lhpd(x, nmean = 0, nsd = 1, xi = 0, log = TRUE)
nlhpd(pvector, x, finitelik = FALSE)nmean, nsd, u,
sigmau, xi) or NULLfhpd.
They are designed to be used for MLE in
fhpd but are available for
wider usage, e.g. constructing your own extreme value
mixture models.
See fhpd and
fgpd for full details.
Log-likelihood calculations are carried out in
lhpd, which takes parameters as
inputs in the same form as distribution functions. The
negative log-likelihood is a wrapper for
lhpd, designed towards making
it useable for optimisation (e.g. parameters are given a
vector as first input).
The function lhpd carries out
the calculations for the log-likelihood directly, which
can be exponentiated to give actual likelihood using
(log=FALSE).lgpd and
gpd. The
condmixt package
written by one of the original authors of the hybrid
Pareto model (Carreau and Bengio, 2008) also has similar
functions for the likelihood of the hybrid Pareto
hpareto.negloglike
and fitting
hpareto.fit.
Other hpd: dhpd, fhpd,
hpd, phpd,
qhpd, rhpd