Authors:
André Büsgen
1
;
Lars Klöser
1
;
Philipp Kohl
1
;
Oliver Schmidts
1
;
Bodo Kraft
1
and
Albert Zündorf
2
Affiliations:
1
FH Aachen University of Applied Sciences, Germany
;
2
University of Kassel, Germany
Keyword(s):
Clustering, Natural Language Processing, Information Extraction, Profile Extraction, Text Mining.
Abstract:
Messenger apps like WhatsApp or Telegram are an integral part of daily communication. Besides the various positive effects, those services extend the operating range of criminals. Open trading groups with many thousand participants emerged on Telegram. Law enforcement agencies monitor suspicious users in such chat rooms. This research shows that text analysis, based on natural language processing, facilitates this through a meaningful domain overview and detailed investigations. We crawled a corpus from such self-proclaimed black markets and annotated five attribute types products, money, payment methods, user names, and locations. Based on each message a user sends, we extract and group these attributes to build profiles. Then, we build features to cluster the profiles. Pretrained word vectors yield better unsupervised clustering results than current state-of-the-art transformer models. The result is a semantically meaningful high-level overview of the user landscape of black market
chatrooms. Additionally, the extracted structured information serves as a foundation for further data exploration, for example, the most active users or preferred payment methods.
(More)