Step-by-Step Community Detection for Volume-Regular Graphs

07/16/2019
by   Luca Becchetti, et al.
0

Spectral techniques have proved amongst the most effective approaches to graph clustering. However, in general they require explicit computation of the main eigenvectors of a suitable matrix (usually the Laplacian matrix of the graph). Recent work (e.g., Becchetti et al., SODA 2017) suggests that observing the temporal evolution of the power method applied to an initial random vector may, at least in some cases, provide enough information on the space spanned by the first two eigenvectors, so as to allow recovery of a hidden partition without explicit eigenvector computations. While the results of Becchetti et al. apply to perfectly balanced partitions and/or graphs that exhibit very strong forms of regularity, we extend their approach to graphs containing a hidden k partition and characterized by a milder form of volume-regularity. We show that the class of k-volume regular graphs is the largest class of undirected (possibly weighted) graphs whose transition matrix admits k stepwise eigenvectors (i.e., vectors that are constant over each set of the hidden partition). To obtain this result, we highlight a connection between volume regularity and lumpability of Markov chains. Moreover, we prove that if the stepwise eigenvectors are those associated to the first k eigenvalues and the gap between the k-th and the (k+1)-th eigenvalues is sufficiently large, the Averaging dynamics of Becchetti et al. recovers the underlying community structure of the graph in logarithmic time, with high probability.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/28/2020

Fast algorithms for general spin systems on bipartite expanders

A spin system is a framework in which the vertices of a graph are assign...
research
03/21/2017

On the Interplay between Strong Regularity and Graph Densification

In this paper we analyze the practical implications of Szemerédi's regul...
research
09/05/2020

Explicit near-fully X-Ramanujan graphs

Let p(Y_1, …, Y_d, Z_1, …, Z_e) be a self-adjoint noncommutative polynom...
research
11/14/2018

Robustness of spectral methods for community detection

The present work is concerned with community detection. Specifically, we...
research
02/12/2023

Infinite Lewis Weights in Spectral Graph Theory

We study the spectral implications of re-weighting a graph by the ℓ_∞-Le...
research
08/06/2020

Concentration Bounds for Co-occurrence Matrices of Markov Chains

Co-occurrence statistics for sequential data are common and important da...
research
10/02/2018

Graph Compression Using The Regularity Method

We are living in a world which is getting more and more interconnected a...

Please sign up or login with your details

Forgot password? Click here to reset