Cholesky Decomposition
1. What is Cholesky Decomposition?
The decomposition of the symmetric positive definite matrix into the lower triangular matrix with positive diagonal and its conjugate transpose is called the Cholesky decomposition.
2. Write the Other Name of Cholesky Decomposition?
The other name of Cholesky decomposition is Cholesky Factorization.
3. What is the Formula for Cholesky Decomposition?
Given a Hermitian, positive definite matrix A, its Cholesky Decomposition is represented as A = LL*, where L is the lower triangular matrix and L* is its conjugate transpose.
4. What are the Conditions for Cholesky Decomposition to Exist?
Cholesky Decomposition exists if the matrix is both Hermitian (symmetric in the real case) and positive definite.
5. Can Cholesky Decomposition be used for Non-Positive Definite Matrices?
No, Cholesky Decomposition requires the matrix to be positive definite. If the matrix is not positive definite, the decomposition cannot be performed.
6. Is Cholesky Decomposition faster than LU decomposition?
Yes, the Cholesky decomposition is faster than LU decomposition as it more computationaly efficient.
7. List Some Applications of Cholesky Decomposition.
Some of the applications of the Cholesky decomposition include solving the system of equations in linear algebra, computing inverse of the matrix etc.
Cholesky Decomposition
Cholesky Decomposition is one of the types of many decompositions in linear algebra which is a branch of mathematics that deals with linear equations and vectors. Decomposition is the term related to the factorization of matrices in linear algebra, and Cholesky is one of the ways to factorize or decompose the matrix into two matrices. This article explores the Cholesky Decomposition in detail including its definition, steps to factorize matrices using Cholesky Decomposition, and some of the solved examples. So, let’s start learning about this exciting topic of Cholesky Decomposition.