Community Recovery in the Geometric Block Model

06/22/2022
by   Sainyam Galhotra, et al.
1

To capture inherent geometric features of many community detection problems, we propose to use a new random graph model of communities that we call a Geometric Block Model. The geometric block model builds on the random geometric graphs (Gilbert, 1961), one of the basic models of random graphs for spatial networks, in the same way that the well-studied stochastic block model builds on the Erdős-Réńyi random graphs. It is also a natural extension of random community models inspired by the recent theoretical and practical advancements in community detection. To analyze the geometric block model, we first provide new connectivity results for random annulus graphs which are generalizations of random geometric graphs. The connectivity properties of geometric graphs have been studied since their introduction, and analyzing them has been difficult due to correlated edge formation. We then use the connectivity results of random annulus graphs to provide necessary and sufficient conditions for efficient recovery of communities for the geometric block model. We show that a simple triangle-counting algorithm to detect communities in the geometric block model is near-optimal. For this we consider two regimes of graph density. In the regime where the average degree of the graph grows logarithmically with number of vertices, we show that our algorithm performs extremely well, both theoretically and practically. In contrast, the triangle-counting algorithm is far from being optimum for the stochastic block model in the logarithmic degree regime. We also look at the regime where the average degree of the graph grows linearly with the number of vertices n, and hence to store the graph one needs Θ(n^2) memory. We show that our algorithm needs to store only O(n log n) edges in this regime to recover the latent communities.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
09/16/2017

The Geometric Block Model

To capture the inherent geometric features of many community detection p...
research
11/09/2020

Robustness of Community Detection to Random Geometric Perturbations

We consider the stochastic block model where connection between vertices...
research
06/28/2020

Community detection and percolation of information in a geometric setting

We make the first steps towards generalizing the theory of stochastic bl...
research
08/29/2022

Dynamic Network Sampling for Community Detection

We propose a dynamic network sampling scheme to optimize block recovery ...
research
06/05/2020

Linear Programming and Community Detection

The problem of community detection with two equal-sized communities is c...
research
08/07/2020

Fractal Gaussian Networks: A sparse random graph model based on Gaussian Multiplicative Chaos

We propose a novel stochastic network model, called Fractal Gaussian Net...
research
02/25/2021

Graph Community Detection from Coarse Measurements: Recovery Conditions for the Coarsened Weighted Stochastic Block Model

We study the problem of community recovery from coarse measurements of a...

Please sign up or login with your details

Forgot password? Click here to reset