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Sample-Efficient Reinforcement Learning with loglog(T) Switching Cost
Dan Qiao · Ming Yin · Ming Min · Yu-Xiang Wang
Ballroom 3 & 4
Abstract:
We study the problem of reinforcement learning (RL) with low (policy) switching cost — a problem well-motivated by real-life RL applications in which deployments of new policies are costly and the number of policy updates must be low. In this paper, we propose a new algorithm based on stage-wise exploration and adaptive policy elimination that achieves a regret of while requiring a switching cost of . This is an exponential improvement over the best-known switching cost among existing methods with regret. In the above, denotes the number of states and actions in an -horizon episodic Markov Decision Process model with unknown transitions, and is the number of steps. As a byproduct of our new techniques, we also derive a reward-free exploration algorithm with a switching cost of . Furthermore, we prove a pair of information-theoretical lower bounds which say that (1) Any no-regret algorithm must have a switching cost of ; (2) Any regret algorithm must incur a switching cost of . Both our algorithms are thus optimal in their switching costs.
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