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Evolutionary algorithms for subgroup discovery applied to e-learning data

机译:用于电子学习数据的亚组发现进化算法

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This work presents the application of subgroup discovery techniques to e-learning data from learning management systems (LMS) of andalusian universities. The objective is to extract rules describing relationships between the use of the different activities and modules available in the e-learning platform and the final mark obtained by the students. For this purpose, the results of different classical and evolutionary subgroup discovery algorithms are compared, showing the adequacy of the evolutionary algorithms to solve this problem. Some of the rules obtained are analyzed with the aim of extract knowledge allowing the teachers to take actions to improve the performance of their students.
机译:这项工作介绍了小组发现技术在来自安达卢西亚大学的学习管理系统(LMS)的电子学习数据中的应用。目的是提取规则,以描述电子学习平台中不同活动和模块的使用与学生获得的最终成绩之间的关系。为此,比较了不同的经典和进化子组发现算法的结果,显示了进化算法足以解决此问题。分析获得的一些规则,目的是提取知识,使教师能够采取行动来提高学生的表现。

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