Despite the recency of their conception, Generative Adversarial Networks (GANs) constitute an extensively researched machine learning sub-field for the creation of synthetic data through deep generative modeling. GANs have consequently been applied in a number of domains, most notably computer vision, in which they are typically used to generate or transform synthetic images. Given their relative ease of use, it is therefore natural that researchers in the field of networking (which has seen extensive application of deep learning methods) should take an interest in GAN-based approaches. The need for a comprehensive survey of such activity is therefore urgent. In this paper, we demonstrate how this branch of machine learning can benefit multiple aspects of computer and communication networks, including mobile networks, network analysis, internet of things, physical layer, and cybersecurity. In doing so, we shall provide a novel evaluation framework for comparing the performance of different models in non-image applications, applying this to a number of reference network datasets.
翻译:基因反转网络(GANs)是经过广泛研究的机器学习的子领域,通过深层基因模型建立合成数据,因此在很多领域应用了GANs,其中最突出的是计算机视觉,通常使用这些网络来生成或变塑合成图像,因此,鉴于这些网络比较容易使用,因此,联网领域的研究人员(已经广泛应用深层学习方法)自然应该关注以GAN为基础的方法,因此迫切需要对此类活动进行全面调查。在本文件中,我们展示了机器学习的这一分支如何使计算机和通信网络的多个方面受益,包括移动网络、网络分析、事物的互联网、物理层和网络安全。在这样做时,我们将提供一个新的评价框架,用以比较不同模型在非图像应用方面的性能,并将这一框架应用于一些参考网络数据集。