Litcius/Paper detail

Multiclass Prediction Model for Student Grade Prediction Using Machine Learning

Siti Dianah Abdul Bujang, Ali Selamat, Roliana Ibrahim, Ondřej Krejcar, Enrique Herrera‐Viedma, Hamido Fujita, Nor Azura Md Ghani

2021IEEE Access186 citationsDOIOpen Access PDF

Abstract

Today, predictive analytics applications became an urgent desire in higher educational institutions. Predictive analytics used advanced analytics that encompasses machine learning implementation to derive high-quality performance and meaningful information for all education levels. Mostly know that student grade is one of the key performance indicators that can help educators monitor their academic performance. During the past decade, researchers have proposed many variants of machine learning techniques in education domains. However, there are severe challenges in handling imbalanced datasets for enhancing the performance of predicting student grades. Therefore, this paper presents a comprehensive analysis of machine learning techniques to predict the final student grades in the first semester courses by improving the performance of predictive accuracy. Two modules will be highlighted in this paper. First, we compare the accuracy performance of six well-known machine learning techniques namely Decision Tree (J48), Support Vector Machine (SVM), Naïve Bayes (NB), K-Nearest Neighbor (kNN), Logistic Regression (LR) and Random Forest (RF) using 1282 real student's course grade dataset. Second, we proposed a multiclass prediction model to reduce the overfitting and misclassification results caused by imbalanced multi-classification based on oversampling Synthetic Minority Oversampling Technique (SMOTE) with two features selection methods. The obtained results show that the proposed model integrates with RF give significant improvement with the highest f-measure of 99.5%. This proposed model indicates the comparable and promising results that can enhance the prediction performance model for imbalanced multi-classification for student grade prediction.

Topics & Concepts

Machine learningComputer scienceOversamplingArtificial intelligenceOverfittingRandom forestDecision treeSupport vector machineNaive Bayes classifierC4.5 algorithmEducational data miningLearning analyticsPredictive analyticsPredictive modellingAnalyticsEnsemble learningData miningArtificial neural networkBandwidth (computing)Computer networkImbalanced Data Classification TechniquesOnline Learning and AnalyticsAnomaly Detection Techniques and Applications
Multiclass Prediction Model for Student Grade Prediction Using Machine Learning | Litcius