Academic Journal

Model Aggregation for Risk Evaluation and Robust Optimization

Bibliographic Details
Title: Model Aggregation for Risk Evaluation and Robust Optimization
Authors: Mao, Tiantian, Wang, Ruodu, Wu, Qinyu
Publication Year: 2022
Collection: ArXiv.org (Cornell University Library)
Subject Terms: Quantitative Finance - Risk Management
Description: We introduce a new approach for prudent risk evaluation based on stochastic dominance, which will be called the model aggregation (MA) approach. In contrast to the classic worst-case risk (WR) approach, the MA approach produces not only a robust value of risk evaluation but also a robust distributional model which is useful for modeling, analysis and simulation, independent of any specific risk measure. The MA approach is easy to implement even if the uncertainty set is non-convex or the risk measure is computationally complicated, and it provides great tractability in distributionally robust optimization. Via an equivalence property between the MA and the WR approaches, new axiomatic characterizations are obtained for a few classes of popular risk measures. In particular, the Expected Shortfall (ES, also known as CVaR) is the unique risk measure satisfying the equivalence property for convex uncertainty sets among a very large class. The MA approach for Wasserstein and mean-variance uncertainty sets admits explicit formulas for the obtained robust models, and the new approach is illustrated with various risk measures and examples from portfolio optimization.
Document Type: text
Language: unknown
Relation: http://arxiv.org/abs/2201.06370
Availability: http://arxiv.org/abs/2201.06370
Accession Number: edsbas.37A9598A
Database: BASE
Description
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