Illegal Community Detection in Bitcoin Transaction Networks

Author:

Kamuhanda Dany123,Cui Mengtian4,Tessone Claudio J.12ORCID

Affiliation:

1. UZH Blockchain Center, University of Zurich, 8050 Zurich, Switzerland

2. Blockchain & Distributed Ledger Technologies Group, Department of Informatics, University of Zurich, 8050 Zurich, Switzerland

3. Department of Mathematics, Science and Physical Education, University of Rwanda-College of Education, Rwamagana P.O. Box 55, Rwanda

4. College of Computer Science and Engineering, Southwest Minzu University, Chengdu 610040, China

Abstract

Community detection is widely used in social networks to uncover groups of related vertices (nodes). In cryptocurrency transaction networks, community detection can help identify users that are most related to known illegal users. However, there are challenges in applying community detection in cryptocurrency transaction networks: (1) the use of pseudonymous addresses that are not directly linked to personal information make it difficult to interpret the detected communities; (2) on Bitcoin, a user usually owns multiple Bitcoin addresses, and nodes in transaction networks do not always represent users. Existing works on cluster analysis on Bitcoin transaction networks focus on addressing the later using different heuristics to cluster addresses that are controlled by the same user. This research focuses on illegal community detection containing one or more illegal Bitcoin addresses. We first investigate the structure of Bitcoin transaction networks and suitable community detection methods, then collect a set of illegal addresses and use them to label the detected communities. The results show that 0.06% of communities from daily transaction networks contain one or more illegal addresses when 2,313,344 illegal addresses are used to label the communities. The results also show that distance-based clustering methods and other methods depending on them, such as network representation learning, are not suitable for Bitcoin transaction networks while community quality optimization and label-propagation-based methods are the most suitable.

Funder

Sichuan Science and Technology Program

Foreign Talents Program of Ministry of China

Publisher

MDPI AG

Subject

General Physics and Astronomy

Reference51 articles.

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2. Nakamoto, S. (2022, October 01). Bitcoin: A Peer-to-Peer Electronic Cash System. Available online: https://bitcoin.org/bitcoin.pdf.

3. Kalodner, H., Möser, M., Lee, K., Goldfeder, S., Plattner, M., Chator, A., and Narayanan, A. (2020). Proceedings of the 29th USENIX Security Symposium, USENIX Association.

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5. Heterogeneous Preferential Attachment in Key Ethereum-Based Cryptoassets;Partida;Front. Phys.,2021

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