The Class of Random Graphs Arising from Exchangeable Random Measures
Victor Veitch, Daniel M. Roy

TL;DR
This paper introduces a new class of exchangeable random graph models based on symmetric point processes, providing a unified framework that includes both dense and sparse graphs, with explicit characterizations and structural properties.
Contribution
It formalizes a novel class of exchangeable random graphs using graphexes, extending previous models to include sparse graphs and providing a representation theorem and structural analysis.
Findings
The model encompasses both dense and sparse exchangeable graphs.
Explicit formulas for expected graph statistics and degree distributions.
Certain graphex families produce graphs with a giant connected component.
Abstract
We introduce a class of random graphs that we argue meets many of the desiderata one would demand of a model to serve as the foundation for a statistical analysis of real-world networks. The class of random graphs is defined by a probabilistic symmetry: invariance of the distribution of each graph to an arbitrary relabelings of its vertices. In particular, following Caron and Fox, we interpret a symmetric simple point process on as the edge set of a random graph, and formalize the probabilistic symmetry as joint exchangeability of the point process. We give a representation theorem for the class of random graphs satisfying this symmetry via a straightforward specialization of Kallenberg's representation theorem for jointly exchangeable random measures on . The distribution of every such random graph is characterized by three (potentially random)…
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Taxonomy
TopicsPoint processes and geometric inequalities · Bayesian Methods and Mixture Models · Stochastic processes and statistical mechanics
