On The Role of Community Structure in Evolution of Opinion Formation: A New Bounded Confidence Opinion Dynamics

Information Sciences(2023)

Cited 25|Views19
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Abstract
The process of opinion formation and evolution is an important part of the study of opinion dynamics. However, the existing opinion dynamics ignore the relationship between opin-ion evolution and community structure. To address the limitation, we build a novel bounded confidence opinion dynamics model (called LPA-HK for simplicity). Based on the Hegselmann-Krause (HK) model, the label propagation algorithm (LPA) is introduced in the LPA-HK model to study the relationship between opinion evolution and community partition from the micro-perspective of the evolutionary process. Each agent has an opin-ion as well as a label indicating the agent's community. The iterations of agents' states involve two stages: label and opinion updates. The labels and opinions of agents evolve dynamically until the group reaches a stable state. We perform simulations to examine the effect of the model parameters on opinion evolution and community partitions. We show that group reaches a consensus as the confidence level increases to a critical value and the partitions of high quality are obtained when the confidence level is greater than the critical value. We apply the LPA-HK model to three kinds of real networks to solve the community detection problem. The effectiveness of the LPA-HK model is verified by comparing the results with two existing community detection results based on modularity optimization algorithms.(c) 2022 Elsevier Inc. All rights reserved.
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Key words
Opinion dynamics,Community structure,Bounded confidence,Complex social network
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