In this article, we concentrate on various techniques to quantify long-range dependence: wavelets, Geweke and Porter-Hudak (GPH)'s semi-parametric method, the periodogram method, rescaled range analysis (R/S) and a modification of it aimed at accommodating for short memory, quasi maximum likelihood (QML), de-trended fluctuation analysis (DFA), Modified DFA (MDFA), and Centered Moving Average (CMA) analysis.Based on Monte Carlo experiments, we conclude that if the data generating process (DGP) is an AR(1), MA(1) or ARMA(1, 1) process, with moderate parameter values, the periodogram, GPH, QML, and modified R/S methods, followed by the DFA, MDFA, and CMA ones, perform reasonably well as regards with bias, although some of these techniques exhi...
A wavelet-based tool is reported for the analysis of Long-Range Dependence (LRD) traffic to allow fo...
We study the problem of constructing confidence intervals for the long-memory parameter of stationar...
Abstract. In this contribution, the statistical properties of the wavelet estimator of the long-rang...
In order to estimate the Hurst exponent of long-range dependent time series numerous estimators such...
The goal of this paper is to provide benchmarks to the practitioner for measuring the intensity of l...
Notwithstanding the significant efforts to develop estimators of long-range correlations (LRC) and t...
International audienceIn this paper we discuss the properties of most important estimators of long-r...
Mostly used estimators of Hurst exponent for detection of long-range dependence are biased by presen...
In traditional financial theory the returns of prices are assumed to be independent of each other, t...
In this paper, we present the results of Monte Carlo simulations for two popular techniques of long-...
We show that there is strong evidence of long-range dependence in the volatilities of several German...
This study employs the classical and modified rescaled adjusted range statistic (R/S statistic) to i...
Various wavelet-based estimators of self-similarity or long-range dependence scaling exponent are st...
This study employs the classical and modified rescaled adjusted range statistic (R/S statistic) to i...
This paper proposes an M-estimator for the fractional parameter of stationary long-range dependent p...
A wavelet-based tool is reported for the analysis of Long-Range Dependence (LRD) traffic to allow fo...
We study the problem of constructing confidence intervals for the long-memory parameter of stationar...
Abstract. In this contribution, the statistical properties of the wavelet estimator of the long-rang...
In order to estimate the Hurst exponent of long-range dependent time series numerous estimators such...
The goal of this paper is to provide benchmarks to the practitioner for measuring the intensity of l...
Notwithstanding the significant efforts to develop estimators of long-range correlations (LRC) and t...
International audienceIn this paper we discuss the properties of most important estimators of long-r...
Mostly used estimators of Hurst exponent for detection of long-range dependence are biased by presen...
In traditional financial theory the returns of prices are assumed to be independent of each other, t...
In this paper, we present the results of Monte Carlo simulations for two popular techniques of long-...
We show that there is strong evidence of long-range dependence in the volatilities of several German...
This study employs the classical and modified rescaled adjusted range statistic (R/S statistic) to i...
Various wavelet-based estimators of self-similarity or long-range dependence scaling exponent are st...
This study employs the classical and modified rescaled adjusted range statistic (R/S statistic) to i...
This paper proposes an M-estimator for the fractional parameter of stationary long-range dependent p...
A wavelet-based tool is reported for the analysis of Long-Range Dependence (LRD) traffic to allow fo...
We study the problem of constructing confidence intervals for the long-memory parameter of stationar...
Abstract. In this contribution, the statistical properties of the wavelet estimator of the long-rang...