Hybrid RL: Using Both Offline and Online Data Can Make RL Efficient

10/13/2022
by   Yuda Song, et al.
20

We consider a hybrid reinforcement learning setting (Hybrid RL), in which an agent has access to an offline dataset and the ability to collect experience via real-world online interaction. The framework mitigates the challenges that arise in both pure offline and online RL settings, allowing for the design of simple and highly effective algorithms, in both theory and practice. We demonstrate these advantages by adapting the classical Q learning/iteration algorithm to the hybrid setting, which we call Hybrid Q-Learning or Hy-Q. In our theoretical results, we prove that the algorithm is both computationally and statistically efficient whenever the offline dataset supports a high-quality policy and the environment has bounded bilinear rank. Notably, we require no assumptions on the coverage provided by the initial distribution, in contrast with guarantees for policy gradient/iteration methods. In our experimental results, we show that Hy-Q with neural network function approximation outperforms state-of-the-art online, offline, and hybrid RL baselines on challenging benchmarks, including Montezuma's Revenge.

READ FULL TEXT
research
05/17/2023

Reward-agnostic Fine-tuning: Provable Statistical Benefits of Hybrid Reinforcement Learning

This paper studies tabular reinforcement learning (RL) in the hybrid set...
research
03/14/2023

Adaptive Policy Learning for Offline-to-Online Reinforcement Learning

Conventional reinforcement learning (RL) needs an environment to collect...
research
09/04/2020

Staged Animation Strategies for Online Dynamic Networks

Dynamic networks – networks that change over time – can be categorized i...
research
07/03/2021

Where is the Grass Greener? Revisiting Generalized Policy Iteration for Offline Reinforcement Learning

The performance of state-of-the-art baselines in the offline RL regime v...
research
10/26/2020

OPAL: Offline Primitive Discovery for Accelerating Offline Reinforcement Learning

Reinforcement learning (RL) has achieved impressive performance in a var...
research
07/05/2022

An Empirical Study of Implicit Regularization in Deep Offline RL

Deep neural networks are the most commonly used function approximators i...
research
05/25/2023

PROTO: Iterative Policy Regularized Offline-to-Online Reinforcement Learning

Offline-to-online reinforcement learning (RL), by combining the benefits...

Please sign up or login with your details

Forgot password? Click here to reset