Rate-Optimal Policy Optimization for Linear Markov Decision Processes
Abstract
We study regret minimization in online episodic linear Markov Decision Processes, and obtain rate-optimal O ( K) regret where K denotes the number of episodes. Our work is the first to establish the optimal (w.r.t.~K) rate of convergence in the stochastic setting with bandit feedback using a policy optimization based approach, and the first to establish the optimal (w.r.t.~K) rate in the adversarial setup with full information feedback, for which no algorithm with an optimal rate guarantee is currently known.
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