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Statler: State-Maintaining Language Models for Embodied Reasoning

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arxiv 2306.17840 v4 pith:HPPKVVGM submitted 2023-06-30 cs.RO cs.CL

Statler: State-Maintaining Language Models for Embodied Reasoning

classification cs.RO cs.CL
keywords languagemodelsframeworklargeplanningstatleractionsestimate
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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There has been a significant research interest in employing large language models to empower intelligent robots with complex reasoning. Existing work focuses on harnessing their abilities to reason about the histories of their actions and observations. In this paper, we explore a new dimension in which large language models may benefit robotics planning. In particular, we propose Statler, a framework in which large language models are prompted to maintain an estimate of the world state, which are often unobservable, and track its transition as new actions are taken. Our framework then conditions each action on the estimate of the current world state. Despite being conceptually simple, our Statler framework significantly outperforms strong competing methods (e.g., Code-as-Policies) on several robot planning tasks. Additionally, it has the potential advantage of scaling up to more challenging long-horizon planning tasks.

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