University entry selection framework using rule-based and back-propagation

Processing thousands of applications can be a challenging task, especially when the applicant does not consider the university requirements and their qualification. The selection officer will have to check the program requirements and calculate the merit score of the applicants. This process is base...

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Main Author: Maharani, Sitti Syarah
Format: Thesis
Language:English
Published: 2015
Subjects:
Online Access:http://psasir.upm.edu.my/id/eprint/65284/
http://psasir.upm.edu.my/id/eprint/65284/1/FSKTM%202015%2023.pdf
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author Maharani, Sitti Syarah
author_facet Maharani, Sitti Syarah
author_sort Maharani, Sitti Syarah
building UPM Institutional Repository
collection Online Access
description Processing thousands of applications can be a challenging task, especially when the applicant does not consider the university requirements and their qualification. The selection officer will have to check the program requirements and calculate the merit score of the applicants. This process is based on rules determined by the Ministry of Education and the institution will have to select the qualified applicants among thousands of applications. In recent years, several student selection methods have been proposed using the fuzzy multiple decision making and decision trees. These approaches have produced high accuracy and good detection rates on closed domain university data. However, current selection procedure requires the admission officers to manually evaluate the applications and match the applicants’ qualifications with the program they applied. Because the selection process is tedious and very prone to mistakes, a comprehensive approach to detect and identify qualified applicants for university enrollment is highly desired. In this work, a student selection framework using rule-based and backpropagation neural network is presented. Two processes are involved in this work; the first phase known as pre-processing uses rule-based for checking the university requirements, merit calculation and data conversion to serve as input for the next phase. The second phase uses back-propagation neural network model to evaluate the qualified candidates for admission to particular programs. This means only selected data of the qualified applicants from the first phase will be sent to the next phase for further processing. The dataset consists of 3,790 datasets from Universiti Pendidikan Sultan Idris. The experiments have shown that the proposed method of ruled-based and back-propagation neural network produced better performance, where the framework has successfully been implemented and validated with the average performance of more than 95% accuracy for student selection across all sets of the test data.
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language English
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spelling upm-652842025-04-17T01:20:27Z http://psasir.upm.edu.my/id/eprint/65284/ University entry selection framework using rule-based and back-propagation Maharani, Sitti Syarah Processing thousands of applications can be a challenging task, especially when the applicant does not consider the university requirements and their qualification. The selection officer will have to check the program requirements and calculate the merit score of the applicants. This process is based on rules determined by the Ministry of Education and the institution will have to select the qualified applicants among thousands of applications. In recent years, several student selection methods have been proposed using the fuzzy multiple decision making and decision trees. These approaches have produced high accuracy and good detection rates on closed domain university data. However, current selection procedure requires the admission officers to manually evaluate the applications and match the applicants’ qualifications with the program they applied. Because the selection process is tedious and very prone to mistakes, a comprehensive approach to detect and identify qualified applicants for university enrollment is highly desired. In this work, a student selection framework using rule-based and backpropagation neural network is presented. Two processes are involved in this work; the first phase known as pre-processing uses rule-based for checking the university requirements, merit calculation and data conversion to serve as input for the next phase. The second phase uses back-propagation neural network model to evaluate the qualified candidates for admission to particular programs. This means only selected data of the qualified applicants from the first phase will be sent to the next phase for further processing. The dataset consists of 3,790 datasets from Universiti Pendidikan Sultan Idris. The experiments have shown that the proposed method of ruled-based and back-propagation neural network produced better performance, where the framework has successfully been implemented and validated with the average performance of more than 95% accuracy for student selection across all sets of the test data. 2015-10 Thesis NonPeerReviewed text en http://psasir.upm.edu.my/id/eprint/65284/1/FSKTM%202015%2023.pdf Maharani, Sitti Syarah (2015) University entry selection framework using rule-based and back-propagation. Masters thesis, Universiti Putra Malaysia. Back propagation (Artificial intelligence) Education, Higher
spellingShingle Back propagation (Artificial intelligence)
Education, Higher
Maharani, Sitti Syarah
University entry selection framework using rule-based and back-propagation
title University entry selection framework using rule-based and back-propagation
title_full University entry selection framework using rule-based and back-propagation
title_fullStr University entry selection framework using rule-based and back-propagation
title_full_unstemmed University entry selection framework using rule-based and back-propagation
title_short University entry selection framework using rule-based and back-propagation
title_sort university entry selection framework using rule-based and back-propagation
topic Back propagation (Artificial intelligence)
Education, Higher
url http://psasir.upm.edu.my/id/eprint/65284/
http://psasir.upm.edu.my/id/eprint/65284/1/FSKTM%202015%2023.pdf