报告人:刘卫东
报告地点:腾讯会议ID:409557572
报告时间:2023年12月05日星期二13:00-14:00
邀请人:郑术蓉
报告摘要:
Recently, reinforcement learning has gained prominence in modern statistics, with policy evaluation being a key component. Unlike traditional machine learning literature on this topic, our work places emphasis on statistical inference for the parameter estimates computed using reinforcement learning algorithms. While most existing analyses assume random rewards to follow standard distributions, limiting their applicability, we embrace the concept of robust statistics in reinforcement learning by simultaneously addressing issues of outlier contamination and heavy-tailed rewards within a unified framework. In this paper, we develop an online robust policy evaluation procedure, and establish the limiting distribution of our estimator, based on its Bahadur representation. Furthermore, we develop a fully-online procedure to efficiently conduct statistical inference based on the asymptotic distribution. This paper bridges the gap between robust statistics and statistical inference in reinforcement learning, offering a more versatile and reliable approach to policy evaluation. Finally, we validate the efficacy of our algorithm through numerical experiments conducted in real-world reinforcement learning experiments.
主讲人简介:
刘卫东,上海交通大学特聘教授,国家杰出青年科学基金获得者,中国工业与应用数学学会理事。主要研究方向为统计学和机器学习等,目前已在AOS、 JASA、JRSSB、Biometrika、JMLR、ICML、IJCAI、IEEE TSP等专业顶尖期刊/会议上发表论文六十余篇。主持国家重点研发计划课题1项,国家杰出青年科学基金1项,国家优秀青年科学基金1项。