LGAIDec 1, 2021

DOPE: Doubly Optimistic and Pessimistic Exploration for Safe Reinforcement Learning

arXiv:2112.00885v343 citations
Originality Highly original
AI Analysis

This addresses the challenge of safe exploration in reinforcement learning for agents operating in unknown environments with strict safety requirements, representing a strong specific gain.

The paper tackles safe reinforcement learning by proposing DOPE, a model-based algorithm that combines optimistic and pessimistic exploration to ensure no safety constraint violations during learning, achieving an objective regret of ̃O(|S|√|A|K).

Safe reinforcement learning is extremely challenging--not only must the agent explore an unknown environment, it must do so while ensuring no safety constraint violations. We formulate this safe reinforcement learning (RL) problem using the framework of a finite-horizon Constrained Markov Decision Process (CMDP) with an unknown transition probability function, where we model the safety requirements as constraints on the expected cumulative costs that must be satisfied during all episodes of learning. We propose a model-based safe RL algorithm that we call Doubly Optimistic and Pessimistic Exploration (DOPE), and show that it achieves an objective regret $\tilde{O}(|\mathcal{S}|\sqrt{|\mathcal{A}| K})$ without violating the safety constraints during learning, where $|\mathcal{S}|$ is the number of states, $|\mathcal{A}|$ is the number of actions, and $K$ is the number of learning episodes. Our key idea is to combine a reward bonus for exploration (optimism) with a conservative constraint (pessimism), in addition to the standard optimistic model-based exploration. DOPE is not only able to improve the objective regret bound, but also shows a significant empirical performance improvement as compared to earlier optimism-pessimism approaches.

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