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Federated Learning with Fair Averaging

Zheng Wang, Xiaoliang Fan, Jianzhong Qi, Chenglu Wen, Cheng Wang, Rongshan Yu

2021124 citationsDOIOpen Access PDF

Abstract

Fairness has emerged as a critical problem in federated learning (FL). In this work, we identify a cause of unfairness in FL -- conflicting gradients with large differences in the magnitudes. To address this issue, we propose the federated fair averaging (FedFV) algorithm to mitigate potential conflicts among clients before averaging their gradients. We first use the cosine similarity to detect gradient conflicts, and then iteratively eliminate such conflicts by modifying both the direction and the magnitude of the gradients. We further show the theoretical foundation of FedFV to mitigate the issue conflicting gradients and converge to Pareto stationary solutions. Extensive experiments on a suite of federated datasets confirm that FedFV compares favorably against state-of-the-art methods in terms of fairness, accuracy and efficiency. The source code is available at https://github.com/WwZzz/easyFL.

Topics & Concepts

SuiteComputer scienceSimilarity (geometry)Code (set theory)Cosine similarityFederated learningSource codeWork (physics)Pareto principlePareto optimalFoundation (evidence)AlgorithmTheoretical computer scienceArtificial intelligenceMachine learningMathematical optimizationMulti-objective optimizationPattern recognition (psychology)Image (mathematics)MathematicsSet (abstract data type)LawEngineeringMechanical engineeringPolitical scienceProgramming languageOperating systemPrivacy-Preserving Technologies in DataDomain Adaptation and Few-Shot LearningStochastic Gradient Optimization Techniques