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Renormalizing Sznajd model on complex networks taking into account the effects of growth mechanisms

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 Added by Marta Gonzalez
 Publication date 2005
  fields Physics
and research's language is English




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We present a renormalization approach to solve the Sznajd opinion formation model on complex networks. For the case of two opinions, we present an expression of the probability of reaching consensus for a given opinion as a function of the initial fraction of agents with that opinion. The calculations reproduce the sharp transition of the model on a fixed network, as well as the recently observed smooth function for the model when simulated on a growing complex networks.



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