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Session:

Workshop - IWLCS

Title:

Learning Classifier System Equivalent with Reinforcement Learning with Function Approximation

   

Authors:

Atsushi Wada
Keiki Takadama
Katsunori Shimohara

   

Abstract:

We present an experimental comparison of the reinforcement process between Learning Classifier System (LCS) and Reinforcement Learning (RL) with function approximation (FA) method, regarding their generalization mechanisms. To validate our previous theoretical analysis that derived equivalence of reinforcement process between LCS and RL, we propose a simple test environment named \texttt{Gridworld}, which can be applied to both LCS and RL with three different classes of generalization: (1) tabular representation; (2) state aggregation; and (3) linear approximation. From the simulation experiments comparing LCS with its GA-inactivated and corresponding RL method, all the cases regarding the class of generalization showed identical results with the criteria of performance and temporal difference (TD) error, thereby verifying the equivalence predicted from the theory.

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