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Autori principali: Kienle, Claudius, Alt, Benjamin, Arenz, Oleg, Peters, Jan
Natura: Preprint
Pubblicazione: 2025
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Accesso online:https://arxiv.org/abs/2505.13497
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author Kienle, Claudius
Alt, Benjamin
Arenz, Oleg
Peters, Jan
author_facet Kienle, Claudius
Alt, Benjamin
Arenz, Oleg
Peters, Jan
contents Domain models enable autonomous agents to solve long-horizon tasks by producing interpretable plans. However, in open-world environments, a single general domain model cannot capture the variety of tasks, so agents must generate suitable task-specific models on the fly. Large Language Models (LLMs), with their implicit common knowledge, can generate such domains, but suffer from high error rates that limit their applicability. Hence, related work relies on extensive human feed-back or prior knowledge, which undermines autonomous, open-world deployment. In this work, we propose LODGE, a framework for autonomous domain learning from LLMs and environment grounding. LODGE builds on hierarchical abstractions and automated simulations to identify and correct inconsistencies between abstraction layers and between the model and environment. Our framework is task-agnostic, as it generates predicates, operators, and their preconditions and effects, while only assuming access to a simulator and a set of generic, executable low-level skills. Experiments on two International Planning Competition ( IPC) domains and a robotic assembly domain show that LODGE yields more accurate domain models and higher task success than existing methods, requiring remarkably few environment interactions and no human feedback or demonstrations.
format Preprint
id arxiv_https___arxiv_org_abs_2505_13497
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Learning Hierarchical Domain Models Through Environment-Grounded Interaction
Kienle, Claudius
Alt, Benjamin
Arenz, Oleg
Peters, Jan
Robotics
Artificial Intelligence
Domain models enable autonomous agents to solve long-horizon tasks by producing interpretable plans. However, in open-world environments, a single general domain model cannot capture the variety of tasks, so agents must generate suitable task-specific models on the fly. Large Language Models (LLMs), with their implicit common knowledge, can generate such domains, but suffer from high error rates that limit their applicability. Hence, related work relies on extensive human feed-back or prior knowledge, which undermines autonomous, open-world deployment. In this work, we propose LODGE, a framework for autonomous domain learning from LLMs and environment grounding. LODGE builds on hierarchical abstractions and automated simulations to identify and correct inconsistencies between abstraction layers and between the model and environment. Our framework is task-agnostic, as it generates predicates, operators, and their preconditions and effects, while only assuming access to a simulator and a set of generic, executable low-level skills. Experiments on two International Planning Competition ( IPC) domains and a robotic assembly domain show that LODGE yields more accurate domain models and higher task success than existing methods, requiring remarkably few environment interactions and no human feedback or demonstrations.
title Learning Hierarchical Domain Models Through Environment-Grounded Interaction
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2505.13497