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Nonparametric two-sample test for networks using joint graphon estimation

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  • Sischka, Benjamin
  • Kauermann, Göran

Abstract

This paper focuses on the comparison of networks on the basis of statistical inference. For that purpose, we rely on smooth graphon models as a nonparametric modeling strategy that is able to capture complex structural patterns. The graphon itself can be viewed more broadly as local density or intensity function on networks, making the model a natural choice for comparison purposes. More precisely, to gain information about the (dis-)similarity between networks, we extend graphon estimation towards modeling multiple networks simultaneously. In particular, fitting a single model implies aligning different networks with respect to the same graphon estimate. To do so, we employ an EM-type algorithm. Drawing on this network alignment consequently allows a comparison of the edge density at local level. Based on that, we construct a chi-squared-type test on equivalence of network structures. Simulation studies and real-world examples support the applicability of our network comparison strategy.

Suggested Citation

  • Sischka, Benjamin & Kauermann, Göran, 2025. "Nonparametric two-sample test for networks using joint graphon estimation," Network Science, Cambridge University Press, vol. 13, pages 1-1, January.
  • Handle: RePEc:cup:netsci:v:13:y:2025:i::p:-_6
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