Evolutionary computation for reinforcement learning

Authors
Publication date 2012
Host editors
  • M. Wiering
  • M. van Otterlo
Book title Reinforcement learning: state-of-the-art
ISBN
  • 9783642276446
Series Adaptation, learning, and optimization, 12
Pages (from-to) 325-358
Publisher Heidelberg: Springer
Organisations
  • Faculty of Science (FNWI) - Informatics Institute (IVI)
Abstract
Algorithms for evolutionary computation, which simulate the process of natural selection to solve optimization problems, are an effective tool for discovering high-performing reinforcement-learning policies. Because they can automatically find good representations, handle continuous action spaces, and cope with partial observability, evolutionary reinforcement-learning approaches have a strong empirical track record, sometimes significantly outperforming temporal-difference methods. This chapter surveys research on the application of evolutionary computation to reinforcement learning, overviewing methods for evolving neural-network topologies and weights, hybrid methods that also use temporal-difference methods, coevolutionary methods for multi-agent settings, generative and developmental systems, and methods for on-line evolutionary reinforcement learning.
Document type Chapter
Language English
Published at https://doi.org/10.1007/978-3-642-27645-3_10
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