A Survay of Reinforcement Learning Methods in the Windy and Cliff-walking Gridworlds

نویسنده

  • Ryan J. Meuth
چکیده

This report details the implementation of three Reinforcment learning methods, Monte Carlo, SARSA, and Q-Learning, and compares their performances in the Windy and CliffWalking Gridworlds.

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تاریخ انتشار 2005