Internet traffic exhibits self-similarity and long-range dependence (LRD). Accurate estimation of statistical parameters characterizing self-similarity and LRD is an important issue, aiming at best modelling traffic e.g. to the purpose of network simulation. Major attention has been devoted to designing algorithms for estimating the Hurst parameter H of LRD traffic series or, more generally, the exponent γ ≥ 0 of data with 1/fγ power-law spectrum. In this paper, by evaluation on thousands of pseudo-random LRD data series, we compare the H and γ estima-tion accuracy attained by some of the most widely used methods mentioned above: variance-time plot, R/S statistic, lag 1 autocor-relation, wavelet logscale diagram, Modified Allan and Ha-damar...
Correct and efficient estimation of the Hurst parameter H of long-range dependent (LRD) traffic is i...
The Hurst parameter H characterizes the degree of long-range dependence (and asymptotic self-similar...
Conference PaperOver the last few years, the network community has started to rely heavily on the us...
Internet traffic exhibits self-similarity and long-range dependence (LRD). Accurate estimation of st...
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) on various time scales. I...
Abstract- The intensity of long-range dependence (LRD) of the communications network traffic can be ...
The intensity of Long-Range Dependence (LRD) for communications network traffic can be measured usin...
Many researchers have discussed the effects of heavy-tailedness in network traffic patterns and show...
Self-similarity and scaling phenomena have dominated Internet traffic analysis for the past decade.W...
We present a new method to estimate the Hurst parameter of certain classes of random processes. Our...
Study of long-range dependence (LRD) properties in real traffic has received an increasing attention...
Recent traffic measurement studies from a wide range of working packet networks have convincingly sh...
The intensity of Long-Range Dependence (LRD) for communications network traffic can be measured usin...
Abstract—A wavelet-based tool for the analysis of long-range dependence and a related semi-parametri...
Correct and efficient estimation of the Hurst parameter H of long-range dependent (LRD) traffic is i...
The Hurst parameter H characterizes the degree of long-range dependence (and asymptotic self-similar...
Conference PaperOver the last few years, the network community has started to rely heavily on the us...
Internet traffic exhibits self-similarity and long-range dependence (LRD). Accurate estimation of st...
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) on various time scales. I...
Abstract- The intensity of long-range dependence (LRD) of the communications network traffic can be ...
The intensity of Long-Range Dependence (LRD) for communications network traffic can be measured usin...
Many researchers have discussed the effects of heavy-tailedness in network traffic patterns and show...
Self-similarity and scaling phenomena have dominated Internet traffic analysis for the past decade.W...
We present a new method to estimate the Hurst parameter of certain classes of random processes. Our...
Study of long-range dependence (LRD) properties in real traffic has received an increasing attention...
Recent traffic measurement studies from a wide range of working packet networks have convincingly sh...
The intensity of Long-Range Dependence (LRD) for communications network traffic can be measured usin...
Abstract—A wavelet-based tool for the analysis of long-range dependence and a related semi-parametri...
Correct and efficient estimation of the Hurst parameter H of long-range dependent (LRD) traffic is i...
The Hurst parameter H characterizes the degree of long-range dependence (and asymptotic self-similar...
Conference PaperOver the last few years, the network community has started to rely heavily on the us...