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Abstract:
Packet loss greatly influences the overall performance of network applications. A novel statistical model for network packet transmission probability is proposed to study statistical inference of network link-level performance in network tomography. Under the assumptions that link-level packet transmission probability is spatially and temporally independent, the statistical model adopts cumulant generating function (CGF) to analyze path-level packet transmission probability from end-to-end unicast measurements and link-level packet transmission probability is determined by the method of moments. Due to the sum of network packet transmission probability and loss probability being one, link-level packet loss information can be indirectly obtained. Simulation experiments demonstrate that the proposed model can accurately infer network link-level packet transmission probability information, obtain the order relation of packet transmission probability among all links, and locate bottleneck link according to Chernoff bound. Copyright ©2009 Binary Information Press.
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Journal of Information and Computational Science
ISSN: 1548-7741
Year: 2009
Issue: 2
Volume: 6
Page: 789-796
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ESI Highly Cited Papers on the List: 0 Unfold All
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30 Days PV: 3
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