A Large-Scale Study of Telegram Bots
Taro Tsuchiya, Haoxiang Yu, Tina Marjanov, Alice Hutchings, Nicolas Christin, Alejandro Cuevas

TL;DR
This study characterizes Telegram bots at scale, analyzing their functionality, communities, and malicious uses, by creating large datasets and developing automated interaction systems.
Contribution
It provides the first large-scale datasets of Telegram bots and channels, along with a system to classify and analyze bot functionalities and communities.
Findings
Identified over 32,000 bots and 492 million messages.
Classified bots into various domains including malicious activities.
Discovered communities and usage patterns of different bot types.
Abstract
Telegram, initially a messaging app, has evolved into a platform where users can interact with various services through programmable applications, bots. Bots provide a wide range of uses, from moderating groups, helping with online shopping, to even executing trades in financial markets. However, Telegram has been increasingly associated with various illicit activities -- financial scams, stolen data, non-consensual image sharing, among others, raising concerns bots may be facilitating these operations. This paper is the first to characterize Telegram bots at scale, through the following contributions. First, we offer the largest general-purpose message dataset and the first bot dataset. Through snowball sampling from two published datasets, we uncover over 67,000 additional channels, 492 million messages, and 32,000 bots. Second, we develop a system to automatically interact with bots…
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