Evolutionary clustering and community detection algorithms for social media health surveillance

The prominent rise of social networks within the past decade have become a gold mine for data mining operations seeking to model the real world through these virtual worlds. One of the most important applications that has been proposed is utilizing information generated from social networks as a sup...

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Main Authors: Heba Elgazzar, Kyle Spurlock, Tanner Bogart
Format: Article
Language:English
Published: Elsevier 2021-12-01
Series:Machine Learning with Applications
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2666827021000426
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spelling doaj-c2da37745e9b40a586ec881f07bf828b2021-07-01T04:36:14ZengElsevierMachine Learning with Applications2666-82702021-12-016100084Evolutionary clustering and community detection algorithms for social media health surveillanceHeba Elgazzar0Kyle Spurlock1Tanner Bogart2Corresponding author.; School of Engineering and Computer Science, Morehead State University, Morehead, KY 40351, USASchool of Engineering and Computer Science, Morehead State University, Morehead, KY 40351, USASchool of Engineering and Computer Science, Morehead State University, Morehead, KY 40351, USAThe prominent rise of social networks within the past decade have become a gold mine for data mining operations seeking to model the real world through these virtual worlds. One of the most important applications that has been proposed is utilizing information generated from social networks as a supplemental health surveillance system to monitor disease epidemics. At the time this research was conducted in 2020, the COVID-19 virus had evolved into a global pandemic, forcing many countries to implement preventative measures to halt its expanse. Health surveillance has been a powerful tool in placing further preventative measures, however it is not a perfect system, and slowly collected, misidentified information can prove detrimental to these efforts. This research proposes a new potential surveillance avenue through unsupervised machine learning using dynamic, evolutionary variants of clustering algorithms DBSCAN and the Louvain method to allow for community detection in temporal networks. This technique is paired with geographical data collected directly from the social media Twitter, to create an effective and accurate health surveillance system that grows as time passes. The experimental results show that the proposed system is promising and has the potential to be an advancement on current machine learning health surveillance techniques.http://www.sciencedirect.com/science/article/pii/S2666827021000426Unsupervised machine learningEvolutionary clusteringCommunity detectionSocial networksCOVID-19Health surveillance
collection DOAJ
language English
format Article
sources DOAJ
author Heba Elgazzar
Kyle Spurlock
Tanner Bogart
spellingShingle Heba Elgazzar
Kyle Spurlock
Tanner Bogart
Evolutionary clustering and community detection algorithms for social media health surveillance
Machine Learning with Applications
Unsupervised machine learning
Evolutionary clustering
Community detection
Social networks
COVID-19
Health surveillance
author_facet Heba Elgazzar
Kyle Spurlock
Tanner Bogart
author_sort Heba Elgazzar
title Evolutionary clustering and community detection algorithms for social media health surveillance
title_short Evolutionary clustering and community detection algorithms for social media health surveillance
title_full Evolutionary clustering and community detection algorithms for social media health surveillance
title_fullStr Evolutionary clustering and community detection algorithms for social media health surveillance
title_full_unstemmed Evolutionary clustering and community detection algorithms for social media health surveillance
title_sort evolutionary clustering and community detection algorithms for social media health surveillance
publisher Elsevier
series Machine Learning with Applications
issn 2666-8270
publishDate 2021-12-01
description The prominent rise of social networks within the past decade have become a gold mine for data mining operations seeking to model the real world through these virtual worlds. One of the most important applications that has been proposed is utilizing information generated from social networks as a supplemental health surveillance system to monitor disease epidemics. At the time this research was conducted in 2020, the COVID-19 virus had evolved into a global pandemic, forcing many countries to implement preventative measures to halt its expanse. Health surveillance has been a powerful tool in placing further preventative measures, however it is not a perfect system, and slowly collected, misidentified information can prove detrimental to these efforts. This research proposes a new potential surveillance avenue through unsupervised machine learning using dynamic, evolutionary variants of clustering algorithms DBSCAN and the Louvain method to allow for community detection in temporal networks. This technique is paired with geographical data collected directly from the social media Twitter, to create an effective and accurate health surveillance system that grows as time passes. The experimental results show that the proposed system is promising and has the potential to be an advancement on current machine learning health surveillance techniques.
topic Unsupervised machine learning
Evolutionary clustering
Community detection
Social networks
COVID-19
Health surveillance
url http://www.sciencedirect.com/science/article/pii/S2666827021000426
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