The Birnbaum-Saunders distribution - Santos-Neto et al. (2012) (P3 Based on GLM)
Source:R/dBS5.R
dBS5.RdDensity, distribution function, quantile function,
random generation and hazard function for the
Birnbaum-Saunders distribution with
parameters mu and sigma.
Usage
dBS5(x, mu = 1, sigma = 0.5, log = FALSE)
pBS5(q, mu = 1, sigma = 0.5, lower.tail = TRUE, log.p = FALSE)
qBS5(p, mu = 1, sigma = 0.5, lower.tail = TRUE, log.p = FALSE)
rBS5(n, mu = 1, sigma = 0.5)
hBS5(x, mu, sigma)Arguments
- x, q
vector of quantiles.
- mu
parameter (
mu > 0).- sigma
precision parameter \(\delta\) (
sigma > 0).- log, log.p
logical; if TRUE, probabilities p are given as log(p).
- lower.tail
logical; if TRUE (default), probabilities are P[X <= x], otherwise, P[X > x].
- p
vector of probabilities.
- n
number of observations.
Value
dBS5 gives the density, pBS5 gives the distribution
function, qBS5 gives the quantile function, rBS5
generates random deviates and hBS5 gives the hazard function.
Details
The Birnbaum-Saunders with parameters mu and sigma
has density given by
\(f(x|\mu,\sigma) = \frac{\exp(\sigma/2)\sqrt{\sigma+1}}{4\sqrt{\pi\mu}x^{3/2}} \left[ x + \frac{\sigma\mu}{\sigma+1} \right] \exp\left( -\frac{\sigma}{4} \left[ \frac{x(\sigma+1)}{\sigma\mu} + \frac{\sigma\mu}{x(\sigma+1)} \right] \right)\)
for \(x>0\), \(\mu>0\) and \(\sigma>0\). In this parameterization \(E(X) = \mu\) and \(Var(X) = \mu^2 \left[ \frac{2\sigma+5}{(\sigma+1)^2} \right]\).
References
Santos-Neto, M., Cysneiros, F. J. A., Leiva, V., & Ahmed, S. E. (2012). On new parameterizations of the Birnbaum-Saunders distribution. Pakistan Journal of Statistics, 28(1), 1-26.
See also
BS5.
Author
David Villegas Ceballos, david.villegas1@udea.edu.co
Examples
# Example 1
# Plotting the mass function for different parameter values
curve(dBS5(x, mu=1, sigma=2),
from=0.001, to=2,
ylim=c(0, 1.5),
col="royalblue1", lwd=2,
main="Density function",
xlab="x", ylab="f(x)")
curve(dBS5(x, mu=1, sigma=25),
col="tomato",
lwd=2,
add=TRUE)
legend("topright", legend=c("mu=1, sigma=2",
"mu=1, sigma=25"),
col=c("royalblue1", "tomato"), lwd=2, cex=0.6)
# Example 2
# Checking if the cumulative curves converge to 1
curve(pBS5(x, mu=1, sigma=2),
from=0.00001, to=6,
ylim=c(0, 1),
col="royalblue1", lwd=2,
main="Cumulative Distribution Function",
xlab="x", ylab="F(x)")
curve(pBS5(x, mu=1, sigma=25),
col="tomato",
lwd=2,
add=TRUE)
legend("bottomright", legend=c("mu=1, sigma=2",
"mu=1, sigma=25"),
col=c("royalblue1", "tomato", "seagreen"), lwd=2, cex=0.5)
# Example 3
# The quantile function
p <- seq(from=0, to=0.999, length.out=100)
plot(x=qBS5(p, mu=1, sigma=2), y=p, xlab="Quantile",
las=1, ylab="Probability", main="Quantile function ")
curve(pBS5(x, mu=1, sigma=2),
from=0, add=TRUE, col="tomato", lwd=2.5)
# Example 4
# The random function
x <- rBS5(n=10000, mu=1, sigma=25)
hist(x, freq=FALSE)
curve(dBS5(x, mu=1, sigma=25),
add=TRUE, col="tomato", lwd=2)
# Example 5
# The Hazard function
curve(hBS5(x, mu=1, sigma=25), from=0.001, to=6,
col="tomato", ylab="Hazard function", las=1)