A Multi Criteria Approach for Computer Purchase Among International Graduate Students

It is undisputable that possession of a personal computer (PC) is necessary for university students. It is vital to consider the attributes that make consumer decision-making easier, comfortable and therefore, leading to an appropriate PC purchase. First, the study aims to determine the ranking of a...

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Main Author: Bataineh, Mahmoud Salem Barakat
Format: Thesis
Language:eng
Published: 2009
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Online Access:https://etd.uum.edu.my/3626/1/s89204.pdf
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id my-uum-etd.3626
record_format uketd_dc
institution Universiti Utara Malaysia
collection UUM ETD
language eng
advisor Mat Kasim, Maznah
Ibrahim, Haslinda
topic HF5415.33 Consumer Behavior.
spellingShingle HF5415.33 Consumer Behavior.
Bataineh, Mahmoud Salem Barakat
A Multi Criteria Approach for Computer Purchase Among International Graduate Students
description It is undisputable that possession of a personal computer (PC) is necessary for university students. It is vital to consider the attributes that make consumer decision-making easier, comfortable and therefore, leading to an appropriate PC purchase. First, the study aims to determine the ranking of attributes of a computer required by a university student, where Rank-Ordered-Centroid (ROC) method is employed. The findings indicate that the most important attribute is processor, followed by hard drive, price, memory card, warranty, size, screen resolution, Ethernet, weight and DVD. Second, the study constructs Computer Preference Index (CPI) required by a university student. The CPI is calculated by using Simple Additive Weighting (SAW) which is one of the Multi-Criteria Decision-Making (MCDM) methods. The study only focuses on four brands of PC (Toshiba, Dell, HP Compaq and Acer). The result shows that the rank of computers according to brands is the same, even though two types of weights are used. For example, for Toshiba brand, the most preferable computer is M200-E4314, for Dell, it is Inspiron I1420 [T8100], for HP Compaq, Presario V3632, and for Acer, Aspire 4920-601G25L. The CPIs for all computers based on two types of weights are different, but the most preferred computer is HP Compaq Presario V3632 and the least preferred computer Acer Aspire 4920-5AA0516MI are the same.
format Thesis
qualification_name masters
qualification_level Master's degree
author Bataineh, Mahmoud Salem Barakat
author_facet Bataineh, Mahmoud Salem Barakat
author_sort Bataineh, Mahmoud Salem Barakat
title A Multi Criteria Approach for Computer Purchase Among International Graduate Students
title_short A Multi Criteria Approach for Computer Purchase Among International Graduate Students
title_full A Multi Criteria Approach for Computer Purchase Among International Graduate Students
title_fullStr A Multi Criteria Approach for Computer Purchase Among International Graduate Students
title_full_unstemmed A Multi Criteria Approach for Computer Purchase Among International Graduate Students
title_sort multi criteria approach for computer purchase among international graduate students
granting_institution Universiti Utara Malaysia
granting_department College of Arts and Sciences (CAS)
publishDate 2009
url https://etd.uum.edu.my/3626/1/s89204.pdf
_version_ 1747827614482956288
spelling my-uum-etd.36262013-11-04T02:22:29Z A Multi Criteria Approach for Computer Purchase Among International Graduate Students 2009 Bataineh, Mahmoud Salem Barakat Mat Kasim, Maznah Ibrahim, Haslinda College of Arts and Sciences (CAS) College of Arts and Sciences HF5415.33 Consumer Behavior. It is undisputable that possession of a personal computer (PC) is necessary for university students. It is vital to consider the attributes that make consumer decision-making easier, comfortable and therefore, leading to an appropriate PC purchase. First, the study aims to determine the ranking of attributes of a computer required by a university student, where Rank-Ordered-Centroid (ROC) method is employed. The findings indicate that the most important attribute is processor, followed by hard drive, price, memory card, warranty, size, screen resolution, Ethernet, weight and DVD. Second, the study constructs Computer Preference Index (CPI) required by a university student. The CPI is calculated by using Simple Additive Weighting (SAW) which is one of the Multi-Criteria Decision-Making (MCDM) methods. The study only focuses on four brands of PC (Toshiba, Dell, HP Compaq and Acer). The result shows that the rank of computers according to brands is the same, even though two types of weights are used. For example, for Toshiba brand, the most preferable computer is M200-E4314, for Dell, it is Inspiron I1420 [T8100], for HP Compaq, Presario V3632, and for Acer, Aspire 4920-601G25L. The CPIs for all computers based on two types of weights are different, but the most preferred computer is HP Compaq Presario V3632 and the least preferred computer Acer Aspire 4920-5AA0516MI are the same. 2009 Thesis https://etd.uum.edu.my/3626/ https://etd.uum.edu.my/3626/1/s89204.pdf text eng validuser http://lintas.uum.edu.my:8080/elmu/index.jsp?module=webopac-l&action=fullDisplayRetriever.jsp&szMaterialNo=0000337014 masters masters Universiti Utara Malaysia Anderson, D., Sweeney, D., & Williams, T. (2005). An introduction to management science: Quantitative approaches to decision making. Thomson/South-Western. Barron, F. & Barrett, B. (1996). Decision quality using ranked attribute weights. Management Science, 42(11), 1515- 1523. Byun, D. (2001). The AHP approach for selecting an automobile purchase model.Information & Management, 38(5), 289-297. Castro, F., Caccamo, L., Carter, K., Erickson, B., Johnson, W., Kessler, E. (1996). 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