Recent systematic review on student performance prediction using backpropagation algorithms

A comprehensive systematic study was carried out in order to identify various deep learning methods developed and used for predicting student academic performance. Predicting academic performance allows for the implementation of various preventive and supportive measures earlier in order to improve...

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Veröffentlicht in:Telkomnika 2022-06, Vol.20 (3), p.597-606
Hauptverfasser: Ismanto, Edi, Ab Ghani, Hadhrami, Md Saleh, Nurul Izrin, Al Amien, Januar, Gunawan, Rahmad
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container_end_page 606
container_issue 3
container_start_page 597
container_title Telkomnika
container_volume 20
creator Ismanto, Edi
Ab Ghani, Hadhrami
Md Saleh, Nurul Izrin
Al Amien, Januar
Gunawan, Rahmad
description A comprehensive systematic study was carried out in order to identify various deep learning methods developed and used for predicting student academic performance. Predicting academic performance allows for the implementation of various preventive and supportive measures earlier in order to improve academic performance and reduce failure and dropout rates. Although machine learning schemes were once popular, deep learning algorithms are now being investigated to solve difficult predictions of student performance in larger datasets with more data attributes. Deep neural network prediction methods with clear modelling and parameter measurements formulated on publicly available and recognised datasets are the focus of the research. Widely used for academic performance prediction, backpropagation algorithms have been trained and tested with various datasets, especially those related to learning management systems (LMS) and massive open online courses (MOOC). The most widely used prediction method appears to be the standard artificial neural network approach. The long-short-term memory (LSTM) approach has been reported to achieve an accuracy of around 87 percent for temporal student performance data. The number of papers that study and improve this method shows that there is a clear rise in deep learning-based academic performance prediction over the last few years.
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subjects Academic achievement
Accuracy
Algorithms
Artificial intelligence
Artificial neural networks
Back propagation
Back propagation networks
Classification
Datasets
Deep learning
Higher education
Machine learning
Neural networks
Performance prediction
School dropouts
Students
Systematic review
title Recent systematic review on student performance prediction using backpropagation algorithms
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