隐私保护联邦学习的集成注意蒸馏

Xuan Gong, Abhimanyu Sharma, S. Karanam, Ziyan Wu, Terrence Chen, D. Doermann, Arun Innanje
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引用次数: 60

摘要

我们考虑联邦学习(FL)的问题,其中许多分散的计算节点相互协作以训练集中的机器学习模型,而不显式地共享其本地数据样本。这种分散的训练自然会导致局部模型之间的数据分布不平衡或不同的问题,以及将它们融合到中心模型中的挑战。现有的FL方法要么通过共享局部参数,要么通过在线蒸馏融合模型来解决这些问题。然而,这样的设计导致了多轮节点间通信,导致大量的带宽消耗,同时也增加了数据泄露的风险和随之而来的隐私问题。为了解决这些问题,我们提出了一个新的基于蒸馏的FL框架,它可以在设计上保护隐私,同时与当前方法相比,它消耗的网络通信资源也大大减少。我们的框架只使用公开可用和批准的数据集进行节点间通信,从而为用户提供明确的隐私控制。为了在不同的局部模型中提取知识,我们的框架采用了一种新颖的集成蒸馏算法,该算法既使用最终预测,也使用模型注意力。该算法在明确考虑各局部节点之间的多样性的同时,也寻求各局部节点之间的一致性。这就产生了一种综合的技术,可以从各种分散的节点中提取知识。我们通过广泛的实验展示了FL框架的各个方面和相关好处,这些实验在自然和医学图像的分类和分割任务上产生了最先进的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Ensemble Attention Distillation for Privacy-Preserving Federated Learning
We consider the problem of Federated Learning (FL) where numerous decentralized computational nodes collaborate with each other to train a centralized machine learning model without explicitly sharing their local data samples. Such decentralized training naturally leads to issues of imbalanced or differing data distributions among the local models and challenges in fusing them into a central model. Existing FL methods deal with these issues by either sharing local parameters or fusing models via online distillation. However, such a design leads to multiple rounds of inter-node communication resulting in substantial band-width consumption, while also increasing the risk of data leakage and consequent privacy issues. To address these problems, we propose a new distillation-based FL frame-work that can preserve privacy by design, while also consuming substantially less network communication resources when compared to the current methods. Our framework engages in inter-node communication using only publicly available and approved datasets, thereby giving explicit privacy control to the user. To distill knowledge among the various local models, our framework involves a novel ensemble distillation algorithm that uses both final prediction as well as model attention. This algorithm explicitly considers the diversity among various local nodes while also seeking consensus among them. This results in a comprehensive technique to distill knowledge from various decentralized nodes. We demonstrate the various aspects and the associated benefits of our FL framework through extensive experiments that produce state-of-the-art results on both classification and segmentation tasks on natural and medical images.
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