Complex normal distribution: Difference between revisions

From testwiki
Jump to navigation Jump to search
imported>ArturGower
Made the notation more elegant and consistent. This form is closer to the standard notation used for multi variant distributions, and made use of the Hermitian which is used in previous sections.
Β 
(No difference)

Latest revision as of 14:38, 6 February 2025

Template:Short description Template:Probability distribution

In probability theory, the family of complex normal distributions, denoted π’žπ’© or π’©π’ž, characterizes complex random variables whose real and imaginary parts are jointly normal.[1] The complex normal family has three parameters: location parameter ΞΌ, covariance matrix Γ, and the relation matrix C. The standard complex normal is the univariate distribution with μ=0, Γ=1, and C=0.

An important subclass of complex normal family is called the circularly-symmetric (central) complex normal and corresponds to the case of zero relation matrix and zero mean: μ=0 and C=0.[2] This case is used extensively in signal processing, where it is sometimes referred to as just complex normal in the literature.

Definitions

Complex standard normal random variable

The standard complex normal random variable or standard complex Gaussian random variable is a complex random variable Z whose real and imaginary parts are independent normally distributed random variables with mean zero and variance 1/2.[3]Template:Rp[4]Template:Rp Formally,

where Zπ’žπ’©(0,1) denotes that Z is a standard complex normal random variable.

Complex normal random variable

Suppose X and Y are real random variables such that (X,Y)T is a 2-dimensional normal random vector. Then the complex random variable Z=X+iY is called complex normal random variable or complex Gaussian random variable.[3]Template:Rp

Complex standard normal random vector

A n-dimensional complex random vector 𝐙=(Z1,,Zn)T is a complex standard normal random vector or complex standard Gaussian random vector if its components are independent and all of them are standard complex normal random variables as defined above.[3]Template:Rp[4]Template:Rp That 𝐙 is a standard complex normal random vector is denoted π™π’žπ’©(0,𝑰n).

Complex normal random vector

If 𝐗=(X1,,Xn)T and 𝐘=(Y1,,Yn)T are random vectors in ℝn such that [𝐗,𝐘] is a normal random vector with 2n components. Then we say that the complex random vector

𝐙=𝐗+i𝐘

is a complex normal random vector or a complex Gaussian random vector.

Mean, covariance, and relationTemplate:Anchor

The complex Gaussian distribution can be described with 3 parameters:[5]

μ=E[𝐙],Γ=E[(𝐙μ)(𝐙μ)H],C=E[(𝐙μ)(𝐙μ)T],

where 𝐙T denotes matrix transpose of 𝐙, and 𝐙H denotes conjugate transpose.[3]Template:Rp[4]Template:Rp

Here the location parameter μ is a n-dimensional complex vector; the covariance matrix Γ is Hermitian and non-negative definite; and, the relation matrix or pseudo-covariance matrix C is symmetric. The complex normal random vector 𝐙 can now be denoted as𝐙  π’žπ’©(μ, Γ, C).Moreover, matrices Γ and C are such that the matrix

P=ΓCHΓ1C

is also non-negative definite where Γ denotes the complex conjugate of Γ.[5]

Relationships between covariance matrices

Template:Main

As for any complex random vector, the matrices Γ and C can be related to the covariance matrices of 𝐗=(𝐙) and 𝐘=(𝐙) via expressions

VXXE[(𝐗μX)(𝐗μX)T]=12Re[Γ+C],VXYE[(𝐗μX)(𝐘μY)T]=12Im[Γ+C],VYXE[(𝐘μY)(𝐗μX)T]=12Im[Γ+C],VYYE[(𝐘μY)(𝐘μY)T]=12Re[ΓC],

and conversely

Γ=VXX+VYY+i(VYXVXY),C=VXXVYY+i(VYX+VXY).

Density function

The probability density function for complex normal distribution can be computed as

f(z)=1πndet(Γ)det(P)exp{12[zμzμ]H[ΓCCΓ]1[zμzμ]}=det(P1RP1R)det(P1)πne(zμ)P1(zμ)+Re((zμ)RP1(zμ)),

where R=CHΓ1 and P=ΓRC.

Characteristic function

The characteristic function of complex normal distribution is given by[5]

φ(w)=exp{iRe(wμ)14(wΓw+Re(wCw))},

where the argument w is an n-dimensional complex vector.

Properties

  • If 𝐙 is a complex normal n-vector, 𝑨 an mΓ—n matrix, and b a constant m-vector, then the linear transform 𝑨𝐙+b will be distributed also complex-normally:
Z  π’žπ’©(μ,Γ,C)AZ+b  π’žπ’©(Aμ+b,AΓAH,ACAT)
  • If 𝐙 is a complex normal n-vector, then
2[(𝐙μ)HP1(𝐙μ)Re((𝐙μ)TRTP1(𝐙μ))]  χ2(2n)
  • Central limit theorem. If Z1,,ZT are independent and identically distributed complex random variables, then
T(1Tt=1TZtE[Zt]) β†’d π’žπ’©(0,Γ,C),
where Γ=E[ZZH] and C=E[ZZT].

Circularly-symmetric central case

Definition

A complex random vector 𝐙 is called circularly symmetric if for every deterministic φ[π,π) the distribution of eiφ𝐙 equals the distribution of 𝐙.[4]Template:Rp Template:Main

Central normal complex random vectors that are circularly symmetric are of particular interest because they are fully specified by the covariance matrix Γ.

The circularly-symmetric (central) complex normal distribution corresponds to the case of zero mean and zero relation matrix, i.e. μ=0 and C=0.[3]Template:Rp[7] This is usually denoted

π™π’žπ’©(0,Γ)

Distribution of real and imaginary parts

If 𝐙=𝐗+i𝐘 is circularly-symmetric (central) complex normal, then the vector [𝐗,𝐘] is multivariate normal with covariance structure

(π—π˜)  π’©([00], 12[ReΓImΓImΓReΓ])

where Γ=E[𝐙𝐙H].

Probability density function

For nonsingular covariance matrix Γ, its distribution can also be simplified as[3]Template:Rp

f𝐙(𝐳)=1πndet(Γ)e(𝐳μ)HΓ1(𝐳μ).

Therefore, if the non-zero mean μ and covariance matrix Γ are unknown, a suitable log likelihood function for a single observation vector z would be

ln(L(μ,Γ))=ln(det(Γ))(zμ)Γ1(zμ)nln(π).

The standard complex normal (defined in Template:EquationNote) corresponds to the distribution of a scalar random variable with μ=0, C=0 and Γ=1. Thus, the standard complex normal distribution has density

fZ(z)=1πezz=1πe|z|2.

Properties

The above expression demonstrates why the case C=0, μ=0 is called β€œcircularly-symmetric”. The density function depends only on the magnitude of z but not on its argument. As such, the magnitude |z| of a standard complex normal random variable will have the Rayleigh distribution and the squared magnitude |z|2 will have the exponential distribution, whereas the argument will be distributed uniformly on [π,π].

If {𝐙1,,𝐙k} are independent and identically distributed n-dimensional circular complex normal random vectors with μ=0, then the random squared norm

Q=j=1k𝐙jH𝐙j=j=1k𝐙j2

has the generalized chi-squared distribution and the random matrix

W=j=1k𝐙j𝐙jH

has the complex Wishart distribution with k degrees of freedom. This distribution can be described by density function

f(w)=det(Γ1)kdet(w)knπn(n1)/2j=1k(kj)! etr(Γ1w)

where kn, and w is a n×n nonnegative-definite matrix.

See also

References

Template:More footnotes needed Template:Reflist

Template:ProbDistributions