LGSYApr 8, 2025

Smart Exploration in Reinforcement Learning using Bounded Uncertainty Models

arXiv:2504.05978v21 citationsh-index: 6Has CodeCDC
Originality Incremental advance
AI Analysis

This work addresses the problem of slow learning in RL for researchers and practitioners, though it appears incremental as it builds on existing bounded-parameter MDP frameworks.

The paper tackles the challenge of data inefficiency in reinforcement learning by incorporating prior model knowledge to guide exploration, resulting in a method that significantly accelerates learning in benchmark examples.

Reinforcement learning (RL) is a powerful framework for decision-making in uncertain environments, but it often requires large amounts of data to learn an optimal policy. We address this challenge by incorporating prior model knowledge to guide exploration and accelerate the learning process. Specifically, we assume access to a model set that contains the true transition kernel and reward function. We optimize over this model set to obtain upper and lower bounds on the Q-function, which are then used to guide the exploration of the agent. We provide theoretical guarantees on the convergence of the Q-function to the optimal Q-function under the proposed class of exploring policies. Furthermore, we also introduce a data-driven regularized version of the model set optimization problem that ensures the convergence of the class of exploring policies to the optimal policy. Lastly, we show that when the model set has a specific structure, namely the bounded-parameter MDP (BMDP) framework, the regularized model set optimization problem becomes convex and simple to implement. In this setting, we also prove finite-time convergence to the optimal policy under mild assumptions. We demonstrate the effectiveness of the proposed exploration strategy, which we call BUMEX (Bounded Uncertainty Model-based Exploration), in a simulation study. The results indicate that the proposed method can significantly accelerate learning in benchmark examples. A toolbox is available at https://github.com/JvHulst/BUMEX.

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