We prove geometric ergodicity and absolute regularity of the nonparametric autoregressive bootstrap process. To this end, we revisit this problem for nonparametric autoregressive processes and give some quantitative conditions (i.e., with explicit constants) under which the mixing coefficients of such processes can be bounded by some exponentially decaying sequence. This is achieved by using well-established coupling techniques. Then we apply the result to the bootstrap process and propose some particular estimators of the autoregression function and of the density of the innovations for which the bootstrap process has the desired properties. Moreover, by using some “decoupling” argument, we show that the stationary density of the bootstrap...
We derive strong approximations to the supremum of the non-centered empirical process indexed by a p...
In this paper a modified wild bootstrap method is presented to construct pointwise confidence interv...
The concept of the autoregressive (AR) sieve bootstrap is investigated for the case of spatial proc...
Abstract We prove geometric ergodicity and absolute regularity of the nonpara metric autoregressive...
We prove geometric ergodicity and absolute regularity of the nonparametric autoregressive bootstrap ...
A nonparametric bootstrap procedure is proposed for stochastic processes which follow a gen-eral aut...
. For autoregressive time series with positive innovationswhich either have heavy right or left tail...
This paper develops a bootstrap theory for models including autoregressive time series with roots ap...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
summary:The first-order autoregression model with heteroskedastic innovations is considered and it i...
We study a bootstrap method for stationary real-valued time series, which is based on the method of ...
In this paper we consider general first order autoregression, including the stationary, the explosiv...
Let TtX t , be autoregressive time series, where T is discrete time, and let nXXX,,, 21 be the s...
We derive strong approximations to the supremum of the non-centered empirical process indexed by a p...
In this paper a modified wild bootstrap method is presented to construct pointwise confidence interv...
The concept of the autoregressive (AR) sieve bootstrap is investigated for the case of spatial proc...
Abstract We prove geometric ergodicity and absolute regularity of the nonpara metric autoregressive...
We prove geometric ergodicity and absolute regularity of the nonparametric autoregressive bootstrap ...
A nonparametric bootstrap procedure is proposed for stochastic processes which follow a gen-eral aut...
. For autoregressive time series with positive innovationswhich either have heavy right or left tail...
This paper develops a bootstrap theory for models including autoregressive time series with roots ap...
This thesis is concerned with nonparametric techniques for inferring properties of time series. Firs...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
We derive a strong approximation of a local polynomial estimator (LPE) in nonparametric autoregressi...
summary:The first-order autoregression model with heteroskedastic innovations is considered and it i...
We study a bootstrap method for stationary real-valued time series, which is based on the method of ...
In this paper we consider general first order autoregression, including the stationary, the explosiv...
Let TtX t , be autoregressive time series, where T is discrete time, and let nXXX,,, 21 be the s...
We derive strong approximations to the supremum of the non-centered empirical process indexed by a p...
In this paper a modified wild bootstrap method is presented to construct pointwise confidence interv...
The concept of the autoregressive (AR) sieve bootstrap is investigated for the case of spatial proc...