4.7 Article

Uncertainty Minimization for Personalized Federated Semi-Supervised Learning

期刊

出版社

IEEE COMPUTER SOC
DOI: 10.1109/TNSE.2022.3226574

关键词

Data models; Training; Semisupervised learning; Federated learning; Convergence; Servers; Labeling; Data heterogeneity; federated learning; semi-supervised learning; uncertainty estimation

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This paper proposes a novel personalized semi-supervised learning paradigm that allows partially labeled or unlabeled clients to seek labeling assistance from data-related clients (helper agents) to enhance their perception of local data. By designing an uncertainty-based data-relation metric, the selected helpers can provide trustworthy pseudo labels and avoid misleading the local training. Additionally, a helper selection protocol is developed to mitigate network overload and achieve efficient communication.
Since federated learning (FL) has been introduced as a decentralized learning technique with privacy preservation, statistical heterogeneity of distributed data stays the main obstacle to achieve robust performance and stable convergence in FL applications. Model personalization methods have been studied to overcome this problem. However, existing approaches are mainly under the prerequisite of fully labeled data, which is unrealistic in practice due to the requirement of expertise. The primary issue caused by partial-labeled condition is that, clients with deficient labeled data can suffer from unfair performance gain because they lack adequate insights of local distribution to customize the global model. To tackle this problem, 1) we propose a novel personalized semi-supervised learning paradigm which allows partial-labeled or unlabeled clients to seek labeling assistance from data-related clients (helper agents), thus to enhance their perception of local data; 2) based on this paradigm, we design an uncertainty-based data-relation metric to ensure that selected helpers can provide trustworthy pseudo labels instead of misleading the local training; 3) to mitigate the network overload introduced by helper searching, we further develop a helper selection protocol to achieve efficient communication with acceptable performance sacrifice. Experiments show that our proposed method can obtain superior performance and more stable convergence than other related works with partially labeled data, especially in highly heterogeneous setting.

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