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Prediction of engineering students#039; academic performance using Artificial Neural Network and Linear Regression: A comparison

机译:人工神经网络和线性回归预测工科学生的学习成绩:比较

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Predicting students' performance is very important if not crucial especially in engineering courses. This is to enable strategic intervention to be carried out before the students reach the higher semesters including the final semester before graduation. This paper presents a comparison study between Artificial Neural Network (ANN) and Linear Regression (LR) in predicting the academic performance. Cumulative Grade Point Average (CGPA) was used to measure the academic achievement at semester eight. The study was conducted at the Faculty of Electrical Engineering, Universiti Teknologi MARA (UiTM), Malaysia. Students' fundamental subjects results at first semester were used as independent variables or input predictor variables while CGPA in the final semester that is at semester 8 is used as the output or the dependent variable. Performances of the models were measured using the coefficient of Correlation R and that of Mean Square Error (MSE). The outcomes of the study from both models indicate a strong correlation between fundamental results for core subjects at semester one or semester three with the final CGPA.
机译:预测学生的表现非常重要,即使不是很关键,尤其是在工程课程中。这是为了使策略干预能够在学生达到更高的学期之前进行,包括毕业前的最后一个学期。本文对人工神经网络(ANN)和线性回归(LR)在预测学习成绩方面进行了比较研究。累积平均绩点(CGPA)用于衡量第八学期的学业成绩。这项研究是在马来西亚Teknologi MARA大学(UiTM)的电气工程学院进行的。第一学期的学生基本科目成绩用作自变量或输入预测变量,而第8学期的最后一学期的CGPA用作输出或因变量。使用相关系数R和均方误差(MSE)来测量模型的性能。两种模型的研究结果均表明,第一学期或第三学期核心科目的基本结果与最终CGPA之间有很强的相关性。

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