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Predicting Students' Academic Achievement: Comparison between Logistic Regression, Artificial Neural Network, and Neuro-Fuzzy

机译:预测学生的学术成就:物流回归,人工神经网络与神经模糊之间的比较

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Predicting students' academic performance is critical for educational institutions because strategic programs can be planned in improving or maintaining students' performance during their period of studies in the institutions. The academic performance in this study is measured by their cumulative grade point average (CGPA) upon graduating. In this study, the students' demographic profile and the CGPA for the first semester of the undergraduate studies are used as the predictor variable for the students' academic performance in the under-graduate degree program. Three predictive models have been developed, namely, logistic regression, artificial neural network (ANN) and Neuro-fuzzy. Performances of all the models were measured using root mean squared error (RMSE). The experiments indicate that Neuro-fuzzy model is better than logistic regression and ANN.
机译:预测学生的学术表现对于教育机构至关重要,因为战略计划可以计划在制度的研究期间改善或维持学生的表现。本研究中的学术表现是通过毕业后的累积等级点平均值(CGPA)来衡量的。在这项研究中,学生的人口统计概况和本科学期第一学期的CGPA被用作学生在研究生学位计划中的学生学历的预测因素变量。已经开发了三种预测模型,即Logistic回归,人工神经网络(ANN)和神经模糊。使用根均方误差(RMSE)测量所有模型的性能。实验表明,神经模糊模型比Logistic回归和Ann更好。

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