Function optimal.params.sloss()
returns maximum likelihood
estimates of theta
and m(k)
using numerical
optimization.
It differs from untb
's optimal.params()
function as it
applies to a network of smaller community samples k
instead of
to a single large community sample.
Although there is a single, common theta
for all communities,
immigration estimates are provided for each local community k
,
sharing a same biogeographical background.
optimal.params.sloss(D, nbres = 100, ci = FALSE, cint = c(0.025, 0.975))
Mean theta
estimate
The vector of estimated immigration numbers I(k)
Output of the bootstrap procedure, if ci = T:
Confidence interval for theta
Confidence intervals for m(k)
theta estimates provided by the resampling procedure
Bootstrapped values of I(k)
Bootstrapped values of m(k)
Species counts over a network of community samples (species by sample table)
Number of resampling rounds for theta
estimation
Specifies whether bootstraps confidence intervals should be provided for estimates
Bounds of confidence intervals, if ci = T
Francois Munoz
Francois Munoz, Pierre Couteron, B. R. Ramesh, and Rampal S. Etienne 2007. “Estimating parameters of neutral communities: from one single large to several small samples”. Ecology 88(10):2482-2488
optimal.params, optimal.params.gst
data(ghats)
optimal.params.sloss(ghats)
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