Federated semi-supervised learning (FSSL) has emerged as a powerful paradigm for collaboratively training machine learning models using distributed data with label deficiency. Advanced FSSL methods predominantly focus on training a single model on each client. However, this approach could lead to a discrepancy between the objective functions of labeled and unlabeled data, resulting in gradient conflicts. To alleviate gradient conflict, we propose a novel twin-model paradigm, called Twin-sight, designed to enhance mutual guidance by providing insights from different perspectives of labeled and unlabeled data. In particular, Twin-sight concurrently trains a supervised model with a supervised objective function while training an unsupervised model using an unsupervised objective function. To enhance the synergy between these two models, Twin-sight introduces a neighbourhood-preserving constraint, which encourages the preservation of the neighbourhood relationship among data features extracted by both models. Our comprehensive experiments on four benchmark datasets provide substantial evidence that Twin-sight can significantly outperform state-of-the-art methods across various experimental settings, demonstrating the efficacy of the proposed Twin-sight.
Robust Training of Federated Models with Extremely Label Deficiency
Twin-sight, a novel twin-model paradigm in federated semi-supervised learning, enhances mutual guidance by training separate supervised and unsupervised models with a neighborhood-preserving constraint, leading to significant performance improvements.
- Year
- 2024
- Venue
- arXiv 2024
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- 6
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2402.14430ARXIV-DEFAULT
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