Implements a James-Stein-type shrinkage estimator for the covariance matrix, with separate shrinkage for variances and correlations. The details of the method are explained in Schafer and Strimmer (2005) <doi:10.2202/1544-6115.1175> and Opgen-Rhein and Strimmer (2007) <doi:10.2202/1544-6115.1252>. The approach is both computationally as well as statistically very efficient, it is applicable to "small n, large p" data, and always returns a positive definite and well-conditioned covariance matrix. In addition to inferring the covariance matrix the package also provides shrinkage estimators for partial correlations and partial variances. The inverse of the covariance and correlation matrix can be efficiently computed, as well as any arbitrary power of the shrinkage correlation matrix. Furthermore, functions are available for fast singular value decomposition, for computing the pseudoinverse, and for checking the rank and positive definiteness of a matrix.

Installers

Info: This package contains files in non-standard labels.

conda install

  • linux-64  v1.6.9
  • noarch  v1.6.9
  • win-64  v1.6.9
  • osx-64  v1.6.9
To install this package with conda run one of the following:
conda install -c conda-forge r-corpcor
conda install -c conda-forge/label/gcc7 r-corpcor
conda install -c conda-forge/label/cf201901 r-corpcor

Description

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