Private Non-Convex Federated Learning Without a Trusted Server
Andrew Lowy, Ali Ghafelebashi, Meisam Razaviyayn

TL;DR
This paper introduces novel privacy-preserving federated learning algorithms for non-convex, non-smooth, and heterogeneous data settings, achieving near-optimal utility bounds without trusting a central server.
Contribution
It develops the first ISRL-DP algorithms for non-convex non-smooth losses and extends privacy guarantees to more general Lipschitz continuous functions.
Findings
Algorithms nearly match optimal rates for convex i.i.d. data.
First private algorithms for non-convex non-smooth loss functions.
Improved utility bounds over existing smooth loss algorithms.
Abstract
We study federated learning (FL) -- especially cross-silo FL -- with non-convex loss functions and data from people who do not trust the server or other silos. In this setting, each silo (e.g. hospital) must protect the privacy of each person's data (e.g. patient's medical record), even if the server or other silos act as adversarial eavesdroppers. To that end, we consider inter-silo record-level (ISRL) differential privacy (DP), which requires silo~'s communications to satisfy record/item-level DP. We propose novel ISRL-DP algorithms for FL with heterogeneous (non-i.i.d.) silo data and two classes of Lipschitz continuous loss functions: First, we consider losses satisfying the Proximal Polyak-Lojasiewicz (PL) inequality, which is an extension of the classical PL condition to the constrained setting. In contrast to our result, prior works only considered unconstrained private…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Stochastic Gradient Optimization Techniques
