To cite the cmvnorm
package in publications please use Hankin (2015).
Consider the (zero mean) multivariate Gaussian distribution with
probability density function
where is an positive-definite variance matrix. Now compare the complex version with Hermitian positive-definite:
See how much nicer the complex version is! No awkward, unsightly factors of two and no inconvenient square roots. This is essentially due to Gauss’s integral operating more cleanly over the complex plane than the real line:
It can be shown that
,
so
really is the variance of the distribution. We can also introduce a
nonzero mean,
in the natural way. The cmvnorm
package furnishes some R functionality
for dealing with the complex multivariate Gaussian distribution.
The simplest case would be the univariate standard complex normal
distribution, that is is a complex random variable
with PDF
.
Random samples are given by rcnorm()
:
rcnorm(10)
#> [1] 0.8930435+0.5399421i -0.2306818-0.5649849i 0.9403101-0.8115161i
#> [4] 0.8997434-0.2046802i 0.2931958-0.2115770i -1.0889091-0.2909821i
#> [7] -0.6565960+0.1783489i -0.2083988-0.6306835i -0.0040780+0.3080746i
#> [10] 1.7003467-0.8750718i
Observations are circularly symmetric in the sense that has the same distribution as for any , as we may verify visually:
par(pty="s")
plot(rcnorm(10000),asp=1,xlim=c(-3,3),ylim=c(-3,3),pch=16,cex=0.2)
We may sample from this distribution and verify that it has zero mean and unit variance:
z <- rcnorm(1e6)
mean(z) # zero, subject to sample error
#> [1] -7.22711e-05-1.648871e-04i
var(z) # one, subject to sample error
#> [1] 1.000039
Note that the real and imaginary components of have variance :
z <- rcnorm(1e6)
var(Re(z))
#> [1] 0.4990334
var(Im(z))
#> [1] 0.500692
We may sample from the multivariate case similarly. Suppose and :
tm <- c(1,1i) # true mean
tS <- matrix(c(3,1i,-1i,2),2,2) # true variance
rcmvnorm(10,mean=tm, sigma=tS)
#> [,1] [,2]
#> [1,] 0.7686256-1.0741918i -0.7474151+2.2160427i
#> [2,] 0.7708602+1.1108247i 0.6358600+1.6525006i
#> [3,] -1.6582296+0.4285872i 0.5232071+0.2267081i
#> [4,] -0.8116523+0.7761156i 0.3370565-1.1517968i
#> [5,] 0.3813992-0.3297815i -0.7391635+1.0239374i
#> [6,] -1.0306205+0.1980098i -0.2640635+0.0266939i
#> [7,] 0.0626871-0.1067497i -0.0584202+1.2610072i
#> [8,] -0.7007527+0.3104665i 0.6747789-0.3943374i
#> [9,] -0.1592596-1.5369111i 0.9189975-1.1530648i
#> [10,] 1.6842132+0.2346989i 0.9708974+1.5574747i
We may perform elementary inference. For the mean and variance we can calculate their maximum likelihood estimates:
n <- 1e6 # sample size
z <- rcmvnorm(n,mean=tm, sigma=tS)
colMeans(z) # should be close to tm=[1,i]
#> [1] 1.000125-0.000710i -0.000733+1.002398i
z <- scale(z,scale=FALSE) # sweep out the mean
cprod(z)/n # should be close to tS
#> [,1] [,2]
#> [1,] 3.001524+0.00000i 0.001068+1.00205i
#> [2,] 0.001068-1.00205i 2.000310+0.00000i
For further information, see the package vignette: type
vignette("cmvnorm")
at the R command line.
Hankin, R. K. S. 2015. “The complex multivariate Gaussian distribution”. The R Journal, 7(1):73-80