AbstractThe paper reconsiders the autoregressive aided periodogram bootstrap (AAPB) which has been suggested in Kreiss and Paparoditis (2003) [18]. Their idea was to combine a time domain parametric and a frequency domain nonparametric bootstrap to mimic not only a part but as much as possible the complete covariance structure of the underlying time series. We extend the AAPB in two directions. Our procedure explicitly leads to bootstrap observations in the time domain and it is applicable to multivariate linear processes, but agrees exactly with the AAPB in the univariate case, when applied to functionals of the periodogram. The asymptotic theory developed shows validity of the multiple hybrid bootstrap procedure for the sample mean, kerne...
We develop some asymptotic theory for applications of block bootstrap resampling schemes to multiva...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
AbstractWe consider anr-dimensional multivariate time series {yt, t∈Z} which is generated by an infi...
AbstractThe paper reconsiders the autoregressive aided periodogram bootstrap (AAPB) which has been s...
The paper reconsiders the autoregressive aided periodogram bootstrap (AAPB) which has been suggested...
In the first part of this thesis, a new bootstrap procedure for dependent data is proposed and its p...
The linear process bootstrap (LPB) for univariate time seri es has been introduced by McMurry and ...
We prove that Efron's bootstrap applied to the sample ofstudentized periodogram ordinates works quit...
We prove geometric ergodicity and absolute regularity of the nonparametric autoregressive bootstrap ...
International audienceIn this paper a simulation comparison of the bootstrap confidence intervals fo...
The theory and methodology of obtaining bootstrap prediction intervals for univariate time series us...
A nonparametric bootstrap procedure is proposed for stochastic processes which follow a gen-eral aut...
Locally stationary processes are non-stationary stochastic processes the second-order structure of w...
We generalize the Franke-Härdle (1992) spectral density bootstrap to the multivariate case. The ex...
We study a bootstrap method which is based on the method of sieves. A linear process is approximated...
We develop some asymptotic theory for applications of block bootstrap resampling schemes to multiva...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
AbstractWe consider anr-dimensional multivariate time series {yt, t∈Z} which is generated by an infi...
AbstractThe paper reconsiders the autoregressive aided periodogram bootstrap (AAPB) which has been s...
The paper reconsiders the autoregressive aided periodogram bootstrap (AAPB) which has been suggested...
In the first part of this thesis, a new bootstrap procedure for dependent data is proposed and its p...
The linear process bootstrap (LPB) for univariate time seri es has been introduced by McMurry and ...
We prove that Efron's bootstrap applied to the sample ofstudentized periodogram ordinates works quit...
We prove geometric ergodicity and absolute regularity of the nonparametric autoregressive bootstrap ...
International audienceIn this paper a simulation comparison of the bootstrap confidence intervals fo...
The theory and methodology of obtaining bootstrap prediction intervals for univariate time series us...
A nonparametric bootstrap procedure is proposed for stochastic processes which follow a gen-eral aut...
Locally stationary processes are non-stationary stochastic processes the second-order structure of w...
We generalize the Franke-Härdle (1992) spectral density bootstrap to the multivariate case. The ex...
We study a bootstrap method which is based on the method of sieves. A linear process is approximated...
We develop some asymptotic theory for applications of block bootstrap resampling schemes to multiva...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
AbstractWe consider anr-dimensional multivariate time series {yt, t∈Z} which is generated by an infi...