LGCVNov 30, 2023

FediOS: Decoupling Orthogonal Subspaces for Personalization in Feature-skew Federated Learning

arXiv:2311.18559v110 citationsh-index: 11
Originality Incremental advance
AI Analysis

This addresses the problem of data heterogeneity for clients in federated learning, but it is incremental as it builds on existing decoupling schemes.

The paper tackles the challenge of feature-skew heterogeneity in personalized federated learning by proposing FediOS, which decouples generic and personalized features using orthogonal subspaces, achieving state-of-the-art performance on four vision datasets.

Personalized federated learning (pFL) enables collaborative training among multiple clients to enhance the capability of customized local models. In pFL, clients may have heterogeneous (also known as non-IID) data, which poses a key challenge in how to decouple the data knowledge into generic knowledge for global sharing and personalized knowledge for preserving local personalization. A typical way of pFL focuses on label distribution skew, and they adopt a decoupling scheme where the model is split into a common feature extractor and two prediction heads (generic and personalized). However, such a decoupling scheme cannot solve the essential problem of feature skew heterogeneity, because a common feature extractor cannot decouple the generic and personalized features. Therefore, in this paper, we rethink the architecture decoupling design for feature-skew pFL and propose an effective pFL method called FediOS. In FediOS, we reformulate the decoupling into two feature extractors (generic and personalized) and one shared prediction head. Orthogonal projections are used for clients to map the generic features into one common subspace and scatter the personalized features into different subspaces to achieve decoupling for them. In addition, a shared prediction head is trained to balance the importance of generic and personalized features during inference. Extensive experiments on four vision datasets demonstrate our method reaches state-of-the-art pFL performances under feature skew heterogeneity.

Foundations

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