Event Details
Decoding Illicit Bitcoin Transactions: A Multi-Methodological Approach for Anti-Money Laundering and Fraud Detection in Cryptocurrencies
Presenter: Ardeshir Shojaeinasab
Supervisor:
Date: Fri, September 20, 2024
Time: 08:00:00 - 00:00:00
Place: Zoom, link below.
ABSTRACT
Zoom Details:
Meeting link: https://uvic.zoom.us/j/83097940162?pwd=HqCIyPnTUQgw7AdiIvDSOd3SmTVA7O.1
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Abstract:
This dissertation examines the challenges of detecting illicit activities in cryptocurrency transactions, with a focus on Bitcoin. It begins by analyzing cryptocurrency mixing services and their obfuscation techniques. The research then provides a comprehensive evaluation framework for these services, conducting an assessment of all available services and academic proposals. Following this, the study introduces a novel framework that uses statistical patterns to identify potential money laundering and clustering cryptocurrency addresses that can reveal real-world identities involved in illicit transactions.
The study then leverages the Elliptic dataset, a graph representation of Bitcoin transactions, to classify illicit activities. While classical machine learning methods struggled with the imbalanced nature of financial fraud data, Graph Neural Networks (GNNs) - specifically Graph Convolutional Networks and Graph Attention Networks - proved more effective. By considering the graph topology and connections between nodes, GNNs significantly reduced false negative rates in detecting illicit transactions.