AI Agents 相关度: 9/10

GCAgent: Enhancing Group Chat Communication through Dialogue Agents System

Zijie Meng, Zheyong Xie, Zheyu Ye, Chonggang Lu, Zuozhu Liu, Zihan Niu, Yao Hu, Shaosheng Cao
arXiv: 2603.05240v1 发布: 2026-03-05 更新: 2026-03-05

AI 摘要

提出了GCAgent系统,利用LLM增强群聊沟通,包含Agent Builder、Dialogue Manager和Interface Plugins三大模块。

主要贡献

  • 提出了GCAgent系统框架
  • 设计了Agent Builder、Dialogue Manager和Interface Plugins三大模块
  • 实验证明GCAgent能有效提升群聊活跃度和用户参与度

方法论

构建一个基于LLM的群聊对话Agent系统,通过定制Agent、管理对话状态和优化交互界面来提升群聊体验。

原文摘要

As a key form in online social platforms, group chat is a popular space for interest exchange or problem-solving, but its effectiveness is often hindered by inactivity and management challenges. While recent large language models (LLMs) have powered impressive one-to-one conversational agents, their seamlessly integration into multi-participant conversations remains unexplored. To address this gap, we introduce GCAgent, an LLM-driven system for enhancing group chats communication with both entertainment- and utility-oriented dialogue agents. The system comprises three tightly integrated modules: Agent Builder, which customizes agents to align with users' interests; Dialogue Manager, which coordinates dialogue states and manage agent invocations; and Interface Plugins, which reduce interaction barriers by three distinct tools. Through extensive experiment, GCAgent achieved an average score of 4.68 across various criteria and was preferred in 51.04\% of cases compared to its base model. Additionally, in real-world deployments over 350 days, it increased message volume by 28.80\%, significantly improving group activity and engagement. Overall, this work presents a practical blueprint for extending LLM-based dialogue agent from one-party chats to multi-party group scenarios.

标签

LLM Group Chat Dialogue Agent Multi-agent

arXiv 分类

cs.AI