评价学生成绩的数据挖掘

Shaymaa E. Sorour, Tsunenori Mine, Kazumasa Goda, S. Hirokawa
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引用次数: 11

摘要

本研究提出了基于学生评论数据的学生成绩预测方法。每节课结束后,学生可以自由地写下自己的学习态度、倾向和行为。本研究的主要困难是通过在每节课中分别使用两个班级数据来预测学生的表现。虽然学生们学习的是同一学科,但在两个班级的评论中存在差异。本文提出的方法基本采用了潜在语义分析(LSA)和支持向量机(SVM)和人工神经网络(ANN)两种机器学习技术来预测学生在S、A、B、c四个年级的最终成绩,并提出了一种重叠方法来提高预测结果的准确性,该方法允许一个分数接受两个等级,以获得LSA结果与学生成绩之间的正确关系。本文提出的方法对支持向量机和人工神经网络的学生成绩预测准确率分别达到50.7%和48.7%。为此,本研究的结果报告了学生学习成绩预测模型,这些模型是了解学生行为并向他们提供反馈的宝贵资源,以便我们改善他们的学习活动。
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Comments Data Mining for Evaluating Student's Performance
The present study proposes prediction approaches of student's grade based on their comments data. Students describe their learning attitudes, tendencies and behaviors by writing their comments freely after each lesson. The main difficulty of this research is to predict students' performance by separately using two class data in each lesson. Although students learn the same subject, there exist differences between the comments in the two classes. The proposed methods basically employ latent semantic analysis (LSA) and two types of machine learning technique: SVM (support vector machine) and ANN (artificial neural network) for predicting students' final results in four grades of S, A, B and C. Moreover, an overlap method was proposed to improve the accuracy prediction results, the method allows to accept two grades for one mark to get the correct relation between LSA results and students' grades. The proposed methods achieve 50.7% and 48.7% prediction accuracy of students' grades by SVM and ANN, respectively. To this end, the results of this study reported models of students' academic performance predictors that are valuable sources of understanding students' behavior and giving feedback to them so that we can improve their learning activities.
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