This paper employs a Monte Carlo study to compare the performance of equal-tailed bootstrap percentile- t , symmetric bootstrap percentile- t , bootstrap percentile, and standard asymptotic confidence intervals in two distinct heteroscedastic regression models. Bootstrap confidence intervals are constructed with both the XY and wild bootstrap algorithm. Theory implies that the percentile- t methods will outperform the other methods, where performance is based on the convergence rate of empirical coverage to the nominal level. Results are consistent across models, in that in the case of the XY bootstrap algorithm the symmetric percentile- t method outperforms the other methods, but in the case of the wild bootstrap algorithm the two percenti...
Four different bootstrap methods for estimating confidence intervals (CIs) for a coefficient alpha d...
<p>Comparison of bootstrap 95% percentile confidence intervals of average F-measure.</p
Traditional inferential procedures often fail with censored and truncated data, especially when samp...
This paper employs a Monte Carlo study to compare the performance of equal-tailed bootstrap percenti...
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
International audienceThe problem of building bootstrap confidence intervals for small probabilities...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
AbstractWe study the large sample behavior of the standard bootstrap, the m-out-of-n bootstrap, and ...
We study the construction of confidence intervals for efficiency levels of individual firms in stoch...
In studies in which a binary response for each subject is observed, the success probability and func...
Results from exploratory three-way analysis techniques such as CANDECOMP/PARAFAC and Tucker3 analysi...
This article investigates the bootstrap methods for producing good approximate confidence intervals....
The linear mixed model (LMM) is a popular statistical model for the analysis of longitudinal data. H...
In this study, we propose confidence intervals and their bootstrap versions for the difference of va...
Four different bootstrap methods for estimating confidence intervals (CIs) for a coefficient alpha d...
<p>Comparison of bootstrap 95% percentile confidence intervals of average F-measure.</p
Traditional inferential procedures often fail with censored and truncated data, especially when samp...
This paper employs a Monte Carlo study to compare the performance of equal-tailed bootstrap percenti...
International audienceIn regression models, appropriate bootstrap methods for inference robust to he...
In traditional bootstrap applications the size of a bootstrap sample equals the parent sample size, ...
International audienceThe problem of building bootstrap confidence intervals for small probabilities...
This paper considers the problem of choosing the number of bootstrap repetitions B for bootstrap sta...
AbstractWe study the large sample behavior of the standard bootstrap, the m-out-of-n bootstrap, and ...
We study the construction of confidence intervals for efficiency levels of individual firms in stoch...
In studies in which a binary response for each subject is observed, the success probability and func...
Results from exploratory three-way analysis techniques such as CANDECOMP/PARAFAC and Tucker3 analysi...
This article investigates the bootstrap methods for producing good approximate confidence intervals....
The linear mixed model (LMM) is a popular statistical model for the analysis of longitudinal data. H...
In this study, we propose confidence intervals and their bootstrap versions for the difference of va...
Four different bootstrap methods for estimating confidence intervals (CIs) for a coefficient alpha d...
<p>Comparison of bootstrap 95% percentile confidence intervals of average F-measure.</p
Traditional inferential procedures often fail with censored and truncated data, especially when samp...