Title of article
Developing A Method for Modeling and Monitoring of Dynamic Networks Using Latent Variables
Author/Authors
Elhambakhsh, Fatemeh Iran University of Science & Technology, Tehran, Iran , Mehrabad, Mohammad Saidi College of Industrial Engineering - Iran University of Science &Technology, Tehran, Iran
Pages
8
From page
29
To page
36
Abstract
Statistical monitoring of dynamic networks is a major topic of interest in complex social systems. Many
researches have been conducted on modeling and monitoring dynamic social networks. This article
proposes a new methodology for modeling and monitoring dynamic social networks for detection of
anomalies in network structures using latent variables. The key idea behind our proposed methodology
is to determine the importance of latent variables in creating edges between nodes as well as observed
covariates. First, latent space model (LSM) is used to model dynamic networks. Vector of parameters
in LSM are monitored through multivariate control charts in order to detect changes in different
network sizes. Experiments on simulated social network monitoring demonstrate that our surveillance
monitoring strategy can effectively detect abrupt changes between actors in dynamic networks using
latent variables.
Keywords
Latent space models , Dynamic networks , Anomaly detection , Average run length (ARL) , Network surveillance
Journal title
International Journal of Industrial Engineering and Production Research
Serial Year
2021
Record number
2631719
Link To Document