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VGAM (version 0.8-7)

Nakagami: Nakagami Distribution

Description

Density, cumulative distribution function, quantile function and random generation for the Nakagami distribution.

Usage

dnaka(x, shape, scale = 1, log = FALSE)
pnaka(q, shape, scale = 1)
qnaka(p, shape, scale = 1, ...)
rnaka(n, shape, scale = 1, Smallno = 1.0e-6)

Arguments

x, q
vector of quantiles.
p
vector of probabilities.
n
number of observations. Must be a positive integer of length 1.
shape, scale
arguments for the parameters of the distribution. See nakagami for more details. For rnaka, arguments shape and scale must be of length 1.
Smallno
Numeric, a small value used by the rejection method for determining the upper limit of the distribution. That is, pnaka(U) > 1-Smallno where U is the upper limit.
...
Arguments that can be passed into uniroot.
log
Logical. If log = TRUE then the logarithm of the density is returned.

Value

  • dnaka gives the density, pnaka gives the cumulative distribution function, qnaka gives the quantile function, and rnaka generates random deviates.

Details

See nakagami for more details.

See Also

nakagami.

Examples

Run this code
x = seq(0, 3.2, len = 200)
plot(x, dgamma(x, shape = 1), type = "n", col = "black", ylab = "",
     ylim = c(0,1.5), main = "dnaka(x, shape)")
lines(x, dnaka(x, shape = 1), col = "orange")
lines(x, dnaka(x, shape = 2), col = "blue")
lines(x, dnaka(x, shape = 3), col = "green")
legend(2, 1.0, col = c("orange","blue","green"), lty = rep(1, len = 3),
       legend = paste("shape =", c(1, 2, 3)))

plot(x, pnorm(x), type = "n", col = "black", ylab = "",
     ylim = 0:1, main = "pnaka(x, shape)")
lines(x, pnaka(x, shape = 1), col = "orange")
lines(x, pnaka(x, shape = 2), col = "blue")
lines(x, pnaka(x, shape = 3), col = "green")
legend(2, 0.6, col = c("orange","blue","green"), lty = rep(1, len = 3),
       legend = paste("shape =", c(1, 2, 3)))

probs = seq(0.1, 0.9, by = 0.1)
pnaka(qnaka(p = probs, shape = 2), shape = 2) - probs  # Should be all 0

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