Features and heterogeneities in growing network models
Luca Ferretti, Michele Cortelezzi, Bin Yang, Giacomo Marmorini and, Ginestra Bianconi

TL;DR
This paper generalizes growing network models by incorporating node heterogeneity, revealing that such features lead to effective fitness, multiscaling degree distributions, and typical network properties like low clustering and disassortative mixing.
Contribution
It introduces a generalized preferential attachment model accounting for node heterogeneity, providing a comprehensive analysis of its impact on network structure and properties.
Findings
Degree distribution exhibits multiscaling behavior.
Clustering coefficient diminishes with network size.
Negative degree correlations and disassortative mixing are observed.
Abstract
Many complex networks from the World-Wide-Web to biological networks are growing taking into account the heterogeneous features of the nodes. The feature of a node might be a discrete quantity such as a classification of a URL document as personal page, thematic website, news, blog, search engine, social network, ect. or the classification of a gene in a functional module. Moreover the feature of a node can be a continuous variable such as the position of a node in the embedding space. In order to account for these properties, in this paper we provide a generalization of growing network models with preferential attachment that includes the effect of heterogeneous features of the nodes. The main effect of heterogeneity is the emergence of an "effective fitness" for each class of nodes, determining the rate at which nodes acquire new links. The degree distribution exhibits a multiscaling…
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