智力就是问对问题:日语问题生成研究

Lasguido Nio, Koji Murakami
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引用次数: 4

摘要

传统的自动问题生成通常需要手工制作模板或复杂的NLP管道。然而,这种方法需要大量的劳动和专业知识来对句子进行形态学分析并创建NLP框架。我们的工作旨在简化这些劳动。我们对两种类型的序列学习进行了对比实验:基于统计的机器翻译和基于注意的序列神经网络。这些模型可以端到端进行训练,并且可以捕获输入序列和输出序列之间的模式,从而减少了准备复杂的NLP管道的需要。自动评估结果表明,我们的系统优于最先进的基于规则的系统,并且根据主观的人类测试,我们的系统在内容质量和流畅性方面也表现出色。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Intelligence Is Asking The Right Question: A Study On Japanese Question Generation
Traditional automatic question generation often requires hand-crafted templates or sophisticated NLP pipelines. Such approaches, however, require extensive labor and expertise to morphologically analyze the sentences and create the NLP framework. Our works aim to simplify these labors. We conduct a contrastive experiment between two types of sequence learning: statistical-based machine translation and attention-based sequence neural network. These models can be trained end-to-end, and it can capture the pattern between the input sequence and output sequence, thus diminishing the need to prepare a sophisticated NLP pipeline. Automatic evaluation results show that our system outperforms the state-of-the-art rule-based system, and also excels in terms of content quality and fluency according to a subjective human test.
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