Hate in the Machine: Anti-Black and Anti-Muslim Social Media Posts as Predictors of Offline Racially and Religiously Aggravated Crime

Author:

Williams Matthew L1,Burnap Pete2,Javed Amir3,Liu Han3,Ozalp Sefa4

Affiliation:

1. School of Social Sciences and HateLab, Cardiff University, Cardiff, UK

2. School of Computer Science and Informatics and HateLab, Cardiff University, Cardiff, UK

3. School of Computer Science and Informatics, Cardiff University, Cardiff, UK

4. School Social Sciences, Cardiff University, Cardiff, UK

Abstract

Abstract National governments now recognize online hate speech as a pernicious social problem. In the wake of political votes and terror attacks, hate incidents online and offline are known to peak in tandem. This article examines whether an association exists between both forms of hate, independent of ‘trigger’ events. Using Computational Criminology that draws on data science methods, we link police crime, census and Twitter data to establish a temporal and spatial association between online hate speech that targets race and religion, and offline racially and religiously aggravated crimes in London over an eight-month period. The findings renew our understanding of hate crime as a process, rather than as a discrete event, for the digital age.

Funder

Economic and Social Research Council

U.S. Department of Justice

National Institute of Justice

Publisher

Oxford University Press (OUP)

Subject

Law,Arts and Humanities (miscellaneous),Social Psychology,Pathology and Forensic Medicine

Reference61 articles.

1. Fixed Effects Regression Models

2. ‘I Will Blow Your Face Off’—Virtual and Physical World Anti-Muslim Hate Crime’,;Awan;British Journal of Criminology,2017

3. ‘COSMOS: Towards an Integrated and Scalable Service for Analyzing Social Media on Demand’,;Burnap;IJPSDS,2014

4. ‘Cyber Hate Speech on Twitter: An Application of Machine Classification and Statistical Modeling for Policy and Decision Making’;Burnap;Policy & Internet.,2015

5. ‘Us and Them: Identifying Cyber Hate on Twitter across Multiple Protected Characteristics’;EPJ Data Science,,2016

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