4.7 Article

Convex combination-based consensus analysis for intuitionistic fuzzy three-way group decision

Journal

INFORMATION SCIENCES
Volume 574, Issue -, Pages 542-566

Publisher

ELSEVIER SCIENCE INC
DOI: 10.1016/j.ins.2021.06.018

Keywords

Three-way decision; Intuitionistic fuzzy sets; Consensus index; Automated consensus achieving algorithm; Optimization models

Funding

  1. Basic and Applied Basic Research Project of Guangdong Province of China [2020A1515110434]
  2. Foundation for the Philos-ophy and Social Science Planning Project of Guangdong Province [GD20YGL13]
  3. Foundation for Young Talents in Higher Education of Guangdong Province [2019WQNCX027]
  4. Start-up Research Science Fund of Shantou University [STF19025]
  5. Natural Science Foundation of the Jiangsu Higher Education Institutions of China [20KJA520006]
  6. Natural Science Foundation of China [71671086, 61876079]

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This study proposes a convex combination-based approach for three-way intuitionistic fuzzy group decision with group consensus, improving the group consensus of loss functions by introducing a similarity measure and automated algorithm. Additionally, an optimization model pair is constructed to determine thresholds based on aggregated collective consensus loss functions.
A three-way decision (3WD) with group consensus using intuitionistic fuzzy sets (IFSs) involves two pivotal decision steps: achieving a consensus of loss functions and determining the threshold pair in 3WD. We focus on these decision steps and propose a convex combination-based approach to a three-way intuitionistic fuzzy group decision (3WIFGD) considering a group consensus. First, a similarity measure between IFSs is introduced to define a group consensus index (GCI) for an expert group based on loss functions. Then, an automated algorithm is designed with the GCI-based convex combination strategy to improve the group consensus of loss functions. Moreover, we theoretically prove that the GCI in this algorithm is improved and even converges linearly to 1 as the iteration number increases. Second, based on the aggregated collective consensus loss functions, we construct the optimization model pair by extending the existing models and prove its unique solution, leading to the thresholds. Third, a two-decision-steps-based method for 3WIFGD is developed to capture the rules underlying a group consensus. Finally, an illustrative example and its related comparisons are demonstrated to show the validity of our method. (c) 2021 Elsevier Inc. All rights reserved.

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