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Finding peculiar students from student database using outlier analysis: Data mining approach

机译:使用异常分析查找来自学生数据库的特殊学生:数据挖掘方法

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Students with different behaviors joined in the educational institutions create different problems in class. To bring them in right path, mentors should be able to find such candidates in the class. Since these students are different in behavior, the teaching faculty should not teach the common approach of teaching for all students. These people would have abnormal behavior when compared with other students. These students are treated as peculiar students. The Students data is almost mixed type of data. In this paper how these peculiar students are found using data mining techniques is presented. In this paper the techniques related to categorical attribute data are used. The data is collected from B. Tech students from different colleges for experiments using ILS questionnaire [1]. We have also investigated the relationship of peculiarity with learning styles.
机译:在教育机构中加入不同行为的学生在课堂上产生了不同的问题。 把它们带到正确的道路上,导师应该能够在课堂上找到这样的候选人。 由于这些学生的行为不同,教学教师不应教导所有学生的常见教学方法。 与其他学生相比,这些人会有异常行为。 这些学生被视为特殊的学生。 学生数据几乎是混合类型的数据。 在本文中,如何使用数据挖掘技术找到这些特殊的学生。 在本文中,使用与分类属性数据相关的技术。 这些数据由来自不同大学的科技学生从不同高校进行实验,使用ILS问卷[1]。 我们还研究了与学习风格的特殊关系的关系。

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