The bootstrap method is a well-known method to gather a full probability distribution from the dataset of a small sample. The simple bootstrap i.e. resampling from the raw dataset often leads to a significant irregularities in a shape of resulting empirical distribution due to the discontinuity of a support. The remedy for these irregularities is the smoothed bootstrap: a small random shift of source points before each resampling. This shift is controlled by specifically selected distributions. The key issue is such parameter settings of these distributions to achieve the desired characteristics of the empirical distribution. This paper describes an example of this procedure
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...
We illustrate bootstrap methods in a simple example, Among ideas discussed are: basic distributional...
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 bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
In the context of functional estimation, the bootstrap approach amounts to substitution of the empir...
The Bootstrap is the most widely used resampling statistical method. This method becomes very popula...
In empirical research, the distribution of observations is usually unknown. This creates a problem i...
. A class of weighted-bootstrap techniques, called biasedbootstrap methods, is proposed. It is motiv...
AbstractWe describe a bootstrap method for estimating mean squared error and smoothing parameter in ...
Bootstrapping is a nonparametric approach for evaluating the distribution of a statistic based on ra...
Markov chains provide a flexible model for dependent random variables with appli-cations in such dis...
This tutorial considers some very general procedures for analysing the results of a simulation exper...
Bootstrapping is a nonparametric approach for evaluating the distribution of a statistic based on ra...
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...
We illustrate bootstrap methods in a simple example, Among ideas discussed are: basic distributional...
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 bootstrap is a method for estimating the distribution of an estimator or test statistic by resam...
In the context of functional estimation, the bootstrap approach amounts to substitution of the empir...
The Bootstrap is the most widely used resampling statistical method. This method becomes very popula...
In empirical research, the distribution of observations is usually unknown. This creates a problem i...
. A class of weighted-bootstrap techniques, called biasedbootstrap methods, is proposed. It is motiv...
AbstractWe describe a bootstrap method for estimating mean squared error and smoothing parameter in ...
Bootstrapping is a nonparametric approach for evaluating the distribution of a statistic based on ra...
Markov chains provide a flexible model for dependent random variables with appli-cations in such dis...
This tutorial considers some very general procedures for analysing the results of a simulation exper...
Bootstrapping is a nonparametric approach for evaluating the distribution of a statistic based on ra...
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...
We illustrate bootstrap methods in a simple example, Among ideas discussed are: basic distributional...