LGOCSTMLJul 10, 2024

Pessimism Meets Risk: Risk-Sensitive Offline Reinforcement Learning

arXiv:2407.07631v15 citationsh-index: 6
Originality Incremental advance
AI Analysis

This work addresses a gap in managing uncertainty for decision-making in offline RL, offering incremental theoretical advances in a domain-specific context.

The paper tackles the problem of risk-sensitive offline reinforcement learning by introducing two provably sample-efficient algorithms for linear Markov Decision Processes, achieving the first such results with improved bounds on dimension and risk-sensitivity factors.

We study risk-sensitive reinforcement learning (RL), a crucial field due to its ability to enhance decision-making in scenarios where it is essential to manage uncertainty and minimize potential adverse outcomes. Particularly, our work focuses on applying the entropic risk measure to RL problems. While existing literature primarily investigates the online setting, there remains a large gap in understanding how to efficiently derive a near-optimal policy based on this risk measure using only a pre-collected dataset. We center on the linear Markov Decision Process (MDP) setting, a well-regarded theoretical framework that has yet to be examined from a risk-sensitive standpoint. In response, we introduce two provably sample-efficient algorithms. We begin by presenting a risk-sensitive pessimistic value iteration algorithm, offering a tight analysis by leveraging the structure of the risk-sensitive performance measure. To further improve the obtained bounds, we propose another pessimistic algorithm that utilizes variance information and reference-advantage decomposition, effectively improving both the dependence on the space dimension $d$ and the risk-sensitivity factor. To the best of our knowledge, we obtain the first provably efficient risk-sensitive offline RL algorithms.

Foundations

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