Abstractive multi document summarization has evolved as a task through the basic sequence to sequence approaches to transformer and graph based techniques. Each of these approaches has primarily focused on the issues of multi document information synthesis and attention based approaches to extract salient information. A challenge that arises with multi document summarization which is not prevalent in single document summarization is the need to effectively summarize multiple documents that might have conflicting polarity, sentiment or subjective information about a given topic. In this paper we propose ACM, attribute conditioned multi document summarization,a model that incorporates attribute conditioning modules in order to decouple conflicting information by conditioning for a certain attribute in the output summary. This approach shows strong gains in ROUGE score over baseline multi document summarization approaches and shows gains in fluency, informativeness and reduction in repetitiveness as shown through a human annotation analysis study.
翻译:通过对变压器和图形基础技术的顺序方法的排序方法的基本顺序,抽象的多文件总结演变为一项任务,其中每一种方法都主要侧重于多文件信息综合问题和基于关注的提取突出信息的方法问题,一个在单一文件总结中并不普遍存在的多文件总结引起的挑战是,需要有效地总结多个文件,这些文件可能存在对某一专题的极性、情感或主观信息冲突。在本文件中,我们提议了ACM, 属性为条件的多文件总结,一个包含属性调节模块的模型,以便通过对产出摘要中某一属性的附加条件来调和相互矛盾的信息。这一方法表明,ROUGE在基线多文件总结方法方面得分很大,并表明通过人类笔记分析研究在流性、信息丰富性和重复性减少方面有所收益。