论文标题

对话机理解:文献综述

Conversational Machine Comprehension: a Literature Review

论文作者

Gupta, Somil, Rawat, Bhanu Pratap Singh, Yu, Hong

论文摘要

会话AI的研究轨道对话机理解(CMC)希望该机器能够理解开放域的自然语言文本,然后进行多转交谈,以回答与文本有关的问题。尽管机器阅读理解理解(MRC)的大多数研究都围绕单转问题的答复(QA),但多转变CMC最近逐渐变得突出,这要归功于通过BERT(例如BERT)的自然语言理解的进步,例如BERT和诸如COQA和QUAC等大规模对话数据集的引入。然而,兴趣的上升导致了一系列并发出版物,每个出版物都采用不同但结构相似的建模方法,对周围文献的看法不一致。随着每年对对话数据集的模型提交的数量增加,需要巩固该领域中分散的知识以简化未来的研究。这项文献综述试图提供CMC的整体概述,重点是最近发表的模型的共同趋势,特别是在解决对话历史的方法中。该评论综合了CMC模型的通用框架,同时强调了最近的方法中的差异,并打算作为CMC的CMC汇编。

Conversational Machine Comprehension (CMC), a research track in conversational AI, expects the machine to understand an open-domain natural language text and thereafter engage in a multi-turn conversation to answer questions related to the text. While most of the research in Machine Reading Comprehension (MRC) revolves around single-turn question answering (QA), multi-turn CMC has recently gained prominence, thanks to the advancement in natural language understanding via neural language models such as BERT and the introduction of large-scale conversational datasets such as CoQA and QuAC. The rise in interest has, however, led to a flurry of concurrent publications, each with a different yet structurally similar modeling approach and an inconsistent view of the surrounding literature. With the volume of model submissions to conversational datasets increasing every year, there exists a need to consolidate the scattered knowledge in this domain to streamline future research. This literature review attempts at providing a holistic overview of CMC with an emphasis on the common trends across recently published models, specifically in their approach to tackling conversational history. The review synthesizes a generic framework for CMC models while highlighting the differences in recent approaches and intends to serve as a compendium of CMC for future researchers.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源