Date
Publisher
arXiv
Academic performance depends on a multivariable nexus of socio-academic and
financial factors. This study investigates these influences to develop
effective strategies for optimizing students' CGPA. To achieve this, we
reviewed various literature to identify key influencing factors and constructed
an initial hypothetical causal graph based on the findings. Additionally, an
online survey was conducted, where 1,050 students participated, providing
comprehensive data for analysis. Rigorous data preprocessing techniques,
including cleaning and visualization, ensured data quality before analysis.
Causal analysis validated the relationships among variables, offering deeper
insights into their direct and indirect effects on CGPA. Regression models were
implemented for CGPA prediction, while classification models categorized
students based on performance levels. Ridge Regression demonstrated strong
predictive accuracy, achieving a Mean Absolute Error of 0.12 and a Mean Squared
Error of 0.023. Random Forest outperformed in classification, attaining an
F1-score near perfection and an accuracy of 98.68%. Explainable AI techniques
such as SHAP, LIME, and Interpret enhanced model interpretability, highlighting
critical factors such as study hours, scholarships, parental education, and
prior academic performance. The study culminated in the development of a
web-based application that provides students with personalized insights,
allowing them to predict academic performance, identify areas for improvement,
and make informed decisions to enhance their outcomes.
What is the application?
Who age?
Why use AI?
