面向多方对话生成的语篇连贯性与响应引导的上下文重写 / Discourse Coherence and Response-Guided Context Rewriting for Multi-Party Dialogue Generation
1️⃣ 一句话总结
这篇论文提出了一个名为DRCR的新框架,它通过利用语篇连贯性和回复质量作为反馈信号来重写对话上下文,从而显著提升了多方对话生成的质量和流畅度。
Previous research on multi-party dialogue generation has predominantly leveraged structural information inherent in dialogues to directly inform the generation process. However, the prevalence of colloquial expressions and incomplete utterances in dialogues often impedes comprehension and weakens the fidelity of dialogue structure representations, which is particularly pronounced in multi-party dialogues. In this work, we propose a novel framework DRCR (Discourse coherence and Response-guided Context Rewriting) to improve multi-party dialogue generation through dialogue context rewriting. Specifically, DRCR employs two complementary feedback signals, discourse coherence and response quality, to construct preference data for both context rewriting and response generation. Moreover, we propose a dynamic self-evolution learning method that allows the rewriter and responder to continuously enhance their capabilities through mutual interaction in an iterative training loop. Comprehensive experiments conducted on four multi-party dialogue datasets substantiate the effectiveness of DRCR.
面向多方对话生成的语篇连贯性与响应引导的上下文重写 / Discourse Coherence and Response-Guided Context Rewriting for Multi-Party Dialogue Generation
这篇论文提出了一个名为DRCR的新框架,它通过利用语篇连贯性和回复质量作为反馈信号来重写对话上下文,从而显著提升了多方对话生成的质量和流畅度。
源自 arXiv: 2604.06784