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Intrinsic Language-Guided Exploration for Complex Long-Horizon Robotic Manipulation Tasks

Authors :
Triantafyllidis, Eleftherios
Christianos, Filippos
Li, Zhibin
Publication Year :
2023

Abstract

Current reinforcement learning algorithms struggle in sparse and complex environments, most notably in long-horizon manipulation tasks entailing a plethora of different sequences. In this work, we propose the Intrinsically Guided Exploration from Large Language Models (IGE-LLMs) framework. By leveraging LLMs as an assistive intrinsic reward, IGE-LLMs guides the exploratory process in reinforcement learning to address intricate long-horizon with sparse rewards robotic manipulation tasks. We evaluate our framework and related intrinsic learning methods in an environment challenged with exploration, and a complex robotic manipulation task challenged by both exploration and long-horizons. Results show IGE-LLMs (i) exhibit notably higher performance over related intrinsic methods and the direct use of LLMs in decision-making, (ii) can be combined and complement existing learning methods highlighting its modularity, (iii) are fairly insensitive to different intrinsic scaling parameters, and (iv) maintain robustness against increased levels of uncertainty and horizons.<br />Comment: Accepted at the International Conference on Robotics and Automation (ICRA), 2024. The manuscript consists of 10 pages and 6 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2309.16347
Document Type :
Working Paper