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Comparison analysis of data mining methodology and student performance improvement influence factors in small data set

机译:小数据集数据挖掘方法的比较分析和学生绩效改进影响因素

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Based on Programme for International Student Assessment survey, Indonesia student performance was on the lower position compared to other participated countries. Nevertheless, the actual reason of someone's performance in studying is hard to predict. Therefore, we need to limit the research's scope for finding more specific influencing factors. In this study, a group of students who have the same learning method, teacher, course, and also facility in a learning environment is observed to find significant influencing factors. We develop a questionnaire with various factors that are related to students' characteristic. It is administered to students of Junior High School Muhammadiyah 2 Depok Sleman in the same year. Consequently, data gathered is in small size. In order to yield maximum accuracy in small dataset, SMOTE is used to generate new data synthetically hence instance number is increasing. Besides several approaches were analyzed by using combination of preprocessing and variation feature selections. The result of this research shows that attribute subset selection by Classifier Subset Evaluator (CSE) yields the best result based on Naive Bayes accuracy and variance. Various significant factors influencing studying performance of tested students were also found including blood type, who student live with, father's education, mother's education, kind of activity done in spare time and favorite course.
机译:根据国际学生评估调查计划,与其他参加国家相比,印度尼西亚学生表现是较低的地位。然而,某人在学习中的表现的实际原因很难预测。因此,我们需要限制研究的范围,以寻找更具体的影响因素。在这项研究中,观察了一群拥有相同的学习方法,教师,课程以及在学习环境中设施的学生,以找到显着的影响因素。我们开发了一个与学生特征有关的各种因素的调查问卷。它是在同年的初中穆罕默德·穆罕默德·莫汉迪亚的学生提供给。因此,收集的数据尺寸小。为了在小型数据集中产生最大精度,使用Smote用于生成新数据,因此实例编号正在增加。除了使用预处理和变化特征选择的组合来分析几种方法之外。该研究的结果表明,分类器子集评估器(CSE)的属性子集选择产生基于天真贝叶斯精度和方差的最佳结果。影响研究学生的研究表现的各种重要因素也被发现包括血型,父亲生活,父亲的教育,母亲的教育,在业余时间和最喜欢的课程中完成的活动。

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