Multi-hop Question Generation without Supporting Fact Information

John Emerson, Yllias Chali
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Abstract

Question generation is the parallel task of question answering, where given an input context and optionally, an answer, the goal is to generate a relevant and fluent natural language question. Although recent works on question generation have experienced success by utilizing sequence-to-sequence models, there is a need for question generation models to handle increasingly complex input contexts with the goal of producing increasingly elaborate questions. Multi-hop question generation is a more challenging task that aims to generate questions by connecting multiple facts from multiple input contexts. In this work we apply a transformer model to the task of multi-hop question generation, without utilizing any sentence-level supporting fact information. We utilize concepts that have proven effective in single-hop question generation, including a copy mechanism and placeholder tokens. We evaluate our model's performance on the HotpotQA dataset using automated evaluation metrics and human evaluation, and show an improvement over the previous works.  
不支持事实信息的多跳问题生成
问题生成是问题回答的并行任务,其中给定输入上下文和可选的答案,目标是生成相关且流畅的自然语言问题。尽管最近关于问题生成的工作已经通过使用序列到序列模型获得了成功,但是仍然需要问题生成模型来处理越来越复杂的输入上下文,以产生越来越复杂的问题。多跳问题生成是一项更具挑战性的任务,它旨在通过连接来自多个输入上下文的多个事实来生成问题。在这项工作中,我们将一个转换模型应用于多跳问题生成任务,而不使用任何句子级支持事实信息。我们使用了在单跳问题生成中被证明有效的概念,包括复制机制和占位符令牌。我们使用自动评估指标和人工评估来评估我们的模型在HotpotQA数据集上的性能,并显示出比以前的工作有所改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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