# Nakafa Framework: LLM
URL: /en/subject/university/bachelor/ai-ds/linear-methods/positive-definite-matrix
Source: https://raw.githubusercontent.com/nakafaai/nakafa.com/refs/heads/main/packages/contents/subject/university/bachelor/ai-ds/linear-methods/positive-definite-matrix/en.mdx
Output docs content for large language models.
---
export const metadata = {
    title: "Positive Definite Matrix",
    description: "Master positive definite matrices with eigenvalue criteria, leading principal minors, geometric properties, and optimization applications.",
    authors: [{ name: "Nabil Akbarazzima Fatih" }],
    date: "07/13/2025",
    subject: "Linear Methods AI",
};
## Positive and Semidefinite Definitions
Imagine we have a bowl that always faces upward. No matter from which direction we throw a ball into it, the ball will always roll to the lowest point. Positive definite matrices have a property similar to this bowl in mathematical space.
A symmetric matrix  or Hermitian matrix  is called **positive semidefinite** if:
A matrix is called **positive definite** if a stronger condition is satisfied:
Conversely, a matrix is called **negative semidefinite** if  is positive semidefinite, and **negative definite** if  is positive definite. A matrix that is neither positive nor negative semidefinite is called **indefinite**.
## Geometric Properties of Ellipsoids
Why is this concept important? Let's look at it from an interesting geometric perspective.
If  is a positive definite matrix, then the set:
forms an ellipsoid in -dimensional space centered at the origin. This ellipsoid shape provides a visual representation of how the matrix "stretches" space in various directions.
Specifically, if  where  is the identity matrix, then  becomes a sphere with radius .
## Properties of Diagonal Elements
One simple but important property of positive definite matrices is that all their diagonal elements must be positive.
If  is a positive definite matrix, then all diagonal elements  for .
Why is this so? Because if we take the standard basis vector  that has component 1 at position  and 0 elsewhere, then:
However, this condition is not sufficient to guarantee positive definiteness. We can have a matrix with all positive diagonal elements but still not be positive definite.
## Eigenvalue Criteria
The most elegant way to determine positive definiteness is through eigenvalues. Let's look at this very useful criterion.
A symmetric matrix  or Hermitian matrix  is positive definite if and only if all its eigenvalues are positive:
For positive semidefinite, all eigenvalues must be non-negative ().
Why is this true? Because for symmetric or Hermitian matrices, we can perform orthogonal diagonalization. If  where  is a diagonal matrix containing eigenvalues, then:
where . This expression is positive for all  if and only if all .
## Leading Principal Minor Criteria
There's another practical way to check positive definiteness without computing eigenvalues. This method is called the **leading principal minor criteria** or Hauptminorenkriterium.
Let  be a symmetric matrix. For , define the -th leading principal minor as:
This is the upper-left submatrix of size  from matrix . The determinant of  is called the **-th leading principal minor**.
A symmetric matrix  is positive definite if and only if all its leading principal minors are positive:
> It's important to note that this leading principal minor criterion only detects positive definiteness, not positive semidefiniteness.
## Application Examples
Let's look at some examples to better understand these concepts.
### Indefinite Matrix with Mixed Eigenvalues
Consider the matrix . This matrix has eigenvalues approximately  and . 
Since there is a negative eigenvalue, this matrix is **indefinite**. Even though its diagonal elements (1 and 4) are both positive, this doesn't guarantee positive definiteness.
### Positive Definite Matrix with Verification
Now consider the matrix . This matrix has eigenvalues  and . Both eigenvalues are positive, so this matrix is **positive definite**.
We can also verify this using the leading principal minor criteria:
Since all leading principal minors are positive, this matrix is positive definite.
### Inverse of Positive Definite Matrix
From the previous example, the inverse of the positive definite matrix is:
This matrix has eigenvalues approximately  and . Both are positive, so  is also positive definite.
## Properties of Transpose Matrices
One important result in linear algebra is the property of the matrix  for rectangular matrices.
If  with , then the matrix  is **positive semidefinite**. This matrix becomes **positive definite** if and only if  has full rank (rank ).
Why is this so? Because for any vector :
This expression equals zero only if . If  has full rank, then  only for , so  is positive definite.
## Spectral Transformation
A very useful concept in practice is the ability to "shift" the spectrum of a matrix.
If  is a symmetric matrix or  is a Hermitian matrix, and  is a real number smaller than all eigenvalues of , then the matrix:
is positive definite.
This provides a practical way to make a matrix positive definite by shifting its eigenvalues. If we know the lower bound of the smallest eigenvalue, we can shift the spectrum so that all eigenvalues become positive.
> Positive definite matrices play a central role in optimization, numerical analysis, and machine learning due to their geometric properties that guarantee the existence of a unique global minimum.