Polar decomposition
In mathematics, the polar decomposition of a square real or complex matrix is a factorization of the form
, where
is a unitary matrix, and
is a positive semi-definite Hermitian matrix (
is an orthogonal matrix, and
is a positive semi-definite symmetric matrix in the real case), both square and of the same size.[1]
If a real matrix
is interpreted as a linear transformation of
-dimensional space
, the polar decomposition separates it into a rotation or reflection
of
and a scaling of the space along a set of
orthogonal axes.
The polar decomposition of a square matrix always exists. If
is invertible, the decomposition is unique, and the factor
will be positive-definite. In that case,
can be written uniquely in the form
, where
is unitary, and
is the unique self-adjoint logarithm of the matrix
.[2] This decomposition is useful in computing the fundamental group of (matrix) Lie groups.[3]
The polar decomposition can also be defined as , where
is a symmetric positive-definite matrix with the same eigenvalues as
but different eigenvectors.
The polar decomposition of a matrix can be seen as the matrix analog of the polar form of a complex number as
, where
is its absolute value (a non-negative real number), and
is a complex number with unit norm (an element of the circle group).
The definition may be extended to rectangular matrices
by requiring
to be a semi-unitary matrix, and
to be a positive-semidefinite Hermitian matrix. The decomposition always exists, and
is always unique. The matrix
is unique if and only if
has full rank.[4]
Geometric interpretation
[edit]A real square matrix
can be interpreted as the linear transformation of
that takes a column vector
to
. Then, in the polar decomposition
, the factor
is an
real orthogonal matrix. The polar decomposition then can be seen as expressing the linear transformation defined by
into a scaling of the space
along each eigenvector
of
by a scale factor
(the action of
), followed by a rotation of
(the action of
).
Alternatively, the decomposition expresses the transformation defined by
as a rotation (
) followed by a scaling (
) along certain orthogonal directions. The scale factors are the same, but the directions are different.
Properties
[edit]The polar decomposition of the complex conjugate of is given by
Note that
gives the corresponding polar decomposition of the determinant of A, since
and
In particular, if
has determinant 1, then both
and
have determinant 1.
The positive-semidefinite matrix P is always unique, even if A is singular, and is denoted as
where
denotes the conjugate transpose of
. The uniqueness of P ensures that this expression is well-defined. The uniqueness is guaranteed by the fact that
is a positive-semidefinite Hermitian matrix and, therefore, has a unique positive-semidefinite Hermitian square root.[5] If A is invertible, then P is positive-definite, thus also invertible, and the matrix U is uniquely determined by
Relation to the SVD
[edit]In terms of the singular value decomposition (SVD) of ,
, one has
where
,
, and
are unitary matrices (orthogonal if the field is the reals
). This confirms that
is positive-definite, and
is unitary. Thus, the existence of the SVD is equivalent to the existence of polar decomposition.
One can also decompose in the form
Here
is the same as before, and
is given by
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 is of the form
where
is a positive-definite matrix, and
is an orthogonal matrix.
Relation to normal matrices
[edit]The matrix with polar decomposition
is normal if and only if
and
commute (
), or equivalently, they are simultaneously diagonalizable.
Construction and proofs of existence
[edit]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
[edit]If is normal, then it is unitarily equivalent to a diagonal matrix:
for some unitary matrix
and some diagonal matrix
This makes the derivation of its polar decomposition particularly straightforward, as we can then write
where is the matrix of absolute diagonal values, and
is a diagonal matrix containing the phases of the elements of
that is,
when
, and
when
The polar decomposition is thus with
and
diagonal in the eigenbasis of
and having eigenvalues equal to the phases and absolute values of those of
respectively.
Derivation for invertible matrices
[edit]From the singular-value decomposition, it can be shown that a matrix is invertible if and only if
(equivalently,
) is. Moreover, this is true if and only if the eigenvalues of
are all not zero.[6]
In this case, the polar decomposition is directly obtained by writing
and observing that
is unitary. To see this, we can exploit the spectral decomposition of
to write
.
In this expression, is unitary because
is. To show that also
is unitary, we can use the SVD to write
, so that
where again
is unitary by construction.
Yet another way to directly show the unitarity of is to note that, writing the SVD of
in terms of rank-1 matrices as
, where
are the singular values of
, we have
which directly implies the unitarity of
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
[edit]The SVD of a square matrix reads
, with
unitary matrices, and
a diagonal, positive semi-definite matrix. By simply inserting an additional pair of
s or
s, we obtain the two forms of the polar decomposition of
:
More generally, if
is some rectangular
matrix, its SVD can be written as
where now
and
are isometries with dimensions
and
, respectively, where
, and
is again a diagonal positive semi-definite square matrix with dimensions
. We can now apply the same reasoning used in the above equation to write
, but now
is not in general unitary. Nonetheless,
has the same support and range as
, and it satisfies
and
. This makes
into an isometry when its action is restricted onto the support of
, that is, it means that
is a partial isometry.
As an explicit example of this more general case, consider the SVD of the following matrix:We then have
which is an isometry, but not unitary. On the other hand, if we consider the decomposition of
we find
which is a partial isometry (but not an isometry).
Bounded operators on Hilbert space
[edit]The polar decomposition of any bounded linear operator A between complex Hilbert spaces is a canonical factorization as the product of a partial isometry 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 l2(N), then |A| = {A*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:
Lemma—If A, B are bounded operators on a Hilbert space H, and A*A ≤ B*B, then there exists a contraction C such that A = CB. Furthermore, C is unique if ker(B*) ⊂ ker(C).
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 A*A ≤ B*B implies ker(B) ⊂ ker(A).
In particular. If A*A = B*B, then C is a partial isometry, which is unique if ker(B*) ⊂ ker(C).
In general, for any bounded operator A,
where (A*A)1/2 is the unique positive square root of A*A given by the usual functional calculus. So by the lemma, we have
for some partial isometry U, which is unique if ker(A*) ⊂ ker(U). Take P to be (A*A)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.
By property of the continuous functional calculus, |A| is in the C*-algebra generated by A. A similar but weaker statement holds for the partial isometry: U is in the von Neumann algebra generated by A. If A is invertible, the polar part U will be in the C*-algebra as well.
Unbounded operators
[edit]If A is a closed, densely defined unbounded operator between complex Hilbert spaces then it still has a (unique) polar decomposition
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(B*B), 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, 1B(P), for any Borel set B in [0, ∞).
Quaternion polar decomposition
[edit]The polar decomposition of quaternions with orthonormal basis quaternions
depends on the unit 2-dimensional sphere
of square roots of minus one, known as right versors. Given any
on this sphere and an angle −π < a ≤ π, the versor
is on the unit 3-sphere of
For a = 0 and a = π, the versor is 1 or −1, regardless of which r is selected. The norm t of a quaternion q is the Euclidean distance from the origin to q. When a quaternion is not just a real number, then there is a unique polar decomposition:
Here r, a, t are all uniquely determined such that r is a right versor (r2 = –1), a satisfies 0 < a < π, and t > 0.
Alternative planar decompositions
[edit]In the Cartesian plane, alternative planar ring decompositions arise as follows:
- If x ≠ 0, z = x(1 + ε(y/x)) is a polar decomposition of a dual number z = x + yε, where ε2 = 0; i.e., ε is nilpotent. In this polar decomposition, the unit circle has been replaced by the line x = 1, the polar angle by the slope y/x, and the radius x is negative in the left half-plane.
- If x2 ≠ y2, then the unit hyperbola x2 − y2 = 1, and its conjugate x2 − y2 = −1 can be used to form a polar decomposition based on the branch of the unit hyperbola through (1, 0). This branch is parametrized by the hyperbolic angle a and is written
where j2 = +1, and the arithmetic[7] of split-complex numbers is used. The branch through (−1, 0) is traced by −eaj. Since the operation of multiplying by j reflects a point across the line y = x, the conjugate hyperbola has branches traced by jeaj or −jeaj. Therefore a point in one of the quadrants has a polar decomposition in one of the forms:
The set {1, −1, j, −j} has products that make it isomorphic to the Klein four-group. Evidently polar decomposition in this case involves an element from that group.
Polar decomposition of an element of the algebra M(2, R) of 2 × 2 real matrices uses these alternative planar decompositions since any planar subalgebra is isomorphic to dual numbers, split-complex numbers, or ordinary complex numbers.
Numerical determination of the matrix polar decomposition
[edit]To compute an approximation of the polar decomposition A = UP, usually the unitary factor U is approximated.[8][9] The iteration is based on Heron's method for the square root of 1 and computes, starting from , the sequence
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:
- Every step or in regular intervals, the range of the singular values of
is estimated and then the matrix is rescaled to
to center the singular values around 1. The scaling factor
is computed using matrix norms of the matrix and its inverse. Examples of such scale estimates are:
using the row-sum and column-sum matrix norms or
using the Frobenius norm. Including the scale factor, the iteration is now
- The QR decomposition can be used in a preparation step to reduce a singular matrix A to a smaller regular matrix, and inside every step to speed up the computation of the inverse.
- Heron's method for computing roots of
can be replaced by higher order methods, for instance based on Halley's method of third order, resulting in
This iteration can again be combined with rescaling. This particular formula has the benefit that it is also applicable to singular or rectangular matrices A.
See also
[edit]- Cartan decomposition
- Algebraic polar decomposition
- Polar decomposition of a complex measure
- Lie group decomposition
References
[edit]- ^ Hall 2015, Section 2.5.
- ^ Hall 2015, Theorem 2.17.
- ^ Hall 2015, Section 13.3.
- ^ Higham, Nicholas J.; Schreiber, Robert S. (1990). "Fast polar decomposition of an arbitrary matrix". SIAM J. Sci. Stat. Comput. 11 (4). Philadelphia, PA, USA: Society for Industrial and Applied Mathematics: 648–655. CiteSeerX 10.1.1.111.9239. doi:10.1137/0911038. ISSN 0196-5204. S2CID 14268409.
- ^ Hall 2015, Lemma 2.18.
- ^ Note how this implies, by the positivity of
, that the eigenvalues are all real and strictly positive.
- ^ Sobczyk, G. (1995) "Hyperbolic Number Plane", College Mathematics Journal 26:268–280.
- ^ Higham, Nicholas J. (1986). "Computing the polar decomposition with applications". SIAM J. Sci. Stat. Comput. 7 (4). Philadelphia, PA, USA: Society for Industrial and Applied Mathematics: 1160–1174. CiteSeerX 10.1.1.137.7354. doi:10.1137/0907079. ISSN 0196-5204.
- ^ Byers, Ralph; Hongguo Xu (2008). "A New Scaling for Newton's Iteration for the Polar Decomposition and its Backward Stability". SIAM J. Matrix Anal. Appl. 30 (2). Philadelphia, PA, USA: Society for Industrial and Applied Mathematics: 822–843. CiteSeerX 10.1.1.378.6737. doi:10.1137/070699895. ISSN 0895-4798.
- Conway, J. B. (1990). A Course in Functional Analysis. Graduate Texts in Mathematics. New York: Springer. doi:10.1007/978-1-4757-4383-8.
- Douglas, R. G. (1966). "On Majorization, Factorization, and Range Inclusion of Operators on Hilbert Space". Proc. Amer. Math. Soc. 17: 413–415. doi:10.1090/S0002-9939-1966-0203464-1.
- Hall, Brian C. (2015). Lie Groups, Lie Algebras, and Representations: An Elementary Introduction. Graduate Texts in Mathematics. Vol. 222 (2nd ed.). Springer. ISBN 978-3319134666.
- Helgason, Sigurdur (1978). Differential geometry, Lie groups, and symmetric spaces. Academic Press. ISBN 0-8218-2848-7.