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Range Penalization: Theoretical Insights with Applications in Federated Learning

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arXiv:2606. 10916v1 Announce Type: new Abstract: This paper introduces range regularization for federated learning with linear systematic components to enhance statistical accuracy and induce cross-client regularity conducive to quantization, coding, and resource efficiency.