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College Students Learning Behavior Analysis Based on SVM and Fisher-Score Feature Selection

机译:基于SVM和Fisher-Score功能选择的大学生学习行为分析

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With the development of modern educational methods, new modes and platforms for college students' learning have appeared. Through the scientific statistics and analysis of students' learning behaviors, we can find the regular pattern contained in these data, discover students' interest goals and predict learning effects, and provide students with targeted and personalized learning guidance. At present, the common analysis methods are mainly K-means clustering method. Considering the support vector machine has higher classification accuracy, this paper proposes a support vector machine analysis method based on Fisher-Score feature selection for students learning behavior analysis. Firstly, through the Fisher-Score feature selection, the key features in the learning behavior are selected, and the honor features unrelated to the learning effect are removed, and then the data analysis is performed by the SVM classifier. The verification results show that our method has better accuracy.
机译:随着现代教育方法的发展,出现了大学生学习的新模式和平台。 通过科学统计和分析学生的学习行为,我们可以找到这些数据中包含的常规模式,发现学生的利息目标和预测学习效果,并为学生提供有针对性和个性化的学习指导。 目前,常见的分析方法主要是k均值聚类方法。 考虑到支持向量机具有更高的分类精度,本文提出了一种基于Fisher-Score特征选择的支持向量机分析方法,了解学生学习行为分析。 首先,通过Fisher-Score特征选择,选择学习行为中的关键特征,并删除与学习效果无关的荣誉功能,然后通过SVM分类器执行数据分析。 验证结果表明,我们的方法具有更好的准确性。

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