The optimal minimum distance (OMD) estimator for models of covariance structures is asymptotically efficient but has much worse finite-sample properties than does the equally-weighted minimum distance (EWMD) estimator. This paper shows how the bootstrap can be used to improve the finite-sample performance of the OMD estimator. The theory underlying the bootstrap's ability to reduce the bias of estimators and errors in the coverage probabilities of confidence intervals is summarized. The results of numerical experiments and an empirical example show that the bootstrap often essentially eliminates the bias of the OMD estimator. The finite-sample estimation efficiency of the biascorrected OMD estimator often exceeds that of the EWMD estim...
This paper promotes information theoretic inference in the context of minimum distance estimation. V...
Matching estimators are widely used for the evaluation of programs or treatments. Often researchers ...
This article investigates the bootstrap methods for producing good approximate confidence intervals....
The optimal minimum distance (OMD) estimator for models of covariance structures is asymptotically e...
This paper further examines the bootstrap method proposed by Simar and Wilson (1998) for DEA efficie...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
This paper establishes that the minimum error rates in coverage probabilities of one- and sym-metric...
It is widely known that bootstrap failure can often be remedied by using a technique known as the 'm...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...
Includes bibliographical references (pages [15]-16).Confidence sets are constructed in almost any st...
Consistency of the bootstrap second moments does not usually follow from the proofs of consistency o...
A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered ...
A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered ...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
This occurs because the bootstrap distribution of a normalised sum of infinite variance random varia...
This paper promotes information theoretic inference in the context of minimum distance estimation. V...
Matching estimators are widely used for the evaluation of programs or treatments. Often researchers ...
This article investigates the bootstrap methods for producing good approximate confidence intervals....
The optimal minimum distance (OMD) estimator for models of covariance structures is asymptotically e...
This paper further examines the bootstrap method proposed by Simar and Wilson (1998) for DEA efficie...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
This paper establishes that the minimum error rates in coverage probabilities of one- and sym-metric...
It is widely known that bootstrap failure can often be remedied by using a technique known as the 'm...
A bootstrap method for generating confidence intervals in linear models is suggested. The method is ...
Includes bibliographical references (pages [15]-16).Confidence sets are constructed in almost any st...
Consistency of the bootstrap second moments does not usually follow from the proofs of consistency o...
A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered ...
A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered ...
International audienceThe bootstrap is a technique for performing statistical inference. The underly...
This occurs because the bootstrap distribution of a normalised sum of infinite variance random varia...
This paper promotes information theoretic inference in the context of minimum distance estimation. V...
Matching estimators are widely used for the evaluation of programs or treatments. Often researchers ...
This article investigates the bootstrap methods for producing good approximate confidence intervals....