The Hurst parameter H characterizes the degree of long-range dependence (and asymptotic self-similarity) in stationary time series. Many methods have been developed for the estimation of H from data. In practice, however, the classical estimation techniques can be severely a®ected by non-stationary artifacts in the time series. In fact, the assumption that the data can be modeled by a stationary process with a single Hurst exponent H may be unrealistic. We focus on practical issues associated with the detection of long-range dependence in Internet traffic data and develop two tools designed to address some of these issues. The first is an animation tool which is used to visualize the local dependence structure. The second is a statistical t...
The optimal computer network performance models require accurate traffic models, which can capture t...
Internet traffic exhibits self-similarity and long-range dependence (LRD) on various time scales. I...
The existence of self-similar or fractal nature of network traffic has been proven by recent studies...
The Hurst parameter H characterizes the degree of long-range dependence (and asymptotic self-similar...
Abstract- The intensity of long-range dependence (LRD) of the communications network traffic can be ...
Long-range-dependent time series are endemic in the statistical analysis of Internet traffic. The Hu...
Internet traffic exhibits self-similarity and long-range dependence (LRD). Accurate estimation of st...
We present a new method to estimate the Hurst parameter of certain classes of random processes. Our...
Recent traffic measurement studies from a wide range of working packet networks have convincingly sh...
We consider the problem of estimating the Hurst parameter for long-range dependent processes using w...
Abstract—A wavelet-based tool for the analysis of long-range dependence and a related semi-parametri...
In order to estimate the Hurst parameter of Internet traffic data, it has been recently proposed a l...
We present a new method to estimate the Hurst pa-rameter of the increment process in network traffic...
This paper provides a deep analysis of long-range dependence in a continually evolving Internet traf...
We present a new method to estimate the Hurst parameter. The method exploits the form of the autocor...
The optimal computer network performance models require accurate traffic models, which can capture t...
Internet traffic exhibits self-similarity and long-range dependence (LRD) on various time scales. I...
The existence of self-similar or fractal nature of network traffic has been proven by recent studies...
The Hurst parameter H characterizes the degree of long-range dependence (and asymptotic self-similar...
Abstract- The intensity of long-range dependence (LRD) of the communications network traffic can be ...
Long-range-dependent time series are endemic in the statistical analysis of Internet traffic. The Hu...
Internet traffic exhibits self-similarity and long-range dependence (LRD). Accurate estimation of st...
We present a new method to estimate the Hurst parameter of certain classes of random processes. Our...
Recent traffic measurement studies from a wide range of working packet networks have convincingly sh...
We consider the problem of estimating the Hurst parameter for long-range dependent processes using w...
Abstract—A wavelet-based tool for the analysis of long-range dependence and a related semi-parametri...
In order to estimate the Hurst parameter of Internet traffic data, it has been recently proposed a l...
We present a new method to estimate the Hurst pa-rameter of the increment process in network traffic...
This paper provides a deep analysis of long-range dependence in a continually evolving Internet traf...
We present a new method to estimate the Hurst parameter. The method exploits the form of the autocor...
The optimal computer network performance models require accurate traffic models, which can capture t...
Internet traffic exhibits self-similarity and long-range dependence (LRD) on various time scales. I...
The existence of self-similar or fractal nature of network traffic has been proven by recent studies...