Dagum Distribution Family Function
Maximum likelihood estimation of the 3-parameter Dagum distribution.
dagum(lscale = "loglink", lshape1.a = "loglink", lshape2.p = "loglink", iscale = NULL, ishape1.a = NULL, ishape2.p = NULL, imethod = 1, lss = TRUE, gscale = exp(-5:5), gshape1.a = seq(0.75, 4, by = 0.25), gshape2.p = exp(-5:5), probs.y = c(0.25, 0.5, 0.75), zero = "shape")
lss |
See |
lshape1.a, lscale, lshape2.p |
Parameter link functions applied to the
(positive) parameters |
iscale, ishape1.a, ishape2.p, imethod, zero |
See |
gscale, gshape1.a, gshape2.p |
See |
probs.y |
See |
The 3-parameter Dagum distribution is the 4-parameter generalized beta II distribution with shape parameter q=1. It is known under various other names, such as the Burr III, inverse Burr, beta-K, and 3-parameter kappa distribution. It can be considered a generalized log-logistic distribution. Some distributions which are special cases of the 3-parameter Dagum are the inverse Lomax (a=1), Fisk (p=1), and the inverse paralogistic (a=p). More details can be found in Kleiber and Kotz (2003).
The Dagum distribution has a cumulative distribution function
F(y) = [1 + (y/b)^(-a)]^(-p)
which leads to a probability density function
f(y) = ap y^(ap-1) / [b^(ap) (1 + (y/b)^a)^(p+1)]
for a > 0, b > 0, p > 0, y >= 0.
Here, b is the scale parameter scale
,
and the others are shape parameters.
The mean is
E(Y) = b gamma(p + 1/a) gamma(1 - 1/a) / gamma(p)
provided -ap < 1 < a; these are returned as the fitted values. This family function handles multiple responses.
An object of class "vglmff"
(see vglmff-class
).
The object is used by modelling functions such as vglm
,
and vgam
.
See the notes in genbetaII
.
From Kleiber and Kotz (2003), the MLE is rather sensitive to isolated observations located sufficiently far from the majority of the data. Reliable estimation of the scale parameter require n>7000, while estimates for a and p can be considered unbiased for n>2000 or 3000.
T. W. Yee
Kleiber, C. and Kotz, S. (2003). Statistical Size Distributions in Economics and Actuarial Sciences, Hoboken, NJ, USA: Wiley-Interscience.
ddata <- data.frame(y = rdagum(n = 3000, scale = exp(2), shape1 = exp(1), shape2 = exp(1))) fit <- vglm(y ~ 1, dagum(lss = FALSE), data = ddata, trace = TRUE) fit <- vglm(y ~ 1, dagum(lss = FALSE, ishape1.a = exp(1)), data = ddata, trace = TRUE) coef(fit, matrix = TRUE) Coef(fit) summary(fit)
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