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non-central chi-squared random variable∗ CWoo† 2013-03-21 18:31:48 Let X1 , . . . , Xn be IID random variables, each with the standard normal distribution. Then, for any µ ∈ Rn , the random variable X defined by X= n X (Xi + µi )2 i=1 is called a non-central chi-squared random variable. Its distribution depends only on the number of degrees of freedom n and non-centrality parameter λ ≡ kµk. This is denoted by χ2 (n, λ) and has moment generating function tX λt −n 2 , (1) exp MX (t) ≡ E e = (1 − 2t) 1 − 2t which is defined for all t ∈ C with real part less than 1/2. More generally, for any n, λ ≥ 0, not necessarily integers, a random variable has the non-central chi-squared distribution, χ2 (n, λ), if its moment generating function is given by (??). A non-central chi-squared random variable for any n, λ ≥ 0 can be constructed as follows. Let Y be a (central) chi-squared variable with degree n, Z1 , Z2 , . . . be standard normals, and N have the Poisson(λ/2) distribution. If these are all independent then X≡Y + 2N X Zk2 . k=1 has the χ2 (n, λ) distribution. Correspondingly, the probability density function for X is ∞ X λk −λ/2 fX (x) = e fn+2k (x), (2) 2k k! k=0 ∗ hNoncentralChisquaredRandomVariablei created: h2013-03-21i by: hCWooi version: h36628i Privacy setting: h1i hDefinitioni h62E99i h60E05i † This text is available under the Creative Commons Attribution/Share-Alike License 3.0. You can reuse this document or portions thereof only if you do so under terms that are compatible with the CC-BY-SA license. 1 where x > 0 and fk is the probability density of the χ2(k) distribution. Alternatively, this can be expressed as fX (x) = √ 1 −(x+λ)/2 λx . e (x/λ)n/4−1/2 In/2−1 2 where Iν is a modified Bessel function of the first kind, Iν (x) = ∞ X k=0 ν+2k (x/2) . k! Γ (ν + k + 1) Figure 1: Densities of the non-central chi-squared distribution χ2 (n, λ). Remarks 1. χ2 (n, λ) has mean n + λ and variance 2n + 4λ. 2. χ2 (n, 0) = χ2(n) . The (central) chi-squared random variable is a special case of the non-central chi-squared random variable, when the noncentrality parameter λ = 0. 3. (The reproductive property of chi-squared distributions). If Z1 , . . . , Zm are non-central chi-squared random variables such that each Zi ∼ χ2 (ni , λi ), P then their total Z = ZiP is also Pa non-central chi-squared random variable with distribution χ2 ( ni , λi ). 4. If n > 0 then the χ2 (n, λ) distribution is restricted to the domain (0, ∞) with probability density function (??). On the other hand, if n = 0, then there is also an atom at 0, P(X = 0) = lim MX (t) = e−λ/2 . t→−∞ 5. If x is a multivariate normally distributed n-dimensional random vector with distribution N (µ, V ) where µ is the mean vector and V is the n × n covariance matrix. Suppose that V is singular, with k = rank of V < n. Then xT V − x is a non-central chi-squared random variable, where V − is a generalized inverse of V . Its distribution has k degrees of freedom with non-centrality parameter λ = µT V − µ. 2