Abstract
Federated learning (FL) is a privacy-preserving distributed framework for collaborative model training in edge networks. However, challenges such as vulnerability to adversarial examples and non-independent and identically distributed (non-IID) data across devices hinder the deployment of adversarially robust and accurate models at the edge. While adversarial training (AT) is widely recognized as an effective defense strategy against adversarial attacks in centralized training, we shed light on the adverse effects of directly applying AT in FL, which can severely compromise accuracy under non-IID scenarios. To address this limitation, this paper proposes FatCC, which incorporates local logit Calibration and global feature Contrast into the vanilla federated adversarial training (Fat) process from both logit and feature perspectives. This approach effectively enhances the robust accuracy (RA) and clean accuracy (CA) of the federated system. First, we introduce logit calibration, where the logits are calibrated during local adversarial updates, thereby improving adversarial robustness. Second, FatCC incorporates feature contrast, which involves a global alignment term that aligns each local representation with corresponding unbiased global features, thus enhancing robustness and accuracy. Extensive experiments across multiple datasets demonstrate that FatCC achieves comparable or superior performance gains in both CA and RA compared to other baselines.
Original language | English |
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Pages (from-to) | 636-652 |
Number of pages | 17 |
Journal | IEEE Transactions on Network Science and Engineering |
Volume | 12 |
Issue number | 2 |
DOIs | |
Publication status | Published - 2025 |
Bibliographical note
Publisher Copyright:© 2013 IEEE.
Keywords
- Adversarial robustness
- feature contrast
- federated learning
- logit calibration
- multi-access edge computing