|  Operations on Matrices | 
Determinant > s.a. Berezinian;
  characteristic polynomial [eigenvalues].
  $ Cofactor: The cofactor
    of Mij is
    (−1)i+j (determinant of the
    minor obtained deleting row i and column j from M).
  $ Def: If L is a linear
    map L: V → V, with dim V = n
    (and s is the number of − signs in the signature of the metric
    used to raise indices), then
det L:= (n!)−1 (−1)s εa.. b εc.. d Lac ··· Lbd ; also, det M = ∑i or j = 1.. n (cofactor M)ij Mij .
  * Useful formula: det(I + tX)
    = 1 + tr(tX) + O(t2)
    = 1 + tr(tX) + det(tX) (at least for the 2 × 2 case).
  * Derivative: For a symmetric matrix,
    ∂(det A)/∂Aij
    = (det A) A−1ij.
  @ General references: Lehmich et al a1209
      [convexity of the function C → f(det C) on positive-definite matrices].
  @ Functional determinant: Gursky CMP(97) [Laplacian and Dirac operator squared];
    Elizalde JHEP(99)ht;
    Illies CMP(01) [regularized products];
    Fry IJMPA(02) [fermion, status];
    Kirsten & McKane AP(03)mp [countour integration],
    JPA(04)mp  [general Sturm-Liouville problems];
    Dunne JPA(08)-a0711-conf [computation, and quantum field theory];
    Kirsten a1005-in [contour-integration methods];
    Seiler & Stamatescu JPA(16)-a1512 [fermionic, loop formula];
    > s.a. lattice field theory.
  > Related topics:
    see Cayley-Hamilton Theorem.
Other Operations and Related Concepts > s.a. Commutators.
  * Inverse of a matrix:
    The matrix M−1 such
    that M−1M =
    M M−1 = I; If M
    is an n × n matrix, it can be calculated using
(M−1)ij = (det M)−1 (cofactor M)ji = (n−1)!−1 (det M)−1 εk.. lj εm.. ni Mkm ··· Mln .
  * Diagonalization: If A is
    an n × n matrix, with n distinct real/complex eigenvalues,
    use GL(n, \(\mathbb R\)/\(\mathbb C\)); If it has degenerate eigenvalues, it can
    be diagonalized iff for each λi,
    of multiplicity mi,
    rank(A − λi I)
    = n−mi;
    Otherwise one can only reduce to Jordan normal form, with one Jordan block
    per eigenvector; Example: A = (1 1 ; 0 1), which has a doubly
    degenerate eigenvalue λ = 1, but only one eigenvector, (1, 0);
    Generalized procedures: The singular-value decomposition and the Autonne-Takagi
    factorization; > s.a. Singular Values.
  * Generalization: Any real symmetric
    or complex hermitian positive-definite N × N matrix is
    congruent to a diagonal one mod an SO(m, n), resp SU(m,
    n), matrix, for any partition N = m + n [@ Simon
    et al mp/98].
  * Decomposition: Every non-singular
    matrix can be written as the product of a symmetric one and an orthogonal one.
  * Products: If
    A is an n × m matrix and
    B is a p × q matrix, their
    Kronecker product A ⊗ B is an np
    × mq matrix ("tensor product").
  * Expansions:
    (A+B)−1
    = A−1
    − A−1
    B A−1
    + A−1
    B A−1
    B A−1 − ...
  * Exponentiation: The simple
    exponential eA is defined in terms
    of the power series expansion; For a sum, eA+B
    = eA eB
    e−[A,B]/2, provided that A
    and B commute with their commutator; > more generally,
    see the Zassenhaus Formula.
  * Derivatives:
    (A−1)'
    = −A−1A'A−1,
    at least if A is symmetric; ∂(det A) /
    ∂Aij
    = (det A) (A−1)ji
    [notice the transpose].
  * Resolvent of a matrix:
    The matrix (λI − M); The inverse is
    (λI − M)−1
    = λ−1
    + λ−1M
    λ−1
    + λ−1M
    λ−1M
    λ−1
    + ... (which converges for λ sufficiently large).
  * Permanent of a matrix:
    A number obtained from an analog of the minor expansion of the determinant,
    but with all positive signs; For a unitary matrix, its magnitude is ≤ 1;
    > s.a. knot invariants [application].
  @ Inverse: Penrose PCPS(55) [generalized].
  @ Diagonalization: Banchi & Vaia JMP(13)-a1207 [quasi-uniform tridiagonal matrices];
    Haber a2009 [three procedures];
    Bischer et al JPA-a2012 [simultaneous block diagonalization];
    > s.a. eigenvectors and eigenvalues.
  @ Factorization: Mostafazadeh mp/02 [symmetric];
    Dita JPA(03) [unitary].
  @ Exponentiation: Suzuki PLA(90),
    PLA(93) [of sum];
    Federbush mp/99,
    LMP(00)mp;
    Ramakrishna & Zhou JPA(06)mp/05 [of su(4) matrices];
    Fujii & Oike FEJME-mp/06 [formula];
    Childs & Wiebe JMP(13)-a1211 [exponentials of commutators, product-formula approximations].
  @ Related topics: Fleischhack a0804,
    Friedland a0804,
    Fleischhack & Friedland a0811 [Hurwitz product traces, BMV conjecture];
    Steeb & Hardy 16 [matrix calculus, problems];
    Eldar & Mehraban a1711 [approximating the permanent of a random matrix];
    Kramer et al a1802 [new product].
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