Recent Advances in Reinforcement Learning

Recent Advances in Reinforcement Learning

EnglishHardback
Springer
EAN: 9780792397052
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Detailed information

Recent Advances in Reinforcement Learning addresses current research in an exciting area that is gaining a great deal of popularity in the Artificial Intelligence and Neural Network communities.
Reinforcement learning has become a primary paradigm of machine learning. It applies to problems in which an agent (such as a robot, a process controller, or an information-retrieval engine) has to learn how to behave given only information about the success of its current actions. This book is a collection of important papers that address topics including the theoretical foundations of dynamic programming approaches, the role of prior knowledge, and methods for improving performance of reinforcement-learning techniques. These papers build on previous work and will form an important resource for students and researchers in the area.
Recent Advances in Reinforcement Learning is an edited volume of peer-reviewed original research comprising twelve invited contributions by leading researchers. This research work has also been published as a special issue of Machine Learning (Volume 22, Numbers 1, 2 and 3).
EAN 9780792397052
ISBN 0792397053
Binding Hardback
Publisher Springer
Publication date March 31, 1996
Pages 292
Language English
Dimensions 235 x 155
Country Netherlands
Readership Professional & Scholarly
Illustrations IV, 292 p.
Editors Kaelbling Leslie Pack
Edition Reprinted from MACHINE LEARNING 22:1-3, 1996