Vector opinion dynamics in a model for social influence
classification
❄️ cond-mat.stat-mech
keywords
modelinfluenceopinionopinionssocialsteadythresholdvector
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We present numerical simulations of a model of social influence, where the opinion of each agent is represented by a binary vector. Agents adjust their opinions as a result of random encounters, whenever the difference between opinions is below a given threshold. Evolution leads to a steady state, which highly depends on the threshold and a convergence parameter of the model. We analyze the transition between clustered and homogeneous steady states. Results of the cases of complete mixing and small-world networks are compared.
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