The sampling distribution of several commonly occurring statistics are known to be closer to the corresponding bootstrap distribution than the normal distribution, under some conditions on the moments and the smoothness of the population distribution. These conditional approximations are suggestive of the unconditional ones considered in this paper, though one cannot be derived from the other by elementary methods. In this paper, probabilistic bounds are provided for the deviation of the sampling distribution from the bootstrap distribution. The rate of convergence to one, of the probability that the bootstrap approximation outperforms the normal approximation, is obtained. These rates can be applied to obtain the Lp bounds of Bhattacharya ...
In this work, we investigate consistency properties of normal approximation and block bootstrap appr...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
This occurs because the bootstrap distribution of a normalised sum of infinite variance random varia...
Bootstrap approximations to the sampling distribution can be seen as generalized statistics taking v...
A simple mapping approach is proposed to study the bootstrap accuracy in a rather general setting. I...
We compare saddlepoint approximations to the exact distributions of a studentized mean and to its bo...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
AbstractIt is shown by an example that in general, the rate of bootstrap approximation to the studen...
The authors establish the approximations to the distribution of M-estimates in a linear model by the...
This paper establishes that the minimum error rates in coverage probabilities of one- and sym-metric...
AbstractPerformance of the bootstrap for estimating tail probabilities is usually explained by sayin...
AbstractWe show that under different moment bounds on the underlying variables, bootstrap approximat...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
Abstract no. 307546M-estimation under non-standard conditions often yields M-estimators converging w...
AbstractWe derive asymptotic expansions for the distributions of the normal theory maximum likelihoo...
In this work, we investigate consistency properties of normal approximation and block bootstrap appr...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
This occurs because the bootstrap distribution of a normalised sum of infinite variance random varia...
Bootstrap approximations to the sampling distribution can be seen as generalized statistics taking v...
A simple mapping approach is proposed to study the bootstrap accuracy in a rather general setting. I...
We compare saddlepoint approximations to the exact distributions of a studentized mean and to its bo...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
AbstractIt is shown by an example that in general, the rate of bootstrap approximation to the studen...
The authors establish the approximations to the distribution of M-estimates in a linear model by the...
This paper establishes that the minimum error rates in coverage probabilities of one- and sym-metric...
AbstractPerformance of the bootstrap for estimating tail probabilities is usually explained by sayin...
AbstractWe show that under different moment bounds on the underlying variables, bootstrap approximat...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
Abstract no. 307546M-estimation under non-standard conditions often yields M-estimators converging w...
AbstractWe derive asymptotic expansions for the distributions of the normal theory maximum likelihoo...
In this work, we investigate consistency properties of normal approximation and block bootstrap appr...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
This occurs because the bootstrap distribution of a normalised sum of infinite variance random varia...