LGOct 23, 2025

CO-PFL: Contribution-Oriented Personalized Federated Learning for Heterogeneous Networks

arXiv:2510.20219v11 citationsh-index: 6
Originality Incremental advance
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This addresses the challenge of data heterogeneity in federated learning for clients with scarce local data, offering an incremental improvement over existing personalized federated learning methods.

The paper tackles the problem of training personalized models in federated learning with heterogeneous client data by introducing CO-PFL, which dynamically estimates client contributions for aggregation, resulting in improved personalization accuracy, robustness, scalability, and convergence stability across four benchmark datasets.

Personalized federated learning (PFL) addresses a critical challenge of collaboratively training customized models for clients with heterogeneous and scarce local data. Conventional federated learning, which relies on a single consensus model, proves inadequate under such data heterogeneity. Its standard aggregation method of weighting client updates heuristically or by data volume, operates under an equal-contribution assumption, failing to account for the actual utility and reliability of each client's update. This often results in suboptimal personalization and aggregation bias. To overcome these limitations, we introduce Contribution-Oriented PFL (CO-PFL), a novel algorithm that dynamically estimates each client's contribution for global aggregation. CO-PFL performs a joint assessment by analyzing both gradient direction discrepancies and prediction deviations, leveraging information from gradient and data subspaces. This dual-subspace analysis provides a principled and discriminative aggregation weight for each client, emphasizing high-quality updates. Furthermore, to bolster personalization adaptability and optimization stability, CO-PFL cohesively integrates a parameter-wise personalization mechanism with mask-aware momentum optimization. Our approach effectively mitigates aggregation bias, strengthens global coordination, and enhances local performance by facilitating the construction of tailored submodels with stable updates. Extensive experiments on four benchmark datasets (CIFAR10, CIFAR10C, CINIC10, and Mini-ImageNet) confirm that CO-PFL consistently surpasses state-of-the-art methods in in personalization accuracy, robustness, scalability and convergence stability.

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