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Provably Efficient Exploration in Policy Optimization

International Conference on Machine Learning (ICML), 2019
Abstract

While policy-based reinforcement learning (RL) achieves tremendous successes in practice, it is significantly less understood in theory, especially compared with value-based RL. In particular, it remains elusive how to design a provably efficient policy optimization algorithm that incorporates exploration. To bridge such a gap, this paper proposes an Optimistic variant of the Proximal Policy Optimization algorithm (OPPO), which follows an ``optimistic version'' of the policy gradient direction. This paper proves that, in the problem of episodic Markov decision process with linear function approximation, unknown transition, and adversarial reward with full-information feedback, OPPO achieves O~(d2H3T)\tilde{O}(\sqrt{d^2 H^3 T} ) regret. Here dd is the feature dimension, HH is the episode horizon, and TT is the total number of steps. To the best of our knowledge, OPPO is the first provably efficient policy optimization algorithm that explores.

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