gh | R Documentation |
Density, distribution function, quantile function and random generation for the generalized hyperbolic distribution.
dgh(x, alpha = 1, beta = 0, delta = 1, mu = 0, lambda = -1/2, log = FALSE)
pgh(q, alpha = 1, beta = 0, delta = 1, mu = 0, lambda = -1/2)
qgh(p, alpha = 1, beta = 0, delta = 1, mu = 0, lambda = -1/2)
rgh(n, alpha = 1, beta = 0, delta = 1, mu = 0, lambda = -1/2)
x , q |
a numeric vector of quantiles. |
p |
a numeric vector of probabilities. |
n |
number of observations. |
alpha |
first shape parameter. |
beta |
second shape parameter, should in the range |
delta |
scale parameter, must be zero or positive. |
mu |
location parameter, by default 0. |
lambda |
defines the sublclass, by default |
log |
a logical flag by default |
dgh
gives the density,
pgh
gives the distribution function,
qgh
gives the quantile function, and
rgh
generates random deviates.
The meanings of the parameters correspond to the first
parameterization, pm=1
, which is the default parameterization
for this distribution.
In the second parameterization, pm=2
, alpha
and
beta
take the meaning of the shape parameters (usually named)
zeta
and rho
.
In the third parameterization, pm=3
, alpha
and
beta
take the meaning of the shape parameters (usually named)
xi
and chi
.
In the fourth parameterization, pm=4
, alpha
and
beta
take the meaning of the shape parameters (usually named)
a.bar
and b.bar
.
The generator rgh
is based on the GH algorithm given
by Scott (2004).
numeric vector
David Scott for code implemented from R's
contributed package HyperbolicDist
.
Atkinson, A.C. (1982); The simulation of generalized inverse Gaussian and hyperbolic random variables, SIAM J. Sci. Stat. Comput. 3, 502–515.
Barndorff-Nielsen O. (1977); Exponentially decreasing distributions for the logarithm of particle size, Proc. Roy. Soc. Lond., A353, 401–419.
Barndorff-Nielsen O., Blaesild, P. (1983); Hyperbolic distributions. In Encyclopedia of Statistical Sciences, Eds., Johnson N.L., Kotz S. and Read C.B., Vol. 3, pp. 700–707. New York: Wiley.
Raible S. (2000); Levy Processes in Finance: Theory, Numerics and Empirical Facts, PhD Thesis, University of Freiburg, Germany, 161 pages.
## rgh -
set.seed(1953)
r = rgh(5000, alpha = 1, beta = 0.3, delta = 1)
plot(r, type = "l", col = "steelblue",
main = "gh: alpha=1 beta=0.3 delta=1")
## dgh -
# Plot empirical density and compare with true density:
hist(r, n = 25, probability = TRUE, border = "white", col = "steelblue")
x = seq(-5, 5, 0.25)
lines(x, dgh(x, alpha = 1, beta = 0.3, delta = 1))
## pgh -
# Plot df and compare with true df:
plot(sort(r), (1:5000/5000), main = "Probability", col = "steelblue")
lines(x, pgh(x, alpha = 1, beta = 0.3, delta = 1))
## qgh -
# Compute Quantiles:
qgh(pgh(seq(-5, 5, 1), alpha = 1, beta = 0.3, delta = 1),
alpha = 1, beta = 0.3, delta = 1)
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