Title :
Topology Inference With Network Tomography Based on t-Test
Author :
Runsheng Zhang ; Yanbin Li ; Xiaotian Li
Author_Institution :
54th Res. Inst., China Electron. Technol. Group Corp., Shijiazhuang, China
Abstract :
Network tomography is a promising inference technique for network topology from end-to-end measurements. In this letter, we propose a novel binary tree pruning algorithm based on t-test to infer the network topology. A binary tree topology is first inferred using the existing Agglomerative Likelihood Tree (ALT) method, and then two samples t-test is applied to prune the binary tree, thus a general tree corresponding to the real topology is obtained. A lower bound on the correctly identified probability of the proposed method is derived. Simulation results show that the pruning method based on t-test outperforms the method which prunes the binary tree using a fixed threshold.
Keywords :
probability; statistical testing; telecommunication network topology; tomography; trees (mathematics); ALT method; agglomerative likelihood tree method; binary tree pruning algorithm; binary tree topology; end-to-end measurement; network tomography; network topology inference technique; probability; t-test; Binary trees; Inference algorithms; Network topology; Probes; Routing; Tomography; Topology; Network tomography; topology inference; two samples t-test;
Journal_Title :
Communications Letters, IEEE
DOI :
10.1109/LCOMM.2014.2317743