扭曲期望下的分布鲁棒优化

Jun Cai, Jonathan Yu-Meng Li, Tiantian Mao
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引用次数: 6

摘要

非风险中立的决策者可能通过扭曲客观概率来反映他们的风险态度来评估期望值,这种现象被称为扭曲预期。这一概念被广泛应用于行为经济学、保险、金融和其他商业领域。结果表明,模糊性厌恶者可以像风险厌恶者一样优化决策,其风险态度表现为凸扭曲函数。这一发现说明了为什么即使是非风险厌恶型决策者,比如那些在著名的累积前景理论中研究过的人,在面对客观概率的不确定性时,也可能认为采取风险厌恶型决策是最佳选择。利用这一发现,作者表明,一大类涉及使用扭曲期望的分布鲁棒优化问题可以作为凸规划可跟踪地解决。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distributionally Robust Optimization under Distorted Expectations
Optimal Decision Making Under Distorted Expectation with Partial Distribution Information Decision makers who are not risk neutral may evaluate expected values by distorting objective probabilities to reflect their risk attitudes, a phenomenon known as distorted expectations. This concept is widely applied in behavioral economics, insurance, finance, and other business domains. In “Distributionally Robust Optimization Under Distorted Expectations,” Cai, Li, and Mao study how decision makers using distorted expectations can optimize their decisions when only partial information about objective probabilities is available. They show that decision makers who are ambiguity averse can optimize their decisions as if they are risk averse with their risk attitudes characterized by a convex distortion function. This finding demonstrates why even non–risk-averse decision makers, such as those studied in the celebrated cumulative prospect theory, may consider it optimal to take risk-averse decisions when facing uncertainty about objective probabilities. Leveraging this finding, the authors show that a large class of distributionally robust optimization problems involving the use of distorted expectations can be tractably solved as convex programs.
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