AmbiK: Dataset of Ambiguous Tasks in Kitchen Environment

Авторы

Панов А. И. Ковалёв А. К.

Аннотация

As a part of an embodied agent, Large Language Models (LLMs) are typically used for behavior planning given natural language instructions from the user. However, dealing with ambiguous instructions in real-world environments remains a challenge for LLMs. Various methods for task ambiguity detection have been proposed. However, it is difficult to compare them because they are tested on different datasets and there is no universal benchmark. For this reason, we propose AmbiK (Ambiguous Tasks in Kitchen Environment), the fully textual dataset of ambiguous instructions addressed to a robot in a kitchen environment. AmbiK was collected with the assistance of LLMs and is human-validated. It comprises 1000 pairs of ambiguous tasks and their unambiguous counterparts, categorized by ambiguity type (Human Preferences, Common Sense Knowledge, Safety), with environment descriptions, clarifying questions and answers, user intents, and task plans, for a total of 2000 tasks. We hope that AmbiK will enable researchers to perform a unified comparison of ambiguity detection methods.

Внешние ссылки

DOI: 10.48550/arXiv.2506.04089

Скачать статью (PDF) на arXiv.org (англ.): https://arxiv.org/abs/2506.04089

Скачать статью (PDF) из архива конференции ACL (англ.): https://aclanthology.org/2025.acl-long.1593/

Скачать датасет на GitHub: https://github.com/cog-model/AmbiK-dataset

ResearchGate: https://www.researchgate.net/publication/392405795_AmbiK_Dataset_of_Ambiguous_Tasks_in_Kitchen_Environment

Ссылка при цитировании

Anastasiia Ivanova, Eva Bakaeva, Zoya Volovikova, Alexey K. Kovalev, Aleksandr I. Panov. AmbiK: Dataset of Ambiguous Tasks in Kitchen Environment // arXiv:2506.04089v1 [cs.LG], 7 Jun 2025.