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How to Ask Good Questions? Try to Leverage Paraphrases

机译:如何提出好问题?尽量利用释义

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Given a sentence and its relevant answer, how to ask good questions is a challenging task, which has many real applications. Inspired by human's paraphrasing capability to ask questions of the same meaning but with diverse expressions, we propose to incorporate paraphrase knowledge into question genera-tion(QG) to generate human-like questions. Specifically, we present a two-hand hybrid model leveraging a self-built paraphrase resource, which is automatically conducted by a simple back-translation method. On the one hand, we conduct multi-task learning with sentence-level paraphrase generation (PG) as an auxiliary task to supplement paraphrase knowledge to the task-share encoder. On the other hand, we adopt a new loss function for diversity training to introduce more question patterns to QG. Extensive experimental results show that our proposed model obtains obvious performance gain over several strong baselines, and further human evaluation validates that our model can ask questions of high quality by leveraging paraphrase knowledge.
机译:给定一个句子及其相关答案,如何提出好的问题是一项具有挑战性的任务,它有许多实际应用。受人类释义能力的启发,我们提出将释义知识整合到问题生成(QG)中,以生成类似人类的问题。具体来说,我们提出了一个双手混合模型,利用自建的释义资源,通过简单的回译方法自动执行。一方面,我们进行多任务学习,将句子级释义生成(PG)作为辅助任务,以补充任务共享编码器的释义知识。另一方面,我们采用了一种新的多样性训练损失函数,在QG中引入了更多的问题模式。大量的实验结果表明,我们提出的模型在几个强基线上获得了明显的性能增益,进一步的人类评估验证了我们的模型可以通过利用释义知识提出高质量的问题。

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