A Modified Exchange Algorithm For Distributional Robust Optimization And Applications In Risk Management

INTERNATIONAL TRANSACTIONS IN OPERATIONAL RESEARCH(2022)

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摘要
Convex semi-definite semi-infinite programming problems (SDSIP) represent a special class of distributionally robust optimization (DRO) problems with a wide range of applications in engineering and economics. In this paper, we propose a modified exchange algorithm for convex SDSIP that arises from DRO with matrix moment constraints. We first explore the convergence results of the modified exchange algorithm and perform the efficiency analysis based on a set of benchmark tests. In addition, we apply the SDSIP framework to investigate an optimized certainty bound risk with an ambiguity uncertainty set and implement the algorithm to solve a practical risk minimization problem in portfolio selection. The empirical results show both the efficiency of the algorithm and the robustness of the risk measure.
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关键词
semi&#8208, definite semi&#8208, infinite programming, exchange method, distributionally robust optimization, convergence analysis, worst optimized certainty equivalent risk
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