Intelligent Decision Support System for Higher Education Helpdesk

Education is the responsibility of the Federal Government and Malaysia is committed to providing sound education to all. The Vision 2020 is to make Malaysia, a centre of educational excellence at international level. To achieve that mission, we need to continuously improve the standard of higher ed...

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Main Author: Norhaira, Nordin
Format: Thesis
Language:eng
Published: 2006
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Online Access:https://etd.uum.edu.my/1851/1/Norhaira_binti_Nordin_-_Intelligent_decision_support_system_for_higher_education_helpdesk.pdf
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id my-uum-etd.1851
record_format uketd_dc
institution Universiti Utara Malaysia
collection UUM ETD
language eng
topic T58.6-58.62 Management information systems
spellingShingle T58.6-58.62 Management information systems
Norhaira, Nordin
Intelligent Decision Support System for Higher Education Helpdesk
description Education is the responsibility of the Federal Government and Malaysia is committed to providing sound education to all. The Vision 2020 is to make Malaysia, a centre of educational excellence at international level. To achieve that mission, we need to continuously improve the standard of higher education so as to produce quality graduates that would meet the needs of the nation for skilled workforced human resource. There is over 1000 degree programs offered by several universities in Malaysia every year. Each program has different qualification rules and condition that an applicant needs to consider before applying for places at higher institutions in Malaysia. In some cases, applicant will face lots of problem such as to make a correct decision and get the proper advice within limited period of time. One way to overcome this problem is by providing information and advisory service online. In conjunction with that, an Intelligent Decision Support for Higher Education Help-Desk is designed/ developed to assist student to identify their potential in some program offered in public and private university based on their qualification. A decision support system (DSS) can take many different forms and generally, DSS is a computerized system for helping make decisions. The proposed system uses Case-Based Reasoning (CBR) technique has been employed to assist users, in decision making. The studies also include identifying suitable CBR design for intelligent decision support for helpdesk. A new with specified attributes or know as CBR attributes is presented to the system, the engine then computes the similarity value will give the best recommendation on degree program to assist student to undertake. The system has been tested with real case data and the result shows that CBR engine is able to recommend a suitable program for various users.
format Thesis
qualification_name masters
qualification_level Master's degree
author Norhaira, Nordin
author_facet Norhaira, Nordin
author_sort Norhaira, Nordin
title Intelligent Decision Support System for Higher Education Helpdesk
title_short Intelligent Decision Support System for Higher Education Helpdesk
title_full Intelligent Decision Support System for Higher Education Helpdesk
title_fullStr Intelligent Decision Support System for Higher Education Helpdesk
title_full_unstemmed Intelligent Decision Support System for Higher Education Helpdesk
title_sort intelligent decision support system for higher education helpdesk
granting_institution Universiti Utara Malaysia
granting_department Centre for Graduate Studies
publishDate 2006
url https://etd.uum.edu.my/1851/1/Norhaira_binti_Nordin_-_Intelligent_decision_support_system_for_higher_education_helpdesk.pdf
_version_ 1747827217903124480
spelling my-uum-etd.18512022-06-08T03:16:02Z Intelligent Decision Support System for Higher Education Helpdesk 2006 Norhaira, Nordin Centre for Graduate Studies Centre for Graduate Studies T58.6-58.62 Management information systems Education is the responsibility of the Federal Government and Malaysia is committed to providing sound education to all. The Vision 2020 is to make Malaysia, a centre of educational excellence at international level. To achieve that mission, we need to continuously improve the standard of higher education so as to produce quality graduates that would meet the needs of the nation for skilled workforced human resource. There is over 1000 degree programs offered by several universities in Malaysia every year. Each program has different qualification rules and condition that an applicant needs to consider before applying for places at higher institutions in Malaysia. In some cases, applicant will face lots of problem such as to make a correct decision and get the proper advice within limited period of time. One way to overcome this problem is by providing information and advisory service online. In conjunction with that, an Intelligent Decision Support for Higher Education Help-Desk is designed/ developed to assist student to identify their potential in some program offered in public and private university based on their qualification. A decision support system (DSS) can take many different forms and generally, DSS is a computerized system for helping make decisions. The proposed system uses Case-Based Reasoning (CBR) technique has been employed to assist users, in decision making. The studies also include identifying suitable CBR design for intelligent decision support for helpdesk. A new with specified attributes or know as CBR attributes is presented to the system, the engine then computes the similarity value will give the best recommendation on degree program to assist student to undertake. The system has been tested with real case data and the result shows that CBR engine is able to recommend a suitable program for various users. 2006 Thesis https://etd.uum.edu.my/1851/ https://etd.uum.edu.my/1851/1/Norhaira_binti_Nordin_-_Intelligent_decision_support_system_for_higher_education_helpdesk.pdf text eng public masters masters Universiti Utara Malaysia Aamodt, A., (1994). Case-Rased Reasoning: Foundational Issues,Methodological Variations, and System Approaches. AI Communications,7, 39-59. Agudo, R.D., Calero, P.A.G., Martin, P.P.G., & Martin, M.A.G.,(2005). On Developing a Distributed CBR Framework through Semantic Web Services, Retrieve October. 16, 2006, From http://www.mindswap.org/2005/OWLWorkshop/sub3O.pdf Angehrn, A. A,, & Dutta, S., (2000). 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