Fuzzy MCDM for Solving Vendor Selection Problems Based on Relation Map

博士 === 國立臺灣科技大學 === 工業管理系 === 96 === Vendor selection decisions have been long considered one of the most important functions of the purchase department. In the real-world, selecting appropriate vendors should be considered and evaluated in terms of many different criteria resulting in a vast body o...

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Main Authors: Jiann-Liang Yang, 楊建樑
Other Authors: Huan-Neng Chiu
Format: Others
Language:zh-TW
Published: 2008
Online Access:http://ndltd.ncl.edu.tw/handle/32871587752802961540
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spelling ndltd-TW-096NTUS50410702016-05-13T04:15:16Z http://ndltd.ncl.edu.tw/handle/32871587752802961540 Fuzzy MCDM for Solving Vendor Selection Problems Based on Relation Map 以基於關係圖之模糊多評準決策解決供應商選擇問題 Jiann-Liang Yang 楊建樑 博士 國立臺灣科技大學 工業管理系 96 Vendor selection decisions have been long considered one of the most important functions of the purchase department. In the real-world, selecting appropriate vendors should be considered and evaluated in terms of many different criteria resulting in a vast body of data that are often inaccurate or uncertain. Furthermore, the numbers of evaluation criteria in the real complex problems are often too large to determine dependent or independent relationships and there may be no solutions for satisfying all criteria to achieve the aspired level simultaneously. However, most conventional decision models cannot be considered for clarifying the interrelations among the sub-criteria of a criterion by virtue of additivity and independence assumptions. For this reason, this dissertation is to determine three research topics to explore fuzzy multiple criteria decision making (MCDM) for solving vendor selection problem based on relation map. The first topic is to develop a MCDM optimization with compromise ranking methods to select appropriate vendor, in which a fuzzy Delphi method is applied to determine the weights of criteria. The evaluation results indicate the vendor has the trade-off effects while considering a maximum group gain (benefit) and a minimum individual regret (loss) for a company. The second topic is to formulate an integrated fuzzy MCDM technique for solving vendor selection problems. The interrelation between criteria that was ignored by previous researchers is considered in this dissertation. A relationship map to identify the independence or interdependence of the sub-criteria of a criterion is constructed by using interpretive structural modeling (ISM), and then the fuzzy synthetic performance of each common criterion can also be obtained by applying a non-additive fuzzy integral technique. In addition, the results of a practical application show that the proposed method is more suitable than traditional method, especially when the sub-criteria are interdependent in real situations. The third topic is to employ the decision making trial and evaluation laboratory (DEMATEL) method to visualize the structure of complicated causal relationships between criteria of a system and obtain the influence degree of these criteria. Furthermore, the analytical network process (ANP) method is proposed by Saaty to overcome the problems of interdependence and feedback between criteria. The general methods are easy and useful for conducting the problems above. But in ANP procedures, by using average method (equal cluster- weighted) to obtain the weighted supermatrix seem to be irrational because there are different influence degrees among the criteria. Further, by using the concept of ideal point in this dissertation, the results of a practical application could provide some valuable opinions to decision maker on improve each sub-criterion to reduce the gaps between real performance values and aspired/desired values to achieve the best vendor. Huan-Neng Chiu Ruey-Huei Yeh 邱煥能 葉瑞徽 2008 學位論文 ; thesis 85 zh-TW
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language zh-TW
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description 博士 === 國立臺灣科技大學 === 工業管理系 === 96 === Vendor selection decisions have been long considered one of the most important functions of the purchase department. In the real-world, selecting appropriate vendors should be considered and evaluated in terms of many different criteria resulting in a vast body of data that are often inaccurate or uncertain. Furthermore, the numbers of evaluation criteria in the real complex problems are often too large to determine dependent or independent relationships and there may be no solutions for satisfying all criteria to achieve the aspired level simultaneously. However, most conventional decision models cannot be considered for clarifying the interrelations among the sub-criteria of a criterion by virtue of additivity and independence assumptions. For this reason, this dissertation is to determine three research topics to explore fuzzy multiple criteria decision making (MCDM) for solving vendor selection problem based on relation map. The first topic is to develop a MCDM optimization with compromise ranking methods to select appropriate vendor, in which a fuzzy Delphi method is applied to determine the weights of criteria. The evaluation results indicate the vendor has the trade-off effects while considering a maximum group gain (benefit) and a minimum individual regret (loss) for a company. The second topic is to formulate an integrated fuzzy MCDM technique for solving vendor selection problems. The interrelation between criteria that was ignored by previous researchers is considered in this dissertation. A relationship map to identify the independence or interdependence of the sub-criteria of a criterion is constructed by using interpretive structural modeling (ISM), and then the fuzzy synthetic performance of each common criterion can also be obtained by applying a non-additive fuzzy integral technique. In addition, the results of a practical application show that the proposed method is more suitable than traditional method, especially when the sub-criteria are interdependent in real situations. The third topic is to employ the decision making trial and evaluation laboratory (DEMATEL) method to visualize the structure of complicated causal relationships between criteria of a system and obtain the influence degree of these criteria. Furthermore, the analytical network process (ANP) method is proposed by Saaty to overcome the problems of interdependence and feedback between criteria. The general methods are easy and useful for conducting the problems above. But in ANP procedures, by using average method (equal cluster- weighted) to obtain the weighted supermatrix seem to be irrational because there are different influence degrees among the criteria. Further, by using the concept of ideal point in this dissertation, the results of a practical application could provide some valuable opinions to decision maker on improve each sub-criterion to reduce the gaps between real performance values and aspired/desired values to achieve the best vendor.
author2 Huan-Neng Chiu
author_facet Huan-Neng Chiu
Jiann-Liang Yang
楊建樑
author Jiann-Liang Yang
楊建樑
spellingShingle Jiann-Liang Yang
楊建樑
Fuzzy MCDM for Solving Vendor Selection Problems Based on Relation Map
author_sort Jiann-Liang Yang
title Fuzzy MCDM for Solving Vendor Selection Problems Based on Relation Map
title_short Fuzzy MCDM for Solving Vendor Selection Problems Based on Relation Map
title_full Fuzzy MCDM for Solving Vendor Selection Problems Based on Relation Map
title_fullStr Fuzzy MCDM for Solving Vendor Selection Problems Based on Relation Map
title_full_unstemmed Fuzzy MCDM for Solving Vendor Selection Problems Based on Relation Map
title_sort fuzzy mcdm for solving vendor selection problems based on relation map
publishDate 2008
url http://ndltd.ncl.edu.tw/handle/32871587752802961540
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