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Improving Reinforcement Learning Speed for Robot Control

Laëtitia Matignon, Guillaume J. Laurent, Nadine Le Fort-Piat

Year
2006
Citations
14

Abstract

Reinforcement learning (R-L) is an intuitive way of programming well-suited for use on autonomous robots because it does not need to specify how the task has to be achieved. However, RL remains difficult to implement in realistic domains because of its slowness in convergence. In this paper, we develop a theoretical study of the influence of some RL parameters over the learning speed. We also provide experimental justifications for choosing the reward function and initial Q-values in order to improve RL speed within the context of a goal-directed robot task

Keywords

Reinforcement learningComputer scienceRobotSlownessTask (project management)Context (archaeology)Convergence (economics)Function (biology)Robot learningArtificial intelligence

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