Difference between revisions of "Manuals/calci/SVD"

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Revision as of 02:37, 5 September 2017

SVD(Matrix)


  • is the set of values.

Description

  • The singular value decomposition of a matrix A is the factorization of A into the product of three matrices
  • Where the columns of U and V are orthonormal and the matrix S is diagonal with positive real entries
  • Singular value decomposition is defined for all matrices (rectangular or square).
  • The rank of a matrix is equal to the number of non-zero singular values.


Suppose A is a m × n matrix whose entries come from the field K, which is either the field of real numbers or the field of complex numbers.

  • Then there exists a factorization, called a singular value decomposition of A, of the form
where
U is an m × m unitary matrix,
S is a diagonal m × n matrix with non-negative real numbers on the diagonal,
V is an n × n unitary matrix over K, and
 is the conjugate transpose of V.


Example

Spreadsheet
A B C
1 1 0 1
2 -1 -2 0
3 0 1 -1

=SVD(A1:C3)

0.12000026038175768 -0.8097122815927454 -0.5744266346072238
-0.9017526469088556 0.15312282248412068 -0.40422217285469236
0.41526148545366265 0.5664975042066532 -0.7117854145923829