SVD
description
?
- similar to spectral factorization
- any non-zero matrix , can be factored as
- : orthogonal matrix, . columns of U: left-singular vectors
- : diagonal, positive & decreasing in magnitude entries
- : orthogonal matrix, . columns of V: right-singular vectorsf
finding SVD of matrix C
? 0. want to find
- Knowing that , find → find and
- find
- find = 0 (finding eigenvectors AND eigenvalues)
- From → find
compact form SVD
?
- any non-zero matrix can be expressed as:
SVD from dyads view (lec 19)
- any matrix , rank > 0 can be expressed as sum of “orthogonal dyads”
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- , are mutually orthogonal collections of vectors
- now completing these collections with vectors and , so that and ] are both orthonormal matrices