Adaptive Representations for Reinforcement Learning

This document was uploaded by one of our users. The uploader already confirmed that they had the permission to publish it. If you are author/publisher or own the copyright of this documents, please report to us by using this DMCA report form.

Simply click on the Download Book button.

Yes, Book downloads on Ebookily are 100% Free.

Sometimes the book is free on Amazon As well, so go ahead and hit "Search on Amazon"

This book presents new algorithms for reinforcement learning, a form of machine learning in which an autonomous agent seeks a control policy for a sequential decision task. Since current methods typically rely on manually designed solution representations, agents that automatically adapt their own representations have the potential to dramatically improve performance. This book introduces two novel approaches for automatically discovering high-performing representations. The first approach synthesizes temporal difference methods, the traditional approach to reinforcement learning, with evolutionary methods, which can learn representations for a broad class of optimization problems. This synthesis is accomplished by customizing evolutionary methods to the on-line nature of reinforcement learning and using them to evolve representations for value function approximators. The second approach automatically learns representations based on piecewise-constant approximations of value functions. It begins with coarse representations and gradually refines them during learning, analyzing the current policy and value function to deduce the best refinements. This book also introduces a novel method for devising input representations. This method addresses the feature selection problem by extending an algorithm that evolves the topology and weights of neural networks such that it evolves their inputs too. In addition to introducing these new methods, this book presents extensive empirical results in multiple domains demonstrating that these techniques can substantially improve performance over methods with manual representations.

Author(s): Shimon Whiteson (auth.)
Series: Studies in Computational Intelligence 291
Edition: 1
Publisher: Springer-Verlag Berlin Heidelberg
Year: 2010

Language: English
Pages: 116
Tags: Computational Intelligence; Artificial Intelligence (incl. Robotics)

Front Matter....Pages -
Introduction....Pages 1-5
Reinforcement Learning....Pages 7-15
On-Line Evolutionary Computation....Pages 17-30
Evolutionary Function Approximation....Pages 31-46
Sample-Efficient Evolutionary Function Approximation....Pages 47-52
Automatic Feature Selection for Reinforcement Learning....Pages 53-64
Adaptive Tile Coding....Pages 65-76
RelatedWork....Pages 77-94
Conclusion....Pages 95-104
Back Matter....Pages -