Solving Decision-Dependent Games by Learning From Feedback

Killian Wood;Ahmed S. Zamzam;Emiliano Dall'Anese
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Abstract

This paper tackles the problem of solving stochastic optimization problems with a decision-dependent distribution in the setting of stochastic strongly-monotone games and when the distributional dependence is unknown. A two-stage approach is proposed, which initially involves estimating the distributional dependence on decision variables, and subsequently optimizing over the estimated distributional map. The paper presents guarantees for the approximation of the cost of each agent. Furthermore, a stochastic gradient-based algorithm is developed and analyzed for finding the Nash equilibrium in a distributed fashion. Numerical simulations are provided for a novel electric vehicle charging market formulation using real-world data.
通过从反馈中学习来解决依赖决策的游戏
本文探讨了在强单调随机博弈背景下,当分布依赖性未知时,如何解决决策依赖分布的随机优化问题。本文提出了一种两阶段方法,即首先估计决策变量的分布依赖性,然后在估计的分布图上进行优化。论文提出了每个代理成本近似值的保证。此外,还开发并分析了一种基于随机梯度的算法,用于以分布式方式寻找纳什均衡。本文还利用真实世界的数据,对新型电动汽车充电市场模型进行了数值模拟。
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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