Efficient and Secure Federated Learning for Financial Applications
Tao Liu, Zhi Wang, Hui He, Wei Shi, Liangliang Lin, Wei Shi, Ran An,, Chenhao Li

TL;DR
This paper introduces two gradient sparsification methods to enhance communication efficiency and privacy in federated learning for financial applications, significantly reducing data transfer costs while maintaining model accuracy.
Contribution
It proposes novel sparsification techniques compatible with secure aggregation, addressing communication bottlenecks in federated learning for sensitive financial data.
Findings
Reduces communication cost to 2.9%-18.9% of traditional methods
Maintains model accuracy with high sparsity ratios
Effective under Non-IID data distributions
Abstract
The conventional machine learning (ML) and deep learning approaches need to share customers' sensitive information with an external credit bureau to generate a prediction model that opens the door to privacy leakage. This leakage risk makes financial companies face an enormous challenge in their cooperation. Federated learning is a machine learning setting that can protect data privacy, but the high communication cost is often the bottleneck of the federated systems, especially for large neural networks. Limiting the number and size of communications is necessary for the practical training of large neural structures. Gradient sparsification has received increasing attention as a method to reduce communication cost, which only updates significant gradients and accumulates insignificant gradients locally. However, the secure aggregation framework cannot directly use gradient…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Stochastic Gradient Optimization Techniques
MethodsGradient Sparsification
