On the Performance Bounds of some Policy Search Dynamic Programming Algorithms

3 Jun 2013Bruno Scherrer

We consider the infinite-horizon discounted optimal control problem formalized by Markov Decision Processes. We focus on Policy Search algorithms, that compute an approximately optimal policy by following the standard Policy Iteration (PI) scheme via an -approximate greedy operator (Kakade and Langford, 2002; Lazaric et al., 2010)... (read more)

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