| Betanorm {VGAM} | R Documentation |
Density, distribution function, quantile function and random generation for the univariate beta-normal distribution.
dbetanorm(x, shape1, shape2, mean=0, sd=1, log=FALSE) pbetanorm(q, shape1, shape2, mean=0, sd=1, lower.tail=TRUE, log.p=FALSE) qbetanorm(p, shape1, shape2, mean=0, sd=1) rbetanorm(n, shape1, shape2, mean=0, sd=1)
x, q |
vector of quantiles. |
p |
vector of probabilities. |
n |
number of observations. Must be a positive integer of length 1. |
shape1, shape2 |
the two (positive) shape parameters of the standard beta distribution.
They are called |
mean, sd |
the mean and standard deviation of the univariate
normal distribution
( |
log, log.p |
Logical.
If |
lower.tail |
Logical. If |
The function betanormal1, the VGAM family function
for estimating the parameters,
has not yet been written.
dbetanorm gives the density,
pbetanorm gives the distribution function,
qbetanorm gives the quantile function, and
rbetanorm generates random deviates.
T. W. Yee
pp.146–152 of Gupta, A. K. and Nadarajah, S. (2004) Handbook of Beta Distribution and Its Applications, New York: Marcel Dekker.
## Not run:
shape1 = 0.1; shape2 = 4; m = 1
x = seq(-10, 2, len=501)
plot(x, dbetanorm(x, shape1, shape2, m=m), type="l", ylim=0:1, las=1,
ylab=paste("betanorm(",shape1,", ",shape2,", m=",m, ", sd=1)", sep=""),
main="Blue is density, red is cumulative distribution function",
sub="Purple lines are the 10,20,...,90 percentiles", col="blue")
lines(x, pbetanorm(x, shape1, shape2, m=m), col="red")
abline(h=0)
probs = seq(0.1, 0.9, by=0.1)
Q = qbetanorm(probs, shape1, shape2, m=m)
lines(Q, dbetanorm(Q, shape1, shape2, m=m), col="purple", lty=3, type="h")
lines(Q, pbetanorm(Q, shape1, shape2, m=m), col="purple", lty=3, type="h")
abline(h=probs, col="purple", lty=3)
pbetanorm(Q, shape1, shape2, m=m) - probs # Should be all 0
## End(Not run)