Dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [SIR] Model / Nur Natasha Arisha Rizan

Facebook acts as an information medium since it provides the opportunities in distributing news. Facebook user will know what is happening around the world and can get information from the news. Some of the breaking news gets viral as soon as it is posted. However, the duration for the spread of vir...

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Main Author: Rizan, Nur Natasha Arisha
Format: Student Project
Language:English
Published: 2021
Subjects:
Online Access:http://ir.uitm.edu.my/id/eprint/44529/1/44529.pdf
http://ir.uitm.edu.my/id/eprint/44529/
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spelling my.uitm.ir.445292021-06-22T02:12:52Z http://ir.uitm.edu.my/id/eprint/44529/ Dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [SIR] Model / Nur Natasha Arisha Rizan Rizan, Nur Natasha Arisha Online social networks Differential equations. Runge-Kutta formulas Facebook acts as an information medium since it provides the opportunities in distributing news. Facebook user will know what is happening around the world and can get information from the news. Some of the breaking news gets viral as soon as it is posted. However, the duration for the spread of viral breaking news is uncertain. Thus, this study is carried out to analyse the dynamics of breaking news content on Facebook based on Susceptible-Infected-Recovered (SIR) model. This study is also conducted to formulate a model of the spreading nature of breaking news on Facebook and to compare the growth and the decline of the number of viewers in relation to the breaking news. The model consists of three variables which are Facebook user which is exposed to the viral content (susceptible), Facebook user receiving and sharing the viral content (infected) and Facebook user that stops posting the viral content (recovered). The SIR model without demography and SIR model with demography are discussed with the news related to Covid-19 in China and news related to death of Abam Bocey; in which the news is selected. The news is selected from CNN’s Facebook account and Astro AWANI, respectively. The numbers of likes, comments, shares, viewers and the number of followers of the Facebook accounts have been collected. Linear stability analysis has been carried out and the SIR model solutions are analysed. The results of reproduction number indicate that the selected news for both SIR model without demography and SIR model with demography is epidemic since the breaking news content is spread widely through Facebook users at a certain time. The results also showed that both of the news spread faster during the earliest part of the incident by using both SIR models. This indicates that the SIR model is a reliable method for analysing the viral content dynamics. 2021-03-30 Student Project NonPeerReviewed text en http://ir.uitm.edu.my/id/eprint/44529/1/44529.pdf ID44529 Rizan, Nur Natasha Arisha (2021) Dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [SIR] Model / Nur Natasha Arisha Rizan. [Student Project] (Unpublished)
institution Universiti Teknologi Mara
building Tun Abdul Razak Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Teknologi Mara
content_source UiTM Institutional Repository
url_provider http://ir.uitm.edu.my/
language English
topic Online social networks
Differential equations. Runge-Kutta formulas
spellingShingle Online social networks
Differential equations. Runge-Kutta formulas
Rizan, Nur Natasha Arisha
Dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [SIR] Model / Nur Natasha Arisha Rizan
description Facebook acts as an information medium since it provides the opportunities in distributing news. Facebook user will know what is happening around the world and can get information from the news. Some of the breaking news gets viral as soon as it is posted. However, the duration for the spread of viral breaking news is uncertain. Thus, this study is carried out to analyse the dynamics of breaking news content on Facebook based on Susceptible-Infected-Recovered (SIR) model. This study is also conducted to formulate a model of the spreading nature of breaking news on Facebook and to compare the growth and the decline of the number of viewers in relation to the breaking news. The model consists of three variables which are Facebook user which is exposed to the viral content (susceptible), Facebook user receiving and sharing the viral content (infected) and Facebook user that stops posting the viral content (recovered). The SIR model without demography and SIR model with demography are discussed with the news related to Covid-19 in China and news related to death of Abam Bocey; in which the news is selected. The news is selected from CNN’s Facebook account and Astro AWANI, respectively. The numbers of likes, comments, shares, viewers and the number of followers of the Facebook accounts have been collected. Linear stability analysis has been carried out and the SIR model solutions are analysed. The results of reproduction number indicate that the selected news for both SIR model without demography and SIR model with demography is epidemic since the breaking news content is spread widely through Facebook users at a certain time. The results also showed that both of the news spread faster during the earliest part of the incident by using both SIR models. This indicates that the SIR model is a reliable method for analysing the viral content dynamics.
format Student Project
author Rizan, Nur Natasha Arisha
author_facet Rizan, Nur Natasha Arisha
author_sort Rizan, Nur Natasha Arisha
title Dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [SIR] Model / Nur Natasha Arisha Rizan
title_short Dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [SIR] Model / Nur Natasha Arisha Rizan
title_full Dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [SIR] Model / Nur Natasha Arisha Rizan
title_fullStr Dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [SIR] Model / Nur Natasha Arisha Rizan
title_full_unstemmed Dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [SIR] Model / Nur Natasha Arisha Rizan
title_sort dynamic analysis of breaking news content on facebook based on susceptible-infected-recovered [sir] model / nur natasha arisha rizan
publishDate 2021
url http://ir.uitm.edu.my/id/eprint/44529/1/44529.pdf
http://ir.uitm.edu.my/id/eprint/44529/
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