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Exploration in Least-Squares Policy Iteration
Technical documentation   Open access

Exploration in Least-Squares Policy Iteration

Lihong Li, Michael Littman and Christopher Mansley
Rutgers University
2008
DOI:
https://doi.org/10.7282/T3XS5ZS6

Abstract

PAC-MDP Exploration Least-Squares Policy Iteration Markov Decision Processes Reinforcement Learning
One of the key problems in reinforcement learning is balancing exploration and exploitation. Another is learning and acting in large or even continuous Markov decision processes (MDPs), where compact function approximation has to be used. In this paper, we provide a practical solution to exploring large MDPs by integrating a powerful exploration technique, Rmax, into a state-of-the-art learning algorithm, least-squares policy iteration (LSPI). This approach combines the strengths of both methods, and has shown its effectiveness and superiority over LSPI with two other popular exploration rules in several benchmark problems.
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