Adaptive Consensus-Based Model for Heterogeneous Large-Scale Group Decision-Making: Detecting and Managing Noncooperative Behaviors

Large-scale group decision-making (LSGDM), which involves dozens to hundreds of decision-makers (DMs), is attracting extensive attention and has become an interesting and hot topic in recent years. Because of various backgrounds and expression habits, DMs tend to elicit preferences with different pr...

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Veröffentlicht in:IEEE transactions on fuzzy systems 2021-08, Vol.29 (8), p.2209-2223
Hauptverfasser: Tian, Zhang-Peng, Nie, Ru-Xin, Wang, Jian-Qiang, Long, Ru-Yin
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container_title IEEE transactions on fuzzy systems
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creator Tian, Zhang-Peng
Nie, Ru-Xin
Wang, Jian-Qiang
Long, Ru-Yin
description Large-scale group decision-making (LSGDM), which involves dozens to hundreds of decision-makers (DMs), is attracting extensive attention and has become an interesting and hot topic in recent years. Because of various backgrounds and expression habits, DMs tend to elicit preferences with different preference representation structures. Moreover, due to various attitudes and interests, some DMs may adopt noncooperative behaviors to further benefit themselves in LSGDM. To cope with these issues, this study develops an adaptive consensus framework to support heterogeneous LSGDM. A cosine similarity based optimization model is constructed and its analytical solution is derived to directly obtain the collective priority vector of the group using heterogeneous preferences. An extended k -means algorithm is then used to classify DMs. Subsequently, a two-stage uninorm-based behavior management method is developed to generate personalized weight feedback to each DM and subcluster according to their cooperative and noncooperative degrees in the consensus-reaching process. Finally, an illustrative example followed by simulation and comparative analyses is provided to reveal the advantages and features of the proposed approach.
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subjects Adaptation models
Adaptive systems
Algorithms
Analytical models
Classification algorithms
Consensus-reaching process (CRP)
Decision making
Exact solutions
hetero- geneous
large-scale group decision-making (LSGDM)
Linguistics
non- cooperative behaviors
Optimization
uninorm
title Adaptive Consensus-Based Model for Heterogeneous Large-Scale Group Decision-Making: Detecting and Managing Noncooperative Behaviors
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