English

Data-driven Intra-Autonomous Systems Graph Generator

Networking and Internet Architecture 2024-02-28 v2 Machine Learning

Abstract

Accurate modeling of realistic network topologies is essential for evaluating novel Internet solutions. Current topology generators, notably scale-free-based models, fail to capture multiple properties of intra-AS topologies. While scale-free networks encode node-degree distribution, they overlook crucial graph properties like betweenness, clustering, and assortativity. The limitations of existing generators pose challenges for training and evaluating deep learning models in communication networks, emphasizing the need for advanced topology generators encompassing diverse Internet topology characteristics. This paper introduces a novel deep-learning-based generator of synthetic graphs representing intra-autonomous in the Internet, named Deep-Generative Graphs for the Internet (DGGI). It also presents a novel massive dataset of real intra-AS graphs extracted from the project ITDK, called IGraphs. It is shown that DGGI creates synthetic graphs that accurately reproduce the properties of centrality, clustering, assortativity, and node degree. The DGGI generator overperforms existing Internet topology generators. On average, DGGI improves the MMD metric 84.4%84.4\%, 95.1%95.1\%, 97.9%97.9\%, and 94.7%94.7\% for assortativity, betweenness, clustering, and node degree, respectively.

Keywords

Cite

@article{arxiv.2308.05254,
  title  = {Data-driven Intra-Autonomous Systems Graph Generator},
  author = {Caio Vinicius Dadauto and Nelson Luis Saldanha da Fonseca and Ricardo da Silva Torres},
  journal= {arXiv preprint arXiv:2308.05254},
  year   = {2024}
}

Comments

14 pages, 15 figures