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A self-adaptive XCS

Hurst, Jacob; Bull, Larry

Authors

Jacob Hurst

Lawrence Bull Larry.Bull@uwe.ac.uk
School Director (Research & Enterprise) and Professor



Contributors

Pier L. Lanzi
Editor

Wolfgang Stolzmann
Editor

Stewart W Wilson
Editor

Abstract

Self-adaptation has been used extensively to control parameters in various forms of evolutionary computation. The concept was first introduced with evolutionary strategies and it is now often used to control genetic algorithms. This paper describes the addition of a self-adaptive mutation rate and learning rate to the XCS classifier system. Self-adaptation has been used before in the strength based learning classifier system ZCS. This self-adaptive ZCS demonstrated clear performance improvements in a dynamic Woods environment and stable adaptation of its reinforcement learning parameters. In this paper experiments with XCS are carried out in Woods 2, a truncated version of the Woods14 environment and a dynamic Woods environment. Performance of XCS in the dynamic Woods 14 environment is good with little loss of performance when the environment is perturbed. Use of an adaptive mutation rate does not help or improve on this behavior. XCS has already been shown to perform poorly in the Woods 14 environment, and other long rule chain environments. Use of an adaptive mutation rate is shown to increase performance significantly in these long rule chain environments. Attempts to also self-adapt the learning rate in Woods 14-12 fail to achieve satisfactory system performance.

Citation

Hurst, J., & Bull, L. (2002). A self-adaptive XCS. In P. L. Lanzi, W. Stolzmann, & S. W. Wilson (Eds.), In Advances in Learning Classifier Systems. , (57-73). https://doi.org/10.1007/3-540-48104-4_5

Conference Name IWLCS 2001: International Workshop on Learning Classifier Systems
Publication Date Jan 1, 2002
Publisher Springer Verlag
Volume 2321
Pages 57-73
Series Title Lecture Notes in Computer Science
Series Number 2321
Book Title Advances in Learning Classifier Systems
ISBN 9783540437932
DOI https://doi.org/10.1007/3-540-48104-4_5
Keywords Artificial Intelligence (incl. Robotics)mathematical logic, formal languages, computation by abstract devices
Public URL https://uwe-repository.worktribe.com/output/1083131
Publisher URL http://dx.doi.org/10.1007/3-540-48104-4_5