These labels were automatically added by AI and may be inaccurate. For details, see About Literature Database.
Abstract
Federated Learning (FL) enables collaborative machine learning while
preserving data privacy but struggles to balance privacy preservation (PP) and
fairness. Techniques like Differential Privacy (DP), Homomorphic Encryption
(HE), and Secure Multi-Party Computation (SMC) protect sensitive data but
introduce trade-offs. DP enhances privacy but can disproportionately impact
underrepresented groups, while HE and SMC mitigate fairness concerns at the
cost of computational overhead. This work explores the privacy-fairness
trade-offs in FL under IID (Independent and Identically Distributed) and
non-IID data distributions, benchmarking q-FedAvg, q-MAML, and Ditto on diverse
datasets. Our findings highlight context-dependent trade-offs and offer
guidelines for designing FL systems that uphold responsible AI principles,
ensuring fairness, privacy, and equitable real-world applications.