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Main Authors: Li, Zhening, Poesia, Gabriel, Solar-Lezama, Armando
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2406.07897
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author Li, Zhening
Poesia, Gabriel
Solar-Lezama, Armando
author_facet Li, Zhening
Poesia, Gabriel
Solar-Lezama, Armando
contents Skills are temporal abstractions that are intended to improve reinforcement learning (RL) performance through hierarchical RL. Despite our intuition about the properties of an environment that make skills useful, a precise characterization has been absent. We provide the first such characterization, focusing on the utility of deterministic skills in deterministic sparse-reward environments with finite action spaces. We show theoretically and empirically that RL performance gain from skills is worse in environments where solutions to states are less compressible. Additional theoretical results suggest that skills benefit exploration more than they benefit learning from existing experience, and that using unexpressive skills such as macroactions may worsen RL performance. We hope our findings can guide research on automatic skill discovery and help RL practitioners better decide when and how to use skills.
format Preprint
id arxiv_https___arxiv_org_abs_2406_07897
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle When Do Skills Help Reinforcement Learning? A Theoretical Analysis of Temporal Abstractions
Li, Zhening
Poesia, Gabriel
Solar-Lezama, Armando
Machine Learning
Artificial Intelligence
Skills are temporal abstractions that are intended to improve reinforcement learning (RL) performance through hierarchical RL. Despite our intuition about the properties of an environment that make skills useful, a precise characterization has been absent. We provide the first such characterization, focusing on the utility of deterministic skills in deterministic sparse-reward environments with finite action spaces. We show theoretically and empirically that RL performance gain from skills is worse in environments where solutions to states are less compressible. Additional theoretical results suggest that skills benefit exploration more than they benefit learning from existing experience, and that using unexpressive skills such as macroactions may worsen RL performance. We hope our findings can guide research on automatic skill discovery and help RL practitioners better decide when and how to use skills.
title When Do Skills Help Reinforcement Learning? A Theoretical Analysis of Temporal Abstractions
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2406.07897