DFDG: Data-Free Dual-Generator Adversarial Distillation for One-Shot Federated Learning

Kangyang Luo, Shuai Wang, Yexuan Fu, Renrong Shao, Xiang Li, Yunshi Lan, Ming Gao, Jinlong Shu
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Abstract

Federated Learning (FL) is a distributed machine learning scheme in which clients jointly participate in the collaborative training of a global model by sharing model information rather than their private datasets. In light of concerns associated with communication and privacy, one-shot FL with a single communication round has emerged as a de facto promising solution. However, existing one-shot FL methods either require public datasets, focus on model homogeneous settings, or distill limited knowledge from local models, making it difficult or even impractical to train a robust global model. To address these limitations, we propose a new data-free dual-generator adversarial distillation method (namely DFDG) for one-shot FL, which can explore a broader local models' training space via training dual generators. DFDG is executed in an adversarial manner and comprises two parts: dual-generator training and dual-model distillation. In dual-generator training, we delve into each generator concerning fidelity, transferability and diversity to ensure its utility, and additionally tailor the cross-divergence loss to lessen the overlap of dual generators' output spaces. In dual-model distillation, the trained dual generators work together to provide the training data for updates of the global model. At last, our extensive experiments on various image classification tasks show that DFDG achieves significant performance gains in accuracy compared to SOTA baselines.
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DFDG:用于单次联合学习的无数据双生成器逆向精馏法
联合学习(FL)是一种分布式机器学习方案,其中客户通过共享模型信息而非其私有数据集,共同参与全局模型的协作训练。考虑到与通信和隐私相关的问题,只有一轮通信的单次 FL 已成为事实上有前途的解决方案。然而,现有的单次 FL 方法要么需要公共数据集,要么专注于模型同构设置,要么从局部模型中提炼出有限的知识,这使得训练一个稳健的全局模型变得困难甚至不切实际。为了解决这些局限性,我们提出了一种新的无数据双生成器对抗性提炼方法(即 DFDG),它可以通过训练双生成器来探索更广阔的局部模型训练空间。DFDG 以对抗方式执行,包括两个部分:双发电机训练和双模型蒸馏。在双生成器训练中,我们对每个生成器的保真度、可转移性和多样性进行深入研究,以确保其实用性,此外,我们还对交叉发散损失进行了调整,以减少双生成器输出空间的重叠。在双模型蒸馏过程中,经过训练的双生成器共同为全局模型的更新提供训练数据。最后,我们在各种图像分类任务中进行的大量实验表明,与 SOTA 基线相比,DFDG 在准确率方面取得了显著的性能提升。
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