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The singular value decomposition (SVD) is one of the most powerful tools in theoretical and numerical linear algebra. The utility comes from three basic properties:

  • Every matrix has an SVD.
  • The SVD provides an orthonormal resolution for the four invariant subspaces.
  • The SVD provides an ordered list of singular values.

The Singular Value Decomposition Theorem

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The singular value decomposition is the most powerful - and most expensive - decomposition tool in linear algebra. The power comes from the resolution of the four fundamental subspaces as well as the eigenvalues.

Existence

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Every matrix has a singular value decomposition. Given a matrix , that is, with rows, columns, and rank , the SVD can be written as

,

where

  • resolves the column space,
  • resolves the row space,
  • contains the singular values.

The domain matrices are unitary:

Uniqueness

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The singular values are unique, therefore the matrices and are unique. Typically the domain matrices are not unique. For example, there could be two different decompositions such that

Subspace decomposition

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Fundamental Theorem of Linear Algebra

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The [Fundamental Theorem of Linear Algebra] states that a matrix induces a row space (or domain) and a column space (or codomain) . The row space and the column space each have an orthogonal decomposition into a range space and a null space:

  • = (domain),
  • = (codomain),

where the overbear represents the set closure required in infinite dimensional spaces.

Block structure

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Casting the SVD in block structure emphasizes its subspace decomposition;

Geometry of the SVD

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The mapping action of a matrix demonstrates the geometry of the SVD. A matrix is an operator which maps an vector into an vector

File:/Users/rditldmt/Dropbox/Wiki/svd/movies/AS2.mov
The mapping action of a matrix

Low rank approximation

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Analytic computation

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Matrix action on unit circle.

Examples

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Full row and column rank

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Matrix action on unit circle.
Matrix action on unit circle.
Matrix action on unit circle.
Orange Apple
Bread Pie
Butter Ice cream