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mathematics Mathematics is a field of study that discovers and organizes methods, Mathematical theory, theories and theorems that are developed and Mathematical proof, proved for the needs of empirical sciences and mathematics itself. There are many ar ...
, the polar decomposition of a square real or
complex Complex commonly refers to: * Complexity, the behaviour of a system whose components interact in multiple ways so possible interactions are difficult to describe ** Complex system, a system composed of many components which may interact with each ...
matrix Matrix (: matrices or matrixes) or MATRIX may refer to: Science and mathematics * Matrix (mathematics), a rectangular array of numbers, symbols or expressions * Matrix (logic), part of a formula in prenex normal form * Matrix (biology), the m ...
A is a
factorization In mathematics, factorization (or factorisation, see American and British English spelling differences#-ise, -ize (-isation, -ization), English spelling differences) or factoring consists of writing a number or another mathematical object as a p ...
of the form A = U P, where U is a
unitary matrix In linear algebra, an invertible complex square matrix is unitary if its matrix inverse equals its conjugate transpose , that is, if U^* U = UU^* = I, where is the identity matrix. In physics, especially in quantum mechanics, the conjugate ...
, and P is a positive semi-definite
Hermitian matrix In mathematics, a Hermitian matrix (or self-adjoint matrix) is a complex square matrix that is equal to its own conjugate transpose—that is, the element in the -th row and -th column is equal to the complex conjugate of the element in the ...
(U is an
orthogonal matrix In linear algebra, an orthogonal matrix, or orthonormal matrix, is a real square matrix whose columns and rows are orthonormal vectors. One way to express this is Q^\mathrm Q = Q Q^\mathrm = I, where is the transpose of and is the identi ...
, and P is a positive semi-definite
symmetric matrix In linear algebra, a symmetric matrix is a square matrix that is equal to its transpose. Formally, Because equal matrices have equal dimensions, only square matrices can be symmetric. The entries of a symmetric matrix are symmetric with ...
in the real case), both square and of the same size. If a real n \times n matrix A is interpreted as a
linear transformation In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a mapping V \to W between two vector spaces that pr ...
of n-dimensional
space Space is a three-dimensional continuum containing positions and directions. In classical physics, physical space is often conceived in three linear dimensions. Modern physicists usually consider it, with time, to be part of a boundless ...
\mathbb^n, the polar decomposition separates it into a
rotation Rotation or rotational/rotary motion is the circular movement of an object around a central line, known as an ''axis of rotation''. A plane figure can rotate in either a clockwise or counterclockwise sense around a perpendicular axis intersect ...
or reflection U of \mathbb^n and a
scaling Scaling may refer to: Science and technology Mathematics and physics * Scaling (geometry), a linear transformation that enlarges or diminishes objects * Scale invariance, a feature of objects or laws that do not change if scales of length, energ ...
of the space along a set of n orthogonal axes. The polar decomposition of a square matrix A always exists. If A is
invertible In mathematics, the concept of an inverse element generalises the concepts of opposite () and reciprocal () of numbers. Given an operation denoted here , and an identity element denoted , if , one says that is a left inverse of , and that ...
, the decomposition is unique, and the factor P will be
positive-definite In mathematics, positive definiteness is a property of any object to which a bilinear form or a sesquilinear form may be naturally associated, which is positive-definite. See, in particular: * Positive-definite bilinear form * Positive-definite ...
. In that case, A can be written uniquely in the form A = U e^X, where U is unitary, and X is the unique self-adjoint
logarithm In mathematics, the logarithm of a number is the exponent by which another fixed value, the base, must be raised to produce that number. For example, the logarithm of to base is , because is to the rd power: . More generally, if , the ...
of the matrix P. This decomposition is useful in computing the
fundamental group In the mathematics, mathematical field of algebraic topology, the fundamental group of a topological space is the group (mathematics), group of the equivalence classes under homotopy of the Loop (topology), loops contained in the space. It record ...
of (matrix)
Lie group In mathematics, a Lie group (pronounced ) is a group (mathematics), group that is also a differentiable manifold, such that group multiplication and taking inverses are both differentiable. A manifold is a space that locally resembles Eucli ...
s. The polar decomposition can also be defined as A = P' U, where P' = U P U^ is a symmetric positive-definite matrix with the same eigenvalues as P but different eigenvectors. The polar decomposition of a matrix can be seen as the matrix analog of the polar form of a
complex number In mathematics, a complex number is an element of a number system that extends the real numbers with a specific element denoted , called the imaginary unit and satisfying the equation i^= -1; every complex number can be expressed in the for ...
z as z = u r, where r is its
absolute value In mathematics, the absolute value or modulus of a real number x, is the non-negative value without regard to its sign. Namely, , x, =x if x is a positive number, and , x, =-x if x is negative (in which case negating x makes -x positive), ...
(a non-negative
real number In mathematics, a real number is a number that can be used to measure a continuous one- dimensional quantity such as a duration or temperature. Here, ''continuous'' means that pairs of values can have arbitrarily small differences. Every re ...
), and u is a complex number with unit norm (an element of the
circle group In mathematics, the circle group, denoted by \mathbb T or , is the multiplicative group of all complex numbers with absolute value 1, that is, the unit circle in the complex plane or simply the unit complex numbers \mathbb T = \. The circle g ...
). The definition A = UP may be extended to rectangular matrices A \in \mathbb^ by requiring U \in \mathbb^ to be a semi-unitary matrix, and P \in \mathbb^ to be a positive-semidefinite Hermitian matrix. The decomposition always exists, and P is always unique. The matrix U is unique if and only if A has full rank.


Geometric interpretation

A real square m\times m matrix A can be interpreted as the
linear transformation In mathematics, and more specifically in linear algebra, a linear map (also called a linear mapping, linear transformation, vector space homomorphism, or in some contexts linear function) is a mapping V \to W between two vector spaces that pr ...
of \mathbb^m that takes a column vector x to A x. Then, in the polar decomposition A = RP, the factor R is an m\times m real orthogonal matrix. The polar decomposition then can be seen as expressing the linear transformation defined by A into a
scaling Scaling may refer to: Science and technology Mathematics and physics * Scaling (geometry), a linear transformation that enlarges or diminishes objects * Scale invariance, a feature of objects or laws that do not change if scales of length, energ ...
of the space \mathbb^m along each eigenvector e_i of P by a scale factor \sigma_i (the action of P), followed by a rotation of \mathbb^m (the action of R). Alternatively, the decomposition A=P R expresses the transformation defined by A as a rotation (R) followed by a scaling (P) along certain orthogonal directions. The scale factors are the same, but the directions are different.


Properties

The polar decomposition of the
complex conjugate In mathematics, the complex conjugate of a complex number is the number with an equal real part and an imaginary part equal in magnitude but opposite in sign. That is, if a and b are real numbers, then the complex conjugate of a + bi is a - ...
of A is given by \overline = \overline\overline. Note that \det A = \det U \det P = e^ r gives the corresponding polar decomposition of the
determinant In mathematics, the determinant is a Scalar (mathematics), scalar-valued function (mathematics), function of the entries of a square matrix. The determinant of a matrix is commonly denoted , , or . Its value characterizes some properties of the ...
of ''A'', since \det U = e^, and \det P = r = , \det A, . In particular, if A has determinant 1, then both U and P have determinant 1. The positive-semidefinite matrix ''P'' is always unique, even if ''A'' is
singular Singular may refer to: * Singular, the grammatical number that denotes a unit quantity, as opposed to the plural and other forms * Singular or sounder, a group of boar, see List of animal names * Singular (band), a Thai jazz pop duo *'' Singula ...
, and is denoted as P = (A^* A)^, where A^* denotes the
conjugate transpose In mathematics, the conjugate transpose, also known as the Hermitian transpose, of an m \times n complex matrix \mathbf is an n \times m matrix obtained by transposing \mathbf and applying complex conjugation to each entry (the complex conjugate ...
of A. The uniqueness of ''P'' ensures that this expression is well-defined. The uniqueness is guaranteed by the fact that A^* A is a positive-semidefinite Hermitian matrix and, therefore, has a unique positive-semidefinite Hermitian
square root In mathematics, a square root of a number is a number such that y^2 = x; in other words, a number whose ''square'' (the result of multiplying the number by itself, or y \cdot y) is . For example, 4 and −4 are square roots of 16 because 4 ...
. If ''A'' is invertible, then ''P'' is positive-definite, thus also invertible, and the matrix ''U'' is uniquely determined by U = AP^.


Relation to the SVD

In terms of the
singular value decomposition In linear algebra, the singular value decomposition (SVD) is a Matrix decomposition, factorization of a real number, real or complex number, complex matrix (mathematics), matrix into a rotation, followed by a rescaling followed by another rota ...
(SVD) of A, A = W\Sigma V^*, one has \begin P &= V\Sigma V^*, \\ U &= WV^*, \end where U, V, and W are unitary matrices (
orthogonal In mathematics, orthogonality (mathematics), orthogonality is the generalization of the geometric notion of ''perpendicularity''. Although many authors use the two terms ''perpendicular'' and ''orthogonal'' interchangeably, the term ''perpendic ...
if the field is the reals \mathbb). This confirms that P is positive-definite, and U is unitary. Thus, the existence of the SVD is equivalent to the existence of polar decomposition. One can also decompose A in the form A = P'U. Here U is the same as before, and P' is given by P' = UPU^ = (AA^*)^ = W \Sigma W^*. This is known as the left polar decomposition, whereas the previous decomposition is known as the right polar decomposition. Left polar decomposition is also known as reverse polar decomposition. The polar decomposition of a square invertible real matrix A is of the form A = R, where \equiv \left(AA^\mathsf\right)^ is a
positive-definite In mathematics, positive definiteness is a property of any object to which a bilinear form or a sesquilinear form may be naturally associated, which is positive-definite. See, in particular: * Positive-definite bilinear form * Positive-definite ...
matrix Matrix (: matrices or matrixes) or MATRIX may refer to: Science and mathematics * Matrix (mathematics), a rectangular array of numbers, symbols or expressions * Matrix (logic), part of a formula in prenex normal form * Matrix (biology), the m ...
, and R = A is an orthogonal matrix.


Relation to normal matrices

The matrix A with polar decomposition A = UP is normal if and only if U and P commute (UP = PU), or equivalently, they are
simultaneously diagonalizable In linear algebra, a square matrix A is called diagonalizable or non-defective if it is similar to a diagonal matrix. That is, if there exists an invertible matrix P and a diagonal matrix D such that . This is equivalent to (Such D are not ...
.


Construction and proofs of existence

The core idea behind the construction of the polar decomposition is similar to that used to compute the singular-value decomposition.


Derivation for normal matrices

If A is normal, then it is unitarily equivalent to a diagonal matrix: A = V\Lambda V^* for some unitary matrix V and some diagonal matrix \Lambda ~. This makes the derivation of its polar decomposition particularly straightforward, as we can then write A = V\Phi_\Lambda, \Lambda, V^* = \underbrace_\underbrace_, where , \Lambda, is the matrix of absolute diagonal values, and \Phi_\Lambda is a diagonal matrix containing the ''phases'' of the elements of \Lambda, that is, (\Phi_\Lambda)_\equiv \Lambda_/ , \Lambda_, when \Lambda_ \neq 0,, and (\Phi_\Lambda)_ = 0 when \Lambda_ = 0 ~. The polar decomposition is thus A=UP, with U and P diagonal in the eigenbasis of A and having eigenvalues equal to the phases and absolute values of those of A, respectively.


Derivation for invertible matrices

From the singular-value decomposition, it can be shown that a matrix A is invertible if and only if A^* A (equivalently, AA^*) is. Moreover, this is true if and only if the eigenvalues of A^* A are all not zero. In this case, the polar decomposition is directly obtained by writing A = A\left(A^* A\right)^\left(A^* A\right)^, and observing that A\left(A^* A\right)^ is unitary. To see this, we can exploit the spectral decomposition of A^* A to write A\left(A^* A\right)^ = AVD^V^*. In this expression, V^* is unitary because V is. To show that also AVD^ is unitary, we can use the SVD to write A = WD^V^*, so that AV D^ = WD^V^* VD^ = W, where again W is unitary by construction. Yet another way to directly show the unitarity of A\left(A^* A\right)^ is to note that, writing the SVD of A in terms of rank-1 matrices as A = \sum_k s_k v_k w_k^*, where s_kare the singular values of A, we have A\left(A^* A\right)^ = \left(\sum_j \lambda_j v_j w_j^*\right)\left(\sum_k , \lambda_k, ^ w_k w_k^*\right) = \sum_k \frac v_k w_k^*, which directly implies the unitarity of A\left(A^* A\right)^ because a matrix is unitary if and only if its singular values have unitary absolute value. Note how, from the above construction, it follows that ''the unitary matrix in the polar decomposition of an invertible matrix is uniquely defined''.


General derivation

The SVD of a square matrix A reads A = W D^ V^*, with W, V unitary matrices, and D a diagonal, positive semi-definite matrix. By simply inserting an additional pair of Ws or Vs, we obtain the two forms of the polar decomposition of A: A = WD^V^* = \underbrace_P \underbrace_U = \underbrace_U \underbrace_. More generally, if A is some rectangular n\times m matrix, its SVD can be written as A=WD^V^* where now W and V are isometries with dimensions n\times r and m\times r , respectively, where r\equiv\operatorname(A) , and D is again a diagonal positive semi-definite square matrix with dimensions r\times r . We can now apply the same reasoning used in the above equation to write A=PU=UP', but now U\equiv WV^* is not in general unitary. Nonetheless, U has the same support and range as A , and it satisfies U^* U=VV^* and UU^*=WW^* . This makes U into an isometry when its action is restricted onto the support of A , that is, it means that U is a
partial isometry Partial may refer to: Mathematics *Partial derivative, derivative with respect to one of several variables of a function, with the other variables held constant ** ∂, a symbol that can denote a partial derivative, sometimes pronounced "partial ...
. As an explicit example of this more general case, consider the SVD of the following matrix: A\equiv \begin1&1\\2&-2\\0&0\end = \underbrace_ \underbrace_ \underbrace_. We then have WV^\dagger = \frac1\begin1&1 \\ 1&-1 \\ 0&0\end which is an isometry, but not unitary. On the other hand, if we consider the decomposition of A\equiv \begin1&0&0\\0&2&0\end = \begin1&0\\0&1\end \begin1&0\\0&2\end \begin1&0&0\\0&1&0\end, we find WV^\dagger =\begin1&0&0\\0&1&0\end, which is a partial isometry (but not an isometry).


Bounded operators on Hilbert space

The polar decomposition of any
bounded linear operator In functional analysis and operator theory, a bounded linear operator is a linear transformation L : X \to Y between topological vector spaces (TVSs) X and Y that maps bounded subsets of X to bounded subsets of Y. If X and Y are normed vector ...
''A'' between complex
Hilbert space In mathematics, a Hilbert space is a real number, real or complex number, complex inner product space that is also a complete metric space with respect to the metric induced by the inner product. It generalizes the notion of Euclidean space. The ...
s is a canonical factorization as the product of a
partial isometry Partial may refer to: Mathematics *Partial derivative, derivative with respect to one of several variables of a function, with the other variables held constant ** ∂, a symbol that can denote a partial derivative, sometimes pronounced "partial ...
and a non-negative operator. The polar decomposition for matrices generalizes as follows: if ''A'' is a bounded linear operator then there is a unique factorization of ''A'' as a product ''A'' = ''UP'' where ''U'' is a partial isometry, ''P'' is a non-negative self-adjoint operator and the initial space of ''U'' is the closure of the range of ''P''. The operator ''U'' must be weakened to a partial isometry, rather than unitary, because of the following issues. If ''A'' is the one-sided shift on ''l''2(N), then , ''A'', = 1/2 = ''I''. So if ''A'' = ''U'' , ''A'', , ''U'' must be ''A'', which is not unitary. The existence of a polar decomposition is a consequence of Douglas' lemma: The operator ''C'' can be defined by ''C''(''Bh'') := ''Ah'' for all ''h'' in ''H'', extended by continuity to the closure of ''Ran''(''B''), and by zero on the orthogonal complement to all of ''H''. The lemma then follows since ''AA'' ≤ ''BB'' implies ker(''B'') ⊂ ker(''A''). In particular. If ''AA'' = ''BB'', then ''C'' is a partial isometry, which is unique if ker(''B'') ⊂ ker(''C''). In general, for any bounded operator ''A'', A^*A = \left(A^*A\right)^ \left(A^*A\right)^, where (''AA'')1/2 is the unique positive square root of ''AA'' given by the usual
functional calculus In mathematics, a functional calculus is a theory allowing one to apply mathematical functions to mathematical operators. It is now a branch (more accurately, several related areas) of the field of functional analysis, connected with spectral theo ...
. So by the lemma, we have A = U\left(A^*A\right)^ for some partial isometry ''U'', which is unique if ker(''A'') ⊂ ker(''U''). Take ''P'' to be (''AA'')1/2 and one obtains the polar decomposition ''A'' = ''UP''. Notice that an analogous argument can be used to show ''A = P'U'', where ''P' '' is positive and ''U'' a partial isometry. When ''H'' is finite-dimensional, ''U'' can be extended to a unitary operator; this is not true in general (see example above). Alternatively, the polar decomposition can be shown using the operator version of
singular value decomposition In linear algebra, the singular value decomposition (SVD) is a Matrix decomposition, factorization of a real number, real or complex number, complex matrix (mathematics), matrix into a rotation, followed by a rescaling followed by another rota ...
. By property of the
continuous functional calculus In mathematics, particularly in operator theory and C*-algebra theory, the continuous functional calculus is a functional calculus which allows the application of a continuous function to normal elements of a C*-algebra. In advanced theory, the ap ...
, , ''A'', is in the
C*-algebra In mathematics, specifically in functional analysis, a C∗-algebra (pronounced "C-star") is a Banach algebra together with an involution satisfying the properties of the adjoint. A particular case is that of a complex algebra ''A'' of contin ...
generated by ''A''. A similar but weaker statement holds for the partial isometry: ''U'' is in the
von Neumann algebra In mathematics, a von Neumann algebra or W*-algebra is a *-algebra of bounded operators on a Hilbert space that is closed in the weak operator topology and contains the identity operator. It is a special type of C*-algebra. Von Neumann al ...
generated by ''A''. If ''A'' is invertible, the polar part ''U'' will be in the
C*-algebra In mathematics, specifically in functional analysis, a C∗-algebra (pronounced "C-star") is a Banach algebra together with an involution satisfying the properties of the adjoint. A particular case is that of a complex algebra ''A'' of contin ...
as well.


Unbounded operators

If ''A'' is a closed, densely defined
unbounded operator In mathematics, more specifically functional analysis and operator theory, the notion of unbounded operator provides an abstract framework for dealing with differential operators, unbounded observables in quantum mechanics, and other cases. The t ...
between complex Hilbert spaces then it still has a (unique) polar decomposition A = U , A, , where , ''A'', is a (possibly unbounded) non-negative self-adjoint operator with the same domain as ''A'', and ''U'' is a partial isometry vanishing on the orthogonal complement of the range ran(, ''A'', ). The proof uses the same lemma as above, which goes through for unbounded operators in general. If dom(''A'A'') = dom(''BB''), and ''A'Ah'' = ''B'Bh'' for all ''h'' ∈ dom(''A'A''), then there exists a partial isometry ''U'' such that ''A'' = ''UB''. ''U'' is unique if ran(''B'') ⊂ ker(''U''). The operator ''A'' being closed and densely defined ensures that the operator ''A'A'' is self-adjoint (with dense domain) and therefore allows one to define (''A'A'')1/2. Applying the lemma gives polar decomposition. If an unbounded operator ''A'' is affiliated to a von Neumann algebra M, and ''A'' = ''UP'' is its polar decomposition, then ''U'' is in M and so is the spectral projection of ''P'', 1''B''(''P''), for any Borel set ''B'' in .


Quaternion polar decomposition

The polar decomposition of
quaternion In mathematics, the quaternion number system extends the complex numbers. Quaternions were first described by the Irish mathematician William Rowan Hamilton in 1843 and applied to mechanics in three-dimensional space. The algebra of quater ...
s \mathbb with
orthonormal basis In mathematics, particularly linear algebra, an orthonormal basis for an inner product space V with finite Dimension (linear algebra), dimension is a Basis (linear algebra), basis for V whose vectors are orthonormal, that is, they are all unit vec ...
quaternions 1, \hat\imath, \hat\jmath, \hat k depends on the unit 2-dimensional sphere \hat r \in \ of square roots of minus one, known as '' right versors''. Given any \hat r on this sphere and an angle the
versor In mathematics, a versor is a quaternion of Quaternion#Norm, norm one, also known as a unit quaternion. Each versor has the form :u = \exp(a\mathbf) = \cos a + \mathbf \sin a, \quad \mathbf^2 = -1, \quad a \in ,\pi where the r2 = −1 conditi ...
e^ = \cos a + \hat r \sin a is on the unit
3-sphere In mathematics, a hypersphere or 3-sphere is a 4-dimensional analogue of a sphere, and is the 3-dimensional n-sphere, ''n''-sphere. In 4-dimensional Euclidean space, it is the set of points equidistant from a fixed central point. The interior o ...
of \mathbb. For and the versor is 1 or −1, regardless of which is selected. The norm of a quaternion is the
Euclidean distance In mathematics, the Euclidean distance between two points in Euclidean space is the length of the line segment between them. It can be calculated from the Cartesian coordinates of the points using the Pythagorean theorem, and therefore is o ...
from the origin to . When a quaternion is not just a real number, then there is a ''unique'' polar decomposition: q = t \exp(a \hat r). Here , , are all uniquely determined such that is a right versor satisfies and


Alternative planar decompositions

In the
Cartesian plane In geometry, a Cartesian coordinate system (, ) in a plane is a coordinate system that specifies each point uniquely by a pair of real numbers called ''coordinates'', which are the signed distances to the point from two fixed perpendicular o ...
, alternative planar
ring (The) Ring(s) may refer to: * Ring (jewellery), a round band, usually made of metal, worn as ornamental jewelry * To make a sound with a bell, and the sound made by a bell Arts, entertainment, and media Film and TV * ''The Ring'' (franchise), a ...
decompositions arise as follows: * If , is a polar decomposition of a
dual number In algebra, the dual numbers are a hypercomplex number system first introduced in the 19th century. They are expressions of the form , where and are real numbers, and is a symbol taken to satisfy \varepsilon^2 = 0 with \varepsilon\neq 0. D ...
, where ; i.e., ''ε'' is
nilpotent In mathematics, an element x of a ring (mathematics), ring R is called nilpotent if there exists some positive integer n, called the index (or sometimes the degree), such that x^n=0. The term, along with its sister Idempotent (ring theory), idem ...
. In this polar decomposition, the unit circle has been replaced by the line , the polar angle by the
slope In mathematics, the slope or gradient of a Line (mathematics), line is a number that describes the direction (geometry), direction of the line on a plane (geometry), plane. Often denoted by the letter ''m'', slope is calculated as the ratio of t ...
''y''/''x'', and the radius ''x'' is negative in the left half-plane. * If , then the
unit hyperbola In geometry, the unit hyperbola is the set of points (''x'',''y'') in the Cartesian plane that satisfy the implicit equation x^2 - y^2 = 1 . In the study of indefinite orthogonal groups, the unit hyperbola forms the basis for an ''alternative rad ...
, and its conjugate can be used to form a polar decomposition based on the branch of the unit hyperbola through . This branch is parametrized by the hyperbolic angle ''a'' and is written \cosh a + j \sinh a = \exp(aj) = e^, where , and the arithmeticSobczyk, G. (1995) "Hyperbolic Number Plane", '' College Mathematics Journal'' 26:268–280. of
split-complex number In algebra, a split-complex number (or hyperbolic number, also perplex number, double number) is based on a hyperbolic unit satisfying j^2=1, where j \neq \pm 1. A split-complex number has two real number components and , and is written z=x+y ...
s is used. The branch through is traced by −''e''''aj''. Since the operation of multiplying by ''j'' reflects a point across the line , the conjugate hyperbola has branches traced by ''je''''aj'' or −''je''''aj''. Therefore a point in one of the quadrants has a polar decomposition in one of the forms: r e^, -re^, rje^, -rje^, \quad r > 0. The set has products that make it isomorphic to the
Klein four-group In mathematics, the Klein four-group is an abelian group with four elements, in which each element is Involution (mathematics), self-inverse (composing it with itself produces the identity) and in which composing any two of the three non-identi ...
. Evidently polar decomposition in this case involves an element from that group. Polar decomposition of an element of the
algebra Algebra is a branch of mathematics that deals with abstract systems, known as algebraic structures, and the manipulation of expressions within those systems. It is a generalization of arithmetic that introduces variables and algebraic ope ...
M(2, R) of 2 × 2 real matrices uses these alternative planar decompositions since any planar
subalgebra In mathematics, a subalgebra is a subset of an algebra, closed under all its operations, and carrying the induced operations. "Algebra", when referring to a structure, often means a vector space or module equipped with an additional bilinear opera ...
is isomorphic to dual numbers, split-complex numbers, or ordinary complex numbers.


Numerical determination of the matrix polar decomposition

To compute an approximation of the polar decomposition ''A'' = ''UP'', usually the unitary factor ''U'' is approximated. The iteration is based on Heron's method for the square root of ''1'' and computes, starting from U_0 = A, the sequence U_ = \frac\left(U_k + \left(U_k^*\right )^\right),\qquad k = 0, 1, 2, \ldots The combination of inversion and Hermite conjugation is chosen so that in the singular value decomposition, the unitary factors remain the same and the iteration reduces to Heron's method on the singular values. This basic iteration may be refined to speed up the process:


See also

*
Cartan decomposition In mathematics, the Cartan decomposition is a decomposition of a semisimple Lie group or Lie algebra, which plays an important role in their structure theory and representation theory. It generalizes the polar decomposition or singular value deco ...
* Algebraic polar decomposition * Polar decomposition of a complex measure * Lie group decomposition


References

* * * * {{SpectralTheory Lie groups Operator theory Matrix theory Matrix decompositions