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Complex-valued Federated Learning with Differential Privacy and MRI Applications

Anneliese Riess, Alexander Ziller, Stefan Kolek, Daniel Rueckert, Julia Schnabel, Georgios Kaissis

TL;DR

The complex-valued Gaussian mechanism is introduced, whose behaviour is characterised in terms of $f, $(\varepsilon, \delta)$-DP and R\'enyi-DP, and the fundamental algorithm DP stochastic gradient descent to complex-valued neural networks is generalised and novel complex-valued neural network primitives compatible with DP are presented.

Abstract

Federated learning enhanced with Differential Privacy (DP) is a powerful privacy-preserving strategy to protect individuals sharing their sensitive data for processing in fields such as medicine and healthcare. Many medical applications, for example magnetic resonance imaging (MRI), rely on complex-valued signal processing techniques for data acquisition and analysis. However, the appropriate application of DP to complex-valued data is still underexplored. To address this issue, from the theoretical side, we introduce the complex-valued Gaussian mechanism, whose behaviour we characterise in terms of $f$-DP, $(\varepsilon, δ)$-DP and Rényi-DP. Moreover, we generalise the fundamental algorithm DP stochastic gradient descent to complex-valued neural networks and present novel complex-valued neural network primitives compatible with DP. Experimentally, we showcase a proof-of-concept by training federated complex-valued neural networks with DP on a real-world task (MRI pulse sequence classification in $k$-space), yielding excellent utility and privacy. Our results highlight the relevance of combining federated learning with robust privacy-preserving techniques in the MRI context.

Complex-valued Federated Learning with Differential Privacy and MRI Applications

TL;DR

The complex-valued Gaussian mechanism is introduced, whose behaviour is characterised in terms of (\varepsilon, \delta)$-DP and R\'enyi-DP, and the fundamental algorithm DP stochastic gradient descent to complex-valued neural networks is generalised and novel complex-valued neural network primitives compatible with DP are presented.

Abstract

Federated learning enhanced with Differential Privacy (DP) is a powerful privacy-preserving strategy to protect individuals sharing their sensitive data for processing in fields such as medicine and healthcare. Many medical applications, for example magnetic resonance imaging (MRI), rely on complex-valued signal processing techniques for data acquisition and analysis. However, the appropriate application of DP to complex-valued data is still underexplored. To address this issue, from the theoretical side, we introduce the complex-valued Gaussian mechanism, whose behaviour we characterise in terms of -DP, -DP and Rényi-DP. Moreover, we generalise the fundamental algorithm DP stochastic gradient descent to complex-valued neural networks and present novel complex-valued neural network primitives compatible with DP. Experimentally, we showcase a proof-of-concept by training federated complex-valued neural networks with DP on a real-world task (MRI pulse sequence classification in -space), yielding excellent utility and privacy. Our results highlight the relevance of combining federated learning with robust privacy-preserving techniques in the MRI context.

Paper Structure

This paper contains 11 sections, 3 theorems, 15 equations, 1 table, 1 algorithm.

Key Result

Theorem 1

Let $\mathcal{M}$ be the cGM with correlation coefficient $\rho \neq 1$ acting on a query function $q$. Then, $\mathcal{M}$ satisfies $\mu$-GDP with:

Theorems & Definitions (7)

  • Definition 1: Complex Gaussian mechanism
  • Theorem 1
  • proof
  • Corollary 1
  • proof
  • Theorem 1
  • proof