Complex normal distribution
In probability theory, the family of complex normal distributions characterizes complex random variables whose real and imaginary parts are jointly normal.[1] The complex normal family has three parameters: location parameter μ, 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 complex normal and corresponds to the case of zero relation matrix and zero mean:
.[2] Circular symmetric complex normal random variables are used extensively in signal processing, and are sometimes referred to as just complex normal in signal processing literature.
Definition
Suppose X and Y are random vectors in Rk such that vec[X Y] is a 2k-dimensional normal random vector. Then we say that the complex random vector
has the complex normal distribution. This distribution can be described with 3 parameters:[3]
where Z ′ denotes matrix transpose, and Z denotes complex conjugate. Here the location parameter μ can be an arbitrary k-dimensional complex vector; the covariance matrix Γ must be Hermitian and non-negative definite; the relation matrix C should be symmetric. Moreover, matrices Γ and C are such that the matrix
is also non-negative definite.[3]
Matrices Γ and C can be related to the covariance matrices of X and Y via expressions
and conversely
Density function
The probability density function for complex normal distribution can be computed as
where R = C′ Γ −1 and P = Γ − RC.
Characteristic function
The characteristic function of complex normal distribution is given by [3]
where the argument
is a k-dimensional complex vector.
Properties
- If Z is a complex normal k-vector, A an ℓ×k matrix, and b a constant ℓ-vector, then the linear transform AZ + b will be distributed also complex-normally:
- If Z is a complex normal k-vector, then
- Central limit theorem. If z1, …, zT are independent and identically distributed complex random variables, then
-
![\sqrt{T}\Big( \tfrac{1}{T}\textstyle\sum_{t=1}^Tz_t - \operatorname{E}[z_t]\Big) \ \xrightarrow{d}\
\mathcal{CN}(0,\,\Gamma,\,C),](../I/m/1d7a939cc7e30e7f30af96fe746c9cf9.png)
- where Γ = E[ zz′ ] and C = E[ zz′ ].
- The modulus of a complex normal random variable follows a Hoyt distribution.[4]
Circularly-symmetric and zero mean complex normal distribution
The circularly-symmetric and zero mean complex normal distribution [5] corresponds to the case of zero mean and zero relation matrix, μ=0, C=0. If Z = X + iY is circularly-symmetric complex normal, then the vector vec[X Y] is multivariate normal with covariance structure
where μ = E[ Z ] = 0 and Γ = E[ ZZ′ ]. This is usually denoted
and its distribution can also be simplified as
Therefore, if the non-zero mean
and covariance matrix
are unknown, a suitable log likelihood function for a single observation vector
would be
The standard complex normal 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
This expression demonstrates why the case C = 0, μ = 0 is called “circularly-symmetric”. The density function depends only on the magnitude of z but not on its argument. As such, the magnitude |z| of 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, …, zn} are independent and identically distributed k-dimensional circular complex normal random variables with μ = 0, then random squared norm
has the Generalized chi-squared distribution and the random matrix
has the complex Wishart distribution with n degrees of freedom. This distribution can be described by density function
where n ≥ k, and w is a k×k nonnegative-definite matrix.
See also
- Directional statistics#Distribution of the mean
- Normal distribution
- Multivariate normal distribution (a complex normal distribution is a bivariate normal distribution)
- Generalized chi-squared distribution
- Wishart distribution
References
- Goodman, N.R. (1963). "Statistical analysis based on a certain multivariate complex Gaussian distribution (an introduction)". The Annals of Mathematical Statistics 34 (1): 152–177. doi:10.1214/aoms/1177704250. JSTOR 2991290.
- Picinbono, Bernard (1996). "Second-order complex random vectors and normal distributions". IEEE Transactions on Signal Processing 44 (10): 2637–2640. doi:10.1109/78.539051.

![\mu = \operatorname{E}[Z], \quad
\Gamma = \operatorname{E}[(Z-\mu)(\overline{Z}-\overline\mu)'], \quad
C = \operatorname{E}[(Z-\mu)(Z-\mu)'],](../I/m/d3a1692067ead8d87565ffdb85ea65b4.png)

![\begin{align}
& V_{xx} \equiv \operatorname{E}[(X-\mu_x)(X-\mu_x)'] = \tfrac{1}{2}\operatorname{Re}[\Gamma + C], \quad
V_{xy} \equiv \operatorname{E}[(X-\mu_x)(Y-\mu_y)'] = \tfrac{1}{2}\operatorname{Im}[-\Gamma + C], \\
& V_{yx} \equiv \operatorname{E}[(Y-\mu_y)(X-\mu_x)'] = \tfrac{1}{2}\operatorname{Im}[\Gamma + C], \quad\,
V_{yy} \equiv \operatorname{E}[(Y-\mu_y)(Y-\mu_y)'] = \tfrac{1}{2}\operatorname{Re}[\Gamma - C],
\end{align}](../I/m/2c91ad3b590ca411ebba83102e349309.png)

![\begin{align}
f(z) &= \frac{1}{\pi^k\sqrt{\det(\Gamma)\det(P)}}\,
\exp\!\left\{-\frac12 \begin{pmatrix}(\overline{z}-\overline\mu)' & (z-\mu)'\end{pmatrix}
\begin{pmatrix}\Gamma&C\\\overline{C}'&\overline\Gamma\end{pmatrix}^{\!\!-1}\!
\begin{pmatrix}z-\mu \\ \overline{z}-\overline{\mu}\end{pmatrix}
\right\} \\[8pt]
&= \tfrac{\sqrt{\det\left(\overline{P^{-1}}-\overline{R}'P^{-1}R\right)\det(P^{-1})}}{\pi^k}\,
e^{ -(\overline{z}-\overline\mu)'\overline{P^{-1}}(z-\mu) +
\operatorname{Re}\left((z-\mu)'R'\overline{P^{-1}}(z-\mu)\right)},
\end{align}](../I/m/fd19caa588224b9c54c62ebaa136e75a.png)


![2\Big[ (\overline{Z}-\overline\mu)'\overline{P^{-1}}(Z-\mu) -
\operatorname{Re}\big((Z-\mu)'R'\overline{P^{-1}}(Z-\mu)\big)
\Big]\ \sim\ \chi^2(2k)](../I/m/0afa48ef96712a1e4262afc01684ef4a.png)







