Several techniques for resampling dependent data have already been proposed. In this paper we use missing values techniques to modify the moving blocks jackknife and bootstrap. More specifically, we consider the blocks of deleted observations in the blockwise jackknife as missing data which are recovered by missing values estimates incorporating the observation dependence structure. Thus, we estimate the variance of a statistic as a weighted sample variance of the statistic evaluated in a “complete” series. Consistency of the variance and the distribution estimators of the sample mean are established. Also, we apply the missing values approach to the blockwise bootstrap by including some missing observations among two consecutive blocks and...
In this article, I discuss the main approaches to resampling variance estimation in complex survey d...
Missing values in time series can be treated as unknown parameters and estimated by maximum likeliho...
Slotted resampling transforms an irregularly sampled process into an equidistant missing-data proble...
Several techniques for resampling dependent data have already been proposed. In this paper we use mi...
For strongly dependent data, deleting blocks of observations is expected to produce bias as in the ...
This paper is aimed at deriving some specific-oriented bootstrap confidence intervals for missing se...
Classical time series analysis methods are not readily applicable to the series with missing observa...
SUMMARY The block bootstrap for time series consists in randomly resampling blocks of consecutive v...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
This paper is concerned with the practical problem of conducting inference in a vector time series s...
This paper is concerned with the practical problem of conducting inference in a vector time series s...
Not AvailableBootstrap technique is used in the estimation of variance of non-linear statistics in c...
Three simulation studies were conducted in order to compare the accuracy of two algorithms for estim...
Resampling methods are a common measure to estimate the variance of a statistic of interest when dat...
In this article, I discuss the main approaches to resampling variance estimation in complex survey d...
Missing values in time series can be treated as unknown parameters and estimated by maximum likeliho...
Slotted resampling transforms an irregularly sampled process into an equidistant missing-data proble...
Several techniques for resampling dependent data have already been proposed. In this paper we use mi...
For strongly dependent data, deleting blocks of observations is expected to produce bias as in the ...
This paper is aimed at deriving some specific-oriented bootstrap confidence intervals for missing se...
Classical time series analysis methods are not readily applicable to the series with missing observa...
SUMMARY The block bootstrap for time series consists in randomly resampling blocks of consecutive v...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
This paper is concerned with the practical problem of conducting inference in a vector time series s...
This paper is concerned with the practical problem of conducting inference in a vector time series s...
Not AvailableBootstrap technique is used in the estimation of variance of non-linear statistics in c...
Three simulation studies were conducted in order to compare the accuracy of two algorithms for estim...
Resampling methods are a common measure to estimate the variance of a statistic of interest when dat...
In this article, I discuss the main approaches to resampling variance estimation in complex survey d...
Missing values in time series can be treated as unknown parameters and estimated by maximum likeliho...
Slotted resampling transforms an irregularly sampled process into an equidistant missing-data proble...