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2024 | OriginalPaper | Chapter

Expressivity of Geometric Inhomogeneous Random Graphs—Metric and Non-metric

Authors : Benjamin Dayan, Marc Kaufmann, Ulysse Schaller

Published in: Complex Networks XV

Publisher: Springer Nature Switzerland

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Abstract

Recently there has been increased interest in fitting generative graph models to real-world networks. In particular, Bläsius et al. have proposed a framework for systematic evaluation of the expressivity of random graph models. We extend this framework to Geometric Inhomogeneous Random Graphs (GIRGs). This includes a family of graphs induced by non-metric distance functions which allow capturing more complex models of partial similarity between nodes as a basis of connection—as well as homogeneous and non-homogeneous feature spaces. As part of the extension, we develop schemes for estimating the multiplicative constant and the long-range parameter in the connection probability. Moreover, we devise an algorithm for sampling Minimum-Component-Distance GIRGs whose runtime is linear both in the number of vertices and in the dimension of the underlying geometric space. Our results provide evidence that GIRGs are more realistic candidates with respect to various graph features such as closeness centrality, betweenness centrality, local clustering coefficient, and graph effective diameter, while they face difficulties to replicate higher variance and more extreme values of graph statistics observed in real-world networks.

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Footnotes
1
For a given feature, let X be the vector containing the c values it assumes in different graphs. Let \(\sigma \) and \(\mu \) denote the standard deviation and mean. Then the feature’s normalized coefficient of variation is defined as \(\frac{\sigma (X)}{\mu (X) \sqrt{c-1}}\).
 
2
Our code is available on request.
 
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Metadata
Title
Expressivity of Geometric Inhomogeneous Random Graphs—Metric and Non-metric
Authors
Benjamin Dayan
Marc Kaufmann
Ulysse Schaller
Copyright Year
2024
DOI
https://doi.org/10.1007/978-3-031-57515-0_7

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