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  • 1. Koenig, Michael D.
    et al.
    Tessone, Claudio J.
    Zenou, Yves
    Stockholm University, Faculty of Social Sciences, Department of Economics.
    Nestedness in networks: A theoretical model and some applications2014In: Theoretical Economics, ISSN 1933-6837, E-ISSN 1555-7561, Vol. 9, no 3, p. 695-752Article in journal (Refereed)
    Abstract [en]

    We develop a dynamic network formation model that can explain the observed nestedness in real-world networks. Links are formed on the basis of agents' centrality and have an exponentially distributed lifetime. We use stochastic stability to identify the networks to which the network formation process converges and find that they are nested split graphs. We completely determine the topological properties of the stochastically stable networks and show that they match features exhibited by real-world networks. Using four different network data sets, we empirically test our model and show that it fits well the observed networks.

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