Privacy-Preserving Federated Learning via System Immersion and Random Matrix Encryption
Haleh Hayati, Carlos Murguia, Nathan van de Wouw

TL;DR
This paper introduces a novel privacy-preserving federated learning framework that combines system immersion and random matrix encryption, ensuring data privacy without sacrificing model accuracy or efficiency.
Contribution
It proposes a new PPFL framework using control theory tools to encrypt data and embed learning dynamics, maintaining performance while enhancing privacy.
Findings
Achieves standard FL accuracy and convergence rates.
Provides data privacy with negligible additional computation.
Enables encrypted model aggregation and decryption.
Abstract
Federated learning (FL) has emerged as a privacy solution for collaborative distributed learning where clients train AI models directly on their devices instead of sharing their data with a centralized (potentially adversarial) server. Although FL preserves local data privacy to some extent, it has been shown that information about clients' data can still be inferred from model updates. In recent years, various privacy-preserving schemes have been developed to address this privacy leakage. However, they often provide privacy at the expense of model performance or system efficiency, and balancing these tradeoffs is a crucial challenge when implementing FL schemes. In this manuscript, we propose a Privacy-Preserving Federated Learning (PPFL) framework built on the synergy of matrix encryption and system immersion tools from control theory. The idea is to immerse the learning algorithm, a…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Stochastic Gradient Optimization Techniques · Wireless Communication Security Techniques
MethodsStochastic Gradient Descent
