In this paper we propose a vectorized implementation of the non-parametric bootstrap for statistics based on sample moments. Basically, we adopt the multinomial sampling formula-tion of the non-parametric bootstrap, and compute bootstrap replications of sample moment statistics by simply weighting the observed data according to multinomial counts instead of evaluating the statistic on a resampled version of the observed data. Using this formulation we can generate a matrix of bootstrap weights and compute the entire vector of bootstrap replications with a few matrix multiplications. Vectorization is particularly important for matrix-oriented programming languages such as R, where matrix/vector calculations tend to be faster than scalar oper...
The percentile bootstrap is the Swiss Army knife of statistics: It is a nonparametric method based o...
In academic research, the classical approach to constructing confidence intervals and testing for si...
It is well known that bootstrap accuracy can be theoretically enhanced by iterating the bootstrap pr...
<div><p>In this paper we propose a vectorized implementation of the non-parametric bootstrap for sta...
The Bootstrap is the most widely used resampling statistical method. This method becomes very popula...
<p>The data was simulated according to <i>x</i><sub>1<i>i</i></sub> = <i>ϵ</i><sub>1<i>i</i></sub>, ...
Symbolic procedures for expressing the moments of bootstrap distributions in terms of multivariate v...
The bootstrap is a powerful non-parametric statistical technique for making probability-based infere...
this article. 4. BOOTSTRAP SIMULATION METHOD 4.1. General Consider that a random sample of observ...
For a general class of problems, the bootstrap method of resampling is one of the possible methods o...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
The bootstrap provides a simple and powerful means of assessing the quality of esti-mators. However,...
This thesis deals with the bootstrap method. Three decades after the seminal paper by Bradly Efron, ...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
The bootstrap is a simple but versatile technique for the statistical analysis of random simulations...
The percentile bootstrap is the Swiss Army knife of statistics: It is a nonparametric method based o...
In academic research, the classical approach to constructing confidence intervals and testing for si...
It is well known that bootstrap accuracy can be theoretically enhanced by iterating the bootstrap pr...
<div><p>In this paper we propose a vectorized implementation of the non-parametric bootstrap for sta...
The Bootstrap is the most widely used resampling statistical method. This method becomes very popula...
<p>The data was simulated according to <i>x</i><sub>1<i>i</i></sub> = <i>ϵ</i><sub>1<i>i</i></sub>, ...
Symbolic procedures for expressing the moments of bootstrap distributions in terms of multivariate v...
The bootstrap is a powerful non-parametric statistical technique for making probability-based infere...
this article. 4. BOOTSTRAP SIMULATION METHOD 4.1. General Consider that a random sample of observ...
For a general class of problems, the bootstrap method of resampling is one of the possible methods o...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
The bootstrap provides a simple and powerful means of assessing the quality of esti-mators. However,...
This thesis deals with the bootstrap method. Three decades after the seminal paper by Bradly Efron, ...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
The bootstrap is a simple but versatile technique for the statistical analysis of random simulations...
The percentile bootstrap is the Swiss Army knife of statistics: It is a nonparametric method based o...
In academic research, the classical approach to constructing confidence intervals and testing for si...
It is well known that bootstrap accuracy can be theoretically enhanced by iterating the bootstrap pr...