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Modeling and Analysis of Students' Performance Trajectories using Diffusion Maps and Kernel Two-Sample Tests

机译:使用扩散图和核二样本检验对学生的表现轨迹进行建模和分析

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Modeling and analysis of students' performance is a common task that is aimed at identifying important factors that affect the learning process. Typically, the analysis uses one-dimensional input parameters. However, with the advancement of data collections tools, many of the gathered educational datasets have become high-dimensional. Hence, the use of standard statistical methods may be limited in cases that the initial data unit is a vector.This paper proposes to use vector input units, which consist of student performance trajectories, for identifying statistical differences in college performances for several populations of college students. Two kernel based methods named diffusion maps and the kernel two-sample test are utilized. Diffusion maps generates a low-dimensional representation of the data, in which important characteristic factors are identified. The kernel two-sample test is a statistical test for comparing whether high-dimensional samples are drawn from two different probability distributions. The two methods are combined into a unified framework.Two case studies, which are processed similarly, are presented. The first tests for significant distributional differences between students with or without learning disabilities. Our results show that these groups' performances is significantly different. The second case-study analyzes whether the SAT score impacts students' performance throughout their 4-year of studies. It was found that significant distribution differences in performance are only present for groups of students having a very high or a very low SAT score. Thus, the SAT score is only weakly correlated to students' college performance.
机译:对学生的表现进行建模和分析是一项常见任务,旨在确定影响学习过程的重要因素。通常,分析使用一维输入参数。但是,随着数据收集工具的发展,许多收集的教育数据集已成为高维的。因此,在初始数据单位是向量的情况下,可能会限制使用标准的统计方法。本文建议使用由学生成绩轨迹组成的向量输入单位来识别几个大学群体的大学成绩的统计差异。学生们。利用了两种基于核的方法,称为扩散图和核两样本测试。扩散图生成数据的低维表示,其中识别出重要的特征因素。核两样本检验是一种统计检验,用于比较是否从两个不同的概率分布中抽取了高维样本。两种方法组合成一个统一的框架。提出了两个案例研究,它们的处理方式类似。第一项测试测试有无学习障碍的学生之间的显着分布差异。我们的结果表明,这些小组的表现差异很大。第二个案例研究分析了SAT分数是否会影响学生在整个4年学习中的表现。发现仅在SAT分数非常高或非常低的学生群体中表现出显着的分布差异。因此,SAT成绩与学生的大学成绩之间的关系很小。

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