Confidence intervals are estimated by using bootstrap
resampling (see boot
). The bootstrap
generates a series of random selections with replacement
for the original data and calculates the model parameters
sigma and kappa for every selection. This set of
parameters is used to estimate confidence intervals. The parameter "type
" determines the type of
interval that is calculated. The values "norm
",
"basic
", "stud
", "perc
" or
"bca
" are currently allowed. See
boot.ci
for details.
The bootstrap is computed once in the usl
function so calling confint
multiple times for a
specific USL object will return identical results.
Creating multiple USL objects for a given set of input
values is almost certainly going to produce different
confidence intervals since random numbers are used to
bootstrap.
Calculating confidence intervals for a small number of
observations is unreliable. The function will print
warning or error messages if the calculated intervals are
dubious or the estimation is not possible.