Symmetric square matrices having positive eigenvalues are known as semi-definite matrices. Eigenvalues are found mainly by using the equation;
The definition for a semi-definite matrix;
Some of the observations we can make from this definition are:
A positive semi-definite matrice,
There are a couple of propositions to look at when defining positive semi-definite matrices.
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,
Another proposition states that having a matrix, such as
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.
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