广域网拓扑综合的传统方法与基于gan的方法的比较

Katharina Dietz, Michael Seufert, T. Hossfeld
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引用次数: 1

摘要

广域网(WAN)研究得益于现实网络拓扑的可用性,例如,作为仿真、模拟器或试验台的输入。随着机器学习(ML),特别是深度学习(DL)方法的兴起,对可以用作训练数据的拓扑的需求比以往任何时候都要大。然而,公共数据集是有限的,因此,基于真实拓扑生成具有真实属性的合成图对于现有数据集的扩充是有希望的。几十年来,合成图的生成一直是各个应用领域研究人员关注的焦点,我们手头有各种传统的模型依赖和模型独立的图生成器,以及基于dl的方法,如生成对抗网络(GANs)。在这项工作中,我们针对广域网用例调整和评估了这些现有的生成器,即用于生成节点之间具有实际地理距离的合成广域网。此外,我们还研究了一种层次图合成方法,该方法将合成分为局部聚类。最后,我们比较了合成和真实广域网拓扑的相似性,并讨论了生成器在广域网用例中对数据增强的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparing Traditional and GAN-based Approaches for the Synthesis of Wide Area Network Topologies
Wide Area Network (WAN) research benefits from the availability of realistic network topologies, e.g., as input to simulations, emulators, or testbeds. With the rise of Machine Learning (ML) and particularly Deep Learning (DL) methods, this demand for topologies, which can be used as training data, is greater than ever. However, public datasets are limited, thus, it is promising to generate synthetic graphs with realistic properties based on real topologies for the augmentation of existing data sets. As the generation of synthetic graphs has been in the focus of researchers of various applications fields since several decades, we have a variety of traditional model-dependent and model-independent graph generators at hand, as well as DL-based approaches, such as Generative Adversarial Networks (GANs). In this work, we adapt and evaluate these existing generators for the WAN use case, i.e., for generating synthetic WANs with realistic geographical distances between nodes. Moreover, we investigate a hierarchical graph synthesis approach, which divides the synthesis into local clusters. Finally, we compare the similarity of synthetic and real WAN topologies and discuss the suitability of the generators for data augmentation in the WAN use case.
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