Higher-Order Graphon Theory: Fluctuations, Degeneracies, and Inference
Anirban Chatterjee, Soham Dan, and Bhaswar B. Bhattacharya

TL;DR
This paper develops a comprehensive statistical framework for analyzing subgraph counts in exchangeable random graphs modeled by graphons, including their asymptotic distributions, bootstrap methods, and tests for global structure detection.
Contribution
It introduces the joint asymptotic distribution of network moments, a bootstrap method for inference, and tests for degeneracy and global structure in graphon models.
Findings
Derived the joint asymptotic distribution of network moments.
Developed a multiplier bootstrap method for graphons.
Proposed a consistent test for detecting global structure.
Abstract
Exchangeable random graphs, which include some of the most widely studied network models, have emerged as the mainstay of statistical network analysis in recent years. Graphons, which are the central objects in graph limit theory, provide a natural way to sample exchangeable random graphs. It is well known that network moments (motif/subgraph counts) identify a graphon (up to an isomorphism), hence, understanding the sampling distribution of subgraph counts in random graphs sampled from a graphon is pivotal for nonparametric network inference. In this paper, we derive the joint asymptotic distribution of any finite collection of network moments in random graphs sampled from a graphon, that includes both the non-degenerate case (where the distribution is Gaussian) as well as the degenerate case (where the distribution has both Gaussian or non-Gaussian components). This provides the…
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Taxonomy
TopicsGraphene research and applications · Molecular Junctions and Nanostructures · Graph Theory and Algorithms
