个性化联邦学习中的收敛-隐私-公平权衡

Xiyu Zhao;Qimei Cui;Weicai Li;Wei Ni;Ekram Hossain;Quan Z. Sheng;Xiaofeng Tao;Ping Zhang
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引用次数: 0

摘要

个性化联邦学习(PFL),例如著名的Ditto,通过进行联邦学习(FL)来指导个性化学习(PL),在个性化和泛化之间取得了平衡。虽然FL不受个性化模型训练的影响,但在Ditto中,PL取决于FL的结果。然而,客户对其隐私的关注及其对其局部模型的扰动会影响PL的收敛性和(性能)公平性。本文提出了PFL,称为DP-Ditto,它是Ditto在差分隐私(DP)保护下的非平凡扩展,并分析了其隐私保障,模型收敛,以及绩效分配的公平性。我们还分析了个性化模型在DP-Ditto下的收敛上界,并推导出给定隐私预算的最优全局聚合数。进一步分析了个性化模型的性能公平性,揭示了共同优化DP-Ditto的收敛性和公平性的可行性。实验验证了我们的分析,并证明DP-Ditto可以超过最先进的dp -扰动版本的PFL模型,如FedAMP, pFedMe, APPLE和FedALA,公平性超过32.71%,准确性超过9.66%。
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Convergence-Privacy-Fairness Trade-Off in Personalized Federated Learning
Personalized federated learning (PFL), e.g., the renowned Ditto, strikes a balance between personalization and generalization by conducting federated learning (FL) to guide personalized learning (PL). While FL is unaffected by personalized model training, in Ditto, PL depends on the outcome of the FL. However, the clients’ concern about their privacy and consequent perturbation of their local models can affect the convergence and (performance) fairness of PL. This paper presents PFL, called DP-Ditto, which is a non-trivial extension of Ditto under the protection of differential privacy (DP), and analyzes the trade-off among its privacy guarantee, model convergence, and performance distribution fairness. We also analyze the convergence upper bound of the personalized models under DP-Ditto and derive the optimal number of global aggregations given a privacy budget. Further, we analyze the performance fairness of the personalized models, and reveal the feasibility of optimizing DP-Ditto jointly for convergence and fairness. Experiments validate our analysis and demonstrate that DP-Ditto can surpass the DP-perturbed versions of the state-of-the-art PFL models, such as FedAMP, pFedMe, APPLE, and FedALA, by over 32.71% in fairness and 9.66% in accuracy.
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