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Main Authors: Li, Ge, Zhou, Hongyi, Roth, Dominik, Thilges, Serge, Otto, Fabian, Lioutikov, Rudolf, Neumann, Gerhard
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2401.11437
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author Li, Ge
Zhou, Hongyi
Roth, Dominik
Thilges, Serge
Otto, Fabian
Lioutikov, Rudolf
Neumann, Gerhard
author_facet Li, Ge
Zhou, Hongyi
Roth, Dominik
Thilges, Serge
Otto, Fabian
Lioutikov, Rudolf
Neumann, Gerhard
contents Current advancements in reinforcement learning (RL) have predominantly focused on learning step-based policies that generate actions for each perceived state. While these methods efficiently leverage step information from environmental interaction, they often ignore the temporal correlation between actions, resulting in inefficient exploration and unsmooth trajectories that are challenging to implement on real hardware. Episodic RL (ERL) seeks to overcome these challenges by exploring in parameters space that capture the correlation of actions. However, these approaches typically compromise data efficiency, as they treat trajectories as opaque \emph{black boxes}. In this work, we introduce a novel ERL algorithm, Temporally-Correlated Episodic RL (TCE), which effectively utilizes step information in episodic policy updates, opening the 'black box' in existing ERL methods while retaining the smooth and consistent exploration in parameter space. TCE synergistically combines the advantages of step-based and episodic RL, achieving comparable performance to recent ERL methods while maintaining data efficiency akin to state-of-the-art (SoTA) step-based RL.
format Preprint
id arxiv_https___arxiv_org_abs_2401_11437
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Open the Black Box: Step-based Policy Updates for Temporally-Correlated Episodic Reinforcement Learning
Li, Ge
Zhou, Hongyi
Roth, Dominik
Thilges, Serge
Otto, Fabian
Lioutikov, Rudolf
Neumann, Gerhard
Machine Learning
Robotics
Current advancements in reinforcement learning (RL) have predominantly focused on learning step-based policies that generate actions for each perceived state. While these methods efficiently leverage step information from environmental interaction, they often ignore the temporal correlation between actions, resulting in inefficient exploration and unsmooth trajectories that are challenging to implement on real hardware. Episodic RL (ERL) seeks to overcome these challenges by exploring in parameters space that capture the correlation of actions. However, these approaches typically compromise data efficiency, as they treat trajectories as opaque \emph{black boxes}. In this work, we introduce a novel ERL algorithm, Temporally-Correlated Episodic RL (TCE), which effectively utilizes step information in episodic policy updates, opening the 'black box' in existing ERL methods while retaining the smooth and consistent exploration in parameter space. TCE synergistically combines the advantages of step-based and episodic RL, achieving comparable performance to recent ERL methods while maintaining data efficiency akin to state-of-the-art (SoTA) step-based RL.
title Open the Black Box: Step-based Policy Updates for Temporally-Correlated Episodic Reinforcement Learning
topic Machine Learning
Robotics
url https://arxiv.org/abs/2401.11437