Description:

  • Symmetric matrix with non-negative eigenvalues
  • If and only if it can be expressed as a product of the form for some matrix (having rows).
  • The PSD property implies
  • Negative semidefinite Matrix,
    • If
    • and negative definite:
  • If moreover, then is said to be Positive Definite Matrix
    • Mean all eigenvalues are positive
  • A positive semidefinite matrix is actually positive definte if and only if it is invertible

Eigenvalues of PSD matrix:

  • Eigenvalue
  • Consider a PSD matrix . Let be an SVD of , we have
  • Hence, the eigenvalues of are non-negative.
  • Conversely, if with for every , then , with

Congruence transformation:

  • For any matrix it holds that:
    1. , and ;
    2. if and only if is full-column rank, i.e., ;
    3. if and only if is full-row rank, i.e.,

Matrix square-root

  • Let . Then
  • Matrix is called the matrix square-root of .
  • Any admits the spectral factorization , with orthogonal and .
    • Defining and :
  • is positive definite if and only if it is congruent to the identity

As Ellipsoids:

  • Positive-definite matrices are intimately related to geometrical objects called ellipsoids.
  • A full-dimensional, bounded ellipsoid with center in the origin can indeed be defined as the set
  • The eigenvalues and eigenvectors of define the orientation and shape of the ellipsoid: the directions of the semi axes of the ellipsoid, while their lengths are given by .
  • Using the Cholesky Decomposition , the previous definition of ellipsoid is also equivalent to: .

Schur Complement

  • Let , with . Consider the symmetric block matrix
    • and define the so-called Schur complement matrix of in
  • Then,
  • Geometric interpretation:
    • Since is PSD, the set is an ellipsoid.
    • Its projection on the space of -variables is the set