Learning to Identify Follow-Up Questions in Conversational Question Answering

Souvik Kundu, Qian Lin, H. Ng
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引用次数: 9

Abstract

Despite recent progress in conversational question answering, most prior work does not focus on follow-up questions. Practical conversational question answering systems often receive follow-up questions in an ongoing conversation, and it is crucial for a system to be able to determine whether a question is a follow-up question of the current conversation, for more effective answer finding subsequently. In this paper, we introduce a new follow-up question identification task. We propose a three-way attentive pooling network that determines the suitability of a follow-up question by capturing pair-wise interactions between the associated passage, the conversation history, and a candidate follow-up question. It enables the model to capture topic continuity and topic shift while scoring a particular candidate follow-up question. Experiments show that our proposed three-way attentive pooling network outperforms all baseline systems by significant margins.
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学习在会话式问答中识别后续问题
尽管最近在会话问题回答方面取得了进展,但大多数先前的工作并不关注后续问题。实用的会话式问答系统通常会在正在进行的对话中接收后续问题,对于系统来说,能够确定问题是否为当前对话的后续问题,以便随后更有效地找到答案是至关重要的。在本文中,我们引入了一种新的后续问题识别任务。我们提出了一个三向关注池网络,通过捕获相关段落、对话历史和候选后续问题之间的配对交互来确定后续问题的适用性。它使模型能够在对特定候选后续问题进行评分时捕捉主题连续性和主题转移。实验表明,我们提出的三方关注池化网络的性能明显优于所有基线系统。
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