Abstractive conversation summarization has received much attention recently. However, these generated summaries often suffer from insufficient, redundant, or incorrect content, largely due to the unstructured and complex characteristics of human-human interactions. To this end, we propose to explicitly model the rich structures in conversations for more precise and accurate conversation summarization, by first incorporating discourse relations between utterances and action triples ("who-doing-what") in utterances through structured graphs to better encode conversations, and then designing a multi-granularity decoder to generate summaries by combining all levels of information. Experiments show that our proposed models outperform state-of-the-art methods and generalize well in other domains in terms of both automatic evaluations and human judgments. We have publicly released our code at https://github.com/GT-SALT/Structure-Aware-BART.
翻译:抽象的谈话总结最近受到了很多关注,然而,这些生成的摘要往往缺乏、多余或不正确的内容,这主要是由于人与人之间互动的不结构性和复杂性。 为此,我们提议在对话中明确建模丰富结构,以便更准确和准确的对话总结,首先通过结构化图表将言论与行动三重(“谁做什么”)之间的谈话关系纳入表述,以更好地对对话进行编码,然后设计多层次解码器,通过综合所有层次的信息生成摘要。 实验表明,我们提议的模型超越了最先进的方法,并在自动评估和人类判断的其他领域全面推广。 我们在https://github.com/GT-SALT/Strucult-Aware-BART上公布了我们的代码。