spatstat (version 1.40-0)

dmixpois: Mixed Poisson Distribution

Description

Density, distribution function, quantile function and random generation for a mixture of Poisson distributions.

Usage

dmixpois(x, mu, sd, invlink = exp, GHorder = 5)
pmixpois(q, mu, sd, invlink = exp, lower.tail = TRUE, GHorder = 5)
qmixpois(p, mu, sd, invlink = exp, lower.tail = TRUE, GHorder = 5)
rmixpois(n, mu, sd, invlink = exp)

Arguments

x
vector of (non-negative integer) quantiles.
q
vector of quantiles.
p
vector of probabilities.
n
number of random values to return.
mu
Mean of the linear predictor. A single numeric value.
sd
Standard deviation of the linear predictor. A single numeric value.
invlink
Inverse link function. A function in the Rlanguage, used to transform the linear predictor into the parameter lambda of the Poisson distribution.
lower.tail
Logical. If TRUE (the default), probabilities are $P[X <= x]$,="" otherwise,="" $p[x=""> x]$.
GHorder
Number of quadrature points in the Gauss-Hermite quadrature approximation. A small positive integer.

Value

  • Numeric vector: dmixpois gives probability masses, ppois gives cumulative probabilities, qpois gives (non-negative integer) quantiles, and rpois generates (non-negative integer) random deviates.

Details

These functions are analogous to dpois ppois, qpois and rpois except that they apply to a mixture of Poisson distributions.

In effect, the Poisson mean parameter lambda is randomised by setting lambda = invlink(Z) where Z has a Gaussian $N(\mu,\sigma^2)$ distribution. The default is invlink=exp which means that lambda is lognormal. Set invlink=I to assume that lambda is approximately Normal.

For dmixpois, pmixpois and qmixpois, the probability distribution is approximated using Gauss-Hermite quadrature. For rmixpois, the deviates are simulated exactly.

See Also

dpois, gauss.hermite.

Examples

Run this code
dmixpois(7, 10, 1, invlink = I)
  dpois(7, 10)

  pmixpois(7, log(10), 0.2)
  ppois(7, 10)

  qmixpois(0.95, log(10), 0.2)
  qpois(0.95, 10)

  x <- rmixpois(100, log(10), log(1.2))
  mean(x)
  var(x)

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