A method is proposed to estimate traffic matrices in the presence of long-range dependent traffic, while the methods proposed so far for that task have been designed for short-range dependent traffic. The method employs the traffic measurements on links and provides the maximum likelihood estimate of both the traffic matrix and the Hurst parameter. It is "blind", i.e. it does not exploit any model neither for the traffic intensity values (e.g. the gravity model) nor for the mean-variance relationship (e.g. the power-law model). In the application to a sample network the error on traffic intensities decays rapidly with the traffic intensity down to below 30%. The estimation error of the Hurst parameter can be reduced to a few percentage points with a proper choice of the measurement interval.

Blind Maximum-Likelihood Estimation of Traffic Matrices in Long Range Dependent Traffic / L., De Giovanni; Conti, Pier Luigi; M., Naldi. - STAMPA. - 5464:(2009), pp. 141-154. (Intervento presentato al convegno 1st International Workshop on Traffic Management and Traffic Engineering for the Future Internet (FITraMEN 08) tenutosi a Oprto, PORTUGAL nel DEC 11-12, 2008) [10.1007/978-3-642-04576-9-10].

Blind Maximum-Likelihood Estimation of Traffic Matrices in Long Range Dependent Traffic

CONTI, Pier Luigi;
2009

Abstract

A method is proposed to estimate traffic matrices in the presence of long-range dependent traffic, while the methods proposed so far for that task have been designed for short-range dependent traffic. The method employs the traffic measurements on links and provides the maximum likelihood estimate of both the traffic matrix and the Hurst parameter. It is "blind", i.e. it does not exploit any model neither for the traffic intensity values (e.g. the gravity model) nor for the mean-variance relationship (e.g. the power-law model). In the application to a sample network the error on traffic intensities decays rapidly with the traffic intensity down to below 30%. The estimation error of the Hurst parameter can be reduced to a few percentage points with a proper choice of the measurement interval.
2009
1st International Workshop on Traffic Management and Traffic Engineering for the Future Internet (FITraMEN 08)
network tomography; long range dependence; teletraffic
04 Pubblicazione in atti di convegno::04b Atto di convegno in volume
Blind Maximum-Likelihood Estimation of Traffic Matrices in Long Range Dependent Traffic / L., De Giovanni; Conti, Pier Luigi; M., Naldi. - STAMPA. - 5464:(2009), pp. 141-154. (Intervento presentato al convegno 1st International Workshop on Traffic Management and Traffic Engineering for the Future Internet (FITraMEN 08) tenutosi a Oprto, PORTUGAL nel DEC 11-12, 2008) [10.1007/978-3-642-04576-9-10].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/202459
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