Title
Federated Learning - Methods, Applications and beyond.
Abstract
In recent years the applications of machine learning models have increased rapidly, due to the large amount of available data and technological progress.While some domains like web analysis can benefit from this with only minor restrictions, other fields like in medicine with patient data are strongerregulated. In particular \emph{data privacy} plays an important role as recently highlighted by the trustworthy AI initiative of the EU or general privacy regulations in legislation. Another major challenge is, that the required training \emph{data is} often \emph{distributed} in terms of features or samples and unavailable for classicalbatch learning approaches. In 2016 Google came up with a framework, called \emph{Federated Learning} to solve both of these problems. We provide a brief overview on existing Methods and Applications in the field of vertical and horizontal \emph{Federated Learning}, as well as \emph{Fderated Transfer Learning}.
Year
DOI
Venue
2021
10.14428/esann/2021.ES2021-4
The European Symposium on Artificial Neural Networks (ESANN)
DocType
ISSN
Citations 
Conference
ESANN 2021 - European Symposium on Artificial Neural Networks, Computational Intelligence and Machine Learning, Oct 2021, Online event (Bruges), Belgium. pp.1-10
0
PageRank 
References 
Authors
0.34
0
4
Name
Order
Citations
PageRank
Moritz Heusinger101.01
Christoph Raab201.69
Fabrice Rossi320.74
Frank-Michael Schleif451.73