Role-oriented dialogue summarization is to generate summaries for different roles in the dialogue, e.g., merchants and consumers. Existing methods handle this task by summarizing each role's content separately and thus are prone to ignore the information from other roles. However, we believe that other roles' content could benefit the quality of summaries, such as the omitted information mentioned by other roles. Therefore, we propose a novel role interaction enhanced method for role-oriented dialogue summarization. It adopts cross attention and decoder self-attention interactions to interactively acquire other roles' critical information. The cross attention interaction aims to select other roles' critical dialogue utterances, while the decoder self-attention interaction aims to obtain key information from other roles' summaries. Experimental results have shown that our proposed method significantly outperforms strong baselines on two public role-oriented dialogue summarization datasets. Extensive analyses have demonstrated that other roles' content could help generate summaries with more complete semantics and correct topic structures.
翻译:以作用为导向的对话总结是针对对话中不同角色,如商人和消费者等,产生摘要。现有方法通过分别概述每个角色的内容来处理这项任务,因此容易忽视其他角色的信息。然而,我们认为,其他角色的内容可以有利于摘要的质量,例如其他角色提到的遗漏信息。因此,我们提出一种新的作用互动增强方法,以促进以作用为导向的对话总结。它通过交叉关注和自省自省互动,以互动方式获取其他角色的关键信息。交叉关注互动旨在选择其他角色的关键对话言论,而解码自省互动旨在从其他角色摘要中获取关键信息。实验结果表明,我们拟议的方法大大超越了两个以公共角色为导向的对话汇总数据集的坚实基线。广泛的分析表明,其他角色的内容有助于以更完整的语义和正确的专题结构生成摘要。