Sample quantiles are consistent estimators for the true quantile and satisfy central limit theorems (CLTs) if the underlying distribution is continuous. If the distribution is discrete, the situation is much more delicate. In this case, sample quantiles are known to be not even consistent in general for the population quantiles. In a motivating example, we show that Efron’s bootstrap does not consistently mimic the distribution of sample quantiles even in the discrete independent and identically distributed (i.i.d.) data case. To overcome this bootstrap inconsistency, we provide two different and complementing strategies. In the first part of this paper, we prove that m-out-of-n-type bootstraps do consistently mimic the distribution o...
International audienceThe bootstrap can be validated by considering the sequence of P values obtaine...
This paper examines the e®ects of bootstrap iterations on coverage probabilities of smoothed bootstr...
In this work, we investigate consistency properties of normal approximation and block bootstrap appr...
Sample quantiles are consistent estimators for the true quantile and satisfy central limit theorems ...
Sample quantiles are consistent estimators for the true quantile and satisfy central limit theorems ...
We consider estimation of a quantile from a discrete distribution. This gives rise to three new idea...
The asymptotic variance matrix of the quantile regression estimator depends on the density of the er...
The asymptotic behaviour of the bootstrap distribution of the sample median and other sample quantil...
Consistency and optimality of block bootstrap schemes for distribution and variance estimation of sm...
In this note we define a composite quantile function estimator in order to improve the accuracy of t...
We will show under minimal conditions on differentiability and dependence that the central limit th...
Albeit the superiority of bootstrapping to jackknifing in estimating the (asymptotic) variance of a ...
Albeit the superiority of bootstrapping to jackknifing in estimating the (asymptotic) variance of a ...
We consider estimation of a quantile from a discrete distribution. This gives rise to three new idea...
Sample quantiles for discrete distributions The classical definition of sample quantiles and their a...
International audienceThe bootstrap can be validated by considering the sequence of P values obtaine...
This paper examines the e®ects of bootstrap iterations on coverage probabilities of smoothed bootstr...
In this work, we investigate consistency properties of normal approximation and block bootstrap appr...
Sample quantiles are consistent estimators for the true quantile and satisfy central limit theorems ...
Sample quantiles are consistent estimators for the true quantile and satisfy central limit theorems ...
We consider estimation of a quantile from a discrete distribution. This gives rise to three new idea...
The asymptotic variance matrix of the quantile regression estimator depends on the density of the er...
The asymptotic behaviour of the bootstrap distribution of the sample median and other sample quantil...
Consistency and optimality of block bootstrap schemes for distribution and variance estimation of sm...
In this note we define a composite quantile function estimator in order to improve the accuracy of t...
We will show under minimal conditions on differentiability and dependence that the central limit th...
Albeit the superiority of bootstrapping to jackknifing in estimating the (asymptotic) variance of a ...
Albeit the superiority of bootstrapping to jackknifing in estimating the (asymptotic) variance of a ...
We consider estimation of a quantile from a discrete distribution. This gives rise to three new idea...
Sample quantiles for discrete distributions The classical definition of sample quantiles and their a...
International audienceThe bootstrap can be validated by considering the sequence of P values obtaine...
This paper examines the e®ects of bootstrap iterations on coverage probabilities of smoothed bootstr...
In this work, we investigate consistency properties of normal approximation and block bootstrap appr...