Abstract: The bootstrap is a popular and powerful method for assessing precision of estimators and inferential methods. However, for massive datasets which are increasingly prevalent, the bootstrap becomes prohibitively costly in computation and its feasibility is questionable even with modern parallel computing platforms. Recently Kleiner, Talwalkar, Sarkar, and Jordan (2014) proposed a method called BLB (Bag of Little Bootstraps) for massive data which is more computationally scalable with little sacrifice of statistical accuracy. Building on BLB and the idea of fast double bootstrap, we propose a new resampling method, the subsampled double bootstrap, for both independent data and time series data. We establish consistency of the subsamp...
The world's information is doubling every two years, largely due to a tremendous growth of data from...
International audienceThe standard forms of bootstrap iteration are very computationally demanding. ...
Abstract. Bootstrap for nonlinear statistics like U -statistics of dependent data has been studied b...
<p>The bootstrap is a popular and powerful method for assessing precision of estimators and inferent...
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 esti-mators. However,...
The bootstrap is a widely used procedure for statistical inference because of its simplicity and att...
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 estimators. How-ever,...
Two procedures are proposed for estimating the rejection probabilities of bootstrap tests in Monte C...
The fast double bootstrap can improve considerably on the single bootstrap when the bootstrapped sta...
The Bootstrap is the most widely used resampling statistical method. This method becomes very popula...
The operation of resampling from a bootstrap resample, encountered in applications of the double boo...
We first propose two procedures for estimating the rejection probabilities of bootstrap tests in Mon...
The fast double bootstrap, or FDB, is a procedure for calculating bootstrap P values that is much mo...
The world's information is doubling every two years, largely due to a tremendous growth of data from...
International audienceThe standard forms of bootstrap iteration are very computationally demanding. ...
Abstract. Bootstrap for nonlinear statistics like U -statistics of dependent data has been studied b...
<p>The bootstrap is a popular and powerful method for assessing precision of estimators and inferent...
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 esti-mators. However,...
The bootstrap is a widely used procedure for statistical inference because of its simplicity and att...
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 estimators. How-ever,...
Two procedures are proposed for estimating the rejection probabilities of bootstrap tests in Monte C...
The fast double bootstrap can improve considerably on the single bootstrap when the bootstrapped sta...
The Bootstrap is the most widely used resampling statistical method. This method becomes very popula...
The operation of resampling from a bootstrap resample, encountered in applications of the double boo...
We first propose two procedures for estimating the rejection probabilities of bootstrap tests in Mon...
The fast double bootstrap, or FDB, is a procedure for calculating bootstrap P values that is much mo...
The world's information is doubling every two years, largely due to a tremendous growth of data from...
International audienceThe standard forms of bootstrap iteration are very computationally demanding. ...
Abstract. Bootstrap for nonlinear statistics like U -statistics of dependent data has been studied b...