Singular value decomposition

Visualization of the SVD of a two-dimensional, real shearing matrix M. First, we see the unit disc in blue together with the two canonical unit vectors. We then see the action of M, which distorts the disk to an ellipse. The SVD decomposes M into three simple transformations: an initial rotation V, a scaling Σ along the coordinate axes, and a final rotation U. The lengths σ1 and σ2 of the semi-axes of the ellipse are the singular values of M, namely Σ1,1 and Σ2,2.

In linear algebra, the singular value decomposition (SVD) is a factorization of a real or complex matrix. It has many useful applications in signal processing and statistics.

Formally, the singular value decomposition of an m \times n real or complex matrix \mathbf{M} is a factorization of the form \mathbf{U\Sigma V^*}, where \mathbf{U} is an m \times \rho real or complex unitary matrix, \mathbf{\Sigma} is a \rho \times \rho rectangular diagonal matrix with non-negative real numbers on the diagonal, and \mathbf{V} is an n \times \rho real or complex unitary matrix. \rho is equal to the rank of the matrix \mathbf{M}. The diagonal entries \mathbf{\Sigma}_{ii} of \mathbf{\Sigma} are known as the singular values of \mathbf{M}. The columns of \mathbf{U} and the columns of \mathbf{V} are called the left-singular vectors and right-singular vectors of \mathbf{M}, respectively.

The singular value decomposition can be computed easily using the following observations:

Applications that employ the SVD include computing the pseudoinverse, least squares fitting of data, multivariable control, matrix approximation, and determining the rank, range and null space of a matrix.

Statement of the theorem

Suppose M 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 M, of the form

\mathbf{M} = \mathbf{U} \boldsymbol{\Sigma} \mathbf{V}^*

where

The diagonal entries, σi, of Σ are known as the singular values of M. A common convention is to list the singular values in descending order. In this case, the diagonal matrix, Σ, is uniquely determined by M (though not the matrices U and V).

Intuitive interpretations

The image shows:
Upper Left: The unit disc with the two canonical unit vectors
Upper Right: Unit disc transformed with M and singular Values σ1 and σ2 indicated
Lower Left: The action of V on the unit disc. This is just a rotation.
Lower Right: The action of ΣV on the unit disc. Sigma scales in vertically and horizontally.
In this special case, the singular values are Phi and 1/Phi where Phi is the Golden ratio. V is a (counter clockwise) rotation by an angle alpha where alpha satisfies tan(alpha) = -Phi. U is a rotation by an angle beta with tan(beta) = Phi-1

Rotation, scaling

In the special, yet common case when M is an m × m real square matrix with positive determinant, U, V, and Σ are real m × m matrices as well, Σ can be regarded as a scaling matrix, and U, V can be viewed as rotation matrices. Thus the expression UΣV can be intuitively interpreted as a composition of three geometrical transformations: a rotation, a scaling, and another rotation. For instance, the figure above explains how a shear matrix can be described as such a sequence.

Singular values as semiaxes of an ellipse or ellipsoid

As shown in the figure, the singular values can be interpreted as the semiaxes of an ellipse in 2D. This concept can be generalized to n-dimensional Euclidean space, with the singular values of any n × n square matrix being viewed as the semiaxes of an n-dimensional ellipsoid. See below for further details.

The columns of U and V are orthonormal bases

Since U and V are unitary, the columns of each of them form a set of orthonormal vectors, which can be regarded as basis vectors. By the definition of a unitary matrix, the same is true for their conjugate transposes U and V. In short, the columns of U, U, V, and V are orthonormal bases.

Example

Consider the 4 × 5 matrix

\mathbf{M} = \begin{bmatrix}
                      1 & 0 & 0 & 0 & 2 \\
                      0 & 0 & 3 & 0 & 0 \\
                      0 & 0 & 0 & 0 & 0 \\
                      0 & 2 & 0 & 0 & 0
                    \end{bmatrix}

A singular value decomposition of this matrix is given by UΣV

\begin{align}
\mathbf{U} &= \begin{bmatrix}
               0 & 0 & 1 &  0 \\
               0 & 1 & 0 &  0 \\
               0 & 0 & 0 & -1 \\
               1 & 0 & 0 & 0
             \end{bmatrix} \\

\boldsymbol{\Sigma} &= \begin{bmatrix}
                        2 & 0 &        0 & 0 & 0 \\
                        0 & 3 &        0 & 0 & 0 \\
                        0 & 0 & \sqrt{5} & 0 & 0 \\
                        0 & 0 &        0 & 0 & 0
                      \end{bmatrix} \\

\mathbf{V}^* &= \begin{bmatrix}
                           0 & 1 & 0 & 0 &          0 \\
                           0 & 0 & 1 & 0 &          0 \\
                  \sqrt{0.2} & 0 & 0 & 0 & \sqrt{0.8} \\
                           0 & 0 & 0 & 1 &          0 \\
                 -\sqrt{0.8} & 0 & 0 & 0 & \sqrt{0.2}
               \end{bmatrix}
\end{align}

Notice Σ is zero outside of the diagonal and one diagonal element is zero. Furthermore, because the matrices U and V are unitary, multiplying by their respective conjugate transposes yields identity matrices, as shown below. In this case, because U and V are real valued, they each are an orthogonal matrix.

\begin{align}
\mathbf{U} \mathbf{U^T} &=
   \begin{bmatrix}
    0 & 0 & 1 &  0 \\
    0 & 1 & 0 &  0 \\
    0 & 0 & 0 & -1 \\
    1 & 0 & 0 &  0
  \end{bmatrix}
\cdot
  \begin{bmatrix}
    0 & 0 &  0 & 1 \\
    0 & 1 &  0 & 0 \\
    1 & 0 &  0 & 0 \\
    0 & 0 & -1 & 0
  \end{bmatrix} 
   = 
  \begin{bmatrix}
    1 & 0 & 0 & 0 \\
    0 & 1 & 0 & 0 \\
    0 & 0 & 1 & 0 \\
    0 & 0 & 0 & 1
  \end{bmatrix} 
   = \mathbf{I}_4 \\
\mathbf{V} \mathbf{V^T} &=
  \begin{bmatrix}
    0 & 0 & \sqrt{0.2} & 0 & -\sqrt{0.8} \\
    1 & 0 &          0 & 0 &           0 \\
    0 & 1 &          0 & 0 &           0 \\
    0 & 0 &          0 & 1 &           0 \\
    0 & 0 & \sqrt{0.8} & 0 &  \sqrt{0.2}
  \end{bmatrix}
  \cdot
  \begin{bmatrix}
              0 & 1 & 0 & 0 &          0 \\
              0 & 0 & 1 & 0 &          0 \\
     \sqrt{0.2} & 0 & 0 & 0 & \sqrt{0.8} \\
              0 & 0 & 0 & 1 &          0 \\
    -\sqrt{0.8} & 0 & 0 & 0 & \sqrt{0.2}
  \end{bmatrix} 
  =
  \begin{bmatrix}
    1 & 0 & 0 & 0 & 0 \\
    0 & 1 & 0 & 0 & 0 \\
    0 & 0 & 1 & 0 & 0 \\
    0 & 0 & 0 & 1 & 0 \\
    0 & 0 & 0 & 0 & 1
  \end{bmatrix} 
   = \mathbf{I}_5
\end{align}

This particular singular value decomposition is not unique. Choosing V such that

\mathbf{V}^* = \begin{bmatrix}
                         0          & 1 & 0 &          0 &           0 \\
                         0          & 0 & 1 &          0 &           0 \\
                         \sqrt{0.2} & 0 & 0 &          0 &  \sqrt{0.8} \\
                         \sqrt{0.4} & 0 & 0 & \sqrt{0.5} & -\sqrt{0.1} \\
                        -\sqrt{0.4} & 0 & 0 & \sqrt{0.5} &  \sqrt{0.1}
                      \end{bmatrix}

is also a valid singular value decomposition.

Singular values, singular vectors, and their relation to the SVD

A non-negative real number σ is a singular value for M if and only if there exist unit-length vectors u in Km and v in Kn such that

\mathbf{M}\vec{v} = \sigma \vec{u} \,\text{ and } \mathbf{M}^*\vec{u} = \sigma \vec{v}

The vectors u and v are called left-singular and right-singular vectors for σ, respectively.

In any singular value decomposition

\mathbf{M} = \mathbf{U} \boldsymbol{\Sigma} \mathbf{V}^*

the diagonal entries of Σ are equal to the singular values of M. The columns of U and V are, respectively, left- and right-singular vectors for the corresponding singular values. Consequently, the above theorem implies that:

A singular value for which we can find two left (or right) singular vectors that are linearly independent is called degenerate.

Non-degenerate singular values always have unique left- and right-singular vectors, up to multiplication by a unit-phase factor eiφ (for the real case up to sign). Consequently, if all singular values of M are non-degenerate and non-zero, then its singular value decomposition is unique, up to multiplication of a column of U by a unit-phase factor and simultaneous multiplication of the corresponding column of V by the same unit-phase factor.

Degenerate singular values, by definition, have non-unique singular vectors. Furthermore, if u1 and u2 are two left-singular vectors which both correspond to the singular value σ, then any normalized linear combination of the two vectors is also a left-singular vector corresponding to the singular value σ. The similar statement is true for right-singular vectors. Consequently, if M has degenerate singular values, then its singular value decomposition is not unique.

Applications of the SVD

Pseudoinverse

The singular value decomposition can be used for computing the pseudoinverse of a matrix. Indeed, the pseudoinverse of the matrix M with singular value decomposition M = UΣV is

\mathbf{M}^+ = \mathbf{V} \boldsymbol{\Sigma}^+ \mathbf{U}^*

where Σ+ is the pseudoinverse of Σ, which is formed by replacing every non-zero diagonal entry by its reciprocal and transposing the resulting matrix. The pseudoinverse is one way to solve linear least squares problems.

Solving homogeneous linear equations

A set of homogeneous linear equations can be written as Ax = 0 for a matrix A and vector x. A typical situation is that A is known and a non-zero x is to be determined which satisfies the equation. Such an x belongs to A's null space and is sometimes called a (right) null vector of A. The vector x can be characterized as a right-singular vector corresponding to a singular value of A that is zero. This observation means that if A is a square matrix and has no vanishing singular value, the equation has no non-zero x as a solution. It also means that if there are several vanishing singular values, any linear combination of the corresponding right-singular vectors is a valid solution. Analogously to the definition of a (right) null vector, a non-zero x satisfying xA = 0, with x denoting the conjugate transpose of x, is called a left null vector of A.

Total least squares minimization

A total least squares problem refers to determining the vector x which minimizes the 2-norm of a vector Ax under the constraint ||x|| = 1. The solution turns out to be the right-singular vector of A corresponding to the smallest singular value.

Range, null space and rank

Another application of the SVD is that it provides an explicit representation of the range and null space of a matrix M. The right-singular vectors corresponding to vanishing singular values of M span the null space of M. E.g., the null space is spanned by the last two columns of V in the above example. The left-singular vectors corresponding to the non-zero singular values of M span the range of M. As a consequence, the rank of M equals the number of non-zero singular values which is the same as the number of non-zero diagonal elements in Σ.

In numerical linear algebra the singular values can be used to determine the effective rank of a matrix, as rounding error may lead to small but non-zero singular values in a rank deficient matrix.

Low-rank matrix approximation

Some practical applications need to solve the problem of approximating a matrix M with another matrix \tilde{\mathbf{M}}, said truncated, which has a specific rank r. In the case that the approximation is based on minimizing the Frobenius norm of the difference between M and \tilde{\mathbf{M}} under the constraint that \operatorname{rank}\left(\tilde{\mathbf{M}}\right) = r it turns out that the solution is given by the SVD of M, namely

\tilde{\mathbf{M}} = \mathbf{U} \tilde{\boldsymbol{\Sigma}} \mathbf{V}^*

where \tilde{\boldsymbol{\Sigma}} is the same matrix as Σ except that it contains only the r largest singular values (the other singular values are replaced by zero). This is known as the Eckart–Young theorem, as it was proved by those two authors in 1936 (although it was later found to have been known to earlier authors; see Stewart 1993).

Separable models

The SVD can be thought of as decomposing a matrix into a weighted, ordered sum of separable matrices. By separable, we mean that a matrix A can be written as an outer product of two vectors A = uv, or, in coordinates, A_{ij} = u_i v_j. Specifically, the matrix M can be decomposed as:

\mathbf{M} = \sum_i \mathbf{A}_i = \sum_i \sigma_i \mathbf U_i \otimes \mathbf V_i^\dagger

Here Ui and Vi are the i-th columns of the corresponding SVD matrices, σi are the ordered singular values, and each Ai is separable. The SVD can be used to find the decomposition of an image processing filter into separable horizontal and vertical filters. Note that the number of non-zero σi is exactly the rank of the matrix.

Separable models often arise in biological systems, and the SVD factorization is useful to analyze such systems. For example, some visual area V1 simple cells' receptive fields can be well described[1] by a Gabor filter in the space domain multiplied by a modulation function in the time domain. Thus, given a linear filter evaluated through, for example, reverse correlation, one can rearrange the two spatial dimensions into one dimension, thus yielding a two-dimensional filter (space, time) which can be decomposed through SVD. The first column of U in the SVD factorization is then a Gabor while the first column of V represents the time modulation (or vice versa). One may then define an index of separability,

\alpha = \frac{\sigma_1^2}{\sum_i \sigma_i^2},

which is the fraction of the power in the matrix M which is accounted for by the first separable matrix in the decomposition.[2]

Nearest orthogonal matrix

It is possible to use the SVD of a square matrix A to determine the orthogonal matrix O closest to A. The closeness of fit is measured by the Frobenius norm of OA. The solution is the product UV.[3] This intuitively makes sense because an orthogonal matrix would have the decomposition UIV where I is the identity matrix, so that if A = UΣV then the product A = UV amounts to replacing the singular values with ones.

A similar problem, with interesting applications in shape analysis, is the orthogonal Procrustes problem, which consists of finding an orthogonal matrix O which most closely maps A to B. Specifically,

\mathbf{O} = \arg\min_\boldsymbol{\Omega} \|\mathbf{A}\boldsymbol{\Omega} - \mathbf{B}\|_F \quad\mathrm{subject\ to}\quad \boldsymbol{\Omega}^T\boldsymbol{\Omega} = \mathbf{I}

where \| \cdot \|_F denotes the Frobenius norm.

This problem is equivalent to finding the nearest orthogonal matrix to a given matrix M = ATB.

The Kabsch algorithm

The Kabsch algorithm (called Wahba's problem in other fields) uses SVD to compute the optimal rotation (with respect to least-squares minimization) that will align a set of points with a corresponding set of points. It is used, among other applications, to compare the structures of molecules.

Signal processing

The SVD and pseudoinverse have been successfully applied to signal processing[4] and big data, e.g., in genomic signal processing.[5][6][7][8]

Other examples

The SVD is also applied extensively to the study of linear inverse problems, and is useful in the analysis of regularization methods such as that of Tikhonov. It is widely used in statistics where it is related to principal component analysis and to Correspondence analysis, and in signal processing and pattern recognition. It is also used in output-only modal analysis, where the non-scaled mode shapes can be determined from the singular vectors. Yet another usage is latent semantic indexing in natural language text processing.

SVD is significantly important for solving nonlinear inverse problems where usually a truncated SVD (TSVD) is used as representation of model. An important application is constructing computational models of subsurface oil and gas reservoirs .[9]

The SVD also plays a crucial role in the field of quantum information, in a form often referred to as the Schmidt decomposition. Through it, states of two quantum systems are naturally decomposed, providing a necessary and sufficient condition for them to be entangled: if the rank of the Σ matrix is larger than one.

One application of SVD to rather large matrices is in numerical weather prediction, where Lanczos methods are used to estimate the most linearly quickly growing few perturbations to the central numerical weather prediction over a given initial forward time period; i.e., the singular vectors corresponding to the largest singular values of the linearized propagator for the global weather over that time interval. The output singular vectors in this case are entire weather systems. These perturbations are then run through the full nonlinear model to generate an ensemble forecast, giving a handle on some of the uncertainty that should be allowed for around the current central prediction.

SVD has also been applied to reduced order modelling. The aim of reduced order modelling is to reduce the number of degrees of freedom in a complex system which is to be modelled. SVD was coupled with radial basis functions to interpolate solutions to three-dimensional unsteady flow problems.[10]

Singular value decomposition is used in recommender systems to predict people's item ratings.[11] Distributed algorithms have been developed for the purpose of calculating the SVD on clusters of commodity machines.[12]

Low-rank SVD has been applied for hotspot detection from spatiotemporal data with application to disease outbreak detection .[13] A combination of SVD and higher-order SVD also has been applied for real time event detection from complex data streams (multivariate data with space and time dimensions) in Disease surveillance.[14]

Relation to eigenvalue decomposition

The singular value decomposition is very general in the sense that it can be applied to any m × n matrix whereas eigenvalue decomposition can only be applied to certain classes of square matrices. Nevertheless, the two decompositions are related.

Given an SVD of M, as described above, the following two relations hold:

\begin{align}
\mathbf{M}^* \mathbf{M} &= \mathbf{V} \boldsymbol{\Sigma}^* \mathbf{U}^*\, \mathbf{U} \boldsymbol{\Sigma} \mathbf{V}^* = \mathbf{V} (\boldsymbol{\Sigma}^* \boldsymbol{\Sigma}) \mathbf{V}^* \\
\mathbf{M} \mathbf{M}^* &= \mathbf{U} \boldsymbol{\Sigma} \mathbf{V}^*\, \mathbf{V} \boldsymbol{\Sigma}^* \mathbf{U}^* = \mathbf{U} (\boldsymbol{\Sigma} \boldsymbol{\Sigma}^*) \mathbf{U}^*
\end{align}

The right-hand sides of these relations describe the eigenvalue decompositions of the left-hand sides. Consequently:

  • The columns of V (right-singular vectors) are eigenvectors of MM.
  • The columns of U (left-singular vectors) are eigenvectors of MM.
  • The non-zero elements of Σ (non-zero singular values) are the square roots of the non-zero eigenvalues of MM or MM.

In the special case that M is a normal matrix, which by definition must be square, the spectral theorem says that it can be unitarily diagonalized using a basis of eigenvectors, so that it can be written M = UDU for a unitary matrix U and a diagonal matrix D. When M is also positive semi-definite, the decomposition M = UDU is also a singular value decomposition.

However, the eigenvalue decomposition and the singular value decomposition differ for all other matrices M: the eigenvalue decomposition is M = UDU−1 where U is not necessarily unitary and D is not necessarily positive semi-definite, while the SVD is M = UΣV where Σ is a diagonal positive semi-definite, and U and V are unitary matrices that are not necessarily related except through the matrix M.

Existence

An eigenvalue λ of a matrix M is characterized by the algebraic relation Mu = λu. When M is Hermitian, a variational characterization is also available. Let M be a real n × n symmetric matrix. Define

\begin{cases} f : \mathbf{R}^n \to \mathbf{R} \\ f(x) = x^T \mathbf{M} x \end{cases}

By the extreme value theorem, this continuous function attains a maximum at some u when restricted to the closed unit sphere {||x|| ≤ 1}. By the Lagrange multipliers theorem, u necessarily satisfies

\nabla f = \nabla x^T \mathbf{M} x = \lambda \cdot \nabla x^T x

where the nabla symbol, , is the del operator.

A short calculation shows the above leads to Mu = λu (symmetry of M is needed here). Therefore λ is the largest eigenvalue of M. The same calculation performed on the orthogonal complement of u gives the next largest eigenvalue and so on. The complex Hermitian case is similar; there f(x) = x* M x is a real-valued function of 2n real variables.

Singular values are similar in that they can be described algebraically or from variational principles. Although, unlike the eigenvalue case, Hermiticity, or symmetry, of M is no longer required.

This section gives these two arguments for existence of singular value decomposition.

Based on the spectral theorem

Let M be an m × n complex matrix. Since MM is positive semi-definite and Hermitian, by the spectral theorem, there exists a unitary n × n matrix V such that

\mathbf{V}^* \mathbf{M}^* \mathbf{M} \mathbf{V} = \begin{bmatrix} \mathbf{D} & 0 \\ 0 & 0\end{bmatrix}

where D is diagonal and positive definite. Partition V appropriately so we can write

\begin{bmatrix} \mathbf{V}_1^* \\ \mathbf{V}_2^* \end{bmatrix} \mathbf{M}^* \mathbf{M} \begin{bmatrix} \mathbf{V}_1 & \mathbf{V}_2 \end{bmatrix} = \begin{bmatrix} \mathbf{V}_1^* \mathbf{M}^* \mathbf{M} \mathbf{V}_1 & \mathbf{V}_1^* \mathbf{M}^* \mathbf{M} \mathbf{V}_2 \\ \mathbf{V}_2^* \mathbf{M}^* \mathbf{M} \mathbf{V}_1 & \mathbf{V}_2^* \mathbf{M}^* \mathbf{M} \mathbf{V}_2 \end{bmatrix} = \begin{bmatrix} \mathbf{D} & 0 \\ 0 & 0 \end{bmatrix}

Therefore:

\mathbf{V}_1^* \mathbf{M}^* \mathbf{M} \mathbf{V}_1 = \mathbf{D}, \qquad \mathbf{V}_2^* \mathbf{M}^* \mathbf{M} \mathbf{V}_2 = \mathbf{0}.

The second equation implies MV2 = 0. Also, since V is unitary:

\begin{align} 
\mathbf{V}_1^* \mathbf{V}_1 &= \mathbf{I_1}, \\
\mathbf{V}_2^* \mathbf{V}_2 &= \mathbf{I_2}, \\
\mathbf{V}_1 \mathbf{V}_1^* \oplus \mathbf{V}_2 \mathbf{V}_2^* &= \mathbf{I_{12}}
\end{align}

where the subscripts on the identity matrices are there to keep in mind that they are of different dimensions. Define

\mathbf{U}_1 = \mathbf{M} \mathbf{V}_1 \mathbf{D}^{-\frac{1}{2}}

Then

\mathbf{U}_1 \mathbf{D}^\frac{1}{2} \mathbf{V}_1^* = \mathbf{M} \mathbf{V}_1 \mathbf{D}^{-\frac{1}{2}} \mathbf{D}^\frac{1}{2} \mathbf{V}_1^* = \mathbf{M} (\mathbf{I} - \mathbf{V}_2\mathbf{V}_2^*) = \mathbf{M} - (\mathbf{M}\mathbf{V}_2)\mathbf{V}_2^* = \mathbf{M} since \mathbf{M}\mathbf{V}_2 = 0

We see that this is almost the desired result, except that U1 and V1 are not unitary in general since they might not be square. However, we do know that for U1, the number of rows is greater than the number of columns since the dimensions of D is no greater than m and n. Also, since

\mathbf{U}_1^*\mathbf{U}_1 = \mathbf{D}^{-\frac{1}{2}}\mathbf{V}_1^*\mathbf{M}^*\mathbf{M} \mathbf{V}_1 \mathbf{D}^{-\frac{1}{2}}=\mathbf{D}^{-\frac{1}{2}}\mathbf{D}\mathbf{D}^{-\frac{1}{2}} = \mathbf{I_1}

the columns in U1 are orthonormal and can be extended to an orthonormal basis. This means, we can choose U2 such that the following matrix is unitary:

\mathbf{U} = \begin{bmatrix} \mathbf{U}_1 & \mathbf{U}_2 \end{bmatrix}

For V1 we already have V2 to make it unitary. Now, define

\boldsymbol{\Sigma} =
  \begin{bmatrix}
    \begin{bmatrix}
      \mathbf{D}^\frac{1}{2} & 0 \\
      0                      & 0
    \end{bmatrix} \\
    0
  \end{bmatrix}

where extra zero rows are added or removed to make the number of zero rows equal the number of columns of U2. Then

 \begin{bmatrix}
    \mathbf{U}_1 & \mathbf{U}_2
  \end{bmatrix}
  \begin{bmatrix}
    \begin{bmatrix}
      \mathbf{}D^\frac{1}{2} & 0 \\
      0                      & 0
    \end{bmatrix} \\
    0
  \end{bmatrix}
  \begin{bmatrix}
    \mathbf{V}_1 & \mathbf{V}_2
  \end{bmatrix}^* =
  \begin{bmatrix}
    \mathbf{U}_1 & \mathbf{U}_2
  \end{bmatrix}
  \begin{bmatrix} \mathbf{D}^\frac{1}{2} \mathbf{V}_1^* \\ 0 \end{bmatrix} =
\mathbf{U}_1 \mathbf{D}^\frac{1}{2} \mathbf{V}_1^* = \mathbf{M}

which is the desired result:

\mathbf{M} = \mathbf{U} \boldsymbol{\Sigma} \mathbf{V}^*

Notice the argument could begin with diagonalizing MM rather than MM (This shows directly that MM and MM have the same non-zero eigenvalues).

Based on variational characterization

The singular values can also be characterized as the maxima of uTMv, considered as a function of u and v, over particular subspaces. The singular vectors are the values of u and v where these maxima are attained.

Let M denote an m × n matrix with real entries. Let Sm−1 and Sn−1 denote the sets of unit 2-norm vectors in Rm and Rn respectively. Define the function

\sigma(\mathbf{u}, \mathbf{v}) = \mathbf{u}^{T} \mathbf{M} \mathbf{v}, \qquad \mathbf{u} \in S^{m-1}, \mathbf{v} \in S^{n-1}.

Consider the function σ restricted to Sm−1 × Sn−1. Since both Sm−1 and Sn−1 are compact sets, their product is also compact. Furthermore, since σ is continuous, it attains a largest value for at least one pair of vectors uSm−1 and vSn−1. This largest value is denoted σ1 and the corresponding vectors are denoted u1 and v1. Since σ1 is the largest value of σ(u, v) it must be non-negative. If it were negative, changing the sign of either u1 or v1 would make it positive and therefore larger.

Statement. u1, v1 are left and right-singular vectors of M with corresponding singular value σ1.

Proof: Similar to the eigenvalues case, by assumption the two vectors satisfy the Lagrange multiplier equation:

\nabla \sigma = \nabla \mathbf{u}^T \mathbf{M} \mathbf{v} - \lambda_1 \cdot \nabla \mathbf{u}^T \mathbf{u} - \lambda_2 \cdot \nabla \mathbf{v}^T \mathbf{v}

After some algebra, this becomes

\begin{align}
\mathbf{M} \mathbf{v}_{1} &= 2 \lambda_{1} \mathbf{u}_{1} + 0 \\
\mathbf{M}^{T} \mathbf{u}_{1} &= 0 + 2 \lambda_{2} \mathbf{v}_{1}
\end{align}

Multiplying the first equation from left by \mathbf{u}_1^T and the second equation from left by \mathbf{v}_1^T and taking ||u|| = ||v|| = 1 into account gives

\sigma_1 = 2\lambda_1 = 2\lambda_2.

Plugging this into the pair of equations above, we have

\begin{align}
\mathbf{M} \mathbf{v}_1 &= \sigma_1 \mathbf{u}_1\\
\mathbf{M}^T \mathbf{u}_1 &= \sigma_1 \mathbf{v}_1
\end{align}

This proves the statement.

More singular vectors and singular values can be found by maximizing σ(u, v) over normalized u, v which are orthogonal to u1 and v1, respectively.

The passage from real to complex is similar to the eigenvalue case.

Geometric meaning

Because U and V are unitary, we know that the columns U1, ..., Um of U yield an orthonormal basis of Km and the columns V1, ..., Vn of V yield an orthonormal basis of Kn (with respect to the standard scalar products on these spaces).

The linear transformation

\begin{cases} T : K^n \to K^m \\ x \mapsto \mathbf{M}x \end{cases}

has a particularly simple description with respect to these orthonormal bases: we have

T(\mathbf{V}_i) = \sigma_i \mathbf{U}_i, \qquad i = 1, \cdots, \min(m, n),

where σi is the i-th diagonal entry of Σ, and T(Vi) = 0 for i > min(m,n).

The geometric content of the SVD theorem can thus be summarized as follows: for every linear map T : KnKm one can find orthonormal bases of Kn and Km such that T maps the i-th basis vector of Kn to a non-negative multiple of the i-th basis vector of Km, and sends the left-over basis vectors to zero. With respect to these bases, the map T is therefore represented by a diagonal matrix with non-negative real diagonal entries.

To get a more visual flavour of singular values and SVD factorization — at least when working on real vector spaces — consider the sphere S of radius one in Rn. The linear map T maps this sphere onto an ellipsoid in Rm. Non-zero singular values are simply the lengths of the semi-axes of this ellipsoid. Especially when n = m, and all the singular values are distinct and non-zero, the SVD of the linear map T can be easily analysed as a succession of three consecutive moves: consider the ellipsoid T(S) and specifically its axes; then consider the directions in Rn sent by T onto these axes. These directions happen to be mutually orthogonal. Apply first an isometry V sending these directions to the coordinate axes of Rn. On a second move, apply an endomorphism D diagonalized along the coordinate axes and stretching or shrinking in each direction, using the semi-axes lengths of T(S) as stretching coefficients. The composition DV then sends the unit-sphere onto an ellipsoid isometric to T(S). To define the third and last move U, apply an isometry to this ellipsoid so as to carry it over T(S). As can be easily checked, the composition UDV coincides with T.

Calculating the SVD

Numerical approach

The SVD of a matrix M is typically computed by a two-step procedure. In the first step, the matrix is reduced to a bidiagonal matrix. This takes O(mn2) floating-point operations (flops), assuming that mn. The second step is to compute the SVD of the bidiagonal matrix. This step can only be done with an iterative method (as with eigenvalue algorithms). However, in practice it suffices to compute the SVD up to a certain precision, like the machine epsilon. If this precision is considered constant, then the second step takes O(n) iterations, each costing O(n) flops. Thus, the first step is more expensive, and the overall cost is O(mn2) flops (Trefethen & Bau III 1997, Lecture 31).

The first step can be done using Householder reflections for a cost of 4mn2 − 4n3/3 flops, assuming that only the singular values are needed and not the singular vectors. If m is much larger than n then it is advantageous to first reduce the matrix M to a triangular matrix with the QR decomposition and then use Householder reflections to further reduce the matrix to bidiagonal form; the combined cost is 2mn2 + 2n3 flops (Trefethen & Bau III 1997, Lecture 31).

The second step can be done by a variant of the QR algorithm for the computation of eigenvalues, which was first described by Golub & Kahan (1965). The LAPACK subroutine DBDSQR[15] implements this iterative method, with some modifications to cover the case where the singular values are very small (Demmel & Kahan 1990). Together with a first step using Householder reflections and, if appropriate, QR decomposition, this forms the DGESVD[16] routine for the computation of the singular value decomposition.

The same algorithm is implemented in the GNU Scientific Library (GSL). The GSL also offers an alternative method, which uses a one-sided Jacobi orthogonalization in step 2 (GSL Team 2007). This method computes the SVD of the bidiagonal matrix by solving a sequence of 2 × 2 SVD problems, similar to how the Jacobi eigenvalue algorithm solves a sequence of 2 × 2 eigenvalue methods (Golub & Van Loan 1996, §8.6.3). Yet another method for step 2 uses the idea of divide-and-conquer eigenvalue algorithms (Trefethen & Bau III 1997, Lecture 31).

There is an alternative way which is not explicitly using the eigenvalue decomposition.[17] Usually the singular value problem of a matrix M is converted into an equivalent symmetric eigenvalue problem such as M M*, M*M, or

 \begin{pmatrix} \mathbf{O} & \mathbf{M} \\ \mathbf{M}^* & \mathbf{O} \end{pmatrix}.

The approaches using eigenvalue decompositions are based on QR algorithm which is well-developed to be stable and fast. Note that the singular values are not complex and right- and left- singular vectors are not required to form any similarity transformation. Alternating QR decomposition and LQ decomposition can be claimed to use iteratively to find the real diagonal matrix with Hermitian matrices. QR decomposition gives MQ R and LQ decomposition of R gives RL P*. Thus, at every iteration, we have MQ L P*, update ML and repeat the orthogonalizations. Eventually, QR decomposition and LQ decomposition iteratively provide unitary matrices for left- and right- singular matrices, respectively. This approach does not come with any acceleration method such as spectral shifts and deflation as in QR algorithm. It is because the shift method is not easily defined without using similarity transformation. But it is very simple to implement where the speed does not matter. Also it give us a good interpretation that only orthogonal/unitary transformations can obtain SVD as the QR algorithm can calculate the eigenvalue decomposition.

Analytic result of 2 × 2 SVD

The singular values of a 2 × 2 matrix can be found analytically. Let the matrix be \mathbf{M} = z_0\mathbf{I} + z_1\sigma_1 + z_2\sigma_2 + z_3\sigma_3

where z_i \in \mathbb{C} are complex numbers that parameterize the matrix, I is the identity matrix, and \sigma_i denote the Pauli matrices. Then its two singular values are given by

\begin{align}
\sigma_{\pm} &= \sqrt{|z_0|^2 + |z_1|^2 + |z_2|^2 + |z_3|^2 \pm \sqrt{(|z_0|^2 + |z_1|^2 + |z_2|^2 + |z_3|^2)^2 - |z_0^2 - z_1^2 - z_2^2 - z_3^2|^2}} \\
&= \sqrt{|z_0|^2 + |z_1|^2 + |z_2|^2 + |z_3|^2 \pm 2\sqrt{(\mathrm{Re}z_0z_1^*)^2 + (\mathrm{Re}z_0z_2^*)^2 + (\mathrm{Re}z_0z_3^*)^2 + (\mathrm{Im}z_1z_2^*)^2 + (\mathrm{Im}z_2z_3^*)^2 + (\mathrm{Im}z_3z_1^*)^2}}
\end{align}

Reduced SVDs

In applications it is quite unusual for the full SVD, including a full unitary decomposition of the null-space of the matrix, to be required. Instead, it is often sufficient (as well as faster, and more economical for storage) to compute a reduced version of the SVD. The following can be distinguished for an m×n matrix M of rank r:

Thin SVD

\mathbf{M} = \mathbf{U}_n \boldsymbol{\Sigma}_n \mathbf{V}^*

Only the n column vectors of U corresponding to the row vectors of V* are calculated. The remaining column vectors of U are not calculated. This is significantly quicker and more economical than the full SVD if nm. The matrix Un is thus m×n, Σn is n×n diagonal, and V is n×n.

The first stage in the calculation of a thin SVD will usually be a QR decomposition of M, which can make for a significantly quicker calculation if nm.

Compact SVD

\mathbf{M} = \mathbf{U}_r \boldsymbol{\Sigma}_r \mathbf{V}_r^*

Only the r column vectors of U and r row vectors of V* corresponding to the non-zero singular values Σr are calculated. The remaining vectors of U and V* are not calculated. This is quicker and more economical than the thin SVD if rn. The matrix Ur is thus m×r, Σr is r×r diagonal, and Vr* is r×n.

Truncated SVD

\tilde{\mathbf{M}} = \mathbf{U}_t \boldsymbol{\Sigma}_t \mathbf{V}_t^*

Only the t column vectors of U and t row vectors of V* corresponding to the t largest singular values Σt are calculated. The rest of the matrix is discarded. This can be much quicker and more economical than the compact SVD if tr. The matrix Ut is thus m×t, Σt is t×t diagonal, and Vt* is t×n.

Of course the truncated SVD is no longer an exact decomposition of the original matrix M, but as discussed above, the approximate matrix \tilde{\mathbf{M}} is in a very useful sense the closest approximation to M that can be achieved by a matrix of rank t.

Norms

Ky Fan norms

The sum of the k largest singular values of M is a matrix norm, the Ky Fan k-norm of M.

The first of the Ky Fan norms, the Ky Fan 1-norm is the same as the operator norm of M as a linear operator with respect to the Euclidean norms of Km and Kn. In other words, the Ky Fan 1-norm is the operator norm induced by the standard l2 Euclidean inner product. For this reason, it is also called the operator 2-norm. One can easily verify the relationship between the Ky Fan 1-norm and singular values. It is true in general, for a bounded operator M on (possibly infinite-dimensional) Hilbert spaces

\| \mathbf{M} \| = \| \mathbf{M}^* \mathbf{M} \|^\frac{1}{2}

But, in the matrix case, (M* M)½ is a normal matrix, so ||M* M||½ is the largest eigenvalue of (M* M)½, i.e. the largest singular value of M.

The last of the Ky Fan norms, the sum of all singular values, is the trace norm (also known as the 'nuclear norm'), defined by ||M|| = Tr[(M* M)½] (the eigenvalues of M* M are the squares of the singular values).

Hilbert–Schmidt norm

The singular values are related to another norm on the space of operators. Consider the Hilbert–Schmidt inner product on the n × n matrices, defined by

\langle \mathbf{M}, \mathbf{N} \rangle = \operatorname{trace} \left (\mathbf{N}^*\mathbf{M} \right ).

So the induced norm is

\| \mathbf{M} \| = \sqrt{\langle \mathbf{M}, \mathbf{M}\rangle} = \sqrt{\operatorname{trace} \left (\mathbf{M}^*\mathbf{M} \right )}.

Since the trace is invariant under unitary equivalence, this shows

\| \mathbf{M} \| = \sqrt{\sum_i \sigma_i ^2}

where σi are the singular values of M. This is called the Frobenius norm, Schatten 2-norm, or Hilbert–Schmidt norm of M. Direct calculation shows that the Frobenius norm of M = (mij) coincides with:

\sqrt{\sum_{ij} | m_{ij} |^2}.

Tensor SVD

Two types of tensor decompositions exist, which generalise the SVD to multi-way arrays. One of them decomposes a tensor into a sum of rank-1 tensors, which is called a tensor rank decomposition. The second type of decomposition computes the orthonormal subspaces associated with the different factors appearing in the tensor product of vector spaces in which the tensor lives. This decomposition is referred to in the literature as the higher-order SVD (HOSVD) or Tucker3/TuckerM. In addition, multilinear principal component analysis in multilinear subspace learning involves the same mathematical operations as Tucker decomposition, being used in a different context of dimensionality reduction.

Bounded operators on Hilbert spaces

The factorization M = UΣV can be extended to a bounded operator M on a separable Hilbert space H. Namely, for any bounded operator M, there exist a partial isometry U, a unitary V, a measure space (X, μ), and a non-negative measurable f such that

\mathbf{M} = \mathbf{U} T_f \mathbf{V}^*

where T_f is the multiplication by f on L2(X, μ).

This can be shown by mimicking the linear algebraic argument for the matricial case above. VTf V* is the unique positive square root of M*M, as given by the Borel functional calculus for self adjoint operators. The reason why U need not be unitary is because, unlike the finite-dimensional case, given an isometry U1 with nontrivial kernel, a suitable U2 may not be found such that

\begin{bmatrix} U_1 \\ U_2 \end{bmatrix}

is a unitary operator.

As for matrices, the singular value factorization is equivalent to the polar decomposition for operators: we can simply write

\mathbf{M} = \mathbf{U} \mathbf{V}^* \cdot \mathbf{V} T_f \mathbf{V}^*

and notice that U V* is still a partial isometry while VTf V* is positive.

Singular values and compact operators

To extend notion of singular values and left/right-singular vectors to the operator case, one needs to restrict to compact operators. It is a general fact that compact operators on Banach spaces have only discrete spectrum. This is also true for compact operators on Hilbert spaces, since Hilbert spaces are a special case of Banach spaces. If T is compact, every non-zero λ in its spectrum is an eigenvalue. Furthermore, a compact self adjoint operator can be diagonalized by its eigenvectors. If M is compact, so is MM. Applying the diagonalization result, the unitary image of its positive square root Tf  has a set of orthonormal eigenvectors {ei} corresponding to strictly positive eigenvalues {σi}. For any ψH,

\mathbf{M} \psi = \mathbf{U} T_f \mathbf{V}^* \psi = \sum_i \left \langle \mathbf{U} T_f \mathbf{V}^* \psi, \mathbf{U} e_i \right \rangle \mathbf{U} e_i = \sum_i \sigma_i \left \langle \psi, \mathbf{V} e_i \right \rangle \mathbf{U} e_i

where the series converges in the norm topology on H. Notice how this resembles the expression from the finite-dimensional case. σi are called the singular values of M. {Uei} (resp. {Vei} ) can be considered the left-singular (resp. right-singular) vectors of M.

Compact operators on a Hilbert space are the closure of finite-rank operators in the uniform operator topology. The above series expression gives an explicit such representation. An immediate consequence of this is:

Theorem. M is compact if and only if MM is compact.

History

The singular value decomposition was originally developed by differential geometers, who wished to determine whether a real bilinear form could be made equal to another by independent orthogonal transformations of the two spaces it acts on. Eugenio Beltrami and Camille Jordan discovered independently, in 1873 and 1874 respectively, that the singular values of the bilinear forms, represented as a matrix, form a complete set of invariants for bilinear forms under orthogonal substitutions. James Joseph Sylvester also arrived at the singular value decomposition for real square matrices in 1889, apparently independently of both Beltrami and Jordan. Sylvester called the singular values the canonical multipliers of the matrix A. The fourth mathematician to discover the singular value decomposition independently is Autonne in 1915, who arrived at it via the polar decomposition. The first proof of the singular value decomposition for rectangular and complex matrices seems to be by Carl Eckart and Gale Young in 1936;[18] they saw it as a generalization of the principal axis transformation for Hermitian matrices.

In 1907, Erhard Schmidt defined an analog of singular values for integral operators (which are compact, under some weak technical assumptions); it seems he was unaware of the parallel work on singular values of finite matrices. This theory was further developed by Émile Picard in 1910, who is the first to call the numbers \sigma_k singular values (or in French, valeurs singulières).

Practical methods for computing the SVD date back to Kogbetliantz in 1954, 1955 and Hestenes in 1958.[19] resembling closely the Jacobi eigenvalue algorithm, which uses plane rotations or Givens rotations. However, these were replaced by the method of Gene Golub and William Kahan published in 1965,[20] which uses Householder transformations or reflections. In 1970, Golub and Christian Reinsch[21] published a variant of the Golub/Kahan algorithm that is still the one most-used today.

See also

Notes

  1. DeAngelis GC, Ohzawa I, Freeman RD (October 1995). "Receptive-field dynamics in the central visual pathways". Trends Neurosci. 18 (10): 451–8. doi:10.1016/0166-2236(95)94496-R. PMID 8545912.
  2. Depireux DA, Simon JZ, Klein DJ, Shamma SA (March 2001). "Spectro-temporal response field characterization with dynamic ripples in ferret primary auditory cortex". J. Neurophysiol. 85 (3): 1220–34. PMID 11247991.
  3. The Singular Value Decomposition in Symmetric (Lowdin) Orthogonalization and Data Compression
  4. Sahidullah, Md.; Kinnunen, Tomi (March 2016). "Local spectral variability features for speaker verification". Digital Signal Processing 50: 1–11. doi:10.1016/j.dsp.2015.10.011.
  5. O. Alter, P. O. Brown and D. Botstein (September 2000). "Singular Value Decomposition for Genome-Wide Expression Data Processing and Modeling". PNAS 97 (18): 10101–10106. doi:10.1073/pnas.97.18.10101.
  6. O. Alter and G. H. Golub (November 2004). "Integrative Analysis of Genome-Scale Data by Using Pseudoinverse Projection Predicts Novel Correlation Between DNA Replication and RNA Transcription". PNAS 101 (47): 16577–16582. doi:10.1073/pnas.0406767101. PMC 534520. PMID 15545604.
  7. O. Alter and G. H. Golub (August 2006). "Singular Value Decomposition of Genome-Scale mRNA Lengths Distribution Reveals Asymmetry in RNA Gel Electrophoresis Band Broadening". PNAS 103 (32): 11828–11833. doi:10.1073/pnas.0604756103.
  8. N. M. Bertagnolli, J. A. Drake, J. M. Tennessen and O. Alter (November 2013). "SVD Identifies Transcript Length Distribution Functions from DNA Microarray Data and Reveals Evolutionary Forces Globally Affecting GBM Metabolism". PLOS ONE 8 (11): e78913. doi:10.1371/journal.pone.0078913. Highlight.
  9. Shirangi, M G. "History matching production data and uncertainty assessment with an efficient TSVD parameterization algorithm". Journal of Petroleum Science and Engineering 113: 54–71. doi:10.1016/j.petrol.2013.11.025.
  10. Walton, S.; Hassan, O.; Morgan, K. "Reduced order modelling for unsteady fluid flow using proper orthogonal decomposition and radial basis functions". Applied Mathematical Modelling 37: 8930–8945. doi:10.1016/j.apm.2013.04.025.
  11. Sarwar, Badrul; Karypis, George; Konstan, Joseph A. & Riedl, John T. (2000). "Application of Dimensionality Reduction in Recommender System -- A Case Study" (PDF). University of Minnesota. Retrieved May 26, 2014.
  12. Bosagh Zadeh, Reza; Carlsson, Gunnar. "Dimension Independent Matrix Square Using MapReduce" (PDF). Retrieved 12 July 2014.
  13. Hadi Fanaee-T and João Gama (September 2014). "Eigenspace method for spatiotemporal hotspot detection". Expert Systems: 1–11. doi:10.1111/exsy.12088.
  14. Hadi Fanaee-T and João Gama (May 2015). "EigenEvent: An Algorithm for Event Detection from Complex Data Streams in Syndromic Surveillance". Intelligent Data Analysis 19 (3).
  15. Netlib.org
  16. Netlib.org
  17. mathworks.co.kr/matlabcentral/fileexchange/12674-simple-svd
  18. Eckart, C.; Young, G. (1936). "The approximation of one matrix by another of lower rank". Psychometrika 1 (3): 211–8. doi:10.1007/BF02288367.
  19. Hestenes, M. R. (1958). "Inversion of Matrices by Biorthogonalization and Related Results". Journal of the Society for Industrial and Applied Mathematics 6 (1): 51–90. doi:10.1137/0106005. JSTOR 2098862. MR 0092215.
  20. Golub, G. H.; Kahan, W. (1965). "Calculating the singular values and pseudo-inverse of a matrix". Journal of the Society for Industrial and Applied Mathematics: Series B, Numerical Analysis 2 (2): 205–224. doi:10.1137/0702016. JSTOR 2949777. MR 0183105.
  21. Golub, G. H.; Reinsch, C. (1970). "Singular value decomposition and least squares solutions". Numerische Mathematik 14 (5): 403–420. doi:10.1007/BF02163027. MR 1553974.

References

External links

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