Prepivoting by conventional bootstrap iteration is known to yield a progressively more accurate pivot in certain problems, and has important application in the construction of confidence limits and estimation of null distributions. We investigate the theoretical effects of weighted bootstrap iteration on prepivoting and show that each weighted bootstrap iteration, with weights chosen carefully but empirically, is asymptotically equivalent to two consecutive conventional bootstrap iterations. In terms of reducing the order of error, prepivoting can therefore be carried out much more efficiently if based on weighted bootstrap iterations. This is shown for a variety of problem settings, including the smooth function model, M-estimation and the...
AbstractM-estimation is a widely used technique for statistical inference. In this paper, we study p...
Abstract. Bootstrap ideas yield remarkably effective algorithms for realizing certain pro-grams in s...
When a model is nonlinear, bootstrap testing can be expensive because of the need to perform at leas...
The operation of resampling from a bootstrap resample, encountered in applications of the double boo...
It is well known that bootstrap accuracy can be theoretically enhanced by iterating the bootstrap pr...
In this paper we propose a new weighted bootstrap with probability (WBP). The basic idea of the prop...
Abstract no. 307546M-estimation under non-standard conditions often yields M-estimators converging w...
Thesis (Ph. D.)--University of Washington, 1991The method of bootstrapping, which has transformed th...
We study the weighted bootstrap of the empirical process indexed by a class of functions, when the w...
A class of weighted bootstrap techniques, called biased bootstrap or b-bootstrap methods, is introdu...
. A class of weighted-bootstrap techniques, called biasedbootstrap methods, is proposed. It is motiv...
Practical computation of the minimum variance unbiased estimator (MVUE) is often a difficult, if not...
Bootstrap methods are attractive empirical procedures for assessment of errors in problems of statis...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
It is well known that the limiting variance of nearest neighbor matching estimators cannotbe consist...
AbstractM-estimation is a widely used technique for statistical inference. In this paper, we study p...
Abstract. Bootstrap ideas yield remarkably effective algorithms for realizing certain pro-grams in s...
When a model is nonlinear, bootstrap testing can be expensive because of the need to perform at leas...
The operation of resampling from a bootstrap resample, encountered in applications of the double boo...
It is well known that bootstrap accuracy can be theoretically enhanced by iterating the bootstrap pr...
In this paper we propose a new weighted bootstrap with probability (WBP). The basic idea of the prop...
Abstract no. 307546M-estimation under non-standard conditions often yields M-estimators converging w...
Thesis (Ph. D.)--University of Washington, 1991The method of bootstrapping, which has transformed th...
We study the weighted bootstrap of the empirical process indexed by a class of functions, when the w...
A class of weighted bootstrap techniques, called biased bootstrap or b-bootstrap methods, is introdu...
. A class of weighted-bootstrap techniques, called biasedbootstrap methods, is proposed. It is motiv...
Practical computation of the minimum variance unbiased estimator (MVUE) is often a difficult, if not...
Bootstrap methods are attractive empirical procedures for assessment of errors in problems of statis...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
It is well known that the limiting variance of nearest neighbor matching estimators cannotbe consist...
AbstractM-estimation is a widely used technique for statistical inference. In this paper, we study p...
Abstract. Bootstrap ideas yield remarkably effective algorithms for realizing certain pro-grams in s...
When a model is nonlinear, bootstrap testing can be expensive because of the need to perform at leas...