Last updated:
Author(s):
Anirban Mitra, Konasale Prasad, Joshua Cape
Publish date:
13 May 2024
Journal:
Journal of Computational and Graphical Statistics

Abstract

This article revisits the classical concept of network modularity and its spectral relaxations used throughout graph data analysis. We formulate and study several modularity statistic variants for which we establish asymptotic distributional results in the large-network limit for networks exhibiting nodal community structure. Our work facilitates testing for network differences and can be used in conjunction with existing theoretical guarantees for stochastic blockmodel random graphs. Our results are enabled by recent advances in the study of low-rank truncations of large network adjacency matrices. We provide confirmatory simulation studies and real data analysis pertaining to the network neuroscience study of psychosis, specifically schizophrenia. Collectively, this article contributes to the limited existing literature to date on statistical inference for modularity-based network analysis. Supplemental materials for this article are available online.

Related projects

The human brain is organized into multiple network layers interacting with each other. These layers comprise of structural networks derived from white matter data obtained…

Institution:
University of Pittsburgh, United States of America

All projects