随机变分不等式问题的分布鲁棒期望残差最小化

A. Hori, Yuya Yamakawa, N. Yamashita
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摘要

随机变分不等式问题(SVIP)是一种包含随机变量的均衡模型,已广泛应用于经济和工程等各个领域。期望残差最小化(Expected residual minimization, ERM)是为获得SVIP的合理解而建立的模型,其目标函数是SVIP的一个合适的优点函数的期望值。然而,ERM仅限于预先知道分布的情况。我们扩展了ERM,以确保在不确定分布下获得SVIP的鲁棒解(扩展的ERM被称为分布鲁棒期望残差最小化(DRERM),其中最坏情况分布来自期望值和方差分别取相同样本均值和方差的概率度量集)。在适当的假设条件下,我们证明了DRERM可以重新表述为确定性凸非线性半定规划,以避免数值积分。
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 expected residual minimization for stochastic variational inequality problems
The stochastic variational inequality problem (SVIP) is an equilibrium model that includes random variables and has been widely applied in various fields such as economics and engineering. Expected residual minimization (ERM) is an established model for obtaining a reasonable solution for the SVIP, and its objective function is an expected value of a suitable merit function for the SVIP. However, the ERM is restricted to the case where the distribution is known in advance. We extend the ERM to ensure the attainment of robust solutions for the SVIP under the uncertainty distribution (the extended ERM is referred to as distributionally robust expected residual minimization (DRERM), where the worst-case distribution is derived from the set of probability measures in which the expected value and variance take the same sample mean and variance, respectively). Under suitable assumptions, we demonstrate that the DRERM can be reformulated as a deterministic convex nonlinear semidefinite programming to avoid numerical integration.
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