6.10.1.2.2. statsmodels.sandbox.tools.pcasvd¶
-
statsmodels.sandbox.tools.
pcasvd
(data, keepdim=0, demean=True)[source]¶ principal components with svd
Parameters: data : ndarray, 2d
data with observations by rows and variables in columns
keepdim : integer
number of eigenvectors to keep if keepdim is zero, then all eigenvectors are included
demean : boolean
if true, then the column mean is subtracted from the data
Returns: xreduced : ndarray, 2d, (nobs, nvars)
projection of the data x on the kept eigenvectors
factors : ndarray, 2d, (nobs, nfactors)
factor matrix, given by np.dot(x, evecs)
evals : ndarray, 2d, (nobs, nfactors)
eigenvalues
evecs : ndarray, 2d, (nobs, nfactors)
eigenvectors, normalized if normalize is true
See Also
pca : principal component analysis using eigenvector decomposition
Notes
This doesn’t have yet the normalize option of pca.