gompertz.RdMaximum likelihood estimation of the 2-parameter Gompertz distribution.
gompertz(lscale = "loglink", lshape = "loglink",
iscale = NULL, ishape = NULL,
nsimEIM = 500, zero = NULL, nowarning = FALSE)Logical. Suppress a warning? Ignored for VGAM 0.9-7 and higher.
Parameter link functions applied to the
shape parameter a,
scale parameter scale.
All parameters are positive.
See Links for more choices.
The Gompertz distribution has a cumulative distribution function
$$F(x;\alpha, \beta) = 1 - \exp[-(\alpha/\beta) \times (\exp(\beta x) - 1) ]$$
which leads to a probability density function
$$f(x; \alpha, \beta) = \alpha \exp(\beta x)
\exp [-(\alpha/\beta) \times (\exp(\beta x) - 1) ]$$
for \(\alpha > 0\),
\(\beta > 0\),
\(x > 0\).
Here, \(\beta\) is called the scale parameter scale,
and \(\alpha\) is called the shape parameter
(one could refer to \(\alpha\) as a location parameter and \(\beta\) as
a shape parameter—see Lenart (2014)).
The mean is involves an exponential integral function.
Simulated Fisher scoring is used and multiple responses are handled.
The Makeham distibution has an additional parameter compared to the Gompertz distribution. If \(X\) is defined to be the result of sampling from a Gumbel distribution until a negative value \(Z\) is produced, then \(X = -Z\) has a Gompertz distribution.
An object of class "vglmff" (see vglmff-class).
The object is used by modelling functions such as vglm,
and vgam.
Lenart, A. (2014). The moments of the Gompertz distribution and maximum likelihood estimation of its parameters. Scandinavian Actuarial Journal, 2014, 255–277.
The same warnings in makeham apply here too.
if (FALSE) { # \dontrun{
gdata <- data.frame(x2 = runif(nn <- 1000))
gdata <- transform(gdata, eta1 = -1,
eta2 = -1 + 0.2 * x2,
ceta1 = 1,
ceta2 = -1 + 0.2 * x2)
gdata <- transform(gdata, shape1 = exp(eta1),
shape2 = exp(eta2),
scale1 = exp(ceta1),
scale2 = exp(ceta2))
gdata <- transform(gdata, y1 = rgompertz(nn, scale = scale1, shape = shape1),
y2 = rgompertz(nn, scale = scale2, shape = shape2))
fit1 <- vglm(y1 ~ 1, gompertz, data = gdata, trace = TRUE)
fit2 <- vglm(y2 ~ x2, gompertz, data = gdata, trace = TRUE)
coef(fit1, matrix = TRUE)
Coef(fit1)
summary(fit1)
coef(fit2, matrix = TRUE)
summary(fit2)
} # }