Student-Performulator: Student Academic Performance Using Hybrid Deep Neural Network

Educational data generated through various platforms such as e-learning, e-admission systems, and automated result management systems can be effectively processed through educational data mining techniques in order to gather highly useful insights into students’ performance. The prediction of studen...

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Veröffentlicht in:Sustainability 2021-09, Vol.13 (17), p.9775
Hauptverfasser: Yousafzai, Bashir Khan, Khan, Sher Afzal, Rahman, Taj, Khan, Inayat, Ullah, Inam, Ur Rehman, Ateeq, Baz, Mohammed, Hamam, Habib, Cheikhrouhou, Omar
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container_end_page
container_issue 17
container_start_page 9775
container_title Sustainability
container_volume 13
creator Yousafzai, Bashir Khan
Khan, Sher Afzal
Rahman, Taj
Khan, Inayat
Ullah, Inam
Ur Rehman, Ateeq
Baz, Mohammed
Hamam, Habib
Cheikhrouhou, Omar
description Educational data generated through various platforms such as e-learning, e-admission systems, and automated result management systems can be effectively processed through educational data mining techniques in order to gather highly useful insights into students’ performance. The prediction of student performance from historical academic data is a highly desirable application of educational data mining. In this regard, there is an urgent need to develop an automated technique for student performance prediction. Existing studies on student performance prediction primarily focus on utilizing the conventional feature representation schemes, where extracted features are fed to a classifier. In recent years, deep learning has enabled researchers to automatically extract high-level features from raw data. Such advanced feature representation schemes enable superior performance in challenging tasks. In this work, we examine the deep neural network model, namely, the attention-based Bidirectional Long Short-Term Memory (BiLSTM) network to efficiently predict student performance (grades) from historical data. In this article, we have used the most advanced BiLSTM combined with an attention mechanism model by analyzing existing research problems, which are based on advanced feature classification and prediction. This work is really vital for academicians, universities, and government departments to early predict the performance. The superior sequence learning capabilities of BiLSTM combined with attention mechanism yield superior performance compared to the existing state-of-the-art. The proposed method has achieved a prediction accuracy of 90.16%.
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subjects Academic achievement
Accuracy
Big Data
Collaboration
Data mining
Datasets
Decision trees
Deep learning
Education
Feature selection
Historical account
Learning
Long short-term memory
Machine learning
Neural networks
Predictions
Principal components analysis
Recommender systems
Representations
Student behavior
Sustainability
Sustainable development
System effectiveness
title Student-Performulator: Student Academic Performance Using Hybrid Deep Neural Network
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