cs.AI updates on arXiv.org 08月15日
APFL: Analytic Personalized Federated Learning via Dual-Stream Least Squares
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本文提出了一种基于双流最小二乘法的Analytic Personalized Federated Learning(APFL)方法,旨在解决个性化联邦学习(PFL)中的非IID数据问题,通过特征提取和双流分析模型实现集体泛化和个性化,实验结果表明APFL在多个数据集上优于现有方法。

arXiv:2508.10732v1 Announce Type: cross Abstract: Personalized Federated Learning (PFL) has presented a significant challenge to deliver personalized models to individual clients through collaborative training. Existing PFL methods are often vulnerable to non-IID data, which severely hinders collective generalization and then compromises the subsequent personalization efforts. In this paper, to address this non-IID issue in PFL, we propose an Analytic Personalized Federated Learning (APFL) approach via dual-stream least squares. In our APFL, we use a foundation model as a frozen backbone for feature extraction. Subsequent to the feature extractor, we develop dual-stream analytic models to achieve both collective generalization and individual personalization. Specifically, our APFL incorporates a shared primary stream for global generalization across all clients, and a dedicated refinement stream for local personalization of each individual client. The analytical solutions of our APFL enable its ideal property of heterogeneity invariance, theoretically meaning that each personalized model remains identical regardless of how heterogeneous the data are distributed across all other clients. Empirical results across various datasets also validate the superiority of our APFL over state-of-the-art baselines, with advantages of at least 1.10%-15.45% in accuracy.

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相关标签

APFL PFL 联邦学习 数据异构 模型泛化
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