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arxiv: 1412.0180 · v3 · pith:B67GQFU3new · submitted 2014-11-30 · 🧮 math.OC · cs.LG

Empirical Q-Value Iteration

classification 🧮 math.OC cs.LG
keywords algorithmq-valuealgorithmsapproximation-basedconvergenceempiricalfunctioniteration
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We propose a new simple and natural algorithm for learning the optimal Q-value function of a discounted-cost Markov Decision Process (MDP) when the transition kernels are unknown. Unlike the classical learning algorithms for MDPs, such as Q-learning and actor-critic algorithms, this algorithm doesn't depend on a stochastic approximation-based method. We show that our algorithm, which we call the empirical Q-value iteration (EQVI) algorithm, converges to the optimal Q-value function. We also give a rate of convergence or a non-asymptotic sample complexity bound, and also show that an asynchronous (or online) version of the algorithm will also work. Preliminary experimental results suggest a faster rate of convergence to a ball park estimate for our algorithm compared to stochastic approximation-based algorithms.

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