用于as级Internet拓扑建模的演进框架

Ruomei Gao, E. Zegura
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引用次数: 3

摘要

网络拓扑模型是协议分析的重要组成部分。本文系统地研究了自治系统级互联网拓扑结构的各种演化模型。基于进化的模型以增量方式生成拓扑,试图反映实际拓扑的增长模式。虽然进化模型很有吸引力,但它们通常不像非进化模型那样与实际数据的测量结果一致。我们试图理解是什么因素促成了一个“好的”进化模型。我们的系统研究由一个相对通用的进化模型框架组成,我们用不同的组件选择填充它。这使我们能够将各种模型实例与实际数据集的测量结果进行比较。我们研究了初始拓扑、添加边时使用的优先连接类型以及在现有节点之间添加的“生长”边的作用等问题。我们发现框架的适当实例化可以提供与实际数据非常一致的拓扑。我们还使用我们的工作来强调拓扑建模中几个关键的开放问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An evolutionary framework for AS-level Internet topology modeling
Models for network topology form a crucial component in the analysis of protocols. This paper systematically investigates a variety of evolutionary models for autonomous system (AS) level Internet topology. Evolution-based models produce a topology incrementally, attempting to reflect the growth patterns of the actual topology. While evolutionary models are appealing, they have generally not agreed as closely with measurements of real data as non-evolutionary models. We attempt to understand what factor contributes to a "good" evolutionary model. Our systematic study consists of a relatively generic evolutionary model framework, which we populate with different choices for the components. This allows us to compare a variety of instances of models to measurements from real data sets. We study issues such as the initial topology, the type of preferential connectivity used when adding edges, and the role of "growth" edges added between existing nodes. We find that appropriate instantiation of the framework can provide topologies that agree closely with real data. We also use our work to highlight several crucial open problems in topology modeling.
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