An agent based model for opinion dynamics with random confidence threshold
Authored by Yilun Shang
Date Published: 2014-10
DOI: 10.1016/j.cnsns.2014.03.033
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Abstract
Although the idea of introducing heterogeneous confidence levels has been around for some time, its implications for the influence of the confidence thresholds on the consensus formation have not yet been sufficiently elaborated. In this paper, we propose a bounded confidence opinion model with random confidence threshold D associated with potential opinion interaction. Initial opinions are uniformly continuously distributed on the interval [0,1]. Using techniques developed in interacting particle systems, we identify the critical confidence threshold to be E(D) = 1/2 in the sense of almost surely convergence regardless of the distribution of D, if the underlying communication graph is the real line Z. Numerical simulations are performed to illustrate our results. Noticed are some interesting dependency of the rate of consensus and sharpness of phase transition on the distribution of D. Additionally, numerical experiments show that our obtained results are applicable to Barabasi-Albert scale-free networks, implying a universality of the obtained critical confidence threshold. It is hoped that the results could lead to new insights in understanding the mechanisms and dynamics of those group-level collective behaviors arising from micro-level decision-making patterns. (C) 2014 Elsevier B. V. All rights reserved.
Tags
agent-based simulation
Opinion dynamics
Consensus
bounded confidence
Phase transition