E-Assessment and Computer-Aided Prediction Methodology for Student Admission Test Score
 
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1
University of Engineering and Technology, Taxila, Pakistan
 
2
Sungkyunkwan University, Suwon, South Korea
 
3
COMSATS Institute of Information Technology, Sahiwal, Pakistan
 
 
Online publication date: 2017-07-10
 
 
Publication date: 2017-07-10
 
 
Corresponding author
Muhammad Munwar Iqbal   

University of Engineering and Technology, Pakistan. Phone: +92-321-4502399
 
 
EURASIA J. Math., Sci Tech. Ed 2017;13(8):5499-5517
 
KEYWORDS
ABSTRACT
Machine Learning is a scientific discipline that addresses learning in context is not learning by heart but recognizing complex patterns and makes intelligent decisions based on data. Currently, students have to face the problem of selecting the best suitable university for admission in engineering. There is no predictor system that recommends the students to select the specific category which is best to its academic career. Students have to first appear in the entry test and can’t predict whether he/she can pass the entry test to get admitted in University. To tackle this problem the field of Machine Learning develops algorithms that discover knowledge from specific data and experience, based on sound statistical and computational principles. After going through the entry test students have to face problems for selecting the preferences among different categories due to the lack of knowledge of intake merits of preceding years. Another problem arises when students are waiting for admission in specific university, meanwhile, other universities finish their admission processes and select the students, but some students can’t take admission in any university due to no prediction system for admission in universities. In this work, we would like to develop an E-Assessment and Computer-Aided Prediction online system that enables the student to predict the entry test numbers by giving the Metric and Intermediate marks and other academic numbers. The suggested scheme has been demonstrated to perform at the maximum speed under MATLAB setup.
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