STRUDEL: Structured Dialogue Summarization for Dialogue Comprehension

Borui Wang, Chengcheng Feng, Arjun Nair, Madelyn Mao, Jai Desai, Asli Celikyilmaz, Haoran Li, Yashar Mehdad, Dragomir R. Radev
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引用次数: 1

Abstract

Abstractive dialogue summarization has long been viewed as an important standalone task in natural language processing, but no previous work has explored the possibility of whether abstractive dialogue summarization can also be used as a means to boost an NLP system’s performance on other important dialogue comprehension tasks. In this paper, we propose a novel type of dialogue summarization task - STRUctured DiaLoguE Summarization (STRUDEL) - that can help pre-trained language models to better understand dialogues and improve their performance on important dialogue comprehension tasks. In contrast to the holistic approach taken by the traditional free-form abstractive summarization task for dialogues, STRUDEL aims to decompose and imitate the hierarchical, systematic and structured mental process that we human beings usually go through when understanding and analyzing dialogues, and thus has the advantage of being more focused, specific and instructive for dialogue comprehension models to learn from. We further introduce a new STRUDEL dialogue comprehension modeling framework that integrates STRUDEL into a dialogue reasoning module over transformer encoder language models to improve their dialogue comprehension ability. In our empirical experiments on two important downstream dialogue comprehension tasks - dialogue question answering and dialogue response prediction - we demonstrate that our STRUDEL dialogue comprehension models can significantly improve the dialogue comprehension performance of transformer encoder language models.
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结构化的对话摘要以促进对话理解
摘要抽象对话摘要一直被认为是自然语言处理中一个重要的独立任务,但目前还没有研究表明抽象对话摘要是否也可以作为一种手段来提高NLP系统在其他重要对话理解任务上的表现。在本文中,我们提出了一种新型的对话摘要任务——结构化对话摘要(STRUDEL),它可以帮助预训练的语言模型更好地理解对话,并提高它们在重要对话理解任务上的表现。与传统的自由形式抽象的对话总结任务所采取的整体方法相比,STRUDEL旨在分解和模仿我们人类在理解和分析对话时所经历的层次化、系统化和结构化的心理过程,从而具有更集中、更具体和更有指导意义的优势,可供对话理解模型学习。我们进一步引入了一个新的STRUDEL对话理解建模框架,该框架将STRUDEL集成到转换器编码器语言模型的对话推理模块中,以提高其对话理解能力。在两个重要的下游对话理解任务——对话问答和对话响应预测的实证实验中,我们证明了我们的STRUDEL对话理解模型可以显著提高变压器编码器语言模型的对话理解性能。
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