4.8 Article

Trust-Consensus Multiplex Networks by Combining Trust Social Network Analysis and Consensus Evolution Methods in Group Decision-Making

Journal

IEEE TRANSACTIONS ON FUZZY SYSTEMS
Volume 30, Issue 11, Pages 4741-4753

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TFUZZ.2022.3158432

Keywords

Multiplexing; Social networking (online); Decision making; Density measurement; Network analyzers; Indexes; Focusing; Consensus evolution networks (CENs); consensus reaching process (CRP); multiplex networks; social network group decision-making (SNGDM); trust networks

Funding

  1. National Natural Science Foundation of China [71771051, 71701158, 72071151, 72071045, 71971115]
  2. Natural Science Foundation of Jiangsu Province [BK20210293]
  3. Ministry of Education (MOE) in China Project of Humanities and Social Sciences [17YJC630114]
  4. Natural Science Foundation of Hubei Province, China [2020CFB773]

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This study proposes a consensus model based on the trust-consensus multiplex network, which can consider the mutual influence between trust and consensus and detect and analyze the negative influence of trust on consensus.
Social network group decision-making (SNGDM) develops rapidly because of the popularity of online connections among experts. The current SNGDM studies mainly focus on the influence of trust on the evolution of consensus opinions through a complex process. Some situations are ignored in the existing research when trust may negatively affect the decision-making process and trust relationships may be developed or interrupted during consensus negotiation processes. To overcome such limitations, we propose a consensus model based on the trust-consensus multiplex network by combing trust social network analysis and consensus evolution networks (CENs). We design an interaction mechanism between trust and consensus based on the dynamic experts' influence which is computed by the multiplex PageRank centrality measure, especially focusing on the negative impact of trust on consensus. Besides, we compute consensus levels based on the density and intensity of CENs to determine when should the negotiation end. The proposed model can not only consider the mutual influence between trust and consensus in SNGDM, but also detect and analyze the negative influence of trust on consensus. An example examines the effectiveness of the proposed model and a comparative analysis shows its flexibility for studying the complex consensus situation of SNGDM.

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