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FedGraft: Memory-Aware Heterogeneous Federated Learning via Model Grafting

  • Ruixuan Liu
  • , Ming Hu*
  • , Zeke Xia
  • , Xiaofei Xie
  • , Jun Xia
  • , Pengyu Zhang
  • , Yihao Huang
  • , Mingsong Chen*
  • *此作品的通讯作者
  • East China Normal University
  • Singapore Management University
  • University of Notre Dame
  • National University of Singapore

科研成果: 期刊稿件文章同行评审

摘要

Although Federated Learning (FL) is good at collaborative learning among devices without compromising their data privacy, it suffers from the problem of large-scale deployment in Mobile Edge Computing (MEC) applications. This is mainly because the varying memory sizes of edge devices inevitably result in limited sizes of their hosting models. According to the Cannikin Law, when dealing with heterogeneous devices with different memory sizes, the learning capability of existing homogeneous FL schemes is greatly restricted by the weakest device. Worse still, although existing heterogeneous FL methods enable a MEC application to involve numerous devices equipped with heterogeneous models, their knowledge aggregation processes require either extra training data or architecture similarity of models. To address the above issues, this paper presents a novel FL method named FedGraft that enables effective knowledge sharing among heterogeneous device models of different sizes without imposing unrealistic assumptions. In FedGraft, all the device models are grafted to a common rootstock based on our proposed model partitioning and grafting mechanism, facilitating knowledge sharing among heterogeneous models on top of a tree-like global model. Meanwhile, using our proposed device selection strategy, the reassembled submodels extracted from the global model can be reasonably dispatched to corresponding devices with sufficient memory, thus enhancing the overall FL performance. Comprehensive experimental results show that, compared with state-of-the-art heterogeneous FL methods, FedGraft can improve inference accuracy by up to 17% in various memory-constrained scenarios.

源语言英语
页(从-至)13506-13519
页数14
期刊IEEE Transactions on Mobile Computing
24
12
DOI
出版状态已出版 - 2025

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