DarkGram: A Large-Scale Analysis of Cybercriminal Activity Channels on Telegram
Sayak Saha Roy, Elham Pourabbas Vafa, Kobra Khanmohammadi, Shirin Nilizadeh

TL;DR
This paper analyzes 339 cybercriminal channels on Telegram, developing a BERT-based tool to identify malicious content, revealing high risks like phishing and malware, and demonstrating the ecosystem's resilience and takedown efforts.
Contribution
Introduces DarkGram, a BERT-based framework for automatic detection of malicious posts, and provides large-scale analysis of cybercriminal activity channels on Telegram.
Findings
96% accuracy in identifying malicious posts
28.1% of links contained phishing attacks
38% of executables bundled with malware
Abstract
We present the first large-scale analysis of 339 cybercriminal activity channels (CACs). Followed by over 23.8 million users, these channels share a wide array of malicious and unethical content with their subscribers, including compromised credentials, pirated software and media, social media manipulation tools, and blackhat hacking resources such as malware, exploit kits, and social engineering scams. To evaluate these channels, we developed DarkGram, a BERT-based framework that automatically identifies malicious posts from the CACs with an accuracy of 96%. Using DarkGram, we conducted a quantitative analysis of 53,605 posts shared on these channels between February and May 2024, revealing key characteristics of the content. While much of this content is distributed for free, channel administrators frequently employ strategies such as promotions and giveaways to engage users and boost…
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Taxonomy
TopicsCybercrime and Law Enforcement Studies · Digital and Cyber Forensics · Advanced Malware Detection Techniques
