S2FL: Toward efficient and accurate heterogeneous split federated learning

Publication Type

Journal Article

Publication Date

1-2026

Abstract

Along with the prosperity of Artificial Intelligence (AI) and Internet of Things (IoT) techniques, Split Federated Learning (SFL) is becoming popular in designing Artificial Intelligence of Things (AIoT) applications, since it enables knowledge sharing among resource-constrained devices without compromising data privacy. By offloading a portion of the full model onto cloud servers, SFL can not only enable AIoT devices to accommodate large models beyond their capabilities, but also reduce their overall local training efforts. However, due to various inherent data and device heterogeneity issues, existing SFL methods greatly suffer from low inference performance and slow convergence, especially when the network bandwidth of devices is limited. To address these problems, this paper presents a novel SFL approach named Sliding Split Federated Learning (S2FL). Unlike traditional SFL methods that train the same portion of models on each device, S2FL maintains different model portions on heterogeneous AIoT devices adaptively according to their current computing capability and network bandwidth based on our proposed adaptive model sliding split method, which can balance the training time between devices and mitigate the notorious straggler problem caused by devices with weak computation power and long network transmission time. Meanwhile, based on our proposed data balance-aware training mechanism, S2FL enables the training of the server model portion on the balanced local data of grouped devices, thus alleviating the degradation of inference accuracy caused by data heterogeneity. Comprehensive experimental results highlight the superiority of S2FL over conventional SFL methods, where S2FL can achieve up to 11.58% inference accuracy improvement and 3.82× training acceleration.

Keywords

AIoT system, data heterogeneity, deep learning, split federated learning, straggler problem

Discipline

Databases and Information Systems | Software Engineering

Research Areas

Intelligent Systems and Optimization

Publication

IEEE Transactions on Computers

Volume

75

Issue

1

First Page

320

Last Page

334

ISSN

0018-9340

Identifier

10.1109/TC.2025.3626198

Publisher

Institute of Electrical and Electronics Engineers

Additional URL

https://doi.org/10.1109/TC.2025.3626198

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