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Leveraging Context Information for Natural Question Generation

机译:利用上下文信息生成自然问题

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摘要

The task of natural question generation is to generate a corresponding question given the input passage (fact) and answer. It is useful for enlarging the training set of QA systems. Previous work has adopted sequence-to-sequence models that take a passage with an additional bit to indicate answer position as input. However, they do not explicitly model the information between answer and other context within the passage. We propose a model that matches the answer with the passage before generating the question. Experiments show that our model outperforms the existing state of the art using rich features.
机译:自然问题生成的任务是在给定输入段落(事实)和答案的情况下生成相应的问题。这对于扩大质量检查系统的培训范围很有用。先前的工作采用了序列到序列模型,该模型采用带有附加位的段落来指示答案位置作为输入。但是,他们没有明确地对段落中答案和其他上下文之间的信息进行建模。我们提出一个在生成问题之前将答案与段落匹配的模型。实验表明,我们的模型使用丰富的功能胜过现有技术。

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