Inference in the Stochastic Block Model with a Markovian assignment of the communities

04/09/2020
by   Quentin Duchemin, et al.
0

We tackle the community detection problem in the Stochastic Block Model (SBM) when the communities of the nodes of the graph are assigned with a Markovian dynamic. To recover the partition of the nodes, we adapt the relaxed K-means SDP program presented in [11]. We identify the relevant signal-to-noise ratio (SNR) in our framework and we prove that the misclassification error decays exponentially fast with respect to this SNR. We provide infinity norm consistent estimation of the parameters of our model and we discuss our results through the prism of classical degree regimes of the SBMs' literature. MSC 2010 subject classifications: Primary 68Q32; secondary 68R10, 90C35.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/22/2016

Inference via Message Passing on Partially Labeled Stochastic Block Models

We study the community detection and recovery problem in partially-label...
research
07/19/2018

Partial recovery bounds for clustering with the relaxed Kmeans

We investigate the clustering performances of the relaxed Kmeans in the ...
research
11/29/2018

Testing Changes in Communities for the Stochastic Block Model

We introduce the problems of goodness-of-fit and two-sample testing of t...
research
03/30/2016

Performance of a community detection algorithm based on semidefinite programming

The problem of detecting communities in a graph is maybe one the most st...
research
09/19/2020

Estimating the number of communities by Stepwise Goodness-of-fit

Given a symmetric network with n nodes, how to estimate the number of co...
research
07/26/2023

Phase Transitions of Diversity in Stochastic Block Model Dynamics

This paper proposes a stochastic block model with dynamics where the pop...
research
09/23/2019

Community Detection and Improved Detectability in Multiplex Networks

We investigate the widely encountered problem of detecting communities i...

Please sign up or login with your details

Forgot password? Click here to reset