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International Journal of Scientific and Engineering Research
ISSN Online 2229-5518
ISSN Print: 2229-5518 11    
Website: http://www.ijser.org
scirp IJSER >> Volume 3,Issue 11,November 2012
Student's Examination Result Mining: A Predictive Approach
Full Text(PDF, )  PP.352-355  
Author(s)
Vaneet Kumar, Dr. Vinod Sharma
KEYWORDS
Prediction, Data Mining, Education System, Student performance, Bayesian Learning Algorithm, Factors affecting student exam results, MATLAB, Naïve Bayes Classifier.
ABSTRACT
This paper takes into consideration the various factors and their influence on student performance in education and predicts their final examination result whether Pass or Re-appear. Various factors such as previous year results, attendance, financial sta
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