Semi-definite Matrices

Symmetric square matrices having positive eigenvalues are known as semi-definite matrices. Eigenvalues are found mainly by using the equation; AλI=0A - \lambda I=0 where AA is the matrix whose eigenvalues are to be found.

The semi-definite matrix

The definition for a semi-definite matrix; AA is:

Some of the observations we can make from this definition are:

  1. A-A should be negative semi-definite

  2. A positive semi-definite matrice, AA satisfies the 0A0 \preceq A condition whereas a positive definite satisfies, 0A0 \prec A.

Proving positive semi-definite matrices

There are a couple of propositions to look at when defining positive semi-definite matrices.

Non-negative eigenvalues

One of the conditions for a symmetrical matrix to be positive semi-definite is for it to have all eigenvalues as positive:

In this proposition, AA is the matrix while ss is a vector. This has been decomposed to create further equations within the definition. We can notice that the expression is positive for all ss if all of the λ\lambda values from i,...,ni,...,n are positive.

Matrix decomposition with similar rank

Another proposition states that having a matrix, such asAA can be broken into one other matrix, VV that would consist of all the eigenvectors of A, basically corresponding to the positive eigenvalues:

The point to be noted here is that if such a decomposition is possible, only then will a symmetrical matrix be positive semi-definite.

Semi-definite matrices can be both positive and negative. Taking into account the importance of eigenvalues and eigenvectors, matrices can be defined further into different subcategories.

Free Resources

Copyright ©2025 Educative, Inc. All rights reserved