基于无线计算的私有协同边缘推断

Selim F. Yilmaz;Burak Hasircioğlu;Li Qiao;Denız Gündüz
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引用次数: 0

摘要

我们考虑无线边缘的协作推理,其中每个客户端的模型在其本地数据集上独立训练。并行查询客户端,以便协同做出准确的决策。除了最大化推理精度外,我们还希望确保局部模型的隐私性。为此,我们利用多址信道的叠加特性来实现带宽高效的多用户推理方法。我们提出了不同的集成和多视图分类方法,利用空中计算(OAC)。我们证明了这些方案在使用更少的资源和提供隐私保证的同时,比它们的正交方案表现得更好,具有统计学上显著的差异。我们还提供了实验结果,验证了所提出的OAC方法对多用户推理的好处,并进行了消融研究,以证明我们的设计选择的有效性。我们在Github上公开共享框架的源代码,以促进进一步的研究和可重复性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Private Collaborative Edge Inference via Over-the-Air Computation
We consider collaborative inference at the wireless edge, where each client’s model is trained independently on its local dataset. Clients are queried in parallel to make an accurate decision collaboratively. In addition to maximizing the inference accuracy, we also want to ensure the privacy of local models. To this end, we leverage the superposition property of the multiple access channel to implement bandwidth-efficient multi-user inference methods. We propose different methods for ensemble and multi-view classification that exploit over-the-air computation (OAC). We show that these schemes perform better than their orthogonal counterparts with statistically significant differences while using fewer resources and providing privacy guarantees. We also provide experimental results verifying the benefits of the proposed OAC approach to multi-user inference, and perform an ablation study to demonstrate the effectiveness of our design choices. We share the source code of the framework publicly on Github to facilitate further research and reproducibility.
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