Inverse Optimization of Convex Risk Functions

Jonathan Yu-Meng Li
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引用次数: 14

Abstract

The theory of convex risk functions has now been well established as the basis for identifying the families of risk functions that should be used in risk-averse optimization problems. Despite its theoretical appeal, the implementation of a convex risk function remains difficult, because there is little guidance regarding how a convex risk function should be chosen so that it also well represents a decision maker’s subjective risk preference. In this paper, we address this issue through the lens of inverse optimization. Specifically, given solution data from some (forward) risk-averse optimization problem (i.e., a risk minimization problem with known constraints), we develop an inverse optimization framework that generates a risk function that renders the solutions optimal for the forward problem. The framework incorporates the well-known properties of convex risk functions—namely, monotonicity, convexity, translation invariance, and law invariance—as the general information about candidate risk functions, as well as feedback from individuals—which include an initial estimate of the risk function and pairwise comparisons among random losses—as the more specific information. Our framework is particularly novel in that unlike classical inverse optimization, it does not require making any parametric assumption about the risk function (i.e., it is nonparametric). We show how the resulting inverse optimization problems can be reformulated as convex programs and are polynomially solvable if the corresponding forward problems are polynomially solvable. We illustrate the imputed risk functions in a portfolio selection problem and demonstrate their practical value using real-life data. This paper was accepted by Yinyu Ye, optimization.
凸风险函数的逆优化
凸风险函数理论现在已经被很好地建立为识别风险函数族的基础,这些风险函数族应该用于风险规避优化问题。尽管在理论上很有吸引力,但凸风险函数的实现仍然很困难,因为关于如何选择凸风险函数以使其也能很好地代表决策者的主观风险偏好的指导很少。在本文中,我们通过逆优化的镜头来解决这个问题。具体来说,给定来自某些(正向)风险规避优化问题(即具有已知约束的风险最小化问题)的解决方案数据,我们开发了一个反向优化框架,该框架生成一个风险函数,使解决方案对正向问题具有最优性。该框架结合了凸风险函数的众所周知的特性——即单调性、凸性、平移不变性和律不变性——作为候选风险函数的一般信息,以及来自个体的反馈——其中包括风险函数的初始估计和随机损失之间的两两比较——作为更具体的信息。我们的框架特别新颖,因为与经典的逆优化不同,它不需要对风险函数做出任何参数假设(即,它是非参数的)。我们展示了如果相应的正向问题是多项式可解的,那么由此产生的逆优化问题如何可以被重新表述为凸规划,并且是多项式可解的。我们举例说明了一个投资组合选择问题中的估算风险函数,并用实际数据证明了它们的实用价值。论文被叶银玉接受,优化。
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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