8.2.9. sklearn.covariance.ledoit_wolf¶
- sklearn.covariance.ledoit_wolf(X, assume_centered=False)¶
- Estimates the shrunk Ledoit-Wolf covariance matrix. - Parameters : - X: array-like, shape (n_samples, n_features) : - Data from which to compute the covariance estimate - assume_centered: Boolean : - If True, data are not centered before computation. Usefull to work with data whose mean is significantly equal to zero but is not exactly zero. If False, data are centered before computation. - Returns : - shrunk_cov: array-like, shape (n_features, n_features) : - Shrunk covariance - shrinkage: float : - coefficient in the convex combination used for the computation of the shrunk estimate. - Notes - The regularised (shrunk) covariance is: - (1 - shrinkage)*cov
- shrinkage * mu * np.identity(n_features)
 
 - where mu = trace(cov) / n_features 
