Atukuri, Satya Sri and Busam, Sruthi and Khushalani, Bharat (2025) Why random forest fails in small-sample academic grade prediction. Open Access Research Journal of Multidisciplinary Studies, 9 (2). 061-069. ISSN 2783-0268
Abstract
Academic performance prediction plays a crucial role in education planning, student intervention strategies, and institutional decision-making. As universities and schools seek data-driven methods to assess student progress, understanding grade trends and performance patterns has become essential. Traditional evaluation methods rely on historical records, but they often fail to account for complex relationships between subjects, student learning behaviors, and external influences. This creates a need for predictive analysis, which can provide early insights into student outcomes, enabling institutions to offer targeted academic support. Machine learning techniques have increasingly been explored for academic forecasting, allowing educators to identify high-risk students, optimize curriculum design, and improve assessment models. However, the challenge lies in selecting an appropriate model that effectively handles structured academic datasets with limited records. This study evaluates predictive modeling approaches in the context of student grade forecasting, examining how variations in test size, dataset structure, and subject dependencies influence prediction accuracy. By analyzing scatter plots, R² values, and feature correlations, this research highlights the strengths and weaknesses of machine learning-driven grade prediction. Through this evaluation, we aim to refine methodologies that enhance academic forecasting accuracy, ensuring that predictive models align with real-world institutional needs. Our findings underscore the importance of selecting robust approaches that account for dataset constraints and generalization challenges rather than relying solely on automated algorithms.
Item Type: | Article |
---|---|
Official URL: | https://doi.org/10.53022/oarjms.2025.9.2.0033 |
Uncontrolled Keywords: | https://oarjpublication.com/journals/oarjms//sites/default/files/OARJMS-2025-0033.pdf |
Date Deposited: | 01 Sep 2025 14:08 |
Related URLs: | |
URI: | https://eprint.scholarsrepository.com/id/eprint/5590 |