Authors
Xudong Sun, Andrea Bommert, Florian Pfisterer, Jörg Rähenfürher, Michel Lang, Bernd Bischl
Publication date
2020
Conference
Intelligent Systems and Applications: Proceedings of the 2019 Intelligent Systems Conference (IntelliSys) Volume 1
Pages
629-647
Publisher
Springer International Publishing
Description
A novel machine learning optimization process coined Restrictive Federated Model Selection (RFMS) is proposed under the scenario, for example, when data from healthcare units can not leave the site it is situated on and it is forbidden to carry out training algorithms on remote data sites due to either technical or privacy and trust concerns. To carry out a clinical research in this scenario, an analyst could train a machine learning model only on local data site, but it is still possible to execute a statistical query at a certain cost in the form of sending a machine learning model to some of the remote data sites and get the performance measures as feedback, maybe due to prediction being usually much cheaper. Compared to federated learning, which is optimizing the model parameters directly by carrying out training across all data sites, RFMS trains model parameters only on one local data site but optimizes …
Total citations
201920202021202220232024232233
Scholar articles
X Sun, A Bommert, F Pfisterer, J Rähenfürher, M Lang… - Intelligent Systems and Applications: Proceedings of …, 2020