咨询与建议

看过本文的还看了

相关文献

该作者的其他文献

文献详情 >TEXPLORE: Temporal Difference ... 收藏

TEXPLORE: Temporal Difference Reinforcement Learning for Robots and Time-Constrained Domains

丛 书 名:Studies in Computational Intelligence

版本说明:2013

作     者:Todd Hester 

I S B N:(纸本) 9783319011677 

出 版 社:Springer International Publishing 

出 版 年:2013年

页      数:170页

主 题 词:Robotics Reinforcement learning 

学科分类:12[管理学] 1201[管理学-管理科学与工程(可授管理学、工学学位)] 081104[工学-模式识别与智能系统] 08[工学] 0835[工学-软件工程] 0811[工学-控制科学与工程] 0812[工学-计算机科学与技术(可授工学、理学学位)] 

摘      要:This book presents and develops new reinforcement learning methods that enable fast and robust learning on robots in real-time. Robots have the potential to solve many problems in society, because of their ability to work in dangerous places doing necessary jobs that no one wants or is able to do. One barrier to their widespread deployment is that they are mainly limited to tasks where it is possible to hand-program behaviors for every situation that may be encountered. For robots to meet their potential, they need methods that enable them to learn and adapt to novel situations that they were not programmed for. Reinforcement learning (RL) is a paradigm for learning sequential decision making processes and could solve the problems of learning and adaptation on robots. This book identifies four key challenges that must be addressed for an RL algorithm to be practical for robotic control tasks. These RL for Robotics Challenges are: 1) it must learn in very few samples; 2) it must learn in domains with continuous state features; 3) it must handle sensor and/or actuator delays; and 4) it should continually select actions in real time. This book focuses on addressing all four of these challenges. In particular, this book is focused on time-constrained domains where the first challenge is critically important. In these domains, the agents lifetime is not long enough for it to explore the domains thoroughly, and it must learn in very few samples.

读者评论 与其他读者分享你的观点

用户名:未登录
我的评分