Eigenvector: Difference between revisions

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(A-\lambda I)\vec{x}=0
(A-\lambda I)\vec{x}=0
</math>
</math>
Eigenvectors are the foundation of the [[diagonalization]] technique.


= Intuition =
= Intuition =
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= Eigenspace =
= Eigenspace =
Given A and <math>\lambda</math>, the '''eigenspace''' is all the eigenvectors with that particular eigenvalue.
Given A and <math>\lambda</math>, the '''eigenspace''' is all the eigenvectors.


Because any linear combination of eigenvectors will yield another eigenvector of the same eigenvalue, the eigenspace is a vector space.
Because any linear combination of eigenvectors will yield another eigenvector of the same eigenvalue, the eigenspace is a vector space.
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This is the ''characteristic polynomial'' of the A, showing that for any A, there are at most n eigenvalues.
This is the ''characteristic polynomial'' of the A, showing that for any A, there are at most n eigenvalues.
= Symmetric matrices =
For any symmetric matrix, one can make an orthonormal basis out of their eigenvectors.

Latest revision as of 17:21, 10 June 2024


Given a matrix, its eigenvectors are special vectors that satisfy the following property:

where is the eigenvalue associated with the eigenvector

The definition of eigenvectors are also frequently written in this form:

Eigenvectors are the foundation of the diagonalization technique.

Intuition

If we think of a matrix as a linear transformation, eigenvectors do not change direction. Instead, they simply scale by an eigenvalue.

Eigenspace

Given A and , the eigenspace is all the eigenvectors.

Because any linear combination of eigenvectors will yield another eigenvector of the same eigenvalue, the eigenspace is a vector space.

The following definition of eigenvectors help explore the eigenspace:

We can find the determinant of the preceding matrix:

This is the characteristic polynomial of the A, showing that for any A, there are at most n eigenvalues.

Symmetric matrices

For any symmetric matrix, one can make an orthonormal basis out of their eigenvectors.