gumbelII {VGAM} | R Documentation |
Gumbel-II Regression Family Function
Description
Maximum likelihood estimation of the 2-parameter Gumbel-II distribution.
Usage
gumbelII(lscale = "loglink", lshape = "loglink", iscale = NULL, ishape = NULL,
probs.y = c(0.2, 0.5, 0.8), perc.out = NULL, imethod = 1,
zero = "shape", nowarning = FALSE)
Arguments
nowarning |
Logical. Suppress a warning? |
lshape , lscale |
Parameter link functions applied to the
(positive) shape parameter (called |
Parameter link functions applied to the
ishape , iscale |
Optional initial values for the shape and scale parameters. |
imethod |
See |
zero , probs.y |
Details at |
perc.out |
If the fitted values are to be quantiles then set this argument to be the percentiles of these, e.g., 50 for median. |
Details
The Gumbel-II density for a response Y
is
f(y;b,s) = s y^{s-1} \exp[-(y/b)^s] / (b^s)
for b > 0
, s > 0
, y > 0
.
The cumulative distribution function is
F(y;b,s) = \exp[-(y/b)^{-s}].
The mean of Y
is b \, \Gamma(1 - 1/s)
(returned as the fitted values)
when s>1
,
and the variance is b^2\,\Gamma(1-2/s)
when
s>2
.
This distribution looks similar to weibullR
, and is
due to Gumbel (1954).
This VGAM family function currently does not handle censored data. Fisher scoring is used to estimate the two parameters. Probably similar regularity conditions hold for this distribution compared to the Weibull distribution.
Value
An object of class "vglmff"
(see vglmff-class
).
The object is used by modelling functions such as vglm
,
and vgam
.
Note
See weibullR
.
This VGAM family function handles multiple responses.
Author(s)
T. W. Yee
References
Gumbel, E. J. (1954). Statistical theory of extreme values and some practical applications. Applied Mathematics Series, volume 33, U.S. Department of Commerce, National Bureau of Standards, USA.
See Also
Examples
gdata <- data.frame(x2 = runif(nn <- 1000))
gdata <- transform(gdata, heta1 = +1,
heta2 = -1 + 0.1 * x2,
ceta1 = 0,
ceta2 = 1)
gdata <- transform(gdata, shape1 = exp(heta1),
shape2 = exp(heta2),
scale1 = exp(ceta1),
scale2 = exp(ceta2))
gdata <- transform(gdata,
y1 = rgumbelII(nn, scale = scale1, shape = shape1),
y2 = rgumbelII(nn, scale = scale2, shape = shape2))
fit <- vglm(cbind(y1, y2) ~ x2,
gumbelII(zero = c(1, 2, 3)), data = gdata, trace = TRUE)
coef(fit, matrix = TRUE)
vcov(fit)
summary(fit)