cs.AI updates on arXiv.org 09月17日
ActOwL:基于主动学习的机器人所有权知识获取
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本文提出一种名为ActOwL的框架,通过主动询问用户获取物体所有权知识,结合LLM的常识推理,有效提高机器人学习效率。

arXiv:2509.12754v1 Announce Type: cross Abstract: Robots operating in domestic and office environments must understand object ownership to correctly execute instructions such as ``Bring me my cup.'' However, ownership cannot be reliably inferred from visual features alone. To address this gap, we propose Active Ownership Learning (ActOwL), a framework that enables robots to actively generate and ask ownership-related questions to users. ActOwL employs a probabilistic generative model to select questions that maximize information gain, thereby acquiring ownership knowledge efficiently to improve learning efficiency. Additionally, by leveraging commonsense knowledge from Large Language Models (LLM), objects are pre-classified as either shared or owned, and only owned objects are targeted for questioning. Through experiments in a simulated home environment and a real-world laboratory setting, ActOwL achieved significantly higher ownership clustering accuracy with fewer questions than baseline methods. These findings demonstrate the effectiveness of combining active inference with LLM-guided commonsense reasoning, advancing the capability of robots to acquire ownership knowledge for practical and socially appropriate task execution.

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机器人 所有权学习 主动学习 LLM 常识推理
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