2014
DOI: 10.3390/a7040538
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Predicting Student Academic Performance: A Comparison of Two Meta-Heuristic Algorithms Inspired by Cuckoo Birds for Training Neural Networks

Abstract: Predicting student academic performance with a high accuracy facilitates admission decisions and enhances educational services at educational institutions. This raises the need to propose a model that predicts student performance, based on the results of standardized exams, including university entrance exams, high school graduation exams, and other influential factors. In this study, an approach to the problem based on the artificial neural network (ANN) with the two meta-heuristic algorithms inspired by cuck… Show more

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Cited by 32 publications
(19 citation statements)
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“…For example, the model found to be the best in the present study resulted into MSE value of 0.0170 during training, which is smaller than MSE of 0.0196 obtained during testing. This findings agree with majority of other studies conducted in similar area such as in [12] and in [17]. For stance, a study conducted by [12] obtained MSE of 0.017 during training than what obtained in testing of 0.0191 when developing a prediction model of one thousands students' results in higher education.…”
Section: Mse On Testing and Training Setssupporting
confidence: 81%
“…For example, the model found to be the best in the present study resulted into MSE value of 0.0170 during training, which is smaller than MSE of 0.0196 obtained during testing. This findings agree with majority of other studies conducted in similar area such as in [12] and in [17]. For stance, a study conducted by [12] obtained MSE of 0.017 during training than what obtained in testing of 0.0191 when developing a prediction model of one thousands students' results in higher education.…”
Section: Mse On Testing and Training Setssupporting
confidence: 81%
“…Four Indicators from the xAPI indicated the student final achievement and the predictivity of the regression model with four variables explained of variance of 58% of the final score where the predictability of the model showed to be high compared those from previous research (e.g., 33% in McFadden & Dawson, 2010, and 31% in To sum the results up, the outcome indicated with clearance the importance of the engagement of students online and the importance of online learning , submitting tasks /emails in actionably timely manner , and regular visiting of the course content online and reading the course guidelines which are emphasized and highlighted by other researchers [38].…”
Section: Descriptive and Correlation Analysesmentioning
confidence: 49%
“…Firstly despite that the xAPI gave many variables online and many offline variables been collected , the fact that [38]highlighted the idea of not using many actual predictors as it would result in better results therefore researchers still need to work in finding more predictors that would help in measuring the student engagement with online content. The current research implies the importance of online learning and the engagement of the student with the course material online is extremely important.…”
Section: Descriptive and Correlation Analysesmentioning
confidence: 99%
“…ANN is models based on biological neural networks. It is one of noteworthy intelligent machine learning technique [19]. In this paper, data selected from collected data of students are used to predict semester performance of students.…”
Section: Design Of Neural Networkmentioning
confidence: 99%