Policy gradient (PG) methods and their variants lie at the heart of modern reinforcement learning. Due to the intrinsic non-concavity of value maximization, however, the theoretical underpinnings of PG-type methods have been limited even until recently. In this talk, we discuss both the ineffectiveness and effectiveness of nonconvex policy optimization. On the one hand, we demonstrate that the popular softmax policy gradient method can take exponential time to converge. On the other hand, we show that employing natural policy gradients and enforcing entropy regularization allows for fast global convergence. 

10月17日
11am - 12pm
地点
https://hkust.zoom.us/j/94883840530 (Passcode: hkust)
讲者/表演者
Prof. Yuting WEI
The Wharton School, University of Pennsyvania
主办单位
Department of Mathematics
联系方法
付款详情
对象
Alumni, Faculty and staff, PG students, UG students
语言
英语
其他活动
5月24日
研讨会, 演讲, 讲座
IAS / School of Science Joint Lecture - Confinement Controlled Electrochemistry: Nanopore beyond Sequencing
Abstract Nanopore electrochemistry refers to the promising measurement science based on elaborate pore structures, which offers a well-defined geometric confined space to adopt and characterize sin...
5月13日
研讨会, 演讲, 讲座
IAS / School of Science Joint Lecture – Expanding the Borders of Chemical Reactivity
Abstract The lecture will demonstrate how it has been possible to expand the borders of cycloadditions beyond the “classical types of cycloadditions” applying organocatalytic activation principles....