Short of Suspension: How Suspension Warnings Can Reduce Hate Speech on Twitter

2021 ◽  
pp. 1-13
Author(s):  
Mustafa Mikdat Yildirim ◽  
Jonathan Nagler ◽  
Richard Bonneau ◽  
Joshua A. Tucker

Debates around the effectiveness of high-profile Twitter account suspensions and similar bans on abusive users across social media platforms abound. Yet we know little about the effectiveness of warning a user about the possibility of suspending their account as opposed to outright suspensions in reducing hate speech. With a pre-registered experiment, we provide causal evidence that a warning message can reduce the use of hateful language on Twitter, at least in the short term. We design our messages based on the literature on deterrence, and test versions that emphasize the legitimacy of the sender, the credibility of the message, and the costliness of being suspended. We find that the act of warning a user of the potential consequences of their behavior can significantly reduce their hateful language for one week. We also find that warning messages that aim to appear legitimate in the eyes of the target user seem to be the most effective. In light of these findings, we consider the policy implications of platforms adopting a more aggressive approach to warning users that their accounts may be suspended as a tool for reducing hateful speech online.

Subject Advertising on social media. Significance There is growing alignment between regulatory pressure on social media companies to suppress fake accounts and the firms' commercial interest in attracting advertisers. Advertisers, who provide the bulk of social media platforms’ revenue, are beginning to question whether they are getting value for money when their advertising budget is spent on fake clicks. Impacts Action against fake activity on social media will cause a short-term dip in the firms’ share price. Demand will rise for 'influencers' who can show their following consists of genuine users. Some advertisers will distance themselves from social media due to the latter’s failures on tackling hate speech and polarisation.


2021 ◽  
pp. 146144482110323
Author(s):  
João Gonçalves ◽  
Ina Weber ◽  
Gina M. Masullo ◽  
Marisa Torres da Silva ◽  
Joep Hofhuis

Hateful content online is a concern for social media platforms, policymakers, and the public. This has led high-profile content platforms, such as Facebook, to adopt algorithmic content-moderation systems; however, the impact of algorithmic moderation on user perceptions is unclear. We experimentally test the extent to which the type of content being removed (profanity vs hate speech) and the explanation given for its removal (no explanation vs link to community guidelines vs specific explanation) influence user perceptions of human and algorithmic moderators. Our preregistered study encompasses representative samples ( N = 2870) from the United States, the Netherlands, and Portugal. Contrary to expectations, our findings suggest that algorithmic moderation is perceived as more transparent than human, especially when no explanation is given for content removal. In addition, sending users to community guidelines for further information on content deletion has negative effects on outcome fairness and trust.


Author(s):  
Paul D. Kenny

This final chapter draws out the two main conclusions from the book. First, it discusses the policy implications of its findings. It suggests caution in the decentralization of political authority as a remedy for democratic underperformance in patronage-based democracies. Rather than making government more accountable, it may instead exacerbate principal–agent conflicts between center and periphery. More important than decentralization in the short term may be institutional reforms at the center that make parties more programmatic and responsive to citizens. Second, it sets out some of the implications of the book’s findings for the study of populism and party-system change more generally. It shows that the varied ways in which voters and parties are linked creates different pathways to the decline of establishment parties and the success of populist alternatives. Further comparative research across party systems might contribute positively to institutional reform and political change.


2021 ◽  
pp. 000276422198976
Author(s):  
Darsana Vijay ◽  
Alex Gekker

TikTok is commonly known as a playful, silly platform where teenagers share 15-second videos of crazy stunts or act out funny snippets from popular culture. In the past few years, it has experienced exponential growth and popularity, unseating Facebook as the most downloaded app. Interestingly, recent news coverage notes the emergence of TikTok as a political actor in the Indian context. They raise concerns over the abundance of divisive content, hate speech, and the lack of platform accountability in countering these issues. In this article, we analyze how politics is performed on TikTok and how the platform’s design shapes such expressions and their circulation. What does the playful architecture of TikTok mean to the nature of its political discourse and participation? To answer this, we review existing academic work on play, media, and political participation and then examine the case of Sabarimala through the double lens of ludic engagement and platform-specific features. The efficacy of play as a productive heuristic to study political contention on social media platforms is demonstrated. Finally, we turn to ludo-literacy as a potential strategy that can reveal the structures that order playful political participation and can initiate alternative modes of playing politics.


Religions ◽  
2021 ◽  
Vol 12 (6) ◽  
pp. 421
Author(s):  
Iwona Leonowicz-Bukała ◽  
Andrzej Adamski ◽  
Anna Jupowicz-Ginalska

This article presents the partial conclusion of the research project devoted to marketing activity of Polish Catholic opinion-forming weeklies on the social media platforms. The main aim of this article is to present the results of the study on the use of Twitter as a marketing tool by Polish nationwide Catholic opinion-forming weeklies. The basic research questions concerned the extent of utilizing the platform by the magazines’ editors to create and distribute the content of their media product, maintain and develop brand communication and self-promotion. The case studies and the content analysis of the accounts of the three magazines—Gość Niedzielny, Tygodnik Katolicki Niedziela and Przewodnik Katolicki—show that there are three different ways in how the editors of the magazines understand the role of the Twitter account of the title they represent—as an ‘active communicator’, ‘active communicator and community supporter’ or ‘community supporter’. The conclusions show that the studied media fairly efficiently use the visual and distributional potential of the platform as well as some of its features, at the same time missing the chance to build a brand-loyal community. They also limit the role of Twitter to that of a supplement for the main communication channel, which is the printed weekly and its website.


2019 ◽  
Vol 31 (2) ◽  
pp. 890-909 ◽  
Author(s):  
Yuxia Ouyang ◽  
Amit Sharma

PurposeThe purpose of this study was to investigate the preference of health-warning message labeling in an eating-away-from-home context. The authors assessed individuals’ preference valuation of such messaging from a dual – consumer and citizen – perspective and with associated expected risk reduction (RR) level.Design/methodology/approachIn an online stated choice experiment on Amazon’s Mechanical Turk (N = 658), participants were asked to provide willingness to pay (WTP) preferences for health-warning messages and based on the expected RR from health-warning messages. Two types of multiple price list questions were used for consumer and citizen contexts. Interval regression and descriptive analysis methods were applied to analyze the data.FindingsThe study found that individuals placed a higher value (higher WTP) on health-warning message labeling when acting as citizens rather than as consumers. An RR expectation of 50 per cent was most effective in increasing participants’ WTP. Individuals who ate out frequently were more concerned about healthier food messages, and the influence of gender and age on WTP was conditional on individuals’ roles as consumers versus citizens.Originality/valueThis study extends the theory of consumer-citizen duality to the context of health-related information labeling, thus opening the discussion to extending such labeling from traditionally risky behavior such as alcohol and tobacco to also including food choice behavior. The authors also highlight implications on policy and industry practices to promote healthy food choices through such messages.


Empirica ◽  
2017 ◽  
Vol 45 (4) ◽  
pp. 747-763 ◽  
Author(s):  
Tolga Dağlaroğlu ◽  
Baki Demirel ◽  
Syed F. Mahmud

Author(s):  
Patricia Chiril ◽  
Endang Wahyu Pamungkas ◽  
Farah Benamara ◽  
Véronique Moriceau ◽  
Viviana Patti

AbstractHate Speech and harassment are widespread in online communication, due to users' freedom and anonymity and the lack of regulation provided by social media platforms. Hate speech is topically focused (misogyny, sexism, racism, xenophobia, homophobia, etc.), and each specific manifestation of hate speech targets different vulnerable groups based on characteristics such as gender (misogyny, sexism), ethnicity, race, religion (xenophobia, racism, Islamophobia), sexual orientation (homophobia), and so on. Most automatic hate speech detection approaches cast the problem into a binary classification task without addressing either the topical focus or the target-oriented nature of hate speech. In this paper, we propose to tackle, for the first time, hate speech detection from a multi-target perspective. We leverage manually annotated datasets, to investigate the problem of transferring knowledge from different datasets with different topical focuses and targets. Our contribution is threefold: (1) we explore the ability of hate speech detection models to capture common properties from topic-generic datasets and transfer this knowledge to recognize specific manifestations of hate speech; (2) we experiment with the development of models to detect both topics (racism, xenophobia, sexism, misogyny) and hate speech targets, going beyond standard binary classification, to investigate how to detect hate speech at a finer level of granularity and how to transfer knowledge across different topics and targets; and (3) we study the impact of affective knowledge encoded in sentic computing resources (SenticNet, EmoSenticNet) and in semantically structured hate lexicons (HurtLex) in determining specific manifestations of hate speech. We experimented with different neural models including multitask approaches. Our study shows that: (1) training a model on a combination of several (training sets from several) topic-specific datasets is more effective than training a model on a topic-generic dataset; (2) the multi-task approach outperforms a single-task model when detecting both the hatefulness of a tweet and its topical focus in the context of a multi-label classification approach; and (3) the models incorporating EmoSenticNet emotions, the first level emotions of SenticNet, a blend of SenticNet and EmoSenticNet emotions or affective features based on Hurtlex, obtained the best results. Our results demonstrate that multi-target hate speech detection from existing datasets is feasible, which is a first step towards hate speech detection for a specific topic/target when dedicated annotated data are missing. Moreover, we prove that domain-independent affective knowledge, injected into our models, helps finer-grained hate speech detection.


Electronics ◽  
2021 ◽  
Vol 10 (11) ◽  
pp. 1332
Author(s):  
Hong Fan ◽  
Wu Du ◽  
Abdelghani Dahou ◽  
Ahmed A. Ewees ◽  
Dalia Yousri ◽  
...  

Social media has become an essential facet of modern society, wherein people share their opinions on a wide variety of topics. Social media is quickly becoming indispensable for a majority of people, and many cases of social media addiction have been documented. Social media platforms such as Twitter have demonstrated over the years the value they provide, such as connecting people from all over the world with different backgrounds. However, they have also shown harmful side effects that can have serious consequences. One such harmful side effect of social media is the immense toxicity that can be found in various discussions. The word toxic has become synonymous with online hate speech, internet trolling, and sometimes outrage culture. In this study, we build an efficient model to detect and classify toxicity in social media from user-generated content using the Bidirectional Encoder Representations from Transformers (BERT). The BERT pre-trained model and three of its variants has been fine-tuned on a well-known labeled toxic comment dataset, Kaggle public dataset (Toxic Comment Classification Challenge). Moreover, we test the proposed models with two datasets collected from Twitter from two different periods to detect toxicity in user-generated content (tweets) using hashtages belonging to the UK Brexit. The results showed that the proposed model can efficiently classify and analyze toxic tweets.


2020 ◽  
Vol 64 (8) ◽  
pp. 1179-1195
Author(s):  
Kelly Frailing ◽  
Dee Wood Harper

Disaster sociology has a rich and undeniably valuable history. Among other things, it has revealed much about the behavior of disaster survivors. In recent years, criminologists have turned their attention and the discipline’s theories, methods, and data sources to understanding behavior in the wake of disasters and have come to a number of additional and sometimes different conclusions than did sociologists. In this article, we examine property crime in the wake of some recent and high-profile disasters. We find short-term increases in burglary after a number of disasters, ostensibly challenging some long-held notions in disaster sociology. We contend that the use of criminological methods including secondary analysis of extant data to understand behavior after disasters provides a more nuanced and accurate picture of postdisaster behavior and conclude with a call for inclusion of these theories, methods, and data sources in disaster studies more widely.


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