Privacy-Preserving Federated Fraud Detection in Payment Transactions with NVIDIA FLARE
arXiv cs.LG / 3/17/2026
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Key Points
- The paper proposes a privacy-preserving federated fraud detection framework for payment transactions using NVIDIA FLARE, enabling cross-institution collaboration without sharing raw data.
- It leverages NVIDIA FLARE to coordinate distributed model training, secure aggregation, and privacy-preserving techniques in a financial fraud setting.
- The work discusses potential privacy, security, and regulatory benefits, along with trade-offs in accuracy and performance.
- By applying federated learning to fraud detection, the paper highlights a pathway for finance and fintech industries to adopt privacy-preserving ML at scale.
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