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arXiv 提交日期: 2026-02-26
📄 Abstract - Enhancing Persuasive Dialogue Agents by Synthesizing Cross-Disciplinary Communication Strategies

Current approaches to developing persuasive dialogue agents often rely on a limited set of predefined persuasive strategies that fail to capture the complexity of real-world interactions. We applied a cross-disciplinary approach to develop a framework for designing persuasive dialogue agents that draws on proven strategies from social psychology, behavioral economics, and communication theory. We validated our proposed framework through experiments on two distinct datasets: the Persuasion for Good dataset, which represents a specific in-domain scenario, and the DailyPersuasion dataset, which encompasses a wide range of scenarios. The proposed framework achieved strong results for both datasets and demonstrated notable improvement in the persuasion success rate as well as promising generalizability. Notably, the proposed framework also excelled at persuading individuals with initially low intent, which addresses a critical challenge for persuasive dialogue agents.

顶级标签: agents natural language processing llm
详细标签: persuasive dialogue communication strategies cross-disciplinary dialogue agents evaluation 或 搜索:

通过融合跨学科沟通策略增强说服性对话智能体 / Enhancing Persuasive Dialogue Agents by Synthesizing Cross-Disciplinary Communication Strategies


1️⃣ 一句话总结

这篇论文提出了一种融合社会心理学、行为经济学和传播学等跨学科策略的新框架,显著提升了对话AI在多种场景下的说服成功率,尤其是在说服初始意愿较低的用户方面效果突出。

源自 arXiv: 2602.22696