specpool
is based on incidences in sample sites, and gives a single estimate
for a collection of sample sites (matrix). Function estimateR
is based on abundances (counts) on single sample site.specpool(x, pool)
specpool2vect(X, index = c("Jack.1","Jack.2", "Chao", "Boot","Species"))
estimateR(x, ...)
specpool
result object.specpool
returns a data frame with entries for
observed richness
and each of the indices for each class in pool
vector. The
utility function specpool2vect
maps the pooled values into
a vector giving the value of selected index
for each original
site. Function estimateR
returns the estimates and their
standard errors for each site. The incidence-based estimates in specpool
use the frequencies
of species in a collection of sites.
In the following, $S_P$ is the extrapolated richness in a pool,
$S_0$ is the observed number of species in the
collection, $a_1$ and $a_2$ are the number of species
occurring only in one or only in two sites in the collection, $p_i$
is the frequency of species $i$, and $N$ is the number of
sites in the collection. The variants of extrapolated richness in
specpool
are:
The abundance-based estimates in estimateR
use counts (frequencies) of
species in a single site. If called for a matrix or data frame, the
function will give separate estimates for each site. The two
variants of extrapolated richness in estimateR
are Chao and
ACE. In the Chao estimate
$a_i$ refers to number of species with abundance $i$ instead
of incidence:
Functions estimate the the standard errors of the estimates. These only concern the number of added species, and assume that there is no variance in the observed richness. The equations of standard errors are too complicated to be reproduced in this help page, but they can be studied in the Rsource code of the function. The standard error are based on the following sources: Chao (1987) for the Chao estimate and Smith and van Belle (1984) for the first-order Jackknife and the bootstrap (second-order jackknife is still missing). The variance estimator of $S_{ace}$ was developed by Bob O'Hara (unpublished).
Palmer, M.W. (1990). The estimation of species richness by extrapolation. Ecology 71, 1195--1198.
Smith, E.P & van Belle, G. (1984). Nonparametric estimation of species richness. Biometrics 40, 119--129.
veiledspec
, diversity
, beals
.data(dune)
data(dune.env)
attach(dune.env)
pool <- specpool(dune, Management)
pool
op <- par(mfrow=c(1,2))
boxplot(specnumber(dune) ~ Management, col="hotpink", border="cyan3",
notch=TRUE)
boxplot(specnumber(dune)/specpool2vect(pool) ~ Management, col="hotpink",
border="cyan3", notch=TRUE)
par(op)
data(BCI)
estimateR(BCI[1:5,])
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