We propose MADS (Multi-Agent Dialogue Simulation), a scalable framework for generating persuasive multi-turn dialogues via agent self-play. MADS employs three coordinated agents: User Agents designed to simulate diverse persona-driven behaviors by leveraging personality signifiers such as Zodiac Signs and MBTI types, a Dialog Agent executing task-oriented persuasion strategies and an Optimization Agent evaluating and refining dialogue outcomes. We further validate its effectiveness through users' Chain-of-Attitude (CoA) modeling and dedicated LLMs' persuasion assessment. This approach enables low-cost generation of training data without human annotation, addressing key industry challenges such as lack of user data, cold-start evaluation difficulties, and prompt inefficiency. Applied to a real-world marketing scenario, MADS significantly improved the persuasion capacity of small LLMs, increasing the organic traffic conversion rate by 22.4% (from 1.83% to 2.24%) , demonstrating clear business value.
翻译:我们提出MADS(多智能体对话模拟),一种通过智能体自我博弈生成说服性多轮对话的可扩展框架。MADS采用三个协同智能体:利用星座和MBTI类型等个性标识符模拟多样化人格驱动行为的用户智能体、执行任务导向说服策略的对话智能体,以及评估优化对话结果的优化智能体。我们进一步通过用户态度链建模和专用大语言模型的说服力评估验证其有效性。该方法无需人工标注即可低成本生成训练数据,解决了用户数据匮乏、冷启动评估困难和提示效率低下等关键行业挑战。在真实营销场景中的应用表明,MADS显著提升了小型大语言模型的说服能力,将自然流量转化率提高了22.4%(从1.83%增至2.24%),展现出明确的商业价值。