paretoIV(location = 0, lscale = "loge", linequality = "loge", lshape = "loge",
escale = list(), einequality = list(), eshape = list(),
iscale = 1, iinequality = 1, ishape = NULL, imethod = 1)
paretoIII(location = 0, lscale = "loge", linequality = "loge",
escale = list(), einequality = list(),
iscale = NULL, iinequality = NULL)
paretoII(location = 0, lscale = "loge", lshape = "loge",
escale = list(), eshape = list(),
iscale = NULL, ishape = NULL)
Links
for more choices.
A log link is the dearg
in Links
for general information.NULL
value means that it is obtained internally.
If convergence failure occurs, use these arguments to input
some alternative initial values."vglmff"
(see vglmff-class
).
The object is used by modelling functions such as vglm
,
and vgam
.The location parameter is assumed known otherwise the Pareto(IV) distribution will not be a regular family. This assumption is not too restrictive in modelling because in typical applications this parameter is known, e.g., in insurance and reinsurance it is pre-defined by a contract and can be represented as a deductible or a retention level.
The inequality parameter is so-called because of its interpretation in the economics context. If we choose a unit shape parameter value and a zero location parameter value then the inequality parameter is the Gini index of inequality, provided $g \leq 1$.
The fitted values are currently NA
because I
haven't worked out what the mean of $Y$ is yet.
There are a number of special cases of the Pareto(IV) distribution.
These include the Pareto(I), Pareto(II), Pareto(III), and Burr family
of distributions.
Denoting $PIV(a,b,g,s)$ as the Pareto(IV) distribution,
the Burr distribution $Burr(b,g,s)$ is $PIV(a=0,b,1/g,s)$,
the Pareto(III) distribution $PIII(a,b,g)$ is $PIV(a,b,g,s=1)$,
the Pareto(II) distribution $PII(a,b,s)$ is $PIV(a,b,g=1,s)$,
and
the Pareto(I) distribution $PI(b,s)$ is $PIV(b,b,g=1,s)$.
Thus the Burr distribution can be fitted using the
nloge
link
function and using the default location=0
argument.
The Pareto(I) distribution can be fitted using pareto1
but there is a slight change in notation: $s=k$ and
$b=\alpha$.
Arnold, B. C. (1983) Pareto Distributions. Fairland, Maryland: International Cooperative Publishing House.
ParetoIV
,
pareto1
,
gpd
.pdata = data.frame(y = rparetoIV(2000, scal = exp(1),
ineq = exp(-0.3), shape = exp(1)))
par(mfrow = c(2,1)); with(pdata, hist(y)); with(pdata, hist(log(y)))
fit = vglm(y ~ 1, paretoIV, pdata, trace = TRUE)
coef(fit, matrix = TRUE)
Coef(fit)
summary(fit)
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