""" The :mod:`sklearn.covariance` module includes methods and algorithms to robustly estimate the covariance of features given a set of points. The precision matrix defined as the inverse of the covariance is also estimated. Covariance estimation is closely related to the theory of Gaussian Graphical Models. """ from ._empirical_covariance import (empirical_covariance, EmpiricalCovariance, log_likelihood) from ._shrunk_covariance import (shrunk_covariance, ShrunkCovariance, ledoit_wolf, ledoit_wolf_shrinkage, LedoitWolf, oas, OAS) from ._robust_covariance import fast_mcd, MinCovDet from ._graph_lasso import graphical_lasso, GraphicalLasso, GraphicalLassoCV from ._elliptic_envelope import EllipticEnvelope __all__ = ['EllipticEnvelope', 'EmpiricalCovariance', 'GraphicalLasso', 'GraphicalLassoCV', 'LedoitWolf', 'MinCovDet', 'OAS', 'ShrunkCovariance', 'empirical_covariance', 'fast_mcd', 'graphical_lasso', 'ledoit_wolf', 'ledoit_wolf_shrinkage', 'log_likelihood', 'oas', 'shrunk_covariance']