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Federated unsupervised representation learning - 2023

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Research Paper On Federated unsupervised representation learning

Research Area:  Machine Learning

Abstract:

To leverage the enormous amount of unlabeled data on distributed edge devices, we formulate a new problem in federated learning called federated unsupervised representation learning (FURL) to learn a common representation model without supervision while preserving data privacy. FURL poses two new challenges: (1) data distribution shift (non-independent and identically distributed, non-IID) among clients would make local models focus on different categories, leading to the inconsistency of representation spaces; (2) without unified information among the clients in FURL, the representations across clients would be misaligned. To address these challenges, we propose the federated contrastive averaging with dictionary and alignment (FedCA) algorithm. FedCA is composed of two key modules: a dictionary module to aggregate the representations of samples from each client which can be shared with all clients for consistency of representation space and an alignment module to align the representation of each client on a base model trained on public data. We adopt the contrastive approach for local model training. Through extensive experiments with three evaluation protocols in IID and non-IID settings, we demonstrate that FedCA outperforms all baselines with significant margins.

Keywords:  

Author(s) Name:  Fengda Zhang, Kun Kuang, Long Chen, Zhaoyang You , Tao Shen, Chao Wu, Yin Zhang , Jun Xiao, Yueting Zhuang

Journal name:  Frontiers of Information Technology & Electronic Engineering

Conferrence name:  

Publisher name:  Springer

DOI:  10.1631/FITEE.2200268

Volume Information:  Volume 24, pages 1181-1193, (2023)