square root of a matrix: Information from Answers.com
- ️Wed Jul 01 2015
In mathematics, the square root of a matrix extends the notion of square root from numbers to matrices.
Square roots of positive operators
In linear algebra and operator theory, given a bounded positive semidefinite operator T on a complex Hilbert space, B is a square root of T if T = B*B. According to the spectral theorem, the continuous functional calculus can be applied to obtain an operator T½ such that T½ is itself positive and (T½)2 = T. The operator T½ is the unique positive square root of T.
A bounded positive operator on a complex Hilbert space is self adjoint. So T = (T½)* T½. Conversely, it is trivially true that every operator of the form B*B is positive. Therefore, an operator T is positive if and only if T = B*B for some B (equivalently, T = CC* for some C).
The Cholesky factorization is a particular example of square root.
Unitary freedom of square roots
If T is a n × n positive matrix, all square roots of T are related by unitary transformations. More precisely, if T = AA* = BB*, then there exists an unitary U s.t. A = BU. We now verify this claim.
Take B = T½ to be the unique positive square root of T. It suffices to show that, for any square root A of T, A = UB. Let {ai}1 ≤ i ≤ n, and {bi}1 ≤ i ≤ n be the set of column vectors of A and B, respectively. By the construction of the square root, {bi}1 ≤ i ≤ n is the set of, not necessarily normalized, eigenvectors of a Hermitian matrix, therefore an orthogonal basis for Cn. Notice we include the eigenvectors corresponding to eigenvalue 0 when appropriate. The argument below hinges on the fact that {bi}1 ≤ i ≤ n is linearly independent and spans Cn.
The equality AA* = BB* can be rewritten as
By completeness of {bi}, for all j, there exists n scalars, by appending zeros if necessary, {ui j}1 ≤ i ≤ n s.t.
i.e.
We need to show the matrix U = [ui j] is unitary. Compute directly
So
By assumption,
Now because {bi} is a basis of Cn, the set {bi b*k} is a basis for n × n matrices. For linear spaces in general, the expression of an element in terms of a given basis is unique. Therefore
In other words, the n column vectors of U is an orthonormal set and the claim is proved.
The argument extends to the case where A and B are not necessarily square, provided one retains the assumption {bi} is linearly independent. In that case, the existence of the rectangular matrix U = [ui j] follows from the relation
rather than the completeness of {bi}. The conclusion UU* = I still holds. In general, B is n × m for some m ≤ n. A is n × k where m ≤ k ≤ n. U is a m × k partial isometry. (By a partial isometry, we mean a rectangular matrix U with UU* = I.)
Some applications
The unitary freedom of square roots has applications in linear algebra.
Kraus operators
By Choi's result, a linear map
- Φ:Cn×n→Cm×m
is completely positive if and only if it is of the form
where k ≤ nm. Let {Ep q} ⊂ Cn × n be the n2 elementary matrix units. The positive matrix
is called the Choi matrix of Φ. The Kraus operators correspond to the, not necessarily square, square roots of MΦ: For any square root B of MΦ, one can obtain a family of Kraus operators Vi by undoing the Vec operation to each column bi of B. Thus all sets of Kraus operators are related by partial isometries.
Mixed ensembles
In quantum physics, a density matrix for a n-level quantum system is a n × n complex matrix ρ that is positive semidefinite with trace 1. If ρ can be expressed as
where ∑ pi = 1, the set
is said to be an ensemble that describes the mixed state ρ. Notice {vi} is not required to be orthogonal. Different ensembles describing the state ρ are related by unitary operators, via the square roots of ρ. For instance, suppose
The trace 1 condition means
Let
and vi be the normalized ai. We see that
gives the mixed state ρ.
Operators on Hilbert space
In general, if A, B are closed and densely defined operators on a Hilbert space H, and A*A = B*B, then A = UB where U is a partial isometry.
Computing the matrix square root
One can also define the square root of a square matrix A that is not necessarily positive-definite. A matrix B is said to be a square root of A if the matrix product B · B is equal to A.
By diagonalization
The square root of a diagonal matrix D is formed by taking the square root of all the entries on the diagonal. This suggests the following methods for general matrices.
An n × n matrix A is diagonalizable if there is a matrix V such that D = V - 1AV is a diagonal matrix. This happens if and only if A has n eigenvectors which constitute a basis for Cn; in this case, V can be chosen to be the matrix with the n eigenvectors as columns.
Now, A = VDV - 1, and hence the square root of A is
This approach works only for diagonalizable matrices. For non-diagonalizable matrices one can calculate the Jordan normal form followed by a series expansion, similar to the approach described in logarithm of a matrix.
Denman–Beavers square root iteration
Another way to find the square root of a matrix A is the Denman–Beavers square root iteration. Let Y0 = A and Z0 = I, where I is the identity matrix. The iteration is defined by
- Failed to parse (unknown function\begin): \begin{align} Y_{k+1} &= \tfrac12 (Y_k + Z_k^{-1}), \\ Z_{k+1} &= \tfrac12 (Z_k + Y_k^{-1}). \end{align}
Both Yk and Zk converge to the square root A1 / 2.
See also
References
- Sheung Hun Cheng, Nicholas J. Higham, Charles S. Kenney, and Alan J. Laub, Approximating the Logarithm of a Matrix to Specified Accuracy, SIAM Journal on Matrix Analysis and Applications, vol. 22 (2001), no. 4, pp. 1112–1125.
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