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evmix (version 1.0)

lnormgpd: Log-likelihood of Normal Bulk and GPD Tail Extreme Value Mixture Model

Description

Log-likelihood and negative log-likelihood for the extreme value mixture model with normal for bulk distribution upto the threshold and conditional GPD above threshold.

Usage

lnormgpd(x, nmean = 0, nsd = 1,
    u = qnorm(0.9, nmean, nsd), sigmau = nsd, xi = 0,
    phiu = TRUE, log = TRUE)

  nlnormgpd(pvector, x, phiu = TRUE, finitelik = FALSE)

Arguments

phiu
probability of being above threshold [0,1] or logical
x
vector of sample data
pvector
vector of initial values of mixture model parameters (nmean, nsd, u, sigmau, xi) or NULL
finitelik
logical, should log-likelihood return finite value for invalid parameters
nmean
normal mean
nsd
normal standard deviation (non-negative)
u
threshold
sigmau
scale parameter (non-negative)
xi
shape parameter
log
logical, if TRUE then log density

Value

Details

The likelihood functions for the extreme value mixture model with normal bulk and GPD tail, as used in the maximum likelihood fitting function fnormgpd. They are designed to be used for MLE in fnormgpd but are available for wider usage, e.g. constructing your own extreme value mixture models. See fnormgpd and fgpd for full details. Log-likelihood calculations are carried out in lnormgpd, which takes parameters as inputs in the same form as distribution functions. The negative log-likelihood is a wrapper for lnormgpd, designed towards making it useable for optimisation (e.g. parameters are given a vector as first input). The tail fraction phiu is treated separately to the other parameters, to allow for all it's representations. Unlike the distribution functions normgpd the phiu must be either logical (TRUE or FALSE) or numerical in range $(0, 1)$. The default is to specify phiu=TRUE so that the tail fraction is specified by normal distribution $\phi_u = 1 - H(u)$, or phiu=FALSE to treat the tail fraction as an extra parameter estimated using the sample proportion. Specify a numeric phiu as pre-specified probability $(0, 1)$. Notice that the tail fraction probability cannot be 0 or 1 otherwise there would be no contribution from either tail or bulk components respectively. The function lnormgpd carries out the calculations for the log-likelihood directly, which can be exponentiated to give actual likelihood using (log=FALSE).

References

http://en.wikipedia.org/wiki/Normal_distribution http://en.wikipedia.org/wiki/Generalized_Pareto_distribution Scarrott, C.J. and MacDonald, A. (2012). A review of extreme value threshold estimation and uncertainty quantification. REVSTAT - Statistical Journal 10(1), 33-59. Available from http://www.ine.pt/revstat/pdf/rs120102.pdf Behrens, C.N., Lopes, H.F. and Gamerman, D. (2004). Bayesian analysis of extreme events with threshold estimation. Statistical Modelling. 4(3), 227-244.

See Also

lgpd and gpd Other normgpd: dnormgpd, fnormgpd, normgpd, pnormgpd, qnormgpd, rnormgpd