Models for Multiple Attribute Group Decision Making with 2-Tuple Linguistic Assessment Information

The aim of this paper is to investigate the multiple attribute group decision making(MAGDM) problems with 2-tuple linguistic assessment information, in which the information about attribute weights is incompletely known, and the attribute values take the form of linguistic assessment information. In...

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Main Authors: Guiwu Wei, Rui Lin, Xiaofei Zhao, Hongjun Wang
Format: Article
Language:English
Published: Atlantis Press 2010-09-01
Series:International Journal of Computational Intelligence Systems
Subjects:
Online Access:https://www.atlantis-press.com/article/1970.pdf
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spelling doaj-b01c450e24ff49c49ce00acb896173692020-11-25T02:20:21ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832010-09-013310.2991/ijcis.2010.3.3.7Models for Multiple Attribute Group Decision Making with 2-Tuple Linguistic Assessment InformationGuiwu WeiRui LinXiaofei ZhaoHongjun WangThe aim of this paper is to investigate the multiple attribute group decision making(MAGDM) problems with 2-tuple linguistic assessment information, in which the information about attribute weights is incompletely known, and the attribute values take the form of linguistic assessment information. In order to get the weight vector of the attribute, we establish two optimization models based on the basic ideal of traditional TOPSIS, by which the attribute weights can be determined. For the special situations where the information about attribute weights is completely unknown, we establish some other optimization models. By solving these models, we get two simple and exact formulas, which can be used to determine the attribute weights. Then, based on the TOPSIS method, calculation steps for solving MAGDM problems with 2-tuple linguistic assessment information are given. The weighted distances between every alternative and 2-tuple linguistic positive ideal solution (TLPIS) and 2-tuple linguistic negative ideal solution (TLNIS) are calculated. Then, according to the weighted distances, the relative closeness degree to the TLPIS is calculated to rank all alternatives. These methods have exact characteristic in linguistic information processing. They avoided information distortion and losing which occur formerly in the linguistic information processing. Finally, some practical examples are used to illustrate the developed procedures. https://www.atlantis-press.com/article/1970.pdfGroup decision making; Linguistic assessment information; 2-tuple; TOPSIS
collection DOAJ
language English
format Article
sources DOAJ
author Guiwu Wei
Rui Lin
Xiaofei Zhao
Hongjun Wang
spellingShingle Guiwu Wei
Rui Lin
Xiaofei Zhao
Hongjun Wang
Models for Multiple Attribute Group Decision Making with 2-Tuple Linguistic Assessment Information
International Journal of Computational Intelligence Systems
Group decision making; Linguistic assessment information; 2-tuple; TOPSIS
author_facet Guiwu Wei
Rui Lin
Xiaofei Zhao
Hongjun Wang
author_sort Guiwu Wei
title Models for Multiple Attribute Group Decision Making with 2-Tuple Linguistic Assessment Information
title_short Models for Multiple Attribute Group Decision Making with 2-Tuple Linguistic Assessment Information
title_full Models for Multiple Attribute Group Decision Making with 2-Tuple Linguistic Assessment Information
title_fullStr Models for Multiple Attribute Group Decision Making with 2-Tuple Linguistic Assessment Information
title_full_unstemmed Models for Multiple Attribute Group Decision Making with 2-Tuple Linguistic Assessment Information
title_sort models for multiple attribute group decision making with 2-tuple linguistic assessment information
publisher Atlantis Press
series International Journal of Computational Intelligence Systems
issn 1875-6883
publishDate 2010-09-01
description The aim of this paper is to investigate the multiple attribute group decision making(MAGDM) problems with 2-tuple linguistic assessment information, in which the information about attribute weights is incompletely known, and the attribute values take the form of linguistic assessment information. In order to get the weight vector of the attribute, we establish two optimization models based on the basic ideal of traditional TOPSIS, by which the attribute weights can be determined. For the special situations where the information about attribute weights is completely unknown, we establish some other optimization models. By solving these models, we get two simple and exact formulas, which can be used to determine the attribute weights. Then, based on the TOPSIS method, calculation steps for solving MAGDM problems with 2-tuple linguistic assessment information are given. The weighted distances between every alternative and 2-tuple linguistic positive ideal solution (TLPIS) and 2-tuple linguistic negative ideal solution (TLNIS) are calculated. Then, according to the weighted distances, the relative closeness degree to the TLPIS is calculated to rank all alternatives. These methods have exact characteristic in linguistic information processing. They avoided information distortion and losing which occur formerly in the linguistic information processing. Finally, some practical examples are used to illustrate the developed procedures.
topic Group decision making; Linguistic assessment information; 2-tuple; TOPSIS
url https://www.atlantis-press.com/article/1970.pdf
work_keys_str_mv AT guiwuwei modelsformultipleattributegroupdecisionmakingwith2tuplelinguisticassessmentinformation
AT ruilin modelsformultipleattributegroupdecisionmakingwith2tuplelinguisticassessmentinformation
AT xiaofeizhao modelsformultipleattributegroupdecisionmakingwith2tuplelinguisticassessmentinformation
AT hongjunwang modelsformultipleattributegroupdecisionmakingwith2tuplelinguisticassessmentinformation
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