Breaking the Sample Size Barrier in Reinforcement Learning via A Model-Based Approach (a.k.a. the Plug-in Approach): Neyman Seminar

Breaking the Sample Size Barrier in Reinforcement Learning via A Model-Based Approach (a.k.a. the Plug-in Approach): Neyman Seminar

Neyman Seminar
Nov 18, 2020, 04:00 PM - 05:00 PM | Evans Hall | Happening As Scheduled
Yuxin Chen, Princeton University

This talk is concerned with the sample efficiency of reinforcement learning in a gamma-discounted infinite-horizon Markov decision process (MDP) with state space S and action space A, assuming access to a generative model. Despite a number of prior work tackling this problem, a complete picture of the trade-offs between sample complexity and statistical accuracy is yet to be determined. In...