PiCor: Multi-Task Deep Reinforcement Learning with Policy Correction
Bai FS(白丰硕)3,4; Zhang HM(张鸿铭)2; Tao TY(陶天阳)1; Wu ZH(武志亨)3,4; Wang YN(王燕娜)3; Xu B(徐博)3
2023-06
会议日期2023.02.07 - 2023.02.14
会议地点美国 华盛顿
关键词Reinforcement Learning Algorithms Transfer Domain Adaptation Multi-Task Learning
卷号37
期号6
DOIhttps://doi.org/10.1609/aaai.v37i6.25825
页码6728-6736
国家美国
英文摘要

Multi-task deep reinforcement learning (DRL) ambitiously aims to train a general agent that masters multiple tasks simultaneously. However, varying learning speeds of different tasks compounding with negative gradient interference makes policy learning inefficient. In this work, we propose PiCor, an efficient multi-task DRL framework that splits learning into policy optimization and policy correction phases. The policy optimization phase improves the policy by any DRL algothrim on the sampled single task without considering other tasks. The policy correction phase first constructs a performance constraint set with adaptive weight adjusting. Then the intermediate policy learned by the first phase is constrained to the set, which controls the negative interference and balances the learning speeds across tasks. Empirically, we demonstrate that PiCor outperforms previous methods and significantly improves sample efficiency on simulated robotic manipulation and continuous control tasks. We additionally show that adaptive weight adjusting can further improve data efficiency and performance.

源文献作者Brian Williams ; Sara Bernardini ; Yiling Chen ; Jennifer Neville
产权排序1
会议录Proceedings of the AAAI Conference on Artificial Intelligence
会议录出版地美国
学科主题计算机科学技术 ; 人工智能 ; 人工智能其他学科
语种英语
URL标识查看原文
WOS研究方向机器学习
内容类型会议论文
源URL[http://ir.ia.ac.cn/handle/173211/52322]  
专题数字内容技术与服务研究中心_听觉模型与认知计算
通讯作者Bai FS(白丰硕)
作者单位1.Université Paris-Saclay
2.University of Alberta
3.Institute of Automation, Chinese Academy of Sciences (CASIA)
4.School of Artificial Intelligence, University of Chinese Academy of Sciences
推荐引用方式
GB/T 7714
Bai FS,Zhang HM,Tao TY,et al. PiCor: Multi-Task Deep Reinforcement Learning with Policy Correction[C]. 见:. 美国 华盛顿. 2023.02.07 - 2023.02.14.
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