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Enhancing Privacy in Federated Learning: Secure Aggregation for
  Real-World Healthcare Applications

Enhancing Privacy in Federated Learning: Secure Aggregation for Real-World Healthcare Applications

2 September 2024
Riccardo Taiello
Sergen Cansiz
Marc Vesin
Francesco Cremonesi
Lucia Innocenti
Melek Önen
Marco Lorenzi
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Papers citing "Enhancing Privacy in Federated Learning: Secure Aggregation for Real-World Healthcare Applications"

1 / 1 papers shown
Title
Fed-BioMed: Open, Transparent and Trusted Federated Learning for
  Real-world Healthcare Applications
Fed-BioMed: Open, Transparent and Trusted Federated Learning for Real-world Healthcare Applications
Francesco Cremonesi
Marc Vesin
Sergen Cansiz
Yannick Bouillard
Irene Balelli
...
B. Houis
R. Modzelewski
O. Humbert
Melek Önen
Marco Lorenzi
FedML
OOD
85
11
0
24 Apr 2023
1