Augmenting Online RL with Offline Data is All You Need: A Unified Hybrid RL Algorithm Design and Analysis

This paper investigates a hybrid learning framework for reinforcement learning (RL) in which the agent can leverage both an offline dataset and online interactions to learn the optimal policy. We present a unified algorithm and analysis and show that augmenting confidence-based online RL algorithms with the offline dataset outperforms any pure online or offline algorithm alone and achieves state-of-the-art results under two learning metrics, i.e., sub-optimality gap and online learning regret. Specifically, we show that our algorithm achieves a sub-optimality gap , where is a new concentrability coefficient, and are the numbers of offline and online samples, respectively. For regret minimization, we show that it achieves a constant speed-up compared to pure online learning, where is the concentrability coefficient over all sub-optimal policies. Our results also reveal an interesting separation on the desired coverage properties of the offline dataset for sub-optimality gap minimization and regret minimization. We further validate our theoretical findings in several experiments in special RL models such as linear contextual bandits and Markov decision processes (MDPs).
View on arXiv@article{huang2025_2505.13768, title={ Augmenting Online RL with Offline Data is All You Need: A Unified Hybrid RL Algorithm Design and Analysis }, author={ Ruiquan Huang and Donghao Li and Chengshuai Shi and Cong Shen and Jing Yang }, journal={arXiv preprint arXiv:2505.13768}, year={ 2025 } }