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Towards LLM-Enhanced Group Recommender Systems
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本文探讨大型语言模型在支持组推荐系统决策支持质量与适用性方面的作用,包括理解群体动态、决策过程优化、推荐适用性与解释性。

arXiv:2507.19283v1 Announce Type: cross Abstract: In contrast to single-user recommender systems, group recommender systems are designed to generate and explain recommendations for groups. This group-oriented setting introduces additional complexities, as several factors - absent in individual contexts - must be addressed. These include understanding group dynamics (e.g., social dependencies within the group), defining effective decision-making processes, ensuring that recommendations are suitable for all group members, and providing group-level explanations as well as explanations for individual users. In this paper, we analyze in which way large language models (LLMs) can support these aspects and help to increase the overall decision support quality and applicability of group recommender systems.

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LLMs 组推荐系统 决策支持 群体动态
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