Analyzing Far-Right Telegram Channels as Constituents of Information Autocracy in Russia
- URL: http://arxiv.org/abs/2601.14190v1
- Date: Tue, 20 Jan 2026 17:48:06 GMT
- Title: Analyzing Far-Right Telegram Channels as Constituents of Information Autocracy in Russia
- Authors: Polina Smirnova, Mykola Makhortykh,
- Abstract summary: This study examines how Russian far-right communities on Telegram shape perceptions of political figures through memes and visual narratives.<n>Preliminary findings show that far-right memes function as instruments of propaganda co-production.
- Score: 0.08594140167290099
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: This study examines how Russian far-right communities on Telegram shape perceptions of political figures through memes and visual narratives. Far from passive spectators, these actors co-produce propaganda, blending state-aligned messages with their own extremist framings. In Russia, such groups are central because they articulate the ideological foundations of the war against Ukraine and reflect the regime's gradual drift toward ultranationalist rhetoric. Drawing on a dataset of 200,000 images from expert-selected far-right Telegram channels, the study employs computer vision and unsupervised clustering to identify memes featuring Russian (Putin, Shoigu) and foreign politicians (Zelensky, Biden, Trump) and to reveal recurrent visual patterns in their representation. By leveraging the large-scale and temporal depth of this dataset, the analysis uncovers differential patterns of legitimation and delegitimation across actors and over time. These insights are not attainable in smaller-scale studies. Preliminary findings show that far-right memes function as instruments of propaganda co-production. These communities do not simply echo official messages but generate bottom-up narratives of legitimation and delegitimation that align with state ideology. By framing leaders as heroic and opponents as corrupt or weak, far-right actors act as informal co-creators of authoritarian legitimacy within Russia's informational autocracy.
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