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Development of a Bayesian Belief Network-based DSS for predicting and understanding freshmen student attrition

机译:开发贝叶斯信仰网络的DSS,用于预测和理解新生学生的消磨

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Student attrition - the departure from an institution of higher learning prior to the achievement of a degree or earning due educational credentials - is an administratively important, scientifically interesting and yet practically challenging problem for decision makers and researchers. This study aims to find the prominent variables and their conditional dependencies/interrelations that affect student attrition in college settings. Specifically, using a large and feature-rich dataset, proposed methodology successfully captures the probabilistic interactions between attrition (the dependent variable) and related factors (the independent variables) to reveal the underlying, potentially complex/non-linear relationships. The proposed methodology successfully predicts the individual students' attrition risk through a Bayesian Belief Network-driven probabilistic model. The findings suggest that the proposed probabilistic graphical/network method is capable of predicting student attrition with 84% in AUC - Area Under the Receiver Operating Characteristics Curve. Using a 2-by-2 investigational design framework, this body of research also compares the impact and contribution of data balancing and feature selection to the resultant prediction models. The results show that (1) the imbalanced dataset produces similar predictive results in detecting the at-risk students, and (2) the feature selection, which is the process of identifying and eliminating unnecessary/unimportant predictors, results in simpler, more understandable, interpretable, and actionable results without compromising on the accuracy of the prediction task. (C) 2019 Elsevier B.V. All rights reserved.
机译:学生消耗 - 在实现学位或获得适当的教育证书之前从高等学校的出发 - 是决策者和研究人员的行政上重要的,科学的有趣,但实际上具有挑战性的问题。本研究旨在找到影响大学环境中的学生消耗的突出变量及其有条件依赖/相互关系。具体而言,使用大型和特征的数据集,提出的方法成功地捕获了磨损(从属变量)和相关因子(独立变量)之间的概率交互,以揭示潜在的潜在复杂/非线性关系。拟议的方法成功地通过贝叶斯信仰网络驱动的概率模型预测了个人学生的磨损风险。研究结果表明,所提出的概率图形/网络方法能够在接收机操作特性曲线下预测84%的学生疲劳。使用2×2的调查设计框架,该研究体也比较了数据平衡和特征选择对所得到的预测模型的影响和贡献。结果表明,(1)不平衡数据集在检测到风险的学生中产生类似的预测结果,(2)特征选择,这是识别和消除不必要/不重要的预测器的过程,导致更简单,更易懂,更容易理解可解释的,可操作的结果而不影响预测任务的准确性。 (c)2019 Elsevier B.v.保留所有权利。

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