Student Programs Performance Scoring Based on Probabilistic Latent Semantic Analysis and Multi-granularity Feature Fusion for MOOC

Ke Xu, Haijie Hu, Song Lu, Yan Huang, Xinfang Zhang, Mustafa A. Al Sibahee
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Abstract

In order to solve the problem of the low accuracy of automatic scoring for programming questions on MOOC platform, this paper proposed a multi-granularity feature fusion automatic scoring method based on potential semantic analysis. Abstract syntax tree (AST) is used to extract the features of student evaluation programs and standard answer template program, and calculate the similarity of features. According to whether the program is compiled or not, the similarity of multi-granularity features is analyzed by different strategies to score automatically. The experimental results show that the average accuracy of the method proposed in this paper outperforms the dynamic test method and the traditional static method using the test case results only, and the automatic machine scoring results are highly consistent with the human score.
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基于概率潜在语义分析和多粒度特征融合的MOOC学生课程成绩评分
为了解决MOOC平台编程题自动评分准确率低的问题,本文提出了一种基于潜在语义分析的多粒度特征融合自动评分方法。采用抽象语法树(AST)提取学生评价程序和标准答案模板程序的特征,并计算特征的相似度。根据程序是否编译,采用不同的策略对多粒度特征的相似度进行分析,自动评分。实验结果表明,本文方法的平均准确率优于仅使用测试用例结果的动态测试方法和传统静态方法,并且机器自动评分结果与人的评分高度一致。
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