Fear and Loathing on the Frontline: Decoding the Language of Othering by Russia-Ukraine War Bloggers
- URL: http://arxiv.org/abs/2409.13064v1
- Date: Thu, 19 Sep 2024 19:56:03 GMT
- Title: Fear and Loathing on the Frontline: Decoding the Language of Othering by Russia-Ukraine War Bloggers
- Authors: Patrick Gerard, William Theisen, Tim Weninger, Kristina Lerman,
- Abstract summary: Othering, the act of portraying outgroups as fundamentally different from the ingroup, often escalates into framing them as existential threats.
These dynamics are alarmingly pervasive, spanning from the extreme historical examples of genocides against minorities in Germany and Rwanda to the ongoing violence and rhetoric targeting migrants in the US and Europe.
Our framework, designed to offer deeper insights into othering dynamics, combines with a rapid adaptation process to provide essential tools for mitigating othering's adverse impacts on social cohesion.
- Score: 6.632254395574994
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Othering, the act of portraying outgroups as fundamentally different from the ingroup, often escalates into framing them as existential threats--fueling intergroup conflict and justifying exclusion and violence. These dynamics are alarmingly pervasive, spanning from the extreme historical examples of genocides against minorities in Germany and Rwanda to the ongoing violence and rhetoric targeting migrants in the US and Europe. While concepts like hate speech and fear speech have been explored in existing literature, they capture only part of this broader and more nuanced dynamic which can often be harder to detect, particularly in online speech and propaganda. To address this challenge, we introduce a novel computational framework that leverages large language models (LLMs) to quantify othering across diverse contexts, extending beyond traditional linguistic indicators of hostility. Applying the model to real-world data from Telegram war bloggers and political discussions on Gab reveals how othering escalates during conflicts, interacts with moral language, and garners significant attention, particularly during periods of crisis. Our framework, designed to offer deeper insights into othering dynamics, combines with a rapid adaptation process to provide essential tools for mitigating othering's adverse impacts on social cohesion.
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