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Latest revision as of 23:16, 1 March 2023

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In probability theory and statistics, the noncentral chi distribution[1] is a noncentral generalization of the chi distribution. It is also known as the generalized Rayleigh distribution.

Definition

If Xi are k independent, normally distributed random variables with means μi and variances σi2, then the statistic

Z=i=1k(Xiσi)2

is distributed according to the noncentral chi distribution. The noncentral chi distribution has two parameters: k which specifies the number of degrees of freedom (i.e. the number of Xi), and λ which is related to the mean of the random variables Xi by:

λ=i=1k(μiσi)2

Properties

Probability density function

The probability density function (pdf) is

f(x;k,λ)=e(x2+λ2)/2xkλ(λx)k/2Ik/21(λx)

where Iν(z) is a modified Bessel function of the first kind.

Raw moments

The first few raw moments are:

μ1'=π2L1/2(k/21)(λ22)
μ2'=k+λ2
μ3'=3π2L3/2(k/21)(λ22)
μ4'=(k+λ2)2+2(k+2λ2)

where Ln(a)(z) is a Laguerre function. Note that the 2nth moment is the same as the nth moment of the noncentral chi-squared distribution with λ being replaced by λ2.

Bivariate non-central chi distribution

Let Xj=(X1j,X2j),j=1,2,n, be a set of n independent and identically distributed bivariate normal random vectors with marginal distributions N(μi,σi2),i=1,2, correlation ρ, and mean vector and covariance matrix

E(Xj)=μ=(μ1,μ2)T,Σ=[σ11σ12σ21σ22]=[σ12ρσ1σ2ρσ1σ2σ22],

with Σ positive definite. Define

U=[j=1nX1j2σ12]1/2,V=[j=1nX2j2σ22]1/2.

Then the joint distribution of U, V is central or noncentral bivariate chi distribution with n degrees of freedom.[2][3] If either or both μ10 or μ20 the distribution is a noncentral bivariate chi distribution.

  • If X is a random variable with the non-central chi distribution, the random variable X2 will have the noncentral chi-squared distribution. Other related distributions may be seen there.
  • If X is chi distributed: Xχk then X is also non-central chi distributed: XNCχk(0). In other words, the chi distribution is a special case of the non-central chi distribution (i.e., with a non-centrality parameter of zero).
  • A noncentral chi distribution with 2 degrees of freedom is equivalent to a Rice distribution with σ=1.
  • If X follows a noncentral chi distribution with 1 degree of freedom and noncentrality parameter λ, then σX follows a folded normal distribution whose parameters are equal to σλ and σ2 for any value of σ.

References

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