080/00031305.2000.10474549; Machin, M. A., & Treloar, C. A. ( 2004 ). Predictors of motivation to learn when training is mandatory. In Proceedings of the 39th Australian Psychological Society annual conference: Psychological science in action (pp. 157 – 161 ). Australian Psychological Society.