The Bootstrap
نویسنده
چکیده
The bootstrap is a resampling method for statistical inference. It is commonly used to estimate confidence intervals, but it can also be used to estimate bias and variance of an estimator or calibrate hypothesis tests. A short of papers illustrative of the diversity of recent environmentric applications of the bootstrap includes toxicology [2], fisheries surveys [27], groundwater and air polution modelling [1, 4], chemometrics [35], hydrology [14], phylogenetics [23], spatial point patterns [33], ecological indices [9], and multivariate summarization [24, 38].
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تاریخ انتشار 2001