TL;DR
This paper introduces a privacy-preserving federated learning framework tailored for resource-limited mobile-health and wearable IoT devices, enabling collaborative medical data analysis without compromising privacy.
Contribution
It proposes a novel edge federated learning framework optimized for resource-constrained mobile-health devices, addressing privacy and communication challenges.
Findings
Effective implementation on AWS cloud platform
Successful seizure detection in epilepsy monitoring
Preserves patient privacy during collaborative learning
Abstract
Machine Learning (ML) algorithms are generally designed for scenarios in which all data is stored in one data center, where the training is performed. However, in many applications, e.g., in the healthcare domain, the training data is distributed among several entities, e.g., different hospitals or patients' mobile devices/sensors. At the same time, transferring the data to a central location for learning is certainly not an option, due to privacy concerns and legal issues, and in certain cases, because of the communication and computation overheads. Federated Learning (FL) is the state-of-the-art collaborative ML approach for training an ML model across multiple parties holding local data samples, without sharing them. However, enabling learning from distributed data over such edge Internet of Things (IoT) systems (e.g., mobile-health and wearable technologies, involving sensitive…
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