It is widely perceived that leveraging the success of modern machine learning techniques to mobile devices and wireless networks has the potential of enabling important new services. This, however, poses significant challenges, essentially due to that both data and processing power are highly distributed in a wireless network. In this paper, we develop a learning algorithm and an architecture that make use of multiple data streams and processing units, not only during the training phase but also during the inference phase. In particular, the analysis reveals how inference propagates and fuses across a network. We study the design criterion of our proposed method and its bandwidth requirements. Also, we discuss implementation aspects using neural networks in typical wireless radio access; and provide experiments that illustrate benefits over state-of-the-art techniques.
翻译:广泛认为,利用现代机器学习技术将移动设备和无线网络融合起来,有潜力进行重要的新型服务。然而,这会面临重大挑战,主要是由于数据和处理能力在无线网络中高度分布。在本文中,我们开发了一种学习算法和架构,利用了多个数据流和处理单元,不仅在训练阶段,而且在推断阶段也一样。具体而言,分析了推断在网络中如何传播和融合。我们研究了所提出的方法的设计准则及其带宽需求,还讨论了在典型无线电信道中使用神经网络的实现方面,并提供了实验,证明了相对于现有技术的优势。