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Rdistance (version 1.2.2)

cosine.expansion: Calcululation of cosine expansion for detection function likelihoods.

Description

Computes the cosine expansion terms used in the likelihood of a distance analysis. More generally, will compute a cosine expansion of any numeric vector.

Usage

cosine.expansion(x, expansions)

Arguments

x
In a distance analysis, x is a numeric vector of the proportion of a strip transect's half-width at which a group of individuals were sighted. If $w$ is the strip transect half-width or maximum sighting distance, and $d$ is the perpe
expansions
A scaler specifying the number of expansion terms to compute. Must be one of the integers 1, 2, 3, 4, or 5.

Value

  • A matrix of size length(x) X expansions. The columns of this matrix are the cosine expansions of x. Column 1 is the first expansion term of x, column 2 is the second expansion term of x, and so on up to expansions.

Details

There are, in general, several expansions that can be called cosine. The cosine expansion used here is:
  • First term:$$h_1(x)=\cos(2\pi x),$$
  • Second term:$$h_2(x)=\cos(3\pi x),$$
  • Third term:$$h_3(x)=\cos(4\pi x),$$
  • Fourth term:$$h_4(x)=\cos(5\pi x),$$
  • Fifth term:$$h_5(x)=\cos(6\pi x),$$
The maximum number of expansion terms computed is 5.

See Also

F.dfunc.estim, hermite.expansion, simple.expansion, and the discussion of user defined likelihoods in F.dfunc.estim.

Examples

Run this code
set.seed(33328)
x <- rnorm(1000) * 100
x <- x[ 0 < x & x < 100 ]
cos.expn <- cosine.expansion( x, 5 )

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