Neural Question Generation based on Seq2Seq

Bingran Liu
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引用次数: 9

Abstract

Neural Question Generation is the use of deep neural networks to extract target answers from a given article or paragraph and generate questions based on the target answers. There is a problem in the previous NQG(Neural Question Generation) model, and the generated question does not explicitly connect with the context in the target answer, resulting in a large part of the generated question containing the target answer and the accuracy is not high. In this paper, a QG model based on seq2seq is used, which consists of encode and decoder, and adds the attention mechanism and copy mechanism. We use special tags to replace the target answer of the original paragraph, and use the paragraph and target answer as input to reduce the number of incorrect questions, including the correct answer. Through the partial copy mechanism based on character overlap, we can make the generation problem have higher overlap and relevance at the word level and the input document. Experiments show that our proposed model performs better than before.
基于Seq2Seq的神经问题生成
神经问题生成是利用深度神经网络从给定的文章或段落中提取目标答案,并根据目标答案生成问题。以前的NQG(Neural Question Generation,神经问题生成)模型存在一个问题,生成的问题没有明确地与目标答案中的上下文连接,导致生成的问题中有很大一部分包含目标答案,准确率不高。本文采用了基于seq2seq的QG模型,该模型由编码和解码器组成,并增加了注意机制和复制机制。我们使用特殊的标签来替换原段落的目标答案,并使用段落和目标答案作为输入,以减少错误问题的数量,包括正确答案。通过基于字符重叠的部分复制机制,可以使生成问题在词级与输入文档有较高的重叠和相关性。实验结果表明,本文提出的模型具有较好的性能。
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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