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Autonomous Learning Based on Cost Assumptions: Theoretical Studies And Experiments in Robot Control

Carlos H. C. Ribeiro, ELDER M. HEMERLY

发表年份
1999
引用次数
2

摘要

Autonomous learning techniques are based on experience acquisition. In most realistic applications, experience is time-consuming: it implies sensor reading, actuator control and algorithmic update, constrained by the learning system dynamics. The information crudeness upon which classical learning algorithms operate make such problems too difficult and unrealistic. Nonetheless, additional information for facilitating the learning process ideally should be embedded in such a way that the structural, well-studied characteristics of these fundamental algorithms are maintained. We investigate in this article a more general formulation of the Q-learning method that allows for a spreading of information derived from single updates towards a neighbourhood of the instantly visited state and converges to optimality. We show how this new formulation can be used as a mechanism to safely embed prior knowledge about the structure of the state space, and demonstrate it in a modified implementation of a reinforcement learning algorithm in a real robot navigation task.

关键词

Computer scienceReinforcement learningRobotProcess (computing)Artificial intelligenceTask (project management)Control (management)State spaceRobot learningState (computer science)

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