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Federated Frank-Wolfe Algorithm

Abstract

Federated learning (FL) has gained a lot of attention in recent years for building privacy-preserving collaborative learning systems. However, FL algorithms for constrained machine learning problems are still limited, particularly when the projection step is costly. To this end, we propose a Federated Frank-Wolfe Algorithm (FedFW). FedFW features data privacy, low per-iteration cost, and communication of sparse signals. In the deterministic setting, FedFW achieves an ε\varepsilon-suboptimal solution within O(ε2)O(\varepsilon^{-2}) iterations for smooth and convex objectives, and O(ε3)O(\varepsilon^{-3}) iterations for smooth but non-convex objectives. Furthermore, we present a stochastic variant of FedFW and show that it finds a solution within O(ε3)O(\varepsilon^{-3}) iterations in the convex setting. We demonstrate the empirical performance of FedFW on several machine learning tasks.

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