A Common Semantic Scoring Method for Chinese Subjective Questions

Xin-hua Zhu, Qingting Xu, Lanfang Zhang, Hanjun Deng, Hongchao Chen
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Abstract

With the rapid development of computer technologies and artificial intelligence, intelligent tutoring system is increasingly applied to our daily lives. This paper proposes a common semantic scoring method for Chinese subjective questions based on dependencies, modifiers and HowNet. First, we use dependencies to construct question classification predicate formulas for determining the question type and getting the characteristic words in the question. Then, we use dependency chains to extract multiple sets of score points in the answer according to the question type, and to optimize the answer's score points according to the feature words in the question sentence. Finally, we use the common semantic dictionary HowNet to calculate the similarities between the score points that have the same dependencies respectively in the student answers and the standard answer, and to combine the modifiers in answer sentences for calculating the final score of the subjective question. Experimental results show that our proposed method has the advantages of rapidity, accuracy and efficiency, and surpasses many excellent subjective question scoring methods.
汉语主观性问题的通用语义评分方法
随着计算机技术和人工智能的飞速发展,智能辅导系统越来越多地应用到我们的日常生活中。本文提出了一种基于依存关系、修饰语和知网的汉语主观性问题通用语义评分方法。首先,利用依赖关系构造问题分类谓词公式,确定问题类型,获取问题中的特征词;然后,根据问题类型,使用依赖链提取答案中的多组分数点,并根据问题句子中的特征词对答案的分数点进行优化。最后,我们使用通用语义词典HowNet计算学生答案中具有相同依赖关系的分数点与标准答案之间的相似度,并结合答案句子中的修饰语计算主观问题的最终分数。实验结果表明,该方法具有快速、准确和高效的优点,优于许多优秀的主观问题评分方法。
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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