The concept of the autoregressive (AR) sieve bootstrap is investigated for the case of spatial processes in Z2. This procedure fits AR models of increasing order to the given data and, via resampling of the residuals, generates bootstrap replicates of the sample. The paper explores the range of validity of this resampling procedure and provides a general check criterion which allows to decide whether the AR sieve bootstrap asymptotically works for a specific statistic of interest or not. The criterion may be applied to a large class of stationary spatial processes. As another major contribution of this paper, a weighted Baxter-inequality for spatial processes is provided. This result yields a rate of convergence for the finite predictor ...
Non UBCUnreviewedAuthor affiliation: Technical University of Braunschweig (Germany)Facult
Augmented Dickey-Fuller unit root tests may severely overreject when the DGP is a general linear pro...
The sieve bootstrap is a resampling technique that uses autoregressive approximations of order p to ...
The concept of the autoregressive (AR) sieve bootstrap is investigated for the case of spatial proc...
In this thesis, we will investigate the range of validity of the autoregressive (AR) sieve bootstrap...
We study a bootstrap method which is based on the method of sieves. A linear process is approximated...
Given a linear time series, e.g. an autoregression of infinite order, we may construct a finite orde...
We consider the use of a sieve bootstrap based on moving average (MA) and autoregressive moving aver...
We study a bootstrap method for stationary real-valued time series, which is based on the method of ...
In the first part of the dissertation, we discuss a residual bootstrap method for high-dimensional r...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
This paper examines bootstrap tests of the null hypothesis of an autoregressive unit root in models ...
The sieve bootstrap (SB) prediction intervals for invertible autoregressive moving average (ARMA) pr...
We study a sieve bootstrap procedure for time series with a deterministic trend. The sieve for const...
This paper considers the use of bootstrap methods for the test of the unit root hypothesis for a tim...
Non UBCUnreviewedAuthor affiliation: Technical University of Braunschweig (Germany)Facult
Augmented Dickey-Fuller unit root tests may severely overreject when the DGP is a general linear pro...
The sieve bootstrap is a resampling technique that uses autoregressive approximations of order p to ...
The concept of the autoregressive (AR) sieve bootstrap is investigated for the case of spatial proc...
In this thesis, we will investigate the range of validity of the autoregressive (AR) sieve bootstrap...
We study a bootstrap method which is based on the method of sieves. A linear process is approximated...
Given a linear time series, e.g. an autoregression of infinite order, we may construct a finite orde...
We consider the use of a sieve bootstrap based on moving average (MA) and autoregressive moving aver...
We study a bootstrap method for stationary real-valued time series, which is based on the method of ...
In the first part of the dissertation, we discuss a residual bootstrap method for high-dimensional r...
In this paper we consider bootstrap methods for constructing nonparametric prediction intervals for ...
This paper examines bootstrap tests of the null hypothesis of an autoregressive unit root in models ...
The sieve bootstrap (SB) prediction intervals for invertible autoregressive moving average (ARMA) pr...
We study a sieve bootstrap procedure for time series with a deterministic trend. The sieve for const...
This paper considers the use of bootstrap methods for the test of the unit root hypothesis for a tim...
Non UBCUnreviewedAuthor affiliation: Technical University of Braunschweig (Germany)Facult
Augmented Dickey-Fuller unit root tests may severely overreject when the DGP is a general linear pro...
The sieve bootstrap is a resampling technique that uses autoregressive approximations of order p to ...