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The bi-level consensus model with dual social networks for group decision making

Published: 07 January 2025 Publication History

Abstract

The pursuit of consensus within social networks is a burgeoning area of research, pivotal for harmonizing decision-making amidst diverse opinions. However, existing studies often neglect the crucial balance between costs and benefits in optimizing consensus outcomes. Addressing this gap, this paper introduces a novel bi-level consensus optimization model within the framework of the dual social network. This model aims to achieve an equilibrium between minimizing costs and maximizing benefits, crucial for sustainable decision-making processes. The dual social network framework incorporates positive and negative interactions stemming from trust and opinion similarities, delineating nodes into close, distant, and mixed types based on their relational dynamics. Central to the model is a heterogeneous cost function that integrates individual influence and opinion adjustment, accounting comprehensively for moderator tolerance and incentivization mechanisms. To solve this multi-faceted optimization challenge, the paper proposes a solution leveraging a multi-objective particle swarm algorithm. Through simulation experiments conducted across four distinct social network decision-making scenarios, including a case study on capital investment in an epidemic response center, the paper validates the efficacy and practical applicability of the algorithm. The results underscore the model’s capability to achieve balanced consensus outcomes, offering insights into optimizing decision processes within complex social environments.

Highlights

Construct a dual social network based on the trust degree and opinion similarity.
Propose an adjustment cost measure with opinion adjustment and influence index.
Establish a bi-level consensus model with Choquet integral operator.
Discuss decision-making models under four levels of trust and opinion similarity.
Design a solving method with multi-objective particle swarm optimization algorithm.

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Published In

cover image Information Fusion
Information Fusion  Volume 114, Issue C
Feb 2025
1192 pages

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Elsevier Science Publishers B. V.

Netherlands

Publication History

Published: 07 January 2025

Author Tags

  1. Group decision making
  2. Social network
  3. Minimum cost consensus model
  4. Consensus reaching process

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