Analysis on binary loss tree classification with hop count for multicast topology discovery

Hui Tian, Hong Shen
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引用次数: 10

Abstract

The use of multicast inference on end-to-end measurement has recently been proposed as a means of obtaining the underlying multicast topology. We analyze the algorithm of binary loss tree classification with hop count (HBLT). We compare it with the binary loss tree classification algorithm (BLT) and show that the probability of misclassification of HBLT decreases more quickly than that of BLT as the number of probing packets increases. The inference accuracy of HBLT is always 1 (the inferred tree is identical to the physical tree) in the case of correct classification, whereas that of BLT is dependent on the shape of the physical tree and inversely proportional to the number of internal nodes with a single child. Our analytical result shows that HBLT is superior to BLT, not only on time complexity, but also on misclassification probability and inference accuracy.
基于跳数的组播拓扑发现二叉损失树分类分析
在端到端测量中使用组播推理最近被提出作为获得底层组播拓扑的一种手段。分析了基于跳数的二叉损失树分类算法。我们将其与二叉损失树分类算法(BLT)进行了比较,结果表明,随着探测数据包数量的增加,HBLT的误分类概率比BLT的低得多。在正确分类的情况下,HBLT的推理精度始终为1(推断树与物理树相同),而BLT的推理精度依赖于物理树的形状,并与具有单个子节点的内部节点数量成反比。分析结果表明,HBLT不仅在时间复杂度上优于BLT,而且在误分类概率和推理精度上也优于BLT。
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