报告时间: 2022年4月22日(周五)15:00~16:30
腾讯会议:212-243-737
邀请人: 许洪腾 中国人民大学高瓴人工智能学院准聘副教授
主讲人姓名: 王趵翔 香港中文大学(深圳)数据科学学院助理教授
主讲人简介:Baoxiang Wang is an assistant professor at The Chinese University of Hong Kong, Shenzhen. He works on reinforcement learning and RL theory. He solved the gambler's problem in 2020 which was open since 1989. He obtained his Ph.D. in Computer Science at The Chinese University of Hong Kong in 2020, under Siu On Chan and Andrej Bogdanov. Before that, he obtained his B.E. in Information Security at Shanghai Jiao Tong University. Homepage at bxiangwang@github.io.
报告题目: Differentially private algorithms in reinforcement learning
报告摘要: Reinforcement learning could involve sensitive information in states, rewards, and transitions. In this talk, we discuss how differentially private algorithms could protect the information from being inferred by an attacker. The talk will focus on continuous RL settings and provide analyses on privacy and utility, while several recent works follow.
检测到您当前使用浏览器版本过于老旧,会导致无法正常浏览网站;请您使用电脑里的其他浏览器如:360、QQ、搜狗浏览器的速模式浏览,或者使用谷歌、火狐等浏览器。
下载Firefox