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Incremental and Adaptive Fuzzy Clustering for Virtual Learning Environments Data Analysis

机译:虚拟学习环境数据分析的增量和自适应模糊聚类

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Virtual Learning Environments (VLE) offer a wide range of courses and learning supports for students. Such innovative learning platforms generate daily a huge quantity of data, regarding the interactions among the students and the VLE. To analyze these big educational data a new research branch called educational data mining (EDM) has emerged, that puts together computer scientists and pedagogues researchers' expertise. So far, educational data have been studied as stationary data by traditional machine learning methods. Rather, educational data are non-stationary in nature and can be better analyzed as data streams. In this paper we investigate the use of an adaptive fuzzy clustering algorithm called DISSFCM (Dynamic Incremental Semi-Supervised FCM) to process educational data as data streams and predict the students' outcomes to one exam module. Numerical experiments on the Open University Learning Analytics Dataset (OULAD) show the reliability of DISSFCM in creating good classification models of educational data.
机译:虚拟学习环境(VLE)为学生提供了广泛的课程和学习支持。此类创新的学习平台每天会生成大量有关学生与VLE之间相互作用的数据。为了分析这些大的教育数据,新成立了一个名为教育数据挖掘(EDM)的研究分支,该分支汇集了计算机科学家和教育工作者研究人员的专业知识。到目前为止,已经通过传统的机器学习方法将教育数据作为固定数据进行了研究。而是,教育数据本质上是非平稳的,可以作为数据流进行更好地分析。在本文中,我们研究了使用称为DISSFCM(动态增量半监督FCM)的自适应模糊聚类算法将教育数据作为数据流进行处理,并通过一个考试模块预测学生的成绩。开放大学学习分析数据集(OULAD)上的数值实验表明,DISSFCM在创建良好的教育数据分类模型中具有可靠性。

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