Eigenvalues and Eigenvectors
-
Find eigenvalues
Find, factor -
Find eigenvectors
For each eigenvalue, find so , which is a system of equations -> RREF which should have free variables. -
Find the bases for the eigenspaces
Solve-> RREF (which was already done in the previous part), then each vector with a free variable is a basis vector. -
Multiplicities
Algebraic: # of timesappears as a root in
Geometric: dimension of the eigenspacecardinality of the set of eigenvalues
Continue with Diagonalization
Find the eigenvalues, eigenvectors, basis for the eigenspace, and multiplicities of
- Find eigenvalues
Thus - Find eigenvectors
- For
Solve the system soMissing \end{align} \begin{align} A - 2I & = \vec{0} \\ & = \bmatrix{1 & 2 \\ -1 & 4} - \bmatrix{2 & 0 \\ 0 & 2} \\ & = \bmatrix{-1 & 2 \\ -1 & 2} \\ & \sim \bmatrix{-1 & 2 \\ 0 & 0} and , so - For
Solve the system soMissing \end{align} \begin{align} A - 3I & = \vec{0} \\ & = \bmatrix{1 & 2 \\ -1 & 4} - \bmatrix{3 & 0 \\ 0 & 3} \\ & = \bmatrix{-2 & 2 \\ -1 & 1} \\ & \sim \bmatrix{-1 & 1 \\0 & 0} and , so
- For
- Find bases for eigenspaces
We have already solved , and have found the eigenvectors with free variables.- The basis for the eigenspace
is - The basis for the eigenspace
is
- The basis for the eigenspace
- Multiplicities
We have and , since they only appear once each as roots.
We have and , since the bases for the eigenspaces only have 1 element.
Eigenvalues and Eigenvectors
For
An eigenvector is a vector which stays on its own span after a linear transformation. The eigenvalue (
Consider the transformation
Here, the basis vector
Computing Eigenvalues and Eigenvectors
If we have
(see identity matrix, zero vector)
Which is a homogeneous system
By invertible matrix theorem and the relation between the determinant and matrix invertibility:
- If
is max rank, then it is invertible and , then is the only solution (we don't want this) - If
is not max rank, then is it not invertible and , then the system has infinite solutions
Let
If
are the eigenvectors corresponding to
So to find eigenvalues
Characteristic Polynomial
Let
Eigenspace
Let
This is simply
Eigenspace is a Subspace
Bases of Eigenspaces are Linearly Independent
Let
If
Multiplicity
For any
Algebraic Multiplicity
Let
(see multiplicity)
Geometric Multiplicity
Let