Feature Correlation-guided Knowledge Transfer for Federated Self-supervised Learning
Yi Liu, Song Guo, Jie Zhang, Qihua Zhou, Yingchun Wang, Xiaohan, Zhao

TL;DR
This paper introduces FedFoA, a novel federated self-supervised learning framework that uses feature correlation for model aggregation, enabling effective knowledge transfer without assumptions like model homogeneity or public datasets.
Contribution
FedFoA is a general, model-agnostic method that leverages feature correlation for communication-efficient, privacy-preserving federated self-supervised learning, outperforming existing approaches.
Findings
FedFoA outperforms state-of-the-art methods significantly.
The relation matrix effectively captures semantic information.
FedFoA is compatible with various unsupervised FL methods.
Abstract
To eliminate the requirement of fully-labeled data for supervised model training in traditional Federated Learning (FL), extensive attention has been paid to the application of Self-supervised Learning (SSL) approaches on FL to tackle the label scarcity problem. Previous works on Federated SSL generally fall into two categories: parameter-based model aggregation (i.e., FedAvg, applicable to homogeneous cases) or data-based feature sharing (i.e., knowledge distillation, applicable to heterogeneous cases) to achieve knowledge transfer among multiple unlabeled clients. Despite the progress, all of them inevitably rely on some assumptions, such as homogeneous models or the existence of an additional public dataset, which hinder the universality of the training frameworks for more general scenarios. Therefore, in this paper, we propose a novel and general method named Federated…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Domain Adaptation and Few-Shot Learning · Advanced Graph Neural Networks
MethodsALIGN
