OmniISR: A Unified Framework for Centralized and Federated Learning via Intermediate Supervision and Regularization
Wei-Bin Kou, Guangxu Zhu, Ming Tang, Chen Zhang, Lisheng Wu, Lei Zhou, Yujiu Yang

TL;DR
OmniISR introduces a unified framework combining centralized and federated learning through intermediate supervision and regularization, improving performance and theoretical guarantees across diverse deployment scenarios.
Contribution
The paper proposes OmniISR, a novel framework that unifies CL and FL using mutual-information supervision and negative-entropy regularization, with rigorous theoretical analysis and extensive empirical validation.
Findings
Reduces CL-FL gap by 22.60%
Improves model performance in both paradigms
Yields 37/48 paired metric wins across FL algorithms
Abstract
The global deployment of edge intelligence operates across heterogeneous legal frameworks. While some regions permit centralized learning (CL) via cloud data aggregation, others enforce strict data localization, necessitating federated learning (FL). This operational dichotomy introduces two incompatible optimization regimes (i.e., unbiased global gradients yet coupled with internal covariate shift in CL versus biased, drift-prone local updates in FL), resulting in that any naive integration of the two lacks rigorous theoretical guarantees. To fill this gap, we propose OmniISR, a unified framework that fuses pure CL, pure FL, and hybrid CL-FL training modes via equipping intermediate supervision and regularization (ISR) signals at multiple hidden layers. Specifically, we propose (i) to use mutual-information (MI) as intermediate supervision to align shifting internal covariate in CL and…
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