"Like Sheep Among Wolves": Characterizing Hateful Users on Twitter
Manoel Horta Ribeiro, Pedro H. Calais, Yuri A. Santos, Virg\'ilio A., F. Almeida, Wagner Meira Jr

TL;DR
This paper investigates hateful users on Twitter by analyzing their activity, content, and network position, revealing distinct behavioral patterns and homophily that can improve hate speech detection.
Contribution
It introduces a user-centric approach with a large annotated dataset, highlighting behavioral and network differences between hateful and normal users, challenging stereotypes.
Findings
Hateful users have more recent accounts and higher activity levels.
Hateful users are more central in the retweet network.
Hateful users exhibit more negative and profane language.
Abstract
Hateful speech in Online Social Networks (OSNs) is a key challenge for companies and governments, as it impacts users and advertisers, and as several countries have strict legislation against the practice. This has motivated work on detecting and characterizing the phenomenon in tweets, social media posts and comments. However, these approaches face several shortcomings due to the noisiness of OSN data, the sparsity of the phenomenon, and the subjectivity of the definition of hate speech. This works presents a user-centric view of hate speech, paving the way for better detection methods and understanding. We collect a Twitter dataset of users along with up to tweets from their timelines with a random-walk-based crawler on the retweet graph, and select a subsample of to be manually annotated as hateful or not through crowdsourcing. We examine the difference…
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Taxonomy
TopicsHate Speech and Cyberbullying Detection · Social Media and Politics · Internet Traffic Analysis and Secure E-voting
