This paper presents a correlation-based feature selection (CFS) technique aimed at predicting student performance for engineering college admissions, leveraging socio-demographic and academic variables. It utilizes various classification algorithms, including NBTrees and Naive Bayes, to enhance predictive accuracy while reducing computational costs. The methodology includes a detailed examination of the feature selection process, emphasizing the importance of selecting relevant attributes to improve outcomes in educational data mining.