Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model

In order to avoid misleading decision solutions in group decision making (GDM) processes, in addition to consensus, which is obviously desirable to guarantee that the group of experts accept the final decision solution, consistency of information should also be sought after. For experts’ preferences...

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Published in:Knowledge-Based Systems
Main Author: Kamis N.H.; Chiclana F.; Levesley J.
Format: Article
Language:English
Published: Elsevier B.V. 2018
Online Access:https://www.scopus.com/inward/record.uri?eid=2-s2.0-85048494497&doi=10.1016%2fj.knosys.2018.05.039&partnerID=40&md5=1df37fe84dcfcacca4f8757fdf8e705d
id 2-s2.0-85048494497
spelling 2-s2.0-85048494497
Kamis N.H.; Chiclana F.; Levesley J.
Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model
2018
Knowledge-Based Systems
162

10.1016/j.knosys.2018.05.039
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85048494497&doi=10.1016%2fj.knosys.2018.05.039&partnerID=40&md5=1df37fe84dcfcacca4f8757fdf8e705d
In order to avoid misleading decision solutions in group decision making (GDM) processes, in addition to consensus, which is obviously desirable to guarantee that the group of experts accept the final decision solution, consistency of information should also be sought after. For experts’ preferences represented by reciprocal fuzzy preference relations, consistency is linked to the transitivity property. In this study, we put forward a new consensus approach to solve GDM with reciprocal preference relations that implements rationality criteria of consistency based on the transitivity property with the following twofold aim prior to finding the final decision solution: (A) to develop a consistency control module to provide personalized consistency feedback to inconsistent experts in the GDM problem to guarantee the consistency of preferences; and (B) to design a consistent preference network clustering based consensus measure based on an undirected weighted consistent preference similarity network structure with undirected complete links, which using the concept of structural equivalence will allow one to (i) cluster the experts; and (ii) measure their consensus status. Based on the uninorm characterization of consistency of reciprocal preferences relations and the geometric average, we propose the implementation of the geo-uninorm operator to derive a consistent based preference relation from a given reciprocal preference relation. This is subsequently used to measure the consistency level of a given preference relation as the cosine similarity between the respective relations’ essential vectors of preference intensity. The proposed geo-uninorm consistency measure will allow the building of a consistency control module based on a personalized feedback mechanism to be implemented when the consistency level is insufficient. This consistency control module has two advantages: (1) it guarantees consistency by advising inconsistent expert(s) to modify their preferences with minimum changes; and (2) it provides fair recommendations individually, depending on the experts’ personal level of inconsistency. Once consistency of preferences is guaranteed, a structural equivalence preference similarity network is constructed. For the purpose of representing structurally equivalent experts and measuring consensus within the group of experts, we develop an agglomerative hierarchical clustering based consensus algorithm, which can be used as a visualization tool in monitoring current state of experts’ group agreement and in controlling the decision making process. The proposed model is validated with a comparative analysis with an existing literature study, from which conclusions are drawn and explained. © 2018
Elsevier B.V.
9507051
English
Article
All Open Access; Green Open Access
author Kamis N.H.; Chiclana F.; Levesley J.
spellingShingle Kamis N.H.; Chiclana F.; Levesley J.
Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model
author_facet Kamis N.H.; Chiclana F.; Levesley J.
author_sort Kamis N.H.; Chiclana F.; Levesley J.
title Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model
title_short Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model
title_full Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model
title_fullStr Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model
title_full_unstemmed Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model
title_sort Geo-uninorm consistency control module for preference similarity network hierarchical clustering based consensus model
publishDate 2018
container_title Knowledge-Based Systems
container_volume 162
container_issue
doi_str_mv 10.1016/j.knosys.2018.05.039
url https://www.scopus.com/inward/record.uri?eid=2-s2.0-85048494497&doi=10.1016%2fj.knosys.2018.05.039&partnerID=40&md5=1df37fe84dcfcacca4f8757fdf8e705d
description In order to avoid misleading decision solutions in group decision making (GDM) processes, in addition to consensus, which is obviously desirable to guarantee that the group of experts accept the final decision solution, consistency of information should also be sought after. For experts’ preferences represented by reciprocal fuzzy preference relations, consistency is linked to the transitivity property. In this study, we put forward a new consensus approach to solve GDM with reciprocal preference relations that implements rationality criteria of consistency based on the transitivity property with the following twofold aim prior to finding the final decision solution: (A) to develop a consistency control module to provide personalized consistency feedback to inconsistent experts in the GDM problem to guarantee the consistency of preferences; and (B) to design a consistent preference network clustering based consensus measure based on an undirected weighted consistent preference similarity network structure with undirected complete links, which using the concept of structural equivalence will allow one to (i) cluster the experts; and (ii) measure their consensus status. Based on the uninorm characterization of consistency of reciprocal preferences relations and the geometric average, we propose the implementation of the geo-uninorm operator to derive a consistent based preference relation from a given reciprocal preference relation. This is subsequently used to measure the consistency level of a given preference relation as the cosine similarity between the respective relations’ essential vectors of preference intensity. The proposed geo-uninorm consistency measure will allow the building of a consistency control module based on a personalized feedback mechanism to be implemented when the consistency level is insufficient. This consistency control module has two advantages: (1) it guarantees consistency by advising inconsistent expert(s) to modify their preferences with minimum changes; and (2) it provides fair recommendations individually, depending on the experts’ personal level of inconsistency. Once consistency of preferences is guaranteed, a structural equivalence preference similarity network is constructed. For the purpose of representing structurally equivalent experts and measuring consensus within the group of experts, we develop an agglomerative hierarchical clustering based consensus algorithm, which can be used as a visualization tool in monitoring current state of experts’ group agreement and in controlling the decision making process. The proposed model is validated with a comparative analysis with an existing literature study, from which conclusions are drawn and explained. © 2018
publisher Elsevier B.V.
issn 9507051
language English
format Article
accesstype All Open Access; Green Open Access
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