A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered for finite samples and a possible model misspecification. Theoretical results justify the bootstrap consistency for a small or moderate sample size and allow to control the impact of the parameter dimension p: the bootstrap approximation works if p3/n is small. The main result about bootstrap consistency continues to apply even if the underlying parametric model is misspecified under the so called Small Modeling Bias condition. In the case when the true model deviates significantly from the considered parametric family, the bootstrap procedure is still applicable but it becomes a bit conservative: the size of the constructed confidence sets i...
The bootstrap is a statistical technique used more and more widely in econometrics. While it is capa...
Classical statistical theory ignores model selection in assessing estimation accuracy. Here we consi...
<p>In case of small samples, asymptotic confidence sets may be inaccurate, with their actual coverag...
A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered ...
A multiplier bootstrap procedure for construction of likelihood-based congidence sets is considered ...
A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered ...
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...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
We will study here different resampling procedures for creating confidence sets in linear models. A ...
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...
The size distortion problem is clearly indicative of the small-sample approximation in the Markov-sw...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
Consider M-estimation in a semiparametric model that is charac-terized by a Euclidean parameter of i...
The bootstrap is a statistical technique used more and more widely in econometrics. While it is capa...
Classical statistical theory ignores model selection in assessing estimation accuracy. Here we consi...
<p>In case of small samples, asymptotic confidence sets may be inaccurate, with their actual coverag...
A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered ...
A multiplier bootstrap procedure for construction of likelihood-based congidence sets is considered ...
A multiplier bootstrap procedure for construction of likelihood-based confidence sets is considered ...
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...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
We will study here different resampling procedures for creating confidence sets in linear models. A ...
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...
The size distortion problem is clearly indicative of the small-sample approximation in the Markov-sw...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
Consider M-estimation in a semiparametric model that is charac-terized by a Euclidean parameter of i...
The bootstrap is a statistical technique used more and more widely in econometrics. While it is capa...
Classical statistical theory ignores model selection in assessing estimation accuracy. Here we consi...
<p>In case of small samples, asymptotic confidence sets may be inaccurate, with their actual coverag...