This occurs because the bootstrap distribution of a normalised sum of infinite variance random variables tends to a random distribution. Consistent bootstrap algorithms based on subsampling methods have been proposed but have the drawback that they deliver much wider confidence sets than those generated by the iid bootstrap owing to the fact that they eliminate the dependence of the bootstrap distribution on the sample extremes. In this paper we propose sufficient conditions that allow a simple modification of the bootstrap (Wu, 1986) to be consistent (in a conditional sense) yet to also reproduce the narrower confidence sets of the iid bootstrap. Numerical results demonstrate that our proposed bootstrap method works very well in practice d...
Matching estimators are widely used for the evaluation of programs or treat-ments. Often researchers...
This paper provides a method for determining the exact finite sample properties of the bootstrap. Pr...
The bootstrap method is a well-known method to gather a full probability distribution from the datas...
This occurs because the bootstrap distribution of a normalised sum of infinite variance random varia...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...
ACL-1International audienceIt is known that Efron’s bootstrap of the mean of a distribution in the d...
The wild bootstrap is studied in the context of regression models with heteroskedastic disturbances....
. This paper proves that for no prior probability distribution does the bootstrap (BS) distribution...
In this paper, we propose bootstrap methods for statistics evaluated on high frequency data such as ...
Abstract. Bootstrap ideas yield remarkably effective algorithms for realizing certain pro-grams in s...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
The sampling distribution of several commonly occurring statistics are known to be closer to the cor...
Matching estimators are widely used for the evaluation of programs or treatments. Often researchers ...
In this paper, we propose a model-free bootstrap method for the empirical process under absolute re...
Matching estimators are widely used for the evaluation of programs or treat-ments. Often researchers...
This paper provides a method for determining the exact finite sample properties of the bootstrap. Pr...
The bootstrap method is a well-known method to gather a full probability distribution from the datas...
This occurs because the bootstrap distribution of a normalised sum of infinite variance random varia...
It is known that Efron's resampling bootstrap of the mean of random variables with common distributi...
ACL-1International audienceIt is known that Efron’s bootstrap of the mean of a distribution in the d...
The wild bootstrap is studied in the context of regression models with heteroskedastic disturbances....
. This paper proves that for no prior probability distribution does the bootstrap (BS) distribution...
In this paper, we propose bootstrap methods for statistics evaluated on high frequency data such as ...
Abstract. Bootstrap ideas yield remarkably effective algorithms for realizing certain pro-grams in s...
The bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
The sampling distribution of several commonly occurring statistics are known to be closer to the cor...
Matching estimators are widely used for the evaluation of programs or treatments. Often researchers ...
In this paper, we propose a model-free bootstrap method for the empirical process under absolute re...
Matching estimators are widely used for the evaluation of programs or treat-ments. Often researchers...
This paper provides a method for determining the exact finite sample properties of the bootstrap. Pr...
The bootstrap method is a well-known method to gather a full probability distribution from the datas...