Every educational institute maintains a
proper database on their student performance and
activities. This information is incredibly useful in the
realm of education., particularly for evaluating the
performance of students. It is true that evaluating
student performance has grown difficult due to the lack
of comparison between different resampling methods
due to the imbalanced data sets in this discipline. Some
of these resampling models such as Random Forest,
Artificial Neural Network and Logistic Regression.
Furthermore are compared in this paper and the model
validation we used here is 5-fold cross validation. These
resampling methods provide an accurate output on the
current performance of students and state the variance
in their performance. This provides a reliable source to
view and check the performance of students.