Optimizing Distortion Riskmetrics With Distributional Uncertainty

Silvana M. Pesenti, Qiuqi Wang, Ruodu Wang
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引用次数: 8

Abstract

Optimization of distortion riskmetrics with distributional uncertainty has wide applications in finance and operations research. Distortion riskmetrics include many commonly applied risk measures and deviation measures, which are not necessarily monotone or convex. One of our central findings is a unifying result that allows us to convert an optimization of a non-convex distortion riskmetric with distributional uncertainty to a convex one, leading to great tractability. The key to the unifying equivalence result is the novel notion of closedness under concentration of sets of distributions. Our results include many special cases that are well studied in the optimization literature, including but not limited to optimizing probabilities, Value-at-Risk, Expected Shortfall, and Yaari's dual utility under various forms of distributional uncertainty. We illustrate our theoretical results via applications to portfolio optimization, optimization under moment constraints, and preference robust optimization.
具有分布不确定性的失真风险度量优化
具有分布不确定性的失真风险指标优化在金融和运筹学研究中有着广泛的应用。失真风险度量包括许多常用的风险度量和偏差度量,它们不一定是单调的或凸的。我们的中心发现之一是一个统一的结果,它允许我们将具有分布不确定性的非凸失真风险度量的优化转换为凸风险度量,从而具有很大的可跟踪性。统一等价结果的关键是在分布集集中下的封闭性的新概念。我们的结果包括许多在优化文献中得到很好研究的特殊情况,包括但不限于优化概率、风险价值、预期不足和各种形式的分布不确定性下的Yaari的对偶效用。我们通过应用组合优化、矩约束下的优化和偏好鲁棒优化来说明我们的理论结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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