Title :
Explicit Loss Inference in Multicast Tomography
Author :
Duffield, Nicholas G. ; Horowitz, Joseph ; Presti, Francesco Lo ; Towsley, Don
Author_Institution :
AT&T Labs.-Res.
Abstract :
Network performance tomography involves correlating end-to-end performance measures over different network paths to infer the performance characteristics on their intersection. Multicast based inference of link-loss rates is the first paradigm for the approach. Existing algorithms generally require numerical solution of polynomial equations for a maximum-likelihood estimator (MLE), or iteration when applying the expectation maximization (EM) algorithm. The purpose of this note is to demonstrate a new estimator for link-loss rates that is computationally simple, being an explicit function of the measurements, and that has the same asymptotic variance as the MLE, to first order in the link-loss rates
Keywords :
correlation theory; expectation-maximisation algorithm; iterative methods; maximum likelihood estimation; multicast communication; tomography; MLE; expectation maximization algorithm; iteration; maximum-likelihood estimator; multicast tomography; polynomial equation; Chaotic communication; Hardware; Inference algorithms; Iterative decoding; Maximum likelihood decoding; Multicast algorithms; Notice of Violation; Performance loss; Signal processing algorithms; Tomography; End-to-end measurement; link-loss rates; statistical inference;
Journal_Title :
Information Theory, IEEE Transactions on
DOI :
10.1109/TIT.2006.878228