The Gaussian copula
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The Gaussian copula is the copula that underlies the
multivariate normal distribution.
Copula name
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Gaussian copula
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Common notation
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Parameters
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, a
non-negative definite matrix, i.e. a matrix that
can correspond to a correlation matrix
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Domain
|

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Copula
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where is
the inverse normal
function and is
the cumulative distribution function of the multivariate normal distribution
defined by a covariance matrix equal to 
|
Kendall’s rank
correlation coefficient (for bivariate case), 
|

Where is the correlation
coefficient between the two variables
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Coefficient of upper
tail dependence, 
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(unless the
correlation matrix exhibits perfect positive or negative dependence)
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Coefficient of lower tail
dependence, 
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(unless the
correlation matrix exhibits perfect positive or negative dependence)
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Other comments
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The Spearman rank
correlation coefficient is given by:

where is the (normal) correlation coefficient
between the two variables.
If (the
identity
matrix) then we obtain the independence copula.
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Nematrian web functions
Functions relating to the above distribution in the two
dimensional case may be accessed via the Nematrian
web function library by using a DistributionName of “Gaussian Copula
(2d)”. For details of other supported probability distributions see here.
NAVIGATION LINKS
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