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arxiv: 1905.00475 · v1 · pith:GAP4K3PMnew · submitted 2019-05-01 · 💻 cs.LG · stat.ML

Efficient Model-free Reinforcement Learning in Metric Spaces

classification 💻 cs.LG stat.ML
keywords algorithmsefficientmodel-freeq-learningmetricalgorithmlearningmdps
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Model-free Reinforcement Learning (RL) algorithms such as Q-learning [Watkins, Dayan 92] have been widely used in practice and can achieve human level performance in applications such as video games [Mnih et al. 15]. Recently, equipped with the idea of optimism in the face of uncertainty, Q-learning algorithms [Jin, Allen-Zhu, Bubeck, Jordan 18] can be proven to be sample efficient for discrete tabular Markov Decision Processes (MDPs) which have finite number of states and actions. In this work, we present an efficient model-free Q-learning based algorithm in MDPs with a natural metric on the state-action space--hence extending efficient model-free Q-learning algorithms to continuous state-action space. Compared to previous model-based RL algorithms for metric spaces [Kakade, Kearns, Langford 03], our algorithm does not require access to a black-box planning oracle.

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    A kernel-based model-free RL method combines Bernstein bonuses with non-parametric smoothing to improve the horizon dependence in finite-horizon regret bounds.