numpy.linalg.pinv
-
numpy.linalg.pinv(a, rcond=1e-15)
[source] -
Compute the (Moore-Penrose) pseudo-inverse of a matrix.
Calculate the generalized inverse of a matrix using its singular-value decomposition (SVD) and including all large singular values.
Changed in version 1.14: Can now operate on stacks of matrices
Parameters: -
a : (…, M, N) array_like
-
Matrix or stack of matrices to be pseudo-inverted.
-
rcond : (…) array_like of float
-
Cutoff for small singular values. Singular values smaller (in modulus) than
rcond
* largest_singular_value (again, in modulus) are set to zero. Broadcasts against the stack of matrices
Returns: -
B : (…, N, M) ndarray
-
The pseudo-inverse of
a
. Ifa
is amatrix
instance, then so isB
.
Raises: - LinAlgError
-
If the SVD computation does not converge.
Notes
The pseudo-inverse of a matrix A, denoted
, is defined as: “the matrix that ‘solves’ [the least-squares problem]
,” i.e., if
is said solution, then
is that matrix such that
.
It can be shown that if
is the singular value decomposition of A, then
, where
are orthogonal matrices,
is a diagonal matrix consisting of A’s so-called singular values, (followed, typically, by zeros), and then
is simply the diagonal matrix consisting of the reciprocals of A’s singular values (again, followed by zeros). [1]
References
[1] (1, 2) G. Strang, Linear Algebra and Its Applications, 2nd Ed., Orlando, FL, Academic Press, Inc., 1980, pp. 139-142. Examples
The following example checks that
a * a+ * a == a
anda+ * a * a+ == a+
:>>> a = np.random.randn(9, 6) >>> B = np.linalg.pinv(a) >>> np.allclose(a, np.dot(a, np.dot(B, a))) True >>> np.allclose(B, np.dot(B, np.dot(a, B))) True
-
© 2005–2019 NumPy Developers
Licensed under the 3-clause BSD License.
https://docs.scipy.org/doc/numpy-1.16.1/reference/generated/numpy.linalg.pinv.html