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.
CITATION STYLE
Kundu, S., Lin, Q., & Ng, H. T. (2020). Learning to identify follow-up questions in conversational question answering. In Proceedings of the Annual Meeting of the Association for Computational Linguistics (pp. 959–968). Association for Computational Linguistics (ACL). https://doi.org/10.18653/v1/2020.acl-main.90
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