A new measure of modularity density for community detection

08/22/2019
by   Swathi M. Mula, et al.
0

Using an intuitive concept of what constitutes a meaningful community, a novel metric is formulated for detecting non-overlapping communities in undirected, weighted heterogeneous networks. This metric, modularity density, is shown to be superior to the versions of modularity density in present literature. Compared to the previous versions of modularity density, maximization of our metric is proven to be free from bias and better detect weakly-separated communities particularly in heterogeneous networks. In addition to these characteristics, the computational running time of our modularity density is found to be on par or faster than that of the previous variants. Our findings further reveal that community detection by maximization of our metric is mathematically related to partitioning a network by minimization of the normalized cut criterion.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/07/2019

Density-based Community Detection/Optimization

Modularity-based algorithms used for community detection have been incre...
research
08/22/2017

Network community detection using modularity density measures

Modularity, since its introduction, has remained one of the most widely ...
research
09/14/2010

Efficient Bayesian Community Detection using Non-negative Matrix Factorisation

Identifying overlapping communities in networks is a challenging task. I...
research
12/29/2020

Resolution limit revisited: community detection using generalized modularity density

Various attempts have been made in recent years to solve the Resolution ...
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
06/16/2018

Latent heterogeneous multilayer community detection

We propose a method for simultaneously detecting shared and unshared com...

Please sign up or login with your details

Forgot password? Click here to reset