In this paper we extend the standard approach of correlation structure analysis
for dimension reduction of highdimensional statistical data. The classical assump-
tion of a linear model for the distribution of a random vector is replaced by the
weaker assumption of a model for the copula. For elliptical copulae a correlation-like
structure remains, but different margins and non-existence of moments are possible.
After introducing the new concept and deriving some theoretical results we observe
in a simulation study the performance of the estimators: the theoretical asymptotic
behavior of the statistics can be observed even for small sample sizes. Finally, we
show our method at work for a financial data set and explain differences between
our copula based approach and the classical approach. Our new method yields a
considerable dimension reduction also in non-linear models.
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In this paper we extend the standard approach of correlation structure analysis
for dimension reduction of highdimensional statistical data. The classical assump-
tion of a linear model for the distribution of a random vector is replaced by the
weaker assumption of a model for the copula. For elliptical copulae a correlation-like
structure remains, but different margins and non-existence of moments are possible.
After introducing the new concept and deriving some theoretical results we obse...
»