
Predictive Analysis Of Student Performance in Online Learning | IJCT Volume 13 – Issue 2 | IJCT-V13I2P73

International Journal of Computer Techniques
ISSN 2394-2231
Volume 13, Issue 2 | Published: March – April 2026
Table of Contents
ToggleAuthor
Kolla Puneeth Sai, Kanyadhri premchand, Kanna Jyothi Siva Prasad, Mrs.Subashri Rajendran
Abstract
In recent years, a number of learning platforms have emerged, and this has resulted in a tremendous growth in data related to learning processes. Analyzing this data helps in improving student learning outcomes. Making early predictions about student performance is a key area of research in data mining in education. Data mining and machine learning techniques are useful in finding patterns in student data related to academic performance and making early predictions of success or failure in academics, as suggested in a study by Shahiri et al. [9]. Keeping this in view, this study presents a predictive analysis model for evaluating student performance in an online learning scenario. Various factors are considered in this model, such as student engagement, attendance, and performance in tests, along with their interactions with learning platforms. Machine learning algorithms are employed in this system to classify students into different performance categories and identify those students who are not performing well in academics[8]. Such a system will help in increasing learning outcomes, reducing dropout rates, and making decisions in the field of education to improve the quality of learning in an online scenario.
Keywords
Educational Data Mining, Student Performance Prediction, Online Learning, Machine Learning, Predictive Analytics, Supervised Learning, Learning Analytics, Academic Performance, Data Analysis, Student Engagement.
Conclusion
This paper has offered a predictive analysis approach to assess the performance of students in virtual learning environments using machine learning techniques. The model can analyze the patterns of students’ performance based on their attendance, assignments completed, quizzes completed, and their interaction with course materials[12]. This can assist in the classification of students according to their performance and can identify students who may not perform well. The experimental results proved that the machine learning approach can accurately predict students’ performance. This can assist teachers to offer academic guidance to students who may not perform well. This approach can improve students’ performance and reduce the dropout rate among students[20] . In the future, the system can be improved by using real-time data and more advanced the
machine learning techniques to improve the accuracy of the predictions made by the model. machine learning techniques to improve the accuracy of the predictions made by the model.
References
[1]C.Romero.and.S.Ventura
Educational data mining: A review of the state of the art https://ieeexplore.ieee.org/document/5483663
[2]R.S.Baker,K.Yacef
The state of educational data mining in 2009 https://jedm.educationaldatamining.org/index.php/JED M/article/view/8
[3] T. Anderson – The theory and practice of online learning
https://www.aupress.ca/books/120146-the-theory-and- practice-of-online-learning/
[4J.L.Rastrollo-Guerreroetal.
Analyzing and predicting students’ performance by means,of.machine.learning
https://www.mdpi.com/2076-3417/10/3/1042
[5]S.Kotsiantisetal.
Predicting students’ performance in distance learning https://www.tandfonline.com/doi/abs/10.1080/0883951 0490442058
[6]J.Xu.and.H.Jaggars
Performance gaps between online face-to-face courses
https://doi.org/10.1353/jhe.2014.0028
[7]M.Hussainetal. Student engagement predictions in online.learning.environments
https://www.sciencedirect.com/science/article/pii/S074 7563217305492
[8]G.Siemens,and,R.Baker
Learning analytics and educational data mining https://dl.acm.org/doi/10.1145/2330601.2330661 [9]M.Shahirietal.
A review on predicting student performance using data
mining,techniques
https://www.sciencedirect.com/science/article/pii/S187 7050915036182
[10]N.Thai-Ngheetal.
Factorization,techniques,for,predicting,student performance
https://educationaldatamining.org/EDM2011/wp- content/uploads/proc/edm2011_paper_23.pdf [11]P. Cortez and A. Silva
Using data mining to predict secondary school student performance
https://archive.ics.uci.edu/ml/datasets/Student+Per formance [12]C. Brooks and C. Thompson
Predictive modelling in teaching and learning https://solaresearch.org/hla-17/hla17-chapter7/ [13]T. Mishra et al.
Students’ performance prediction using machine learning algorithms
https://www.ijert.org/students-performance-
prediction-using-machine-learning-algorithms
[14]S. Hussain et al.
Educational data mining using WEKA
https://ijeecs.iaescore.com/index.php/IJEECS/artic le/view/13174
[15]M. Romero et al.
Data mining in course management systems:
Moodle case study
https://www.sciencedirect.com/science/article/pii/ S0360131507000836
[16]Z. Shou et al.
Predicting student academic performance using multidimensional learning behavior data
https://ieeexplore.ieee.org/document/10412063
[17]N. U. R. Junejo et al.
Multi-category student performance prediction using deep neural networks
https://ieeexplore.ieee.org/
[18]Y. Liu et al.
Fairness-aware machine learning for student performance prediction
https://ieeexplore.ieee.org/document/10434154
[19]Open University Learning Analytics Dataset (OULAD)
https://analyse.kmi.open.ac.uk/open_datase [20]T.Dietterich
Machine learning for predictive data analysis https://ieeexplore.ieee.org/document/7080776
How to Cite This Paper
Kolla Puneeth Sai, Kanyadhri premchand, Kanna Jyothi Siva Prasad, Mrs.Subashri Rajendran (2026). Predictive Analysis Of Student Performance in Online Learning. International Journal of Computer Techniques, 13(2). ISSN: 2394-2231.
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