Statistical inference on random dot product graphs: a survey
The random dot product graph (RDPG) is an independent-edge random graph that is
analytically tractable and, simultaneously, either encompasses or can successfully …
analytically tractable and, simultaneously, either encompasses or can successfully …
Statistical connectomics
The data science of networks is a rapidly develo** field with myriad applications. In
neuroscience, the brain is commonly modeled as a connectome, a network of nodes …
neuroscience, the brain is commonly modeled as a connectome, a network of nodes …
Inference for multiple heterogeneous networks with a common invariant subspace
The development of models and methodology for the analysis of data from multiple
heterogeneous networks is of importance both in statistical network theory and across a …
heterogeneous networks is of importance both in statistical network theory and across a …
The two-to-infinity norm and singular subspace geometry with applications to high-dimensional statistics
The singular value matrix decomposition plays a ubiquitous role throughout statistics and
related fields. Myriad applications including clustering, classification, and dimensionality …
related fields. Myriad applications including clustering, classification, and dimensionality …
Limit theorems for eigenvectors of the normalized Laplacian for random graphs
We prove a central limit theorem for the components of the eigenvectors corresponding to
the d largest eigenvalues of the normalized Laplacian matrix of a finite dimensional random …
the d largest eigenvalues of the normalized Laplacian matrix of a finite dimensional random …
[HTML][HTML] Network classification with applications to brain connectomics
While statistical analysis of a single network has received a lot of attention in recent years,
with a focus on social networks, analysis of a sample of networks presents its own …
with a focus on social networks, analysis of a sample of networks presents its own …
Two-sample hypothesis testing for inhomogeneous random graphs
D Ghoshdastidar, M Gutzeit, A Carpentier… - The Annals of …, 2020 - JSTOR
The study of networks leads to a wide range of high-dimensional inference problems. In
many practical applications, one needs to draw inference from one or few large sparse …
many practical applications, one needs to draw inference from one or few large sparse …
Optimal network pairwise comparison
We are interested in the problem of two-sample network hypothesis testing: given two
networks with the same set of nodes, we wish to test whether the underlying Bernoulli …
networks with the same set of nodes, we wish to test whether the underlying Bernoulli …
Modeling network populations via graph distances
This article introduces a new class of models for multiple networks. The core idea is to
parameterize a distribution on labeled graphs in terms of a Fréchet mean graph (which …
parameterize a distribution on labeled graphs in terms of a Fréchet mean graph (which …