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Research Report SRR95-017
Matched block bootstrap for dependent data
Edward Carlstein, Kim-Anh Do, Peter Hall Tim Hesterberg, Hans. R. Kunsch
Abstract:
The block bootstrap for time series consists in randomly resampling blocks of
consecutive values of the given data and aligning these blocks into a
bootstrap sample.
Here we suggest improving the performance of this method by aligning with higher
likelihood those blocks which match at their ends. This is achieved by
resampling the
blocks according to a Markov chain whose transitions depend on the data.
The matching
algorithms we propose take some of the dependence structure of the data
into account.
They are based on a kernel estimate of the conditional lag one distribution
or on a
fitted autoregression of small order. Numerical and theoretical analyses in
the case
of estimating the variance of the sample mean show that matching reduces
bias and,
perhaps unexpectedly, has relatively little effect on variance. Our theory
extends to
the case of smooth functions of a vector mean.
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