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Least Absolute Policy Iteration-A Robust Approach to Value Function Approximation

Masashi Sugiyama, Hirotaka Hachiya, Hisashi Kashima, Tetsuro Morimura

Year
2010
Citations
5
Access
Open access

Abstract

Least-squares policy iteration is a useful reinforcement learning method in robotics due to its computational efficiency. However, it tends to be sensitive to outliers in observed rewards. In this paper, we propose an alternative method that employs the absolute loss for enhancing robustness and reliability. The proposed method is formulated as a linear programming problem which can be solved efficiently by standard optimization software, so the computational advantage is not sacrificed for gaining robustness and reliability. We demonstrate the usefulness of the proposed approach through a simulated robot-control task.

Keywords

Robustness (evolution)Computer scienceReinforcement learningOutlierMathematical optimizationLinear programmingBellman equationRoboticsDynamic programmingArtificial intelligence

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