slash.matrix.decomposition
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Type members
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- Companion
- class
- Source
- Cholesky.scala
- Supertypes
- Self type
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Cholesky.type
Attributes
- Companion
- object
- Source
- Cholesky.scala
- Supertypes
Attributes
- Companion
- class
- Source
- Eigen.scala
- Supertypes
- Self type
-
Eigen.type
Eigenvalues and eigenvectors of a real matrix.
Eigenvalues and eigenvectors of a real matrix.
If A is symmetric, then A = V*D*V' where the eigenvalue matrix D is diagonal and the eigenvector matrix V is orthogonal. I.e. A = V.times(D.times(V.transpose())) and V.times(V.transpose()) equals the identity matrix.
If A is not symmetric, then the eigenvalue matrix D is block diagonal with the real eigenvalues in 1-by-1 blocks and any complex eigenvalues, lambda + i*mu, in 2-by-2 blocks, [lambda, mu; -mu, lambda]. The columns of V represent the eigenvectors in the sense that A*V = V*D, i.e. A.times(V) equals V.times(D). The matrix V may be badly conditioned, or even singular, so the validity of the equation A = V*D*inverse(V) depends upon V.cond().
Attributes
- Companion
- object
- Source
- Eigen.scala
- Supertypes
QR Decomposition, computed by Householder reflections. Structure to access R and the Householder vectors and compute Q.