2006
DOI: 10.1049/ip-com:20050335
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Weibull mixture model to characterise end-to-end Internet delay at coarse time-scales

Abstract: Abstract:Traces collected at monitored points around the Internet contain representative performance information about the paths their probes traverse. Basic measurement attributes, such as delay and loss, are easy to collect and provide a means to both build and validate empirical performance models. However, the task of analysis and extracting performance conclusions from measurements remains challenging.Ideally, performance modelling aims to find a set of self-contained parameters to describe, summarise, pr… Show more

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Cited by 44 publications
(31 citation statements)
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“…As discussed in Section 2, this assumption is supported by the results of many recent works (e.g. [6,10,11]). …”
Section: Assumptionssupporting
confidence: 72%
See 1 more Smart Citation
“…As discussed in Section 2, this assumption is supported by the results of many recent works (e.g. [6,10,11]). …”
Section: Assumptionssupporting
confidence: 72%
“…Interestingly, in the last few years several works have addressed the problem of probabilistically characterizing the delays in IP-based networks based on real measured data, allowing to conclude that observed empirical delay distributions may be characterized by well known distributions, such as the Weibull distribution [10,6], the shifted gamma distribution [11,4], the exponential distribution [8] or the truncated normal distribution [5]. Based on this, we realized that it would be interesting and appropriate to consider less conservative approaches, by assuming that specific distributions may be identified and thus allowing to achieve better time bounds for the same required coverage.…”
Section: Motivation and Related Workmentioning
confidence: 99%
“…3a, applying the EM-Bayesian algorithm [14] in which the number of components is set to M = 3, for the same initial condition the following two distinct sets of parameters are obtained [shape, scale, mixture-ratio] …”
Section: Comparison With the Em-bayesian Algorithmmentioning
confidence: 99%
“…The queuing delay shall be assumed to be Weibull distributed, since this has been shown to accurately capture the queueing delay behaviour of a router with self-similar input traffic [5][6][7]. In this light, the delay probability density function is given by [5]:…”
Section: The Utility Function U (X)mentioning
confidence: 99%