减少密集虚拟网络,实现快速嵌入

Toru Mano, Takeru Inoue, Kimihiro Mizutani, Osamu Akashi
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引用次数: 9

摘要

虚拟网络嵌入已经被深入研究了十年。大多数传统方法的时间复杂度已经降低到链接数的立方。由于客户可能会要求一个基于流量矩阵直接连接每个节点对的密集虚拟网络(|E| = O(|V|2)),因此时间复杂度实际上是O(|E|3 = |V|6)。如果我们允许在嵌入之前将这个密集的网络简化成一个稀疏的网络,时间复杂度可以降低到O(|V|3);当|V| = 100时,时间间隔可以是一百万倍。然而,网络约简将多个虚拟链路合并为一个更广泛的链路,这使得嵌入成本(解决方案质量)大大降低。本文对虚拟网络缩减中嵌入时间与成本之间的权衡进行了分析和实证研究。我们定义了两种简单的约简算法,并用几个有趣的定理对它们进行了分析。分析表明,嵌入成本仅随嵌入时间的指数衰减而线性增加。彻底的数值评估证明了这种权衡的可取性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reducing dense virtual networks for fast embedding
Virtual network embedding has been intensively studied for a decade. The time complexity of most conventional methods has been reduced to the cube of the number of links. Since customers are likely to request a dense virtual network that connects every node pair directly (|E| = O(|V|2)) based on a traffic matrix, the time complexity is actually O(|E|3 = |V|6). If we were allowed to reduce this dense network into a sparse one before embedding, the time complexity could be decreased to O(|V|3); the time gap can be a million times for |V| = 100. The network reduction, however, combines several virtual links into a broader link, which makes the embedding cost (solution quality) much worse. This paper analytically and empirically investigates the trade-off between the embedding time and cost for the virtual network reduction. We define two simple reduction algorithms and analyze them with several interesting theorems. The analysis indicates that the embedding cost increases only linearly with exponential decay of embedding time. Thorough numerical evaluation justifies the desirability of the trade-off.
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