Advancing Personalized Federated Learning: Group Privacy, Fairness, and Beyond
Filippo Galli, Kangsoo Jung, Sayan Biswas, Catuscia Palamidessi,, Tommaso Cucinotta

TL;DR
This paper introduces a novel federated learning approach that enhances personalization, guarantees group privacy through $d$-privacy, and improves fairness across diverse user groups, validated by theoretical analysis and real-world experiments.
Contribution
It proposes a $d$-privacy based method for federated learning that simultaneously ensures privacy, personalization, and improved group fairness, addressing limitations of traditional FL models.
Findings
The method provides formal privacy guarantees with $d$-privacy.
It achieves better group fairness than classical FL models.
Experimental results validate the effectiveness on real-world datasets.
Abstract
Federated learning (FL) is a framework for training machine learning models in a distributed and collaborative manner. During training, a set of participating clients process their data stored locally, sharing only the model updates obtained by minimizing a cost function over their local inputs. FL was proposed as a stepping-stone towards privacy-preserving machine learning, but it has been shown vulnerable to issues such as leakage of private information, lack of personalization of the model, and the possibility of having a trained model that is fairer to some groups than to others. In this paper, we address the triadic interaction among personalization, privacy guarantees, and fairness attained by models trained within the FL framework. Differential privacy and its variants have been studied and applied as cutting-edge standards for providing formal privacy guarantees. However,…
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