Identifying Factors Contributing to University Dropout with Sparse Logistic Regression

G. Hori
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引用次数: 3

Abstract

Prediction and prevention of dropout are main challenges of institutional research (IR) in universities nowa- days. If we can identify factors significantly contributing to dropout by statistical inference, then it is helpful for devel- oping strategies for dropout prevention. The main problem in identifying such significant factors is that available data contain much more candidate factors than the students. Most of conventional statistical methods do not work well unless the number of data is much more than the number of parameters to be estimated, which means that we cannot apply such methods in identifying factors contributing to dropout. To circumvent the situation, we propose to use sparse logistic regression for identifying factors contributing to dropout based on data with a large number of candidate factors. Sparse logis- tic regression is a method that can analyze such data reliably by pruning factors that do not contribute to the analysis. To demonstrate how sparse logistic regression identifies factors contributing to dropout, we applied the method to actual university credit data of 410 students for 302 courses and identified 18 courses that significantly contribute to dropout. The contributions of the identified courses to dropout are interpreted.
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稀疏Logistic回归分析大学辍学率影响因素
辍学预测与预防是当前高校制度研究面临的主要挑战。如果我们能够通过统计推断找出对辍学有显著影响的因素,那么对制定预防辍学的策略是有帮助的。识别这些重要因素的主要问题是,现有数据包含的候选因素比学生多得多。大多数传统的统计方法都不能很好地工作,除非数据的数量远远超过要估计的参数的数量,这意味着我们不能应用这些方法来识别导致辍学的因素。为了避免这种情况,我们建议使用稀疏逻辑回归来识别基于具有大量候选因素的数据的导致辍学的因素。稀疏逻辑回归是一种可以通过修剪对分析没有贡献的因素来可靠地分析此类数据的方法。为了证明稀疏逻辑回归如何识别导致辍学的因素,我们将该方法应用于410名学生的302门课程的实际大学学分数据,并确定了18门课程对辍学有显著影响。被确定的课程对辍学的贡献被解释。
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