Communities Detection in Multiplex Networks Using Optimization: Study Case—Employment in Mexico during the COVID-19 Pandemic

Author:

Montes-Orozco Edwin1ORCID,Mora-Gutiérrez Roman Anselmo2ORCID,De-Los-Cobos-Silva Sergio Gerardo3ORCID,Bernal-Jaquez Roberto1ORCID,Rincón-García Eric Alfredo3ORCID,Gutiérrez-Andrade Miguel Angel3ORCID,Lara-Velázquez Pedro3ORCID

Affiliation:

1. Departamento de Matemáticas Aplicadas y Sistemas, Universidad Autónoma Metropolitana Cuajimalpa, Av. Vasco de Quiroga 4871, Col. Santa Fe Cuajimalpa. C.P. 05348, Cuajimalpa, CDMX, Mexico

2. Departamento de Sistemas, Universidad Autónoma Metropolitana Azcapotzalco, Av. San Pablo Xalpa 180, Azcapotzalco 02128, CDMX, Mexico

3. Departamento de Ingeniería Eléctrica, Universidad Autónoma Metropolitana Iztapalapa, Av. San Rafael Atlixco 186, Iztapalapa 09340, CDMX, Mexico

Abstract

The detection of communities in complex networks offers important information about the structure of the network as well as its dynamics. However, it is not an easy problem to solve. This work presents a methodology based of the robust coloring problem (RCP) and the vertex cover problem (VCP) to find communities in multiplex networks. For this, we consider the RCP idea of having a partial detection based onf the similarity of connected and unconnected nodes. On the other hand, with the idea of the VCP, we manage to minimize the number of groups, which allows us to identify the communities well. To apply this methodology, we present the dynamic characterization of job loss, change, and acquisition behavior for the Mexican population before and during the COVID-19 pandemic modeled as a 4- layer multiplex network. The results obtained when applied to test and study case networks show that this methodology can classify elements with similar characteristics and can find their communities. Therefore, our proposed methodology can be used as a new mechanism to identify communities, regardless of the topology or whether it is a monoplex or multiplex network.

Publisher

Hindawi Limited

Subject

Multidisciplinary,General Computer Science

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