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Network Embedding Analysis for Anti-Money Laundering Detection

Published: September 12, 2025 | arXiv ID: 2509.10715v1

By: Anthony Bonato, Adam Szava

Potential Business Impact:

Finds hidden money laundering schemes in bank records.

Business Areas:
Fraud Detection Financial Services, Payments, Privacy and Security

We employ network embedding to detect money laundering in financial transaction networks. Using real anonymized banking data, we model over one million accounts as a directed graph and use it to refine previously detected suspicious cycles with node2vec embeddings, creating a new network parameter, the spread number. Combined with more traditional centrality measures, these define an aggregate score $R$ that highlights so-called anti-central nodes: accounts that are structurally important yet organized to avoid detection. Our results show only a small subset of cycles attain high $R$ values, flagging concentrated groups of suspicious accounts. Our approach demonstrates the potential of embedding-based network analysis to expose laundering strategies that evade traditional graph centrality measures.

Page Count
12 pages

Category
Computer Science:
Social and Information Networks