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Federated Generalized Bayesian Learning via Distributed Stein Variational Gradient Descent

Rahif Kassab, Osvaldo Simeone

2022IEEE Transactions on Signal Processing33 citationsDOIOpen Access PDF

Abstract

This paper introduces Distributed Stein Variational Gradient Descent (DSVGD), a non-parametric generalized Bayesian inference framework for federated learning. DSVGD maintains a number of non-random and interacting particles at a central server to represent the current iterate of the model global posterior. The particles are iteratively downloaded and updated by a subset of agents with the end goal of minimizing the global free energy. By varying the number of particles, DSVGD enables a flexible trade-off between per-iteration communication load and number of communication rounds. DSVGD is shown to compare favorably to benchmark frequentist and Bayesian federated learning strategies in terms of accuracy and scalability with respect to the number of agents, while also providing well-calibrated, and hence trustworthy, predictions.

Topics & Concepts

Frequentist inferenceScalabilityComputer scienceGradient descentBenchmark (surveying)Bayesian probabilityBayesian inferenceInferenceMathematical optimizationFree energy principleStochastic gradient descentDistributed learningArtificial intelligenceMachine learningMathematicsArtificial neural networkPedagogyDatabasePsychologyGeographyGeodesyPrivacy-Preserving Technologies in DataDomain Adaptation and Few-Shot LearningStochastic Gradient Optimization Techniques