This paper presents an approach for classifying students in order to predict their final grade based on features extracted
from logged data in an education web-based system. A combination of multiple classifiers leads to a significant improvement
in classification performance. Through weighting the feature vectors using a Genetic Algorithm we can optimize the prediction
accuracy and get a marked improvement over raw classification. It further shows that when the number of features is few; feature
weighting is works better than just feature selection.