MATCHA: Can Multi-Agent Collaboration Build a Trustworthy Conversational Recommender?
MATCHA: Can Multi-Agent Collaboration Build a Trustworthy Conversational Recommender?
In this paper, we propose a multi-agent collaboration framework called MATCHA for conversational recommendation system, leveraging large language models (LLMs) to enhance personalization and user engagement. Users can request recommendations via free-form text and receive curated lists aligned with their interests, preferences, and constraints. Our system introduces specialized agents for intent analysis, candidate generation, ranking, re-ranking, explainability, and safeguards. These agents collaboratively improve recommendations accuracy, diversity, and safety. On eight metrics, our model achieves superior or comparable performance to the current state-of-the-art. Through comparisons with six baseline models, our approach addresses key challenges in conversational recommendation systems for game recommendations, including: (1) handling complex, user-specific requests, (2) enhancing personalization through multi-agent collaboration, (3) empirical evaluation and deployment, and (4) ensuring safe and trustworthy interactions.
Zheng Hui、Xiaokai Wei、Yexi Jiang、Kevin Gao、Chen Wang、Frank Ong、Se-eun Yoon、Rachit Pareek、Michelle Gong
计算技术、计算机技术
Zheng Hui,Xiaokai Wei,Yexi Jiang,Kevin Gao,Chen Wang,Frank Ong,Se-eun Yoon,Rachit Pareek,Michelle Gong.MATCHA: Can Multi-Agent Collaboration Build a Trustworthy Conversational Recommender?[EB/OL].(2025-04-25)[2025-05-17].https://arxiv.org/abs/2504.20094.点此复制
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