Authors
Saleh Baghersalimi, Tomas Teijeiro, Amir Aminifar, David Atienza
Publication date
2023/9/29
Journal
IEEE Transactions on Mobile Computing
Publisher
IEEE
Description
In healthcare, data privacy of patients regulations prohibits data from being moved outside the hospital, preventing international medical datasets from being centralized for AI training. Federated learning (FL) is a data privacy-focused method that trains a global model by aggregating local models from hospitals. Existing FL techniques adopt a central server-based network topology, where the server assembles the local models trained in each hospital to create a global model. However, the server could be a point of failure, and models trained in FL usually have worse performance than those trained in the centralized learning manner when the patient's data are not independent and identically distributed (Non-IID) in the hospitals. This paper presents a decentralized FL framework, including training with adaptive ensemble learning and a deployment phase using knowledge distillation. The adaptive ensemble …
Total citations
Scholar articles
S Baghersalimi, T Teijeiro, A Aminifar, D Atienza - IEEE Transactions on Mobile Computing, 2023