Title of article :
A modified bootstrap procedure for cluster sampling variance estimation of species richness
Author/Authors :
Steen Magnussen&Ron McRoberts، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Variance estimators for probability sample-based predictions of species richness (S) are typically conditional
on the sample (expected variance). In practical applications, sample sizes are typically small, and
the variance of input parameters to a richness estimator should not be ignored. We propose a modified
bootstrap variance estimator that attempts to capture the sampling variance by generating B replications
of the richness prediction from stochastically resampled data of species incidence. The variance estimator
is demonstrated for the observed richness (SO), five richness estimators, and with simulated cluster sampling
(without replacement) in 11 finite populations of forest tree species. A key feature of the bootstrap
procedure is a probabilistic augmentation of a species incidence matrix by the number of species expected
to be ‘lost’ in a conventional bootstrap resampling scheme. In Monte-Carlo (MC) simulations, the modified
bootstrap procedure performed well in terms of tracking the average MC estimates of richness and
standard errors. Bootstrap-based estimates of standard errors were as a rule conservative. Extensions to
other sampling designs, estimators of species richness and diversity, and estimates of change are possible.
Keywords :
forest vegetation survey , speciesoccurrence , species covariance , Biodiversity , tree species , coverage
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS