Optimizing distortion riskmetrics with distributional uncertainty

IF 2.2 2区 数学 Q2 COMPUTER SCIENCE, SOFTWARE ENGINEERING Mathematical Programming Pub Date : 2024-07-29 DOI:10.1007/s10107-024-02128-6
Silvana M. Pesenti, Qiuqi Wang, Ruodu Wang
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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 to convert an optimization of a non-convex distortion riskmetric with distributional uncertainty to a convex one induced from the concave envelope of the distortion function, leading to practical tractability. A sufficient condition to the unifying equivalence result is the novel notion of closedness under concentration, a variation of which is also shown to be necessary for the equivalence. 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, Yaari’s dual utility, and differences between distortion risk measures, under various forms of distributional uncertainty. We illustrate our theoretical results via applications to portfolio optimization, optimization under moment constraints, and preference robust optimization.

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优化具有分布不确定性的扭曲风险度量
具有分布不确定性的扭曲风险度量的优化在金融和运筹学中有着广泛的应用。扭曲风险度量包括许多常用的风险度量和偏差度量,它们不一定是单调或凸的。我们的核心发现之一是一个统一结果,它允许将具有分布不确定性的非凸扭曲风险度量的优化转换为由扭曲函数的凹包络诱导的凸风险度量的优化,从而实现实用的可操作性。统一等价结果的充分条件是集中下的封闭性这一新颖概念,其变体也被证明是等价的必要条件。我们的结果包括许多优化文献中研究得很透彻的特例,包括但不限于在各种形式的分布不确定性下优化概率、风险价值、预期缺口、Yaari 双效用以及扭曲风险度量之间的差异。我们通过应用于投资组合优化、矩约束条件下的优化和偏好稳健优化来说明我们的理论结果。
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来源期刊
Mathematical Programming
Mathematical Programming 数学-计算机:软件工程
CiteScore
5.70
自引率
11.10%
发文量
160
审稿时长
4-8 weeks
期刊介绍: Mathematical Programming publishes original articles dealing with every aspect of mathematical optimization; that is, everything of direct or indirect use concerning the problem of optimizing a function of many variables, often subject to a set of constraints. This involves theoretical and computational issues as well as application studies. Included, along with the standard topics of linear, nonlinear, integer, conic, stochastic and combinatorial optimization, are techniques for formulating and applying mathematical programming models, convex, nonsmooth and variational analysis, the theory of polyhedra, variational inequalities, and control and game theory viewed from the perspective of mathematical programming.
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