CVMay 27

Pattern Recognition Tasks with Personalized Federated Learning

arXiv:2605.278165.4h-index: 14
Predicted impact top 90% in CV · last 90 daysOriginality Synthesis-oriented
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For researchers and practitioners in federated learning, this study provides a comparative evaluation of PFL algorithms on heterogeneous data, though the results are incremental and dataset-specific.

This paper compares seven personalized federated learning algorithms on three pattern recognition datasets (MNIST, SignMNIST, Digit5), finding APPLE, FedGC, and FedProto consistently outperform others in accuracy, precision, recall, and F1 score.

Personalized Federated Learning (PFL) constitutes a novel paradigm that tailors Machine Learning (ML) models to individual clients, thereby furnishing personalized model updates whilst upholding stringent data privacy principles. Diverging from conventional standard Federated Learning (FL) approaches, PFL adapts models to distinct client data distributions, engendering heightened levels of accuracy, customization, and data security, all while minimizing communication overhead. This methodology proves particularly salient in contexts marked by pattern recognition tasks reliant upon heterogeneous data sources and underpinned by paramount privacy apprehensions. In the present research endeavor, this article undertake a comprehensive comparative analysis of seven distinct PFL algorithms deployed across three diverse datasets, namely MNIST, SignMNIST, and Digit5. The overarching objective entails ascertaining the preeminent PFL algorithm, within the framework of pattern recognition tasks, through a rigorous evaluation anchored in metrics encompassing Accuracy, Precision, Recall, and F1 Score. Concurrently, an in-depth scrutiny of these PFL algorithms is conducted, elucidating their operative workflows, advantages, and limitations. Through empirical investigation, the findings evince that APPLE, FedGC, and FedProto emerge as stalwart contenders, consistently furnishing superior performance across the spectrum of assessed datasets, while acknowledging the contextual specificity of alternative algorithms and the potential for iterative refinement to realize optimal outcomes.

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