Analyzing the financial domain presents significant challenges, particularly due to the lack of publicly available data and the limited opportunities for the scientific community to test methods and algorithms on real datasets. This paper explores the application of network analysis to the Anti-Financial Crime (AFC) domain, leveraging a large dataset of over 80 million cross-border wire transfers. Our goal is to detect outliers potentially involved in malicious activities, in alignment with financial regulations. We address this problem with WeirdNodes, a centrality-based methodology for ranked anomaly detection in temporal networks. Unlike many existing approaches that rely on rule-based algorithms or general machine learning models, WeirdNodes harnesses the evolving structure and relationships within financial transaction networks. By focusing on minimal disruptions in otherwise stable ecosystems-such as those built upon large set of international financial transactionsour approach tracks the temporal evolution of centrality-based rankings. This enables the detection of abrupt role shifts, signaling anomalies that warrant further investigation by domain experts. Beyond anomaly detection, this analysis represents a step toward automating AFC and Anti-Money Laundering (AML) processes, equipping AFC officers with a comprehensive, top-down perspective to enhance their efforts. By providing a bird’s eye view of financial data, our approach mitigates the risk of overlooking complex behaviors that single-node or narrowly focused transactional analyses may fail to detect.
Weirdnodes: centrality based anomaly detection on temporal networks for the anti-financial crime domain
Vilella, Salvatore;Ruffo, Giancarlo
2025-01-01
Abstract
Analyzing the financial domain presents significant challenges, particularly due to the lack of publicly available data and the limited opportunities for the scientific community to test methods and algorithms on real datasets. This paper explores the application of network analysis to the Anti-Financial Crime (AFC) domain, leveraging a large dataset of over 80 million cross-border wire transfers. Our goal is to detect outliers potentially involved in malicious activities, in alignment with financial regulations. We address this problem with WeirdNodes, a centrality-based methodology for ranked anomaly detection in temporal networks. Unlike many existing approaches that rely on rule-based algorithms or general machine learning models, WeirdNodes harnesses the evolving structure and relationships within financial transaction networks. By focusing on minimal disruptions in otherwise stable ecosystems-such as those built upon large set of international financial transactionsour approach tracks the temporal evolution of centrality-based rankings. This enables the detection of abrupt role shifts, signaling anomalies that warrant further investigation by domain experts. Beyond anomaly detection, this analysis represents a step toward automating AFC and Anti-Money Laundering (AML) processes, equipping AFC officers with a comprehensive, top-down perspective to enhance their efforts. By providing a bird’s eye view of financial data, our approach mitigates the risk of overlooking complex behaviors that single-node or narrowly focused transactional analyses may fail to detect.File | Dimensione | Formato | |
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