Complex normal distribution

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Complex normal
Parameters

๐โˆˆโ„‚n โ€” location
ฮ“โˆˆโ„‚nร—n โ€” covariance matrix (positive semi-definite matrix)

Cโˆˆโ„‚nร—n โ€” relation matrix (complex symmetric matrix)
Support โ„‚n
PDF complicated, see text
Mean ๐
Mode ๐
Variance ฮ“
CF exp{iRe(wโ€พฮผ)โˆ’14(wโ€พฮ“w+Re(wโ€พCwโ€พ))}

In probability theory, the family of complex normal distributions, denoted ๐’ž๐’ฉ or ๐’ฉ๐’ž, characterizes complex random variables whose real and imaginary parts are jointly normal.[1] The complex normal family has three parameters: location parameter ฮผ, covariance matrix ฮ“, and the relation matrix C. The standard complex normal is the univariate distribution with ฮผ=0, ฮ“=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: ฮผ=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

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Complex standard normal random variable

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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]: p. 494 [4]: pp. 501  Formally,

where Zโˆผ๐’ž๐’ฉ(0,1) denotes that Z is a standard complex normal random variable.

Complex normal random variable

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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]: p. 500 

Complex standard normal random vector

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A n-dimensional complex random vector ๐™=(Z1,โ€ฆ,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]: p. 502 [4]: pp. 501  That ๐™ is a standard complex normal random vector is denoted ๐™โˆผ๐’ž๐’ฉ(0,๐‘ฐn).

Complex normal random vector

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If ๐—=(X1,โ€ฆ,Xn)T and ๐˜=(Y1,โ€ฆ,Yn)T are random vectors in โ„n such that [๐—,๐˜] is a normal random vector with 2n components. Then we say that the complex random vector

๐™=๐—+i๐˜

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

Mean, covariance, and relation

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

ฮผ=E[๐™],ฮ“=E[(๐™โˆ’ฮผ)(๐™โˆ’ฮผ)H],C=E[(๐™โˆ’ฮผ)(๐™โˆ’ฮผ)T],

where ๐™T denotes matrix transpose of ๐™, and ๐™H denotes conjugate transpose.[3]: p. 504 [4]: pp. 500 

Here the location parameter ฮผ is a n-dimensional complex vector; the covariance matrix ฮ“ is Hermitian and non-negative definite; and, the relation matrix or pseudo-covariance matrix C is symmetric. The complex normal random vector ๐™ can now be denoted as๐™ โˆผ ๐’ž๐’ฉ(ฮผ, ฮ“, C).Moreover, matrices ฮ“ and C are such that the matrix

P=ฮ“โ€พโˆ’CHฮ“โˆ’1C

is also non-negative definite where ฮ“โ€พ denotes the complex conjugate of ฮ“.[5]

Relationships between covariance matrices

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As for any complex random vector, the matrices ฮ“ and C can be related to the covariance matrices of ๐—=โ„œ(๐™) and ๐˜=โ„‘(๐™) via expressions

VXXโ‰กE[(๐—โˆ’ฮผX)(๐—โˆ’ฮผX)T]=12Re[ฮ“+C],VXYโ‰กE[(๐—โˆ’ฮผX)(๐˜โˆ’ฮผY)T]=12Im[โˆ’ฮ“+C],VYXโ‰กE[(๐˜โˆ’ฮผY)(๐—โˆ’ฮผX)T]=12Im[ฮ“+C],VYYโ‰กE[(๐˜โˆ’ฮผY)(๐˜โˆ’ฮผY)T]=12Re[ฮ“โˆ’C],

and conversely

ฮ“=VXX+VYY+i(VYXโˆ’VXY),C=VXXโˆ’VYY+i(VYX+VXY).

Density function

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

f(z)=1ฯ€ndet(ฮ“)det(P)exp{โˆ’12[zโˆ’ฮผzโ€พโˆ’ฮผโ€พ]H[ฮ“CCโ€พฮ“โ€พ]โˆ’1[zโˆ’ฮผzโ€พโˆ’ฮผโ€พ]}=det(Pโˆ’1โ€พโˆ’Rโˆ—Pโˆ’1R)det(Pโˆ’1)ฯ€neโˆ’(zโˆ’ฮผ)โˆ—Pโˆ’1โ€พ(zโˆ’ฮผ)+Re((zโˆ’ฮผ)โŠบRโŠบPโˆ’1โ€พ(zโˆ’ฮผ)),

where R=CHฮ“โˆ’1 and P=ฮ“โ€พโˆ’RC.

Characteristic function

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

ฯ†(w)=exp{iRe(wโ€พฮผ)โˆ’14(wโ€พฮ“w+Re(wโ€พCwโ€พ))},

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

Properties

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  • If ๐™ is a complex normal n-vector, ๐‘จ an mร—n matrix, and b a constant m-vector, then the linear transform ๐‘จ๐™+b will be distributed also complex-normally:
Z โˆผ ๐’ž๐’ฉ(ฮผ,ฮ“,C)โ‡’AZ+b โˆผ ๐’ž๐’ฉ(Aฮผ+b,Aฮ“AH,ACAT)
  • If ๐™ is a complex normal n-vector, then
2[(๐™โˆ’ฮผ)HPโˆ’1โ€พ(๐™โˆ’ฮผ)โˆ’Re((๐™โˆ’ฮผ)TRTPโˆ’1โ€พ(๐™โˆ’ฮผ))] โˆผ ฯ‡2(2n)
  • Central limit theorem. If Z1,โ€ฆ,ZT are independent and identically distributed complex random variables, then
T(1Tโˆ‘t=1TZtโˆ’E[Zt]) โ†’d ๐’ž๐’ฉ(0,ฮ“,C),
where ฮ“=E[ZZH] and C=E[ZZT].

Circularly-symmetric central case

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Definition

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A complex random vector ๐™ is called circularly symmetric if for every deterministic ฯ†โˆˆ[โˆ’ฯ€,ฯ€) the distribution of eiฯ†๐™ equals the distribution of ๐™.[4]: pp. 500โ€“501 

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

The circularly-symmetric (central) complex normal distribution corresponds to the case of zero mean and zero relation matrix, i.e. ฮผ=0 and C=0.[3]: p. 507 [7] This is usually denoted

๐™โˆผ๐’ž๐’ฉ(0,ฮ“)

Distribution of real and imaginary parts

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If ๐™=๐—+i๐˜ is circularly-symmetric (central) complex normal, then the vector [๐—,๐˜] is multivariate normal with covariance structure

(๐—๐˜) โˆผ ๐’ฉ([00], 12[Reฮ“โˆ’Imฮ“Imฮ“Reฮ“])

where ฮ“=E[๐™๐™H].

Probability density function

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For nonsingular covariance matrix ฮ“, its distribution can also be simplified as[3]: p. 508 

f๐™(๐ณ)=1ฯ€ndet(ฮ“)eโˆ’(๐ณโˆ’๐)Hฮ“โˆ’1(๐ณโˆ’๐).

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

ln(L(ฮผ,ฮ“))=โˆ’ln(det(ฮ“))โˆ’(zโˆ’ฮผ)โ€พฮ“โˆ’1(zโˆ’ฮผ)โˆ’nln(ฯ€).

The standard complex normal (defined in Eq.1) corresponds to the distribution of a scalar random variable with ฮผ=0, C=0 and ฮ“=1. Thus, the standard complex normal distribution has density

fZ(z)=1ฯ€eโˆ’zโ€พz=1ฯ€eโˆ’|z|2.

Properties

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The above expression demonstrates why the case C=0, ฮผ=0 is called โ€œcircularly-symmetricโ€. 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 [โˆ’ฯ€,ฯ€].

If {๐™1,โ€ฆ,๐™k} are independent and identically distributed n-dimensional circular complex normal random vectors with ฮผ=0, then the random squared norm

Q=โˆ‘j=1k๐™jH๐™j=โˆ‘j=1kโ€–๐™jโ€–2

has the generalized chi-squared distribution and the random matrix

W=โˆ‘j=1k๐™j๐™jH

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

f(w)=det(ฮ“โˆ’1)kdet(w)kโˆ’nฯ€n(nโˆ’1)/2โˆj=1k(kโˆ’j)! eโˆ’tr(ฮ“โˆ’1w)

where kโ‰ฅn, and w is a nร—n nonnegative-definite matrix.

See also

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References

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  1. ^ Lua error in Module:Citation/CS1/Configuration at line 2172: attempt to index field '?' (a nil value).
  2. ^ bookchapter, Gallager.R, pg9.
  3. ^ a b c d e f Lua error in Module:Citation/CS1/Configuration at line 2172: attempt to index field '?' (a nil value).
  4. ^ a b c d Lua error in Module:Citation/CS1/Configuration at line 2172: attempt to index field '?' (a nil value).
  5. ^ a b c Lua error in Module:Citation/CS1/Configuration at line 2172: attempt to index field '?' (a nil value).
  6. ^ Lua error in Module:Citation/CS1/Configuration at line 2172: attempt to index field '?' (a nil value).[permanent dead link]
  7. ^ bookchapter, Gallager.R