LGAIJan 26, 2023

Deep Laplacian-based Options for Temporally-Extended Exploration

arXiv:2301.11181v231 citationsh-index: 22
Originality Incremental advance
AI Analysis

This addresses the scalability limitations of prior Laplacian-based exploration methods for reinforcement learning practitioners, though it is incremental in extending existing techniques to deep RL.

The paper tackles the challenge of scalable exploratory options in reinforcement learning by introducing a fully online deep RL algorithm that approximates Laplacian eigenfunctions, enabling effective exploration in pixel-based tasks and showing promise in non-stationary settings.

Selecting exploratory actions that generate a rich stream of experience for better learning is a fundamental challenge in reinforcement learning (RL). An approach to tackle this problem consists in selecting actions according to specific policies for an extended period of time, also known as options. A recent line of work to derive such exploratory options builds upon the eigenfunctions of the graph Laplacian. Importantly, until now these methods have been mostly limited to tabular domains where (1) the graph Laplacian matrix was either given or could be fully estimated, (2) performing eigendecomposition on this matrix was computationally tractable, and (3) value functions could be learned exactly. Additionally, these methods required a separate option discovery phase. These assumptions are fundamentally not scalable. In this paper we address these limitations and show how recent results for directly approximating the eigenfunctions of the Laplacian can be leveraged to truly scale up options-based exploration. To do so, we introduce a fully online deep RL algorithm for discovering Laplacian-based options and evaluate our approach on a variety of pixel-based tasks. We compare to several state-of-the-art exploration methods and show that our approach is effective, general, and especially promising in non-stationary settings.

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