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FedGP: Genetic Programming for Evolutionary Aggregation in Federated Learning with non-IID data
Art der Publikation: Artikel in einem Konferenzbericht
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Publication status: Published
Buchtitel: Applications of Evolutionary Computation: 28th European Conference EvoApplications 2025 Helds as Part of EvoStar 2025, Trieste, Italy, April 23-25, 2025
Band: 15612
Jahr: 2025
Monat: April
Seiten: 419–434
Verlag: Springer
Ort: Trieste, Italy
URL: https://link.springer.com/chap...
DOI: https://doi.org/10.1007/978-3-031-90062-4_26
Abriss: Federated Learning (FL) represents a distributed, privacy-preserving machine learning (ML) paradigm that enables decentralized model training across multiple clients. While traditional aggregation techniques, such as Federated Averaging (FedAVG), have demonstrated effectiveness, they often struggle in Not Independent and Identically Distributed (non-IID) scenarios, where data distributions vary significantly among clients. To address these limitations, this study introduces FedGP, a novel aggregation strategy based on Genetic Programming (GP). FedGP dynamically evolves aggregation functions, enabling adaptive and personalized model updates that better capture the heterogeneity inherent in distributed data. The proposed method is evaluated on the PathMNIST dataset, employing a comprehensive experimental design comprising 24 configurations, including 8 setups with FedAVG and 16 with FedGP. The comparative analysis highlights FedGP's superior generalization capabilities and reduced biases, outperforming FedAVG in terms of accuracy. These results position FedGP as a robust and scalable solution for real-world FL applications, particularly in environments characterized by data heterogeneity.
Schlagworte: FedAVG, federated learning, FedGP, Genetic Programming, Model Aggregation
Autoren Pacioni, Elia
Fernández de Vega, Francisco
Calvaresi, Davide
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