Journal Article |
Understanding the Radical Mind: Identifying Signals to Detect Extremist Content on Twitter
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The Internet and, in particular, Online Social Networks have changed the way that terrorist and extremist groups can influence and radicalise individuals. Recent reports show that the mode of operation of these groups starts by exposing a wide audience to extremist material online, before migrating them to less open online platforms for further radicalization. Thus, identifying radical content online is crucial to limit the reach and spread of the extremist narrative. In this paper, our aim is to identify measures to automatically detect radical content in social media. We identify several signals, including textual, psychological and behavioural, that together allow for the classification of radical messages. Our contribution is threefold: (1) we analyze propaganda material published by extremist groups and create a contextual text-based model of radical content, (2) we build a model of psychological properties inferred from these material, and (3) we evaluate these models on Twitter to determine the extent to which it is possible to automatically identify online radical tweets. Our results show that radical users do exhibit distinguishable textual, psychological, and behavioural properties. We find that the psychological properties are among the most distinguishing features. Additionally, our results show that textual models using vector embedding features significantly improves the detection over TF-IDF features. We validate our approach on two experiments achieving high accuracy. Our findings can be utilized as signals for detecting online radicalization activities.
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2019 |
Nouh, M., Nurse, J. R. C. and Goldsmith, M. |
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Report |
Understanding the New Zealand Online Extremist Ecosystem
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In this report, the Institute for Strategic Dialogue and CASM Technology provide a data-driven snapshot of the online activities of extremists with a demonstrable link to New Zealand, as well as the digital platforms connecting New Zealand to an international extremist ecosystem.
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2021 |
Comerford, M., Guhl, J. and Miller, C. |
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Journal Article |
Understanding the Incel Community on YouTube
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YouTube is by far the largest host of user-generated video content worldwide. Alas, the platform also hosts inappropriate, toxic, and/or hateful content. One community that has come into the spotlight for sharing and publishing hateful content are the so-called Involuntary Celibates (Incels), a loosely defined movement ostensibly focusing on men’s issues, who have often been linked to misogynistic views. In this paper, we set out to analyze the Incel community on YouTube. We collect videos shared on Incel-related communities within Reddit, and perform a data-driven characterization of the content posted on YouTube along several axes. Among other things, we find that the Incel community on YouTube is growing rapidly, that they post a substantial number of negative comments, and that they discuss a broad range of topics ranging from ideology, e.g., around the Men Going Their Own Way movement, to discussions filled with racism and/or misogyny. Finally, we quantify the probability that a user will encounter an Incel-related video by virtue of YouTube’s recommendation algorithm. Within five hops when starting from a non-Incel-related video, this probability is 1 in 5, which is alarmingly high given the toxicity of said content.
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2020 |
Papadamou, K., Zannettou, S., Blackburn, J., De Cristofaro, E., Stringhini, G. and Sirivianos, M. |
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Report |
Understanding the Impact of Terrorist Event Reporting on Countering Violent Extremism: From A Practitioner’s Perspective
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This report presents the key findings from the London Roundtable on “Understanding the Impact of Terrorist Event Reporting on Countering Violent Extremism”. The event was held at the Australian High Commission in London on 30-31 January 2018. The roundtable brought together media practitioners, CVE and PVE front line practitioners, policy-makers and academics drawn from Australia, the United Kingdom, Belgium, France, Germany, Sweden, Norway, Finland and the United States of America. Other attendees included representatives from various Australian and British Government departments and New Scotland Yard. This report provides summaries of each of the panel discussions that were delivered at the roundtable, before drawing out the key themes, which emerged and policy recommendations.
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2018 |
Andre, V. |
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Journal Article |
Understanding The Expression Of Grievances In The Arabic Twitter-sphere Using Machine Learning
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The purpose of this paper is to discuss the design, application and findings of a case study in which the application of a machine learning algorithm is utilised to identify the grievances in Twitter in an Arabian context. To understand the characteristics of the Twitter users who expressed the identified grievances, data mining techniques and social network analysis were utilised. The study extracted a total of 23,363 tweets and these were stored as a data set. The machine learning algorithm applied to this data set was followed by utilising a data mining process to explore the characteristics of the Twitter feed users. The network of the users was mapped and the individual level of interactivity and network density were calculated. Findings The machine learning algorithm revealed 12 themes all of which were underpinned by the coalition of Arab countries blockade of Qatar. The data mining analysis revealed that the tweets could be clustered in three clusters, the main cluster included users with a large number of followers and friends but who did not mention other users in their tweets. The social network analysis revealed that whilst a large proportion of users engaged in direct messages with others, the network ties between them were not registered as strong. Borum (2011) notes that invoking grievances is the first step in the radicalisation process. It is hoped that by understanding these grievances, the study will shed light on what radical groups could invoke to win the sympathy of aggrieved people. In combination, the machine learning algorithm offered insights into the grievances expressed within the tweets in an Arabian context. The data mining and the social network analyses revealed the characteristics of the Twitter users highlighting identifying and managing early intervention of radicalisation.
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2019 |
Al-Saggaf, Y. and Davies, A. |
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Journal Article |
Understanding the Community’s Perceptions Towards Online Radicalisation: An Exploratory Analysis
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This study seeks to understand the community’s perceptions towards detecting signs of online radicalisation and examine whether different community members would exhibit different levels of understanding. A 57-item survey was administered to 160 undergraduates from Nanyang Technological University (NTU) and 160 Amazon Mechanical Turk (MTurk) workers. Based on the ratings of the 42 online radicalisation indicators identified by Neo (2020), two-factor analyses were separately conducted using oblique rotation to undercover a four-factor structure for the NTU sample and a three-factor solution for the MTurk sample. The results revealed valuable insights into how community members would identify terrorist threats. Furthermore, the survey revealed differences in the participants’ views on the role of the internet in radicalisation pathways and their perceptions regarding various counter-terrorism strategies. Together, the findings would contribute to the discussion of how law enforcement could better engage and work together with the community members to detect terrorist threats.
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2022 |
Neo, L.S. |
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