Xie, Chunfeng and Chen, Zhixiong and Yi, Wenqiang and Shin, Hyundong and Nallanathan, Arumugam (2026) Distribution Deviation-Aware Split Federated Learning in Resource-Limited Wireless Networks. IEEE Transactions on Communications. (In Press)
Xie, Chunfeng and Chen, Zhixiong and Yi, Wenqiang and Shin, Hyundong and Nallanathan, Arumugam (2026) Distribution Deviation-Aware Split Federated Learning in Resource-Limited Wireless Networks. IEEE Transactions on Communications. (In Press)
Xie, Chunfeng and Chen, Zhixiong and Yi, Wenqiang and Shin, Hyundong and Nallanathan, Arumugam (2026) Distribution Deviation-Aware Split Federated Learning in Resource-Limited Wireless Networks. IEEE Transactions on Communications. (In Press)
Abstract
The escalating complexity of deep neural networks introduces substantial challenges to deploying federated learning (FL) in resource-limited edge environments. To address these limitations, split federated learning (SFL) has emerged as a promising paradigm, alleviating client-side computational and communication burdens via strategic model splitting, and periodically aggregating client-side and server-side models consistent with the principles of FL. Nevertheless, existing SFL frameworks encounter significant performance degradation arising from data heterogeneity and imbalance, client heterogeneity, as well as constrained wireless resources. To overcome these issues, this paper introduces a novel data distribution deviation-aware split federated learning (DA-SFL) framework. DA-SFL dynamically adjusts aggregation weights according to the deviation of clients’ data distributions from a global distribution, effectively mitigating biases induced by data imbalance and heterogeneity. Furthermore, we theoretically establish the convergence bound of DA-SFL under a non-convex loss function setting, demonstrating that minimizing the data deviation in each training round enhances learning efficacy. Motivated by this, we formulate a mixed-integer nonlinear programming to optimize learning performance under long-term energy constraints. Leveraging the Lyapunov optimization framework, we decompose the problem into a series of tractable subproblems in each learning round, and propose efficient algorithms to find the client scheduling, adaptive cut layer selection, bandwidth allocation, and aggregation weighting policies. Extensive experimental evaluations conducted on Fashion-MNIST, CIFAR-10, and CINIC-10 datasets across diverse scenarios of data heterogeneity and imbalance demonstrate that DA-SFL significantly outperforms baselines regarding test accuracy, time and energy efficiency, while exhibiting notable robustness and scalability.
| Item Type: | Article |
|---|---|
| Uncontrolled Keywords: | split federated learning; client scheduling; resource allocation; data deviation; data heterogeneity |
| Divisions: | Faculty of Science and Health Faculty of Science and Health > Computer Science and Electronic Engineering, School of |
| SWORD Depositor: | Unnamed user with email elements@essex.ac.uk |
| Depositing User: | Unnamed user with email elements@essex.ac.uk |
| Date Deposited: | 19 Jun 2026 10:51 |
| Last Modified: | 19 Jun 2026 10:51 |
| URI: | http://repository.essex.ac.uk/id/eprint/43405 |
Available files
Filename: DA_SFL_final.pdf
Embargo Date: 1 January 2100