FAM: fast adaptive federated meta-learning
Indrajeet Kumar Sinha, Shekhar Verma, Krishna Pratap Singh

TL;DR
This paper introduces FAM, a federated meta-learning framework that enables rapid personalization of a global MRI model on clients with limited data, reducing communication costs and improving local performance.
Contribution
FAM presents a novel approach combining federated learning and meta-learning for fast, personalized MRI model training with reduced communication overhead.
Findings
Personalized models outperform local models.
Rapid convergence with limited epochs.
Reduced communication overhead.
Abstract
In this work, we propose a fast adaptive federated meta-learning (FAM) framework for collaboratively learning a single global model, which can then be personalized locally on individual clients. Federated learning enables multiple clients to collaborate to train a model without sharing data. Clients with insufficient data or data diversity participate in federated learning to learn a model with superior performance. Nonetheless, learning suffers when data distributions diverge. There is a need to learn a global model that can be adapted using client's specific information to create personalized models on clients is required. MRI data suffers from this problem, wherein, one, due to data acquisition challenges, local data at a site is sufficient for training an accurate model and two, there is a restriction of data sharing due to privacy concerns and three, there is a need for…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Domain Adaptation and Few-Shot Learning · Machine Learning in Healthcare
