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Towards Federated Graph Learning for Collaborative Financial Crimes Detection

Author

Listed:
  • Toyotaro Suzumura
  • Yi Zhou
  • Natahalie Baracaldo
  • Guangnan Ye
  • Keith Houck
  • Ryo Kawahara
  • Ali Anwar
  • Lucia Larise Stavarache
  • Yuji Watanabe
  • Pablo Loyola
  • Daniel Klyashtorny
  • Heiko Ludwig
  • Kumar Bhaskaran

Abstract

Financial crime is a large and growing problem, in some way touching almost every financial institution. Financial institutions are the front line in the war against financial crime and accordingly, must devote substantial human and technology resources to this effort. Current processes to detect financial misconduct have limitations in their ability to effectively differentiate between malicious behavior and ordinary financial activity. These limitations tend to result in gross over-reporting of suspicious activity that necessitate time-intensive and costly manual review. Advances in technology used in this domain, including machine learning based approaches, can improve upon the effectiveness of financial institutions' existing processes, however, a key challenge that most financial institutions continue to face is that they address financial crimes in isolation without any insight from other firms. Where financial institutions address financial crimes through the lens of their own firm, perpetrators may devise sophisticated strategies that may span across institutions and geographies. Financial institutions continue to work relentlessly to advance their capabilities, forming partnerships across institutions to share insights, patterns and capabilities. These public-private partnerships are subject to stringent regulatory and data privacy requirements, thereby making it difficult to rely on traditional technology solutions. In this paper, we propose a methodology to share key information across institutions by using a federated graph learning platform that enables us to build more accurate machine learning models by leveraging federated learning and also graph learning approaches. We demonstrated that our federated model outperforms local model by 20% with the UK FCA TechSprint data set. This new platform opens up a door to efficiently detecting global money laundering activity.

Suggested Citation

  • Toyotaro Suzumura & Yi Zhou & Natahalie Baracaldo & Guangnan Ye & Keith Houck & Ryo Kawahara & Ali Anwar & Lucia Larise Stavarache & Yuji Watanabe & Pablo Loyola & Daniel Klyashtorny & Heiko Ludwig & , 2019. "Towards Federated Graph Learning for Collaborative Financial Crimes Detection," Papers 1909.12946, arXiv.org, revised Oct 2019.
  • Handle: RePEc:arx:papers:1909.12946
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    Cited by:

    1. Ning Ge & Guanghao Li & Li Zhang & Yi Liu, 2022. "Failure prediction in production line based on federated learning: an empirical study," Journal of Intelligent Manufacturing, Springer, vol. 33(8), pages 2277-2294, December.

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