Journal ArticleOpen Access
An advanced data fabric architecture leveraging homomorphic encryption and federated learning
Author Affiliations
BRAC University, King Saud University, University of Calabria
Published InInformation Fusion
Year2023
Citations56
Abstract
Data fabric is an automated and AI-driven data fusion approach to accomplish data management unification without moving data to a centralized location for solving complex data problems. In a Federated learning architecture, the global model is trained based on the learned parameters of several local models that eliminate the necessity of moving data to a centralized repository for machine learning. This paper introduces a secure approach for medical image analysis using federated learning and partially homomorphic encryption within a distributed data fabric architecture. With this method, multiple parties can collaborate in training a machine-learning model without exchanging raw data but using the learned or fused features. The approach complies with laws and regulations such as HIPAA and GDPR, ensuring the…
View at Publisher
BORR does not host full-text PDFs. The button above takes you to the original publisher.