The Peripatetic Hater: Predicting Movement Among Hate Subreddits
Daniel Hickey, Daniel M.T. Fessler, Kristina Lerman, Keith Burghardt

TL;DR
This study develops a deep learning-based method to classify hate subreddits and analyze user movement across categories, revealing that users often join multiple hate groups, which broadens their hate lexicon and increases radicalization risks.
Contribution
Introduces a novel deep learning approach to classify hate subreddits and predict user movement between hate categories, enhancing understanding of hate community dynamics.
Findings
Users active in one hate subreddit often join others of different categories.
Joining multiple hate groups correlates with a broader hate lexicon.
Deep learning model can predict hate category engagement based on user posts.
Abstract
Many online hate groups exist to disparage others based on race, gender identity, sex, or other characteristics. The accessibility of these communities allows users to join multiple types of hate groups (e.g., a racist community and a misogynistic community), raising the question of whether users who join additional types of hate communities could be further radicalized compared to users who stay in one type of hate group. However, little is known about the dynamics of joining multiple types of hate groups, nor the effect of these groups on peripatetic users. We develop a new method to classify hate subreddits and the identities they disparage, then apply it to understand better how users come to join different types of hate subreddits. The hate classification technique utilizes human-validated deep learning models to extract the protected identities attacked, if any, across 168…
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Taxonomy
TopicsPopulism, Right-Wing Movements · Hate Speech and Cyberbullying Detection · Media Influence and Politics
