Journal of Biomedical Fuzzy Systems Association
Online ISSN : 2424-2578
Print ISSN : 1345-1537
ISSN-L : 1345-1537
Instruction Knowledge Acquisition based on Reinforcement Learning and PSO
Toshihiko WATANABE
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JOURNAL OPEN ACCESS

2012 Volume 14 Issue 1 Pages 45-52

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Abstract
In order to realize intelligent agents such as autonomous mobile robots, Reinforcement Learning is one of the necessary techniques in control systems. However there exist many problems to apply reinforcement learning to real-world tasks. The most severe problem is a huge number of iterations in the learning phase. In order to deal with the problem, the instruction approach for reinforcement learning agents based on sub-rewards and forgetting mechanisms were proposed and shown to be effective. However the relationship between the instruction and the learning performance of reinforcement learning has not been adequately clarified. In this study, in order to clarify the instruction performance in the reinforcement learning, we propose an instruction knowledge acquisition method for the reinforcement learning scheme by the particle swarm optimization (PSO) algorithm. Through numerical experiments of the mountain car task and the Acrobat task, we show the validness of the proposed approach in terms of learning speed and accuracy.
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© 2012 Biomedical Fuzzy Systems Association
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