Machine Learning-Based Academic Result Prediction System

Machine Learning-Based Academic Result Prediction System

Megha Bhushan, Utkarsh Verma, Chetna Garg, Arun Negi
Copyright: © 2024 |Pages: 14
DOI: 10.4018/IJSI.334715
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Abstract

Students' academic performance is a critical issue as it decides his/her career. It is pivotal for the educational institutes to track the performance record because it can help to enhance the standard of their quality education. Thus, the role of the academic result prediction system comes into existence which uses semester grade point average (SGPA) as a metric. The proposed work aims to create a model that can forecast the SGPA of students based on certain traits. It predicts the result in the form of SGPA of computer science students considering their past academic performance, study, and personal habits during their academic semester using different machine learning models, and to compare them based on different accuracy parameters. Some models that are widely used and are found effective in this field are regression algorithms, classification algorithms, and deep learning techniques. The results conclude that deep learning techniques are the most effective in the proposed work because of their high accuracy and performance, depending upon the attributes used in the prediction.
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There are many existing works related to the prediction of students' performance using ML algorithms (Arcinas, 2022; Albreiki et al., 2021; Chakrapani & D, 2022; Gajwani & Chakraborty, 2021; Verma et al., 2022; Yağcı, 2022).

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