Overlapping Communities Detection via Measure Space Embedding

04/26/2015
by   Mark Kozdoba, et al.
0

We present a new algorithm for community detection. The algorithm uses random walks to embed the graph in a space of measures, after which a modification of k-means in that space is applied. The algorithm is therefore fast and easily parallelizable. We evaluate the algorithm on standard random graph benchmarks, including some overlapping community benchmarks, and find its performance to be better or at least as good as previously known algorithms. We also prove a linear time (in number of edges) guarantee for the algorithm on a p,q-stochastic block model with p ≥ c· N^-1/2 + ϵ and p-q ≥ c' √(p N^-1/2 + ϵ N).

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/16/2019

Efficient Distributed Community Detection in the Stochastic Block Model

Designing effective algorithms for community detection is an important a...
research
10/28/2021

CIIA:A New Algorithm for Community Detection

In this paper, through thinking on the modularity function that measures...
research
10/06/2022

LazyFox: Fast and parallelized overlapping community detection in large graphs

The detection of communities in graph datasets provides insight about a ...
research
07/20/2019

Overlapping community detection in networks based on link partitioning and partitioning around medoids

In this paper, we present a new method for detecting overlapping communi...
research
05/19/2022

Hippocluster: an efficient, hippocampus-inspired algorithm for graph clustering

Random walks can reveal communities or clusters in networks, because the...
research
10/02/2019

A new method for quantifying network cyclic structure to improve community detection

A distinguishing property of communities in networks is that cycles are ...
research
02/07/2012

Modification of the Elite Ant System in Order to Avoid Local Optimum Points in the Traveling Salesman Problem

This article presents a new algorithm which is a modified version of the...

Please sign up or login with your details

Forgot password? Click here to reset