In this paper, we propose a framework for predicting frame errors in the collaborative spectrally congested wireless environments of the DARPA Spectrum Collaboration Challenge (SC2) via a recently collected dataset. We employ distributed deep edge learning that is shared among edge nodes and a central cloud. Using this close-to-practice dataset, we find that widely used federated learning approaches, specially those that are privacy preserving, are worse than local training for a wide range of settings. We hence utilize the synthetic minority oversampling technique to maintain privacy via avoiding the transfer of local data to the cloud, and utilize knowledge distillation with an aim to benefit from high cloud computing and storage capabilities. The proposed framework achieves overall better performance than both local and federated training approaches, while being robust against catastrophic failures as well as challenging channel conditions that result in high frame error rates.
翻译:在本文中,我们提出了一个框架,用于通过最近收集的数据集预测DARPA光谱协作挑战(SC2)合作光谱凝聚无线环境框架错误。我们采用了分布式深边学习,在边缘节点和中央云中共享。我们发现,使用这种近距离实践数据集,广泛使用的联结学习方法,特别是隐私保护方法,比当地对各种环境的培训差。因此,我们利用合成少数群体过度采样技术,通过避免将本地数据传输到云层,并利用知识蒸馏,以获益于高云计算和存储能力,从而维护隐私。拟议框架的总体性能比本地和联结式培训方法都好,同时应对灾难性的失败以及导致高框架误差率的挑战性通道条件。