学术报告:Some Recent Progress in Deep Reinforcement Learning-武汉大学计算机学院

学术报告:Some Recent Progress in Deep Reinforcement Learning

发布时间:2025-02-17     浏览量:

报告题目: Some Recent Progress in Deep Reinforcement Learning

报告地点: 计算机学院B404会议室

报告时间: 2025224上午9

报告人: Paul Weng

报告人单位: Duke Kunshan University


报告人简介

Paul Weng, a tenured associate professor at Duke Kunshan University, was previously an associate professor at the UM-SJTU Joint Institute and held regular or visiting faculty positions at multiple universities. As a top-tier AI researcher, he regularly publishes in top venues (e.g., IJCAI, AAAI, ICML, ICLR) and has served as an area chair at AAAI and ECAI. He has received best paper awards of MIWAI and ALA.

His main research work lies in AI and machine learning, with focuses on adaptive control (reinforcement learning, Markov decision process), multi-objective optimization (compromise programming, fair optimization), and preference handling (representation, elicitation, and learning).

报告摘要:

Deep reinforcement learning (RL) is a generic and powerful machine learning approach to solve sequential decision-making or control problems. This talk will present an overview of the different research directions explored in our team (i.e., fair RL, exploitation of equivariance, RL from human feedback, application to routing problems) and the results we achieved in these directions.

邀请人:王皓