论文标题
淡入淡出:实现联邦对抗性培训
FADE: Enabling Federated Adversarial Training on Heterogeneous Resource-Constrained Edge Devices
论文作者
论文摘要
联邦对抗性训练可以有效地将对抗性鲁棒性补充为保护隐私的联合学习系统。但是,对内存能力和计算能力的高需求使大规模的联邦对抗训练在资源受限的边缘设备上不可行。以前在联邦对抗训练中进行的研究很少试图同时解决记忆和计算限制。在本文中,我们提出了一个名为Federated对抗性脱钩学习(vade)的新框架,以启用在异质资源受限的边缘设备上。淡出差异将整个模型分解为小模块,以适合每个设备的资源预算,并且每个设备在每个通信回合中只需要在单个模块上执行。我们还提出了一个辅助重量衰减,以减轻客观的不一致,并在淡出中实现更好的准确性平衡。 Fade提供了融合和对抗性鲁棒性的理论保证,我们的实验结果表明,淡出可以显着降低记忆和计算能力的消耗,同时保持准确性和鲁棒性。
Federated adversarial training can effectively complement adversarial robustness into the privacy-preserving federated learning systems. However, the high demand for memory capacity and computing power makes large-scale federated adversarial training infeasible on resource-constrained edge devices. Few previous studies in federated adversarial training have tried to tackle both memory and computational constraints simultaneously. In this paper, we propose a new framework named Federated Adversarial Decoupled Learning (FADE) to enable AT on heterogeneous resource-constrained edge devices. FADE differentially decouples the entire model into small modules to fit into the resource budget of each device, and each device only needs to perform AT on a single module in each communication round. We also propose an auxiliary weight decay to alleviate objective inconsistency and achieve better accuracy-robustness balance in FADE. FADE offers theoretical guarantees for convergence and adversarial robustness, and our experimental results show that FADE can significantly reduce the consumption of memory and computing power while maintaining accuracy and robustness.