distr (version 2.6)

Hyper-class: Class "Hyper"

Description

The hypergeometric distribution is used for sampling without replacement. The density of this distribution with parameters m, n and k (named $Np$, $N-Np$, and $n$, respectively in the reference below) is given by $$ p(x) = \left. {m \choose x}{n \choose k-x} \right/ {m+n \choose k}% $$ for $x = 0, ..., k$. C.f. rhyper

Arguments

Objects from the Class

Objects can be created by calls of the form Hyper(m, n, k). This object is a hypergeometric distribution.

Slots

img
Object of class "Naturals": The space of the image of this distribution has got dimension 1 and the name "Natural Space".
param
Object of class "HyperParameter": the parameter of this distribution (m, n, k), declared at its instantiation
r
Object of class "function": generates random numbers (calls function rhyper)
d
Object of class "function": density function (calls function dhyper)
p
Object of class "function": cumulative function (calls function phyper)
q
Object of class "function": inverse of the cumulative function (calls function qhyper). The $alpha$-quantile is defined as the smallest value $x$ such that $p(x) >= alpha$, where $p$ is the cumulative function.
support:
Object of class "numeric": a (sorted) vector containing the support of the discrete density function
.withArith
logical: used internally to issue warnings as to interpretation of arithmetics
.withSim
logical: used internally to issue warnings as to accuracy
.logExact
logical: used internally to flag the case where there are explicit formulae for the log version of density, cdf, and quantile function
.lowerExact
logical: used internally to flag the case where there are explicit formulae for the lower tail version of cdf and quantile function
Symmetry
object of class "DistributionSymmetry"; used internally to avoid unnecessary calculations.

Extends

Class "DiscreteDistribution", directly. Class "UnivariateDistribution", by class "DiscreteDistribution". Class "Distribution", by class "DiscreteDistribution".

Methods

initialize
signature(.Object = "Hyper"): initialize method
m
signature(object = "Hyper"): returns the slot m of the parameter of the distribution
m<-
signature(object = "Hyper"): modifies the slot m of the parameter of the distribution
n
signature(object = "Hyper"): returns the slot n of the parameter of the distribution
n<-
signature(object = "Hyper"): modifies the slot n of the parameter of the distribution
k
signature(object = "Hyper"): returns the slot k of the parameter of the distribution
k<-
signature(object = "Hyper"): modifies the slot k of the parameter of the distribution

See Also

HyperParameter-class DiscreteDistribution-class Naturals-class rhyper

Examples

Run this code
H <- Hyper(m=3,n=3,k=3) # H is a hypergeometric distribution with m=3,n=3,k=3.
r(H)(1) # one random number generated from this distribution, e.g. 2
d(H)(1) # Density of this distribution is  0.45 for x=1.
p(H)(1) # Probability that x<1 is 0.5.
q(H)(.1) # x=1 is the smallest value x such that p(H)(x)>=0.1.
m(H) # m of this distribution is 3.
m(H) <- 2 # m of this distribution is now 2.

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