Title :
On Delay Tomography: Fast Algorithms and Spatially Dependent Models
Author :
Deng, Ke ; Li, Yang ; Zhu, Weiping ; Geng, Zhi ; Liu, Jun S.
Author_Institution :
Dept. of Stat., Harvard Univ., Cambridge, MA, USA
Abstract :
As an active branch of network tomography, delay tomography has received considerable attentions in recent years. However, most methods in the literature assume that the delays of different links are independent of each other, and pursuit sub-optimal estimate instead of the maximum likelihood estimate (MLE) due to computational challenges. In this paper, we propose a novel method to implement the EM algorithm widely used in delay tomography analysis for multicast networks. The proposed method makes use of a “delay pattern database” to avoid all redundant computations in the E-step, and is much faster than the traditional implementation. With the help of this new implementation, finding MLE for large networks, which was considered impractical previously, becomes an easy task. Taking advantage of this computational breakthrough, we further consider models for potential spatial dependence of links, and propose a novel adaptive spatially dependent model (ASDM) for delay tomography. In ASDM, Markov dependence among nearby links is allowed, and spatially dependent links (SDLs) can be automatically recognized via model selection. The superiority of the new methods is confirmed by simulation studies.
Keywords :
Markov processes; delays; expectation-maximisation algorithm; multicast communication; telecommunication networks; tomography; ASDM; EM algorithm; MLE; Markov dependence; SDL; adaptive spatially dependent model; delay pattern database; delay tomography analysis; maximum likelihood estimate; model selection; multicast networks; network tomography; pursuit suboptimal estimate; spatially dependent links; Adaptation models; Computational modeling; Delay; Maximum likelihood estimation; Probes; Receivers; Tomography; Delay tomography; EM algorithm; network tomography; spatial dependence; tree structure;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2012.2210712