The proposed FMLFS method addresses the challenges of high dimensionality and the presence of noisy, redundant, or irrelevant features in multi-label datasets generated by IoT devices. It introduces a federated approach to multi-label feature selection, where mutual information between features and labels is used as the relevancy metric, and the correlation distance between features, derived from mutual information and joint entropy, is utilized as the redundancy measure.
The FMLFS algorithm comprises two phases:
The proposed method is evaluated in two scenarios: 1) transmitting reduced-size datasets to the edge server for centralized classifier usage, and 2) employing federated learning with reduced-size datasets. The results demonstrate that FMLFS outperforms five other comparable methods in the literature and provides a good trade-off between performance, time complexity, and communication cost on three real-world multi-label datasets.
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by Afsaneh Maha... alle arxiv.org 05-02-2024
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