AbstractWe show that the coverage error of confidence intervals and level error of hypothesis tests for population quantiles constructed using the bootstrap estimate of sample quantile variance is of precise order n−12 in both one- and two-sided cases. This contrasts markedly with more classical problems, where the error is of order n−12 in the one-sided case, but n−1 in the two-sided case, and results from an unusual feature of the Edgeworth expansion in that the leading term, of order n−12, is proportional to a polynomial containing both odd and even powers of the argument. Our results also show that for two-sided confidence intervals and hypothesis tests, and in large samples, the bootstrap variance estimate is inferior to the Siddiqui-B...
The problem of testing hypotheses about the slope of a quantile regression line when the sample size...
Suppose we have a random sample from a non-normal distribution known as the quadratic-normal distrib...
The sampling distribution of several commonly occurring statistics are known to be closer to the cor...
We show that the coverage error of confidence intervals and level error of hypothesis tests for popu...
This paper establishes that the minimum error rates in coverage probabilities of one- and sym-metric...
This paper examines the e®ects of bootstrap iterations on coverage probabilities of smoothed bootstr...
This paper investigates the effects of smoothed bootstrap iterations on coverage probabilities of sm...
Beran & Hall's (1993) simple linear interpolation provides a very convenient approach for constructi...
In this thesis, we discuss the use of bootstrap methods for constructing confidence intervals in a ...
Beran & Hall's (1993) simple linear interpolation provides a very convenient approach for constructi...
In the paper selected nonparametric and semiparametric estimation methods of higher orders quantiles...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
In this study, we propose confidence intervals and their bootstrap versions for the difference of va...
Ce mémoire propose une adaptation lisse de méthodes bootstrap par pseudo-population aux fins d'estim...
Variance estimation techniques for nonlinear statistics, such as ratios and regression and correlati...
The problem of testing hypotheses about the slope of a quantile regression line when the sample size...
Suppose we have a random sample from a non-normal distribution known as the quadratic-normal distrib...
The sampling distribution of several commonly occurring statistics are known to be closer to the cor...
We show that the coverage error of confidence intervals and level error of hypothesis tests for popu...
This paper establishes that the minimum error rates in coverage probabilities of one- and sym-metric...
This paper examines the e®ects of bootstrap iterations on coverage probabilities of smoothed bootstr...
This paper investigates the effects of smoothed bootstrap iterations on coverage probabilities of sm...
Beran & Hall's (1993) simple linear interpolation provides a very convenient approach for constructi...
In this thesis, we discuss the use of bootstrap methods for constructing confidence intervals in a ...
Beran & Hall's (1993) simple linear interpolation provides a very convenient approach for constructi...
In the paper selected nonparametric and semiparametric estimation methods of higher orders quantiles...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
In this study, we propose confidence intervals and their bootstrap versions for the difference of va...
Ce mémoire propose une adaptation lisse de méthodes bootstrap par pseudo-population aux fins d'estim...
Variance estimation techniques for nonlinear statistics, such as ratios and regression and correlati...
The problem of testing hypotheses about the slope of a quantile regression line when the sample size...
Suppose we have a random sample from a non-normal distribution known as the quadratic-normal distrib...
The sampling distribution of several commonly occurring statistics are known to be closer to the cor...