Robust Convergence in Federated Learning through Label-wise Clustering
Hunmin Lee, Yueyang Liu, Donghyun Kim, Yingshu Li

TL;DR
This paper introduces a label-wise clustering algorithm for federated learning that improves convergence and accuracy in non-IID and heterogeneous environments by selecting clients with similar class label distributions.
Contribution
The paper proposes a novel label-wise clustering method that enhances federated learning convergence and performance in non-IID settings, with a client selection strategy based on class label distribution.
Findings
Label-wise clustering achieves faster convergence.
The method outperforms vanilla FL in non-IID scenarios.
Quantitative estimation of local model performance aids client selection.
Abstract
Non-IID dataset and heterogeneous environment of the local clients are regarded as a major issue in Federated Learning (FL), causing a downturn in the convergence without achieving satisfactory performance. In this paper, we propose a novel Label-wise clustering algorithm that guarantees the trainability among geographically dispersed heterogeneous local clients, by selecting only the local models trained with a dataset that approximates into uniformly distributed class labels, which is likely to obtain faster minimization of the loss and increment the accuracy among the FL network. Through conducting experiments on the suggested six common non-IID scenarios, we empirically show that the vanilla FL aggregation model is incapable of gaining robust convergence generating biased pre-trained local models and drifting the local weights to mislead the trainability in the worst case. Moreover,…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data
