In the CMLE estimation method, it is assumed that the sample data ,
have been transformed into uniform variates
,
. One commonly used transformation is the nonparametric estimation of the CDF of the marginal distributions, which is closely
related to empirical CDF,
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where
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The transformed data are used as if they had uniform marginal distributions; hence, they are called pseudo-samples. The function
is different from the standard empirical CDF in the scalar
, which is to ensure that the transformed data cannot be on the boundary of the unit interval
. It is clear that
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where is the rank among
in increasing order.
Let be the density function of a copula
, and let
be the parameter vector to be estimated. The parameter
is estimated by maximum likelihood:
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