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Web Usage Mining for Predicting Final Marks of Students That Use Moodle Courses

机译:Web用法挖掘可预测使用Moodle课程的学生的最终成绩

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摘要

This paper shows how web usage mining can be applied in e-learning systems in order to predict the marks that university students will obtain in the final exam of a course. We have also developed a specific Moodle mining tool oriented for the use of not only experts in data mining but also of newcomers like instructors and courseware authors. The performance of different data mining techniques for classifying students are compared, starting with the student's usage data in several Cordoba University Moodle courses in engineering. Several well-known classification methods have been used, such as statistical methods, decision trees, rule and fuzzy rule induction methods, and neural networks. We have carried out several experiments using all available and filtered data to try to obtain more accuracy. Discretization and rebalance pre-processing techniques have also been used on the original numerical data to test again if better classifier models can be obtained. Finally, we show examples of some of the models discovered and explain that a classifier model appropriate for an educational environment has to be both accurate and comprehensible in order for instructors and course administrators to be able to use it for decision making.
机译:本文展示了如何在电子学习系统中应用网络使用挖掘,以预测大学生在课程的期末考试中获得的分数。我们还开发了一种特定的Moodle挖掘工具,该工具不仅面向数据挖掘专家,而且还面向新手,例如讲师和课件作者。从科尔多瓦大学Moodle的几门工程课程中学生的使用数据开始,比较了用于分类学生的不同数据挖掘技术的性能。已经使用了几种众所周知的分类方法,例如统计方法,决策树,规则和模糊规则归纳方法以及神经网络。我们使用所有可用的和经过过滤的数据进行了几次实验,以尝试获得更高的准确性。离散化和再平衡预处理技术也已用于原始数值数据,以再次测试是否可以获得更好的分类器模型。最后,我们展示一些发现的模型的示例,并解释说,适用于教育环境的分类器模型必须既准确又可理解,以便教师和课程管理员能够将其用于决策。

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