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Frobenius covariant

In matrix theory, the Frobenius covariants of a square matrix A are special polynomials of it, namely projection matrices Ai associated with the eigenvalues and eigenvectors of A.[1]: pp.403, 437–8  They are named after the mathematician Ferdinand Frobenius.

Each covariant is a projection on the eigenspace associated with the eigenvalue λi. Frobenius covariants are the coefficients of Sylvester's formula, which expresses a function of a matrix f(A) as a matrix polynomial, namely a linear combination of that function's values on the eigenvalues of A.

Formal definition

Let A be a diagonalizable matrix with eigenvalues λ1, …, λk.

The Frobenius covariant Ai, for i = 1,…, k, is the matrix

 

It is essentially the Lagrange polynomial with matrix argument. If the eigenvalue λi is simple, then as an idempotent projection matrix to a one-dimensional subspace, Ai has a unit trace.

Computing the covariants

 
Ferdinand Georg Frobenius (1849–1917), German mathematician. His main interests were elliptic functions differential equations, and later group theory.

The Frobenius covariants of a matrix A can be obtained from any eigendecomposition A = SDS−1, where S is non-singular and D is diagonal with Di,i = λi. If A has no multiple eigenvalues, then let ci be the ith right eigenvector of A, that is, the ith column of S; and let ri be the ith left eigenvector of A, namely the ith row of S−1. Then Ai = ci ri.

If A has an eigenvalue λi appearing multiple times, then Ai = Σj cj rj, where the sum is over all rows and columns associated with the eigenvalue λi.[1]: p.521 

Example

Consider the two-by-two matrix:

 

This matrix has two eigenvalues, 5 and −2; hence (A − 5)(A + 2) = 0.

The corresponding eigen decomposition is

 

Hence the Frobenius covariants, manifestly projections, are

 

with

 

Note tr A1 = tr A2 = 1, as required.

References

  1. ^ a b Roger A. Horn and Charles R. Johnson (1991), Topics in Matrix Analysis. Cambridge University Press, ISBN 978-0-521-46713-1

frobenius, covariant, matrix, theory, square, matrix, special, polynomials, namely, projection, matrices, associated, with, eigenvalues, eigenvectors, they, named, after, mathematician, ferdinand, frobenius, each, covariant, projection, eigenspace, associated,. In matrix theory the Frobenius covariants of a square matrix A are special polynomials of it namely projection matrices Ai associated with the eigenvalues and eigenvectors of A 1 pp 403 437 8 They are named after the mathematician Ferdinand Frobenius Each covariant is a projection on the eigenspace associated with the eigenvalue li Frobenius covariants are the coefficients of Sylvester s formula which expresses a function of a matrix f A as a matrix polynomial namely a linear combination of that function s values on the eigenvalues of A Contents 1 Formal definition 2 Computing the covariants 3 Example 4 ReferencesFormal definition EditLet A be a diagonalizable matrix with eigenvalues l1 lk The Frobenius covariant Ai for i 1 k is the matrix A i j 1 j i k 1 l i l j A l j I displaystyle A i equiv prod j 1 atop j neq i k frac 1 lambda i lambda j A lambda j I It is essentially the Lagrange polynomial with matrix argument If the eigenvalue li is simple then as an idempotent projection matrix to a one dimensional subspace Ai has a unit trace See also Resolvent formalismComputing the covariants Edit Ferdinand Georg Frobenius 1849 1917 German mathematician His main interests were elliptic functions differential equations and later group theory The Frobenius covariants of a matrix A can be obtained from any eigendecomposition A SDS 1 where S is non singular and D is diagonal with Di i li If A has no multiple eigenvalues then let ci be the i th right eigenvector of A that is the i th column of S and let ri be the i th left eigenvector of A namely the i th row of S 1 Then Ai ci ri If A has an eigenvalue li appearing multiple times then Ai Sj cj rj where the sum is over all rows and columns associated with the eigenvalue li 1 p 521 Example EditConsider the two by two matrix A 1 3 4 2 displaystyle A begin bmatrix 1 amp 3 4 amp 2 end bmatrix This matrix has two eigenvalues 5 and 2 hence A 5 A 2 0 The corresponding eigen decomposition is A 3 1 7 4 1 7 5 0 0 2 3 1 7 4 1 7 1 3 1 7 4 1 7 5 0 0 2 1 7 1 7 4 3 displaystyle A begin bmatrix 3 amp 1 7 4 amp 1 7 end bmatrix begin bmatrix 5 amp 0 0 amp 2 end bmatrix begin bmatrix 3 amp 1 7 4 amp 1 7 end bmatrix 1 begin bmatrix 3 amp 1 7 4 amp 1 7 end bmatrix begin bmatrix 5 amp 0 0 amp 2 end bmatrix begin bmatrix 1 7 amp 1 7 4 amp 3 end bmatrix Hence the Frobenius covariants manifestly projections are A 1 c 1 r 1 3 4 1 7 1 7 3 7 3 7 4 7 4 7 A 1 2 A 2 c 2 r 2 1 7 1 7 4 3 4 7 3 7 4 7 3 7 A 2 2 displaystyle begin array rl A 1 amp c 1 r 1 begin bmatrix 3 4 end bmatrix begin bmatrix 1 7 amp 1 7 end bmatrix begin bmatrix 3 7 amp 3 7 4 7 amp 4 7 end bmatrix A 1 2 A 2 amp c 2 r 2 begin bmatrix 1 7 1 7 end bmatrix begin bmatrix 4 amp 3 end bmatrix begin bmatrix 4 7 amp 3 7 4 7 amp 3 7 end bmatrix A 2 2 end array with A 1 A 2 0 A 1 A 2 I displaystyle A 1 A 2 0 qquad A 1 A 2 I Note tr A1 tr A2 1 as required References Edit a b Roger A Horn and Charles R Johnson 1991 Topics in Matrix Analysis Cambridge University Press ISBN 978 0 521 46713 1 Retrieved from https en wikipedia org w index php title Frobenius covariant amp oldid 1072682050, wikipedia, wiki, book, books, library,

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