Recurrent Early Exits for Federated Learning with Heterogeneous Clients

Abstract

Federated learning (FL) has enabled distributed learning of a model across multiple clients in a privacy-preserving manner. One of the main challenges of FL is to accommodate clients with varying hardware capacities; clients have differing compute and memory requirements. To tackle this challenge, recent state-of-the-art approaches leverage the use of early exits. Nonetheless, these approaches fall short of mitigating the challenges of joint learning multiple exit classifiers, often relying on hand-picked heuristic solutions for knowledge distillation among classifiers and/or utilizing additional layers for weaker classifiers. In this work, instead of utilizing multiple classifiers, we propose a recurrent early exit approach named ReeFL that fuses features from different sub-models into a single shared classifier. Specifically, we use a transformer-based early-exit module shared among sub-models to i) better exploit multi-layer feature representations for task-specific prediction and ii) modulate the feature representation of the backbone model for subsequent predictions. We additionally present a per-client self-distillation approach where the best sub-model is automatically selected as the teacher of the other sub-models at each client. Our experiments on standard image and speech classification benchmarks across various emerging federated fine-tuning baselines demonstrate ReeFL effectiveness over previous works.

Cite

Text

Lee et al. "Recurrent Early Exits for Federated Learning with Heterogeneous Clients." International Conference on Machine Learning, 2024.

Markdown

[Lee et al. "Recurrent Early Exits for Federated Learning with Heterogeneous Clients." International Conference on Machine Learning, 2024.](https://mlanthology.org/icml/2024/lee2024icml-recurrent/)

BibTeX

@inproceedings{lee2024icml-recurrent,
  title     = {{Recurrent Early Exits for Federated Learning with Heterogeneous Clients}},
  author    = {Lee, Royson and Fernandez-Marques, Javier and Hu, Shell Xu and Li, Da and Laskaridis, Stefanos and Dudziak, Łukasz and Hospedales, Timothy and Huszár, Ferenc and Lane, Nicholas Donald},
  booktitle = {International Conference on Machine Learning},
  year      = {2024},
  pages     = {26568-26588},
  volume    = {235},
  url       = {https://mlanthology.org/icml/2024/lee2024icml-recurrent/}
}