FedKNOW: Federated Continual Learning with Signature Task Knowledge Integration at Edge
Yaxin Luopan, Rui Han, Qinglong Zhang, Chi Harold Liu, Guoren Wang

TL;DR
FedKNOW introduces a scalable federated continual learning framework that leverages signature task knowledge to improve accuracy and reduce communication costs on edge devices, effectively addressing catastrophic forgetting and negative transfer.
Contribution
It proposes a novel signature task knowledge integration method for federated continual learning, enhancing scalability and accuracy without increasing training time.
Findings
Improves model accuracy by 63.24%
Reduces communication cost by 34.28%
Performs well with many tasks and complex networks
Abstract
Deep Neural Networks (DNNs) have been ubiquitously adopted in internet of things and are becoming an integral of our daily life. When tackling the evolving learning tasks in real world, such as classifying different types of objects, DNNs face the challenge to continually retrain themselves according to the tasks on different edge devices. Federated continual learning is a promising technique that offers partial solutions but yet to overcome the following difficulties: the significant accuracy loss due to the limited on-device processing, the negative knowledge transfer caused by the limited communication of non-IID data, and the limited scalability on the tasks and edge devices. In this paper, we propose FedKNOW, an accurate and scalable federated continual learning framework, via a novel concept of signature task knowledge. FedKNOW is a client side solution that continuously extracts…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning
