This function defines the generalized beta type 1 distribution, a four parameter distribution.
The function GB1
creates a gamlss.family
object which can be used to fit the distribution using the function
gamlss()
. Note the range of the response variable is from zero to one.
The functions dGB1
,
GB1
, qGB1
and rGB1
define the density,
distribution function, quantile function and random
generation for the generalized beta type 1 distribution.
GB1(mu.link = "logit", sigma.link = "logit", nu.link = "log",
tau.link = "log")
dGB1(x, mu = 0.5, sigma = 0.4, nu = 1, tau = 1, log = FALSE)
pGB1(q, mu = 0.5, sigma = 0.4, nu = 1, tau = 1, lower.tail = TRUE,
log.p = FALSE)
qGB1(p, mu = 0.5, sigma = 0.4, nu = 1, tau = 1, lower.tail = TRUE,
log.p = FALSE)
rGB1(n, mu = 0.5, sigma = 0.4, nu = 1, tau = 1)
Defines the mu.link
, with "identity" link as the default for the mu
parameter.
Defines the sigma.link
, with "log" link as the default for the sigma
parameter.
Defines the nu.link
, with "log" link as the default for the nu
parameter.
Defines the tau.link
, with "log" link as the default for the tau
parameter.
vector of quantiles
vector of location parameter values
vector of scale parameter values
vector of skewness nu
parameter values
vector of kurtosis tau
parameter values
logical; if TRUE, probabilities p are given as log(p).
logical; if TRUE (default), probabilities are P[X <= x], otherwise, P[X > x]
vector of probabilities.
number of observations. If length(n) > 1
, the length is
taken to be the number required
GB1()
returns a gamlss.family
object which can be used to fit the GB1 distribution in the
gamlss()
function.
dGB1()
gives the density, pGB1()
gives the distribution
function, qGB1()
gives the quantile function, and rGB1()
generates random deviates.
The qSHASH and rSHASH are slow since they are relying on golden section for finding the quantiles
The probability density function of the Generalized Beta type 1, (GB1
), is defined as
$$f(y|\mu,\sigma\,\nu,\tau)= \frac{\tau \nu^\beta y^{\tau\alpha-1} (1-y^\tau)^{\beta-1}}{B(\alpha,\beta)[\nu+(1-\nu) y^\tau]^{\alpha+\beta}}$$
where \( 0 < y < 1 \), \(\alpha = \mu(1-\sigma^2)/\sigma^2\) and \(\beta=(1-\mu)(1-\sigma^2)/\sigma^2\), and \(\alpha>0\), \(\beta>0\). Note the \(\mu=\alpha /(\alpha+\beta)\), \(\sigma = (\alpha+\beta+1)^{-1/2}\). .
Rigby, R. A. and Stasinopoulos D. M. (2005). Generalized additive models for location, scale and shape,(with discussion), Appl. Statist., 54, part 3, pp 507-554.
Stasinopoulos D. M. Rigby R. A. and Akantziliotou C. (2006) Instructions on how to use the GAMLSS package in R. Accompanying documentation in the current GAMLSS help files, (see also http://www.gamlss.org/).
Stasinopoulos D. M. Rigby R.A. (2007) Generalized additive models for location scale and shape (GAMLSS) in R. Journal of Statistical Software, Vol. 23, Issue 7, Dec 2007, http://www.jstatsoft.org/v23/i07.
GB1() #
y<- rGB1(200, mu=.1, sigma=.6, nu=1, tau=4)
hist(y)
# library(gamlss)
# histDist(y, family=GB1, n.cyc=60)
curve(dGB1(x, mu=.1 ,sigma=.6, nu=1, tau=4), 0.01, 0.99, main = "The GB1
density mu=0.1, sigma=.6, nu=1, tau=4")
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