Since its invention, Efron’s bootstrap resampling approach has changed all the aspects of statistical inference, which has become the default framework whenever the classical inference approaches are not feasible. This paper introduces a new, more accurate, and efficient resampling approach, namely, the ranked simulated resampling approach. We show that, analytically and computationally, it is more efficient and precise than Efron’s uniform bootstrap resampling approach. We provide simulation studies and real data applications to support the comparison between the ranked simulated resampling approach and Efron’s uniform bootstrap resampling approach
We will study here different resampling procedures for creating confidence sets in linear models. A ...
Bootstrap distribution-free resampling technique (Efron, 1979) is frequently used to assess the vari...
This paper examines resampling for bootstrap from a survey sampling point of view. Given an observed...
This tutorial considers some very general procedures for analysing the results of a simulation exper...
This thesis deals with the bootstrap method. Three decades after the seminal paper by Bradly Efron, ...
The operation of resampling from a bootstrap resample, encountered in applications of the double boo...
Bootstrap resampling is an extremely practical and effective way of studying the distributional prop...
The Bootstrap is the most widely used resampling statistical method. This method becomes very popula...
In sampling finite populations, several resampling schemes have been proposed. The common starting po...
In sampling finite populations, several resampling schemes have been proposed. The common starting po...
The bootstrap resampling method may be efficiently used to estimate the generalization error of nonl...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
The construction of bootstrap hypothesis tests can differ from that of bootstrap confidence interval...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
We will study here different resampling procedures for creating confidence sets in linear models. A ...
Bootstrap distribution-free resampling technique (Efron, 1979) is frequently used to assess the vari...
This paper examines resampling for bootstrap from a survey sampling point of view. Given an observed...
This tutorial considers some very general procedures for analysing the results of a simulation exper...
This thesis deals with the bootstrap method. Three decades after the seminal paper by Bradly Efron, ...
The operation of resampling from a bootstrap resample, encountered in applications of the double boo...
Bootstrap resampling is an extremely practical and effective way of studying the distributional prop...
The Bootstrap is the most widely used resampling statistical method. This method becomes very popula...
In sampling finite populations, several resampling schemes have been proposed. The common starting po...
In sampling finite populations, several resampling schemes have been proposed. The common starting po...
The bootstrap resampling method may be efficiently used to estimate the generalization error of nonl...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
The construction of bootstrap hypothesis tests can differ from that of bootstrap confidence interval...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
We will study here different resampling procedures for creating confidence sets in linear models. A ...
Bootstrap distribution-free resampling technique (Efron, 1979) is frequently used to assess the vari...
This paper examines resampling for bootstrap from a survey sampling point of view. Given an observed...