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Starlit: Privacy-Preserving Federated Learning to Enhance Financial Fraud Detection

19 January 2024
A. Abadi
Bradley Doyle
Francesco Gini
Kieron Guinamard
S. K. Murakonda
Jack Liddell
Paul Mellor
S. Murdoch
Mohammad Naseri
Hector Page
George Theodorakopoulos
Suzanne Weller
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Abstract

Federated Learning (FL) is a data-minimization approach enabling collaborative model training across diverse clients with local data, avoiding direct data exchange. However, state-of-the-art FL solutions to identify fraudulent financial transactions exhibit a subset of the following limitations. They (1) lack a formal security definition and proof, (2) assume prior freezing of suspicious customers' accounts by financial institutions (limiting the solutions' adoption), (3) scale poorly, involving either O(n2)O(n^2)O(n2) computationally expensive modular exponentiation (where nnn is the total number of financial institutions) or highly inefficient fully homomorphic encryption, (4) assume the parties have already completed the identity alignment phase, hence excluding it from the implementation, performance evaluation, and security analysis, and (5) struggle to resist clients' dropouts. This work introduces Starlit, a novel scalable privacy-preserving FL mechanism that overcomes these limitations. It has various applications, such as enhancing financial fraud detection, mitigating terrorism, and enhancing digital health. We implemented Starlit and conducted a thorough performance analysis using synthetic data from a key player in global financial transactions. The evaluation indicates Starlit's scalability, efficiency, and accuracy.

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