Analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / Khairul Nisha Khairul Anuar
Social media has gained popularity as a platform enabling users to receive breaking news from around the world during the COVID-19 pandemic. The Conditional Movement Control Order (CMCO) was declared by the federal government of Malaysia on the 14th of October 2020. During CMCO, a lot of rumors with...
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my.uitm.ir.493532021-08-30T09:01:14Z https://ir.uitm.edu.my/id/eprint/49353/ Analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / Khairul Nisha Khairul Anuar Khairul Anuar, Khairul Nisha Online social networks Prediction analysis Social media has gained popularity as a platform enabling users to receive breaking news from around the world during the COVID-19 pandemic. The Conditional Movement Control Order (CMCO) was declared by the federal government of Malaysia on the 14th of October 2020. During CMCO, a lot of rumors with regards to education, entertainment, and economy came about on Facebook. The purpose of this study is to investigate the spread of rumors via Facebook. Specifically, this study attempts to formulate a model for the spread of rumors via Facebook using the epidemic model. This study also attempts to conduct a numerical experiment on the effect of the number of likes, comments, and shares of the rumor. The Susceptible-Infected-Recovered (SIR) model is used in this study. The data has been collected every hour on the 15th November 2020. The N parameter is considered constant for this case study. The result of the study shows that the information posted on the three chosen Facebook pages; SAYS, ROTIKAYA, and Siakap Keli went viral. Furthermore, the increase in the value of the number of likes, comments, and shares prolonged the duration of the rumor being viral. The issue that was the most viral during CMCO was the issue pertaining to the economy posted on Siakap Keli Facebook page. For future work, it is recommended that the researcher uses N that is not a constant, based on the Logistic Growth Model which changes over time. 2021-08-05 Student Project NonPeerReviewed text en https://ir.uitm.edu.my/id/eprint/49353/1/49353.pdf ID49353 Khairul Anuar, Khairul Nisha (2021) Analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / Khairul Nisha Khairul Anuar. [Student Project] (Unpublished) |
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Online social networks Prediction analysis Khairul Anuar, Khairul Nisha Analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / Khairul Nisha Khairul Anuar |
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Social media has gained popularity as a platform enabling users to receive breaking news from around the world during the COVID-19 pandemic. The Conditional Movement Control Order (CMCO) was declared by the federal government of Malaysia on the 14th of October 2020. During CMCO, a lot of rumors with regards to education, entertainment, and economy came about on Facebook. The purpose of this study is to investigate the spread of rumors via Facebook. Specifically, this study attempts to formulate a model for the spread of rumors via Facebook using the epidemic model. This study also attempts to conduct a numerical experiment on the effect of the number of likes, comments, and shares of the rumor. The Susceptible-Infected-Recovered (SIR) model is used in this study. The data has been collected every hour on the 15th November 2020. The N parameter is considered constant for this case study. The result of the study shows that the information posted on the three chosen Facebook pages; SAYS, ROTIKAYA, and Siakap Keli went viral. Furthermore, the increase in the value of the number of likes, comments, and shares prolonged the duration of the rumor being viral. The issue that was the most viral during CMCO was the issue pertaining to the economy posted on Siakap Keli Facebook page. For future work, it is recommended that the researcher uses N that is not a constant, based on the Logistic Growth Model which changes over time. |
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title |
Analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / Khairul Nisha Khairul Anuar |
title_short |
Analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / Khairul Nisha Khairul Anuar |
title_full |
Analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / Khairul Nisha Khairul Anuar |
title_fullStr |
Analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / Khairul Nisha Khairul Anuar |
title_full_unstemmed |
Analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / Khairul Nisha Khairul Anuar |
title_sort |
analyzing the dissemination of rumors during pandemic through facebook using the susceptible-infected-recovered model / khairul nisha khairul anuar |
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2021 |
url |
https://ir.uitm.edu.my/id/eprint/49353/1/49353.pdf https://ir.uitm.edu.my/id/eprint/49353/ |
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