Proceedings of the 10th ACM Conference on Web Science 2019
DOI: 10.1145/3292522.3326034
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Spread of Hate Speech in Online Social Media

Abstract: The present online social media platform is afflicted with several issues, with hate speech being on the predominant forefront. The prevalence of online hate speech has fuelled horrific real-world hate-crime such as the mass-genocide of Rohingya Muslims, communal violence in Colombo and the recent massacre in the Pittsburgh synagogue. Consequently, It is imperative to understand the diffusion of such hateful content in an online setting. We conduct the first study that analyses the flow and dynamics of posts g… Show more

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Cited by 266 publications
(207 citation statements)
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References 35 publications
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“…Generally, LSTM can retain the knowledge of earlier states to be trained for tasks that require large memory or state awareness of tasks due to this reason it can overcome the limitation of RNN because it consists block of memory cells state by which signal flows by regulating input, forget and output gates to control what is stored, read and written on cell. LSTM is used by Google, Apple, and Amazon [23].…”
Section: Lstm and Grumentioning
confidence: 99%
“…Generally, LSTM can retain the knowledge of earlier states to be trained for tasks that require large memory or state awareness of tasks due to this reason it can overcome the limitation of RNN because it consists block of memory cells state by which signal flows by regulating input, forget and output gates to control what is stored, read and written on cell. LSTM is used by Google, Apple, and Amazon [23].…”
Section: Lstm and Grumentioning
confidence: 99%
“…In the context of extremist content, these online social contagion effects have been shown both for Islamic extremist and far-right material (Ferrara, 2017;Mathew et al, 2019). By mapping the spread of propaganda, influential Islamic extremist supporters on Twitter were shown to influence other previously non-supportive users, with the average Islamic extremist "infecting" 2.13 other users before being suspended (Ferrara, 2017).…”
Section: The Adoption Of Outgroup Hate Through Social Contagionmentioning
confidence: 99%
“…By mapping the spread of propaganda, influential Islamic extremist supporters on Twitter were shown to influence other previously non-supportive users, with the average Islamic extremist "infecting" 2.13 other users before being suspended (Ferrara, 2017). On far-right platforms, users expressing hate speech were shown to instigate larger information cascades than non-hateful users, indicating that these users are more likely to 'go viral' on the platform (Mathew et al, 2019). However, in these cases, contagion was measured by the successful propagation of extreme content, which may be biased by a number of factors such as user popularity, relative activity of more extreme users, and prevalence of this content.…”
Section: The Adoption Of Outgroup Hate Through Social Contagionmentioning
confidence: 99%
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“…The analysis and detection of online xenophobic behaviors such as hate speeches [10,24] has been widely studied by the social, computer, and data science research community. The spread of antisocial behaviors in social media has not only sown discord among individuals or communities online but also has resulted in violent hate crimes [17,22,30]. Therefore, it is a pressing issue to detect and curb online antisocial behaviors, particularly during a pandemic, where preventing such undesirable online behaviors can avoid adding problems to the already difficult crisis.…”
Section: Introductionmentioning
confidence: 99%