Modeling and Predicting Students' Academic Performance Using Data Mining Techniques

Автор: Ahmed Mueen, Bassam Zafar, Umar Manzoor

Журнал: International Journal of Modern Education and Computer Science (IJMECS) @ijmecs

Статья в выпуске: 11 vol.8, 2016 года.

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The main objective of this study is to apply data mining techniques to predict and analyze students' academic performance based on their academic record and forum participation. Educational Data Mining (EDM) is an emerging tool for academic intervention. The educational institutions can use EDU for extensive analysis of students' characteristics. In this study, we have collected students' data from two undergraduate courses. Three different data mining classification algorithms (Naïve Bayes, Neural Network, and Decision Tree) were used on the dataset. The prediction performance of three classifiers are measured and compared. It was observed that Naïve Bayes classifier outperforms other two classifiers by achieving overall prediction accuracy of 86%. This study will help teachers to improve student academic performance.

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Educational Data Mining, Classification, Academic performance prediction, Knowledge Discovery

Короткий адрес: https://sciup.org/15014919

IDR: 15014919

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