Popularity Adjusted Block Models are Generalized Random Dot Product Graphs

09/09/2021
by   John Koo, et al.
0

We connect two random graph models, the Popularity Adjusted Block Model (PABM) and the Generalized Random Dot Product Graph (GRDPG), by demonstrating that the PABM is a special case of the GRDPG in which communities correspond to mutually orthogonal subspaces of latent vectors. This insight allows us to construct new algorithms for community detection and parameter estimation for the PABM, as well as improve an existing algorithm that relies on Sparse Subspace Clustering. Using established asymptotic properties of Adjacency Spectral Embedding for the GRDPG, we derive asymptotic properties of these algorithms. In particular, we demonstrate that the absolute number of community detection errors tends to zero as the number of graph vertices tends to infinity. Simulation experiments illustrate these properties.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/01/2019

Estimation and Clustering in Popularity Adjusted Stochastic Block Model

The paper considers the Popularity Adjusted Block model (PABM) introduce...
research
11/03/2016

Spectral community detection in heterogeneous large networks

In this article, we study spectral methods for community detection based...
research
10/03/2019

Sparse Popularity Adjusted Stochastic Block Model

The objective of the present paper is to study the Popularity Adjusted B...
research
05/26/2019

Optimizing Generalized PageRank Methods for Seed-Expansion Community Detection

Landing probabilities (LP) of random walks (RW) over graphs encode rich ...
research
01/16/2014

Community Detection in Networks using Graph Distance

The study of networks has received increased attention recently not only...
research
11/09/2020

Robustness of Community Detection to Random Geometric Perturbations

We consider the stochastic block model where connection between vertices...
research
03/31/2020

On Two Distinct Sources of Nonidentifiability in Latent Position Random Graph Models

Two separate and distinct sources of nonidentifiability arise naturally ...

Please sign up or login with your details

Forgot password? Click here to reset