Block-based resampling estimators have been intensively investigated for weakly dependent time processes, which has helped to inform implementation (e.g., best block sizes). However, little is known about resampling performance and block sizes under strong or long-range dependence. To establish guideposts in block selection, we consider a broad class of strongly dependent time processes, formed by a transformation of a stationary long-memory Gaussian series, and examine block-based resampling estimators for the variance of the prototypical sample mean; extensions to general statistical functionals are also considered. Unlike weak dependence, the properties of resampling estimators under strong dependence are shown to depend intricately on t...
Chapter 1 is concerned with confidence interval construction for the mean of a long-range dependent ...
We show that it is possible to adapt to nonparametric disturbance auto-correlation in time series re...
This paper is devoted to the discrimination between a stationary long-range dependent model and a no...
Block resampling methods are useful for nonparametrically approximating the sampling distributions o...
For long-memory time series, inference based on resampling is of crucial importance, since the asymp...
In the statistical inference for long range dependent time series, the shape of the limit distribut...
When analyzing time series which are supposed to exhibit long-range dependence (LRD), a basic issue...
In this thesis we are dealing with the estimation of parameters under shifts in the mean. The resul...
In this work we investigate an alternative bootstrap approach based on a result of Ramsey (1974) and...
Mostly used estimators of Hurst exponent for detection of long-range dependence are biased by presen...
In this paper, we present the results of Monte Carlo simulations for two popular techniques of long-...
Under long memory, the limit theorems for normalized sums of random variables typically involve a po...
In this paper we present a review of some well-known bootstrap methods for time series data. We conc...
The inference procedure for the mean of a stationary time series is usually quite different under va...
This chapter reviews semiparametric methods of inference on different aspects of long memory time s...
Chapter 1 is concerned with confidence interval construction for the mean of a long-range dependent ...
We show that it is possible to adapt to nonparametric disturbance auto-correlation in time series re...
This paper is devoted to the discrimination between a stationary long-range dependent model and a no...
Block resampling methods are useful for nonparametrically approximating the sampling distributions o...
For long-memory time series, inference based on resampling is of crucial importance, since the asymp...
In the statistical inference for long range dependent time series, the shape of the limit distribut...
When analyzing time series which are supposed to exhibit long-range dependence (LRD), a basic issue...
In this thesis we are dealing with the estimation of parameters under shifts in the mean. The resul...
In this work we investigate an alternative bootstrap approach based on a result of Ramsey (1974) and...
Mostly used estimators of Hurst exponent for detection of long-range dependence are biased by presen...
In this paper, we present the results of Monte Carlo simulations for two popular techniques of long-...
Under long memory, the limit theorems for normalized sums of random variables typically involve a po...
In this paper we present a review of some well-known bootstrap methods for time series data. We conc...
The inference procedure for the mean of a stationary time series is usually quite different under va...
This chapter reviews semiparametric methods of inference on different aspects of long memory time s...
Chapter 1 is concerned with confidence interval construction for the mean of a long-range dependent ...
We show that it is possible to adapt to nonparametric disturbance auto-correlation in time series re...
This paper is devoted to the discrimination between a stationary long-range dependent model and a no...