2011
DOI: 10.1002/wics.182
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Bootstrap

Abstract: This article provides an introduction to the bootstrap. The bootstrap provides statistical inferences—standard error and bias estimates, confidence intervals, and hypothesis tests—without assumptions such as Normal distributions or equal variances. As such, bootstrap methods can be remarkably more accurate than classical inferences based on Normal or t distributions. The bootstrap uses the same basic procedure regardless of the statistic being calculated, without requiring the use of application‐specific formu… Show more

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Cited by 213 publications
(126 citation statements)
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“…Stability and reliability of the DiCA model were assessed via bootstrap (56,57), and permutation (58) resampling. Inference tests indicate if the omnibus model is significant, which components are significant, and which variables or groups significantly contribute to the component structure (see Supplementary Material, available online).…”
Section: Methodsmentioning
confidence: 99%
“…Stability and reliability of the DiCA model were assessed via bootstrap (56,57), and permutation (58) resampling. Inference tests indicate if the omnibus model is significant, which components are significant, and which variables or groups significantly contribute to the component structure (see Supplementary Material, available online).…”
Section: Methodsmentioning
confidence: 99%
“…More specifically, we first calculated the actual probability of using a strategy (e.g., Win-Stay) in the observed data and then permuted this data 10000 times to construct the permutation or null distribution. We then calculated the probability of obtaining the observed value for use of the strategy based on the null distribution from which we estimated p-values (Hesterberg et al, 2005).…”
Section: Viral Constructsmentioning
confidence: 99%
“…The percentile intervals are asymmetrical to the right side. In general, the bootstrap percentile interval is asymmetrical with asymmetry depending on the sample, Hesterberg …”
Section: Examplementioning
confidence: 99%
“…The bootstrap percentile interval is inaccurate when bias or skewness is present in the bootstrap distribution, unless the sample sizes are very large, Hesterberg et al . Besides, the ordinary bootstrap does not work very well for statistics such as the median or other quantiles that depend heavily on a small number of observations out of a larger sample, Hesterberg . For these reasons, a more appropriate bootstrap interval to estimate the PCIs is a topic of future research.…”
Section: Examplementioning
confidence: 99%