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SEAD: Self-Evolving Agent for Multi-Turn Service Dialogue

Yuqin Dai
Ning Gao
Wei Zhang
Jie Wang
Zichen Luo
Jinpeng Wang
Yujie Wang
Ruiyuan Wu
Chaozheng Wang
Main:8 Pages
4 Figures
Bibliography:3 Pages
4 Tables
Abstract

Large Language Models have demonstrated remarkable capabilities in open-domain dialogues. However, current methods exhibit suboptimal performance in service dialogues, as they rely on noisy, low-quality human conversation data. This limitation arises from data scarcity and the difficulty of simulating authentic, goal-oriented user behaviors. To address these issues, we propose SEAD (Self-Evolving Agent for Service Dialogue), a framework that enables agents to learn effective strategies without large-scale human annotations. SEAD decouples user modeling into two components: a Profile Controller that generates diverse user states to manage training curriculum, and a User Role-play Model that focuses on realistic role-playing. This design ensures the environment provides adaptive training scenarios rather than acting as an unfair adversary. Experiments demonstrate that SEAD significantly outperforms Open-source Foundation Models and Closed-source Commercial Models, improving task completion rate by 17.6% and dialogue efficiency by 11.1%. Code is available at:this https URL.

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