We study the problem of deployment efficient reinforcement learning (RL) with linear function approximation under the \emph{reward-free} exploration setting. This is a well-motivated problem because deploying new policies is costly in real-life RL applications. Under the linear MDP setting with feature dimension d and planning horizon H, we propose a new algorithm that collects at most O(ϵ2d2H5) trajectories within H deployments to identify ϵ-optimal policy for any (possibly data-dependent) choice of reward functions. To the best of our knowledge, our approach is the first to achieve optimal deployment complexity and optimal d dependence in sample complexity at the same time, even if the reward is known ahead of time. Our novel techniques include an exploration-preserving policy discretization and a generalized G-optimal experiment design, which could be of independent interest. Lastly, we analyze the related problem of regret minimization in low-adaptive RL and provide information-theoretic lower bounds for switching cost and batch complexity.
@article{arxiv.2210.00701,
title = {Near-Optimal Deployment Efficiency in Reward-Free Reinforcement Learning with Linear Function Approximation},
author = {Dan Qiao and Yu-Xiang Wang},
journal= {arXiv preprint arXiv:2210.00701},
year = {2023}
}