The bootstrap is a widely used procedure for statistical inference because of its simplicity and attractive statistical properties. However, the vanilla version of bootstrap is no longer feasible computationally for many modern massive datasets due to the need to repeatedly resample the entire data. Therefore, several improvements to the bootstrap method have been made in recent years, which assess the quality of estimators by subsampling the full dataset before resampling the subsamples. Naturally, the performance of these modern subsampling methods is influenced by tuning parameters such as the size of subsamples, the number of subsamples, and the number of resamples per subsample. In this paper, we develop a novel hyperparameter selectio...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
The bootstrap resampling method may be efficiently used to estimate the generalization error of a fa...
The bootstrap is a widely used procedure for statistical inference because of its simplicity and att...
The bootstrap provides a simple and powerful means of assessing the quality of esti-mators. However,...
<p>The bootstrap is a popular and powerful method for assessing precision of estimators and inferent...
Abstract: The bootstrap is a popular and powerful method for assessing precision of estimators and i...
The bootstrap is a popular and powerful method for assessing precision of estimators and inferentia...
The bootstrap provides a simple and powerful means of assessing the quality of estimators. How-ever,...
In non- and semiparametric testing, the wild bootstrap is a standard method for determining the crit...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
It is widely known that bootstrap failure can often be remedied by using a technique known as the 'm...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
This paper provides a simple, tractable bootstrap for use with Data Envelopment Analysis (DEA) estim...
Purdue University West Lafayette (PUWL)For massive data analysis, the computational bottlenecks exis...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
The bootstrap resampling method may be efficiently used to estimate the generalization error of a fa...
The bootstrap is a widely used procedure for statistical inference because of its simplicity and att...
The bootstrap provides a simple and powerful means of assessing the quality of esti-mators. However,...
<p>The bootstrap is a popular and powerful method for assessing precision of estimators and inferent...
Abstract: The bootstrap is a popular and powerful method for assessing precision of estimators and i...
The bootstrap is a popular and powerful method for assessing precision of estimators and inferentia...
The bootstrap provides a simple and powerful means of assessing the quality of estimators. How-ever,...
In non- and semiparametric testing, the wild bootstrap is a standard method for determining the crit...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
It is widely known that bootstrap failure can often be remedied by using a technique known as the 'm...
Traditional resampling methods for estimating sampling distributions sometimes fail, and alternative...
This paper provides a simple, tractable bootstrap for use with Data Envelopment Analysis (DEA) estim...
Purdue University West Lafayette (PUWL)For massive data analysis, the computational bottlenecks exis...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
We address the problem of fast estimation of ordinary least squares (OLS) from large amounts of data...
The bootstrap resampling method may be efficiently used to estimate the generalization error of a fa...