Abstract
As more and more network-structured data sets are available, the statistical analysis of valued graphs has become common place. Looking for a latent structure is one of the many strategies used to better understand the behavior of a network. Several methods already exist for the binary case. We present a model-based strategy to uncover groups of nodes in valued graphs. This framework can be used for a wide span of parametric random graphs models and allows to include covariates. Variational tools allow us to achieve approximate maximum likelihood estimation of the parameters of these models. We provide a simulation study showing that our estimation method performs well over a broad range of situations. We apply this method to analyze host-parasite interaction networks in forest ecosystems. © 2011 Institute ol Mathematical Statistics, 2010.
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Mariadassou, M., Robin, S., & Vacher, C. (2010). Uncovering latent structure in valued graphs: A variational approach. Annals of Applied Statistics, 4(2), 715–742. https://doi.org/10.1214/10-AOAS361
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