系统拓扑分析和生成使用度相关

Priya Mahadevan, D. Krioukov, K. Fall, Amin Vahdat
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引用次数: 350

摘要

研究人员已经提出了各种度量重要图形属性的指标,例如,在社会、生物和计算机网络中。特定图形度量的值可以捕获图形对故障的弹性或路由效率。适当度量值的知识可能会影响未来拓扑的工程设计、面对故障时的修复策略以及对现有网络基本属性的理解。不幸的是,通常没有算法来生成匹配一个或多个建议指标的图,并且对单个指标之间的关系或它们对不同设置的适用性的理解很少。我们提出了一种新的,系统的方法来分析网络拓扑。我们首先引入概率分布的dk系列,指定给定图G的d大小的子图内的所有度相关性。增加d的值以更复杂的概率分布表示为代价,逐渐捕获G的更多属性。使用这个系列,我们可以定量地测量两个图之间的距离,并构建随机图,准确地再现文献中提出的几乎所有指标。dk系列的性质意味着它还将捕获可能提出的任何未来指标。使用我们的方法,我们构建了d= 0,1,2,3的图,并证明这些图以越来越高的精度再现了被测量和建模的互联网拓扑的重要属性。我们发现d=2的情况对于大多数实际目的来说是足够的,而d=3本质上精确地重建了Internet as和路由器级拓扑。我们希望一种系统的方法来分析和综合拓扑,为网络拓扑和协议研究人员提供一套可用的工具。
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Systematic topology analysis and generation using degree correlations
Researchers have proposed a variety of metrics to measure important graph properties, for instance, in social, biological, and computer networks. Values for a particular graph metric may capture a graph's resilience to failure or its routing efficiency. Knowledge of appropriate metric values may influence the engineering of future topologies, repair strategies in the face of failure, and understanding of fundamental properties of existing networks. Unfortunately, there are typically no algorithms to generate graphs matching one or more proposed metrics and there is little understanding of the relationships among individual metrics or their applicability to different settings. We present a new, systematic approach for analyzing network topologies. We first introduce the dK-series of probability distributions specifying all degree correlations within d-sized subgraphs of a given graph G. Increasing values of d capture progressively more properties of G at the cost of more complex representation of the probability distribution. Using this series, we can quantitatively measure the distance between two graphs and construct random graphs that accurately reproduce virtually all metrics proposed in the literature. The nature of the dK-series implies that it will also capture any future metrics that may be proposed. Using our approach, we construct graphs for d=0, 1, 2, 3 and demonstrate that these graphs reproduce, with increasing accuracy, important properties of measured and modeled Internet topologies. We find that the d=2 case is sufficient for most practical purposes, while d=3 essentially reconstructs the Internet AS-and router-level topologies exactly. We hope that a systematic method to analyze and synthesize topologies offers a significant improvement to the set of tools available to network topology and protocol researchers.
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Session details: Wireless Proceedings of the 2006 conference on Applications, technologies, architectures, and protocols for computer communications Session details: Applications Session details: Measurement Session details: Routing 1
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