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Interconnected Question Generation with Coreference Alignment and Conversation Flow Modeling

机译:具有共指比对和对话流建模的互连问题生成

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We study the problem of generating interconnected questions in question-answering style conversations. Compared with previous works which generate questions based on a single sentence (or paragraph), this setting is different in two major aspects: (1) Questions are highly conversational. Almost half of them refer back to conversation history using coreferences. (2) In a coherent conversation, questions have smooth transitions between turns. We propose an end-to-end neural model with coreference alignment and conversation flow modeling. The coreference alignment modeling explicitly aligns coreferent mentions in conversation history with corresponding pronominal references in generated questions, which makes generated questions interconnected to conversation history. The conversation flow modeling builds a coherent conversation by starting questioning on the first few sentences in a text passage and smoothly shifting the focus to later parts. Extensive experiments show that our system outperforms several baselines and can generate highly conversational questions. The code implementation is released at https://github.com/Evan-Gao/conversaional-QG.
机译:我们研究在问答式对话中生成相互关联的问题的问题。与以前的基于单个句子(或段落)生成问题的作品相比,此设置在两个主要方面有所不同:(1)问题是高度对话的。他们中几乎有一半使用共同引用来参考对话历史记录。 (2)在连贯的对话中,问题在转弯之间具有平稳的过渡。我们提出了一个具有共指对齐和对话流建模的端到端神经模型。共指对齐建模将对话历史中的核心提及与生成问题中的相应代词参考明确对齐,这使生成的问题与对话历史相互关联。对话流建模通过开始对文本段落中前几个句子的提问并平稳地将焦点转移到后面的部分来建立连贯的对话。大量的实验表明,我们的系统优于几个基准,并且可以引发高度对话性的问题。该代码实现在https://github.com/Evan-Gao/conversaional-QG上发布。

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