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Using Multiple Encoders for Chinese Neural Question Generation from the Knowledge Base

机译:从知识库中使用多种编码器进行中文神经问题

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Question generation is an important task in the field of natural language processing and intelligent tutoring system. Previous work on Chinese question generation focused on the rule-based approach, which requires a large amount of human resource to develop the question generation rules. With the recent success of deep neural network in natural language processing, especially the encoder-decoder neural network framework in machine translation, this study explored the effectiveness of the encoder-decoder network in Chinese question generation, where a triple from the knowledge base as an input is encoded and a question as the output is decoded. More importantly, the traditional encoder-decoder network is extended to have multiple encoders that can capture more diverse features to represent the triple. The study results showed that the model with multiple encoders outperformed the traditional encoder-decoder neural network by 1.78 BLEU points.
机译:问题生成是自然语言处理和智能辅导系统领域的重要任务。以前关于中国问题的工作,重点是基于规则的方法,这需要大量的人力资源来制定问题生成规则。随着最近在自然语言处理中深度神经网络的成功,尤其是编码器解码器神经网络框架在机器翻译中,本研究探讨了中文问题的编码器 - 解码器网络的有效性,其中来自知识库的三倍作为一个输入被编码,并且作为输出解码的问题。更重要的是,传统的编码器 - 解码器网络扩展为具有多个编码器,可以捕获更多样化的特征来表示三倍。研究结果表明,多种编码器的模型优于传统的编码器解码器神经网络1.78 BLEU点。

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