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Predicting students' academic performance by using educational big data and learning analytics: evaluation of classification methods and learning logs

机译:通过使用教育大数据和学习分析来预测学生的学术绩效:对分类方法的评估和学习日志

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In order to enhance the experience of learning, many educators applied learning analytics in a classroom, the major principle of learning analytics is targeting at-risk student and given timely intervention according to the results of student behavior analysis. However, when researchers applied machine learning to train a risk identifying model, the reason which affected the performance of the model was overlooked. This study collected seven datasets within three universities located in Taiwan and Japan and listed performance metrics of risk identification model after fed data into eight classification methods. U1, U2, and U3 were used to denote the three universities, which have three, two, and two cases of datasets (learning logs), respectively. According to the results of this study, the factors influencing the predictive performance of classification methods are the number of significant features, the number of categories of significant features, and Spearman correlation coefficient values. In U1 dataset case 1.3 and U2 dataset case 2.2, the numbers of significant features, numbers of categories of significant features, and Spearman correlation coefficient values for significant features were all relatively high, which is the main reason why these datasets were able to perform classification with high predictive ability.
机译:为了提高学习的经验,许多教育工作者在课堂上应用学习分析,学习分析的主要原则是瞄准风险学生,并根据学生行为分析的结果及时干预。然而,当研究人员应用机器学习培训风险识别模型时,忽视了影响模型性能的原因被忽视了。本研究在位于台湾和日本的三所大学内收集了七所数据集,并在将数据馈入八种分类方法后列出了风险识别模型的性能指标。 U1,U2和U3用于表示三所大学,分别具有三个,两个和两个数据集(学习日志)的情况。根据本研究的结果,影响分类方法预测性能的因素是重要特征的数量,重要特征的类别数量和矛盾的相关系数值。在U1数据集案例1.3和U2数据集案例2.2中,重要特征的数量,重要特征的类别,以及显着特征的矛盾系数值都相对较高,这是这些数据集能够执行分类的主要原因具有高预测能力。

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