Linear fractional stable motion is an example of a self-similar stationary increments stochastic process exhibiting both long-range dependence and heavy-tails. In this paper we propose methods that are able to estimate simultaneously the self-similarity parameter and the tail parameter. These methods are based on the asymptotic behavior of the so-called “empirical structure function”, a statistic which resembles a sample moment of the process. We show and use the fact that the rate of growth of the empirical structure function is determined by the Hurst parameter and the tail index. We test the methods on simulated data and apply them to network traffic and solar flares dat
Cumulative broadband network traffic is often thought to be well modeled by fractional Brownian moti...
In this study we consider the fractional Ornstein-Uhlenbeck processes driven by α-stable Levy motion...
Self-similar stochastic processes are used for stochastic modeling whenever it is expected that long...
Linear fractional stable motion is an example of a self-similar stationary increments stochastic pro...
International audienceEmpirical determination of the scaling properties and exponents of time series...
In the paper consistent estimates of the Hurst parameter of fractional Brownian motion are obtained ...
9 pages, 11 figures.-- PACS nrs.: 05.40.−a, 89.75.Da.-- ArXiv pre-print available at: http://arxiv.o...
This work is concerned with the estimation of the self-similarity and the stability indices of a H-s...
Empirical studies of the traffic in computer networks suggest that network traffic exhibits self-sim...
We present a non exhaustive bibliographical and comparative study of the problem of simulation and i...
We test for departures from normal and independent and identically distributed (NIID) log returns, f...
AbstractWe develop the theory of fractionally differenced ARIMA time series with stable infinite var...
Fractional Brownian motion, a Gaussian non-Markovian self-similar process with stationary long-corre...
In this paper, we build an estimator of the Hurst exponent of a fractional Lévy motion based on its ...
Published in Econometric Theory, Volume 35, Issue 1, February 2019 , pp. 198-231. https://doi.org/10...
Cumulative broadband network traffic is often thought to be well modeled by fractional Brownian moti...
In this study we consider the fractional Ornstein-Uhlenbeck processes driven by α-stable Levy motion...
Self-similar stochastic processes are used for stochastic modeling whenever it is expected that long...
Linear fractional stable motion is an example of a self-similar stationary increments stochastic pro...
International audienceEmpirical determination of the scaling properties and exponents of time series...
In the paper consistent estimates of the Hurst parameter of fractional Brownian motion are obtained ...
9 pages, 11 figures.-- PACS nrs.: 05.40.−a, 89.75.Da.-- ArXiv pre-print available at: http://arxiv.o...
This work is concerned with the estimation of the self-similarity and the stability indices of a H-s...
Empirical studies of the traffic in computer networks suggest that network traffic exhibits self-sim...
We present a non exhaustive bibliographical and comparative study of the problem of simulation and i...
We test for departures from normal and independent and identically distributed (NIID) log returns, f...
AbstractWe develop the theory of fractionally differenced ARIMA time series with stable infinite var...
Fractional Brownian motion, a Gaussian non-Markovian self-similar process with stationary long-corre...
In this paper, we build an estimator of the Hurst exponent of a fractional Lévy motion based on its ...
Published in Econometric Theory, Volume 35, Issue 1, February 2019 , pp. 198-231. https://doi.org/10...
Cumulative broadband network traffic is often thought to be well modeled by fractional Brownian moti...
In this study we consider the fractional Ornstein-Uhlenbeck processes driven by α-stable Levy motion...
Self-similar stochastic processes are used for stochastic modeling whenever it is expected that long...