Jordan Normal Form using generalized eigenvector

eigenvalues-eigenvectorsgeneralized eigenvectorjordan-normal-formlinear algebramatrices

How do I find the Jordan Normal Form for this matrix $A=\begin{bmatrix} -2 & -3 & 6 \\ 1 & 2 & -2\\ -1 & -1 &3 \end{bmatrix}$ ?

This is my method but I am not able to get to the final answer:

There is one eigenvalue $\lambda=1$ with algebraic multiplicity 3.

$\ker(A-I_3)= \operatorname{span}\left\{\begin{pmatrix} -1\\1\\0\end{pmatrix},\begin{pmatrix} 2\\0\\1\end{pmatrix}\right\}$

To calculate the generalized eigenvector, we have $(A-I)^2v=0$, but since $(A-I)^2 = 0$ we pick an arbitrary $v_3$ that is independent to the other two vectors, such as $\begin{pmatrix} 1\\0\\0\end{pmatrix}$

So, I combined the 3 vectors and I now have the matrix $P=\begin{pmatrix} -1 & 2 & 1 \\ 1 & 0 & 0 \\ 0 & 1 & 0 \end{pmatrix}$

Then, using the formula $P^{-1} A P$, the result is $\begin{pmatrix} 1 & 0 & 1 \\ 0 & 1 & -1 \\ 0 & 0 & 1 \end{pmatrix} $, which is not in JNF.

Would anyone please guide me as to how to correctly find the JNF for this matrix?

Best Answer

You have indeed found generalized eigenvectors, but the your generalized eigenvector $v$ does not have the correct relationship with the eigenvectors that you selected.

The generalized eigenvectors used to produce the Jordan form of a matrix must consist of separate Jordan chains, with each chain corresponding to a single Jordan block. In this particular case, the Jordan form is given by $$ J = \pmatrix{1&1&0\\0&1&0\\0&0&1}. $$ The first Jordan block (of size $2$) corresponds to one Jordan chain, which is to say a pair of vectors $x,v$ such that $(A-I)x = 0$ and $(A-I)v = x$. The second Jordan block (of size $1$) corresponds to a single eigenvector that is linearly independent from the other two vectors.

As you have correctly noted, the generalized eigenvector $v$ must satisfy $(A - I)^2 v = 0$, but it also must satisfy $(A - I) v \neq 0$. In order to choose a suitable generalized $v$ and associated eigenvector $x$, it helps to look at $A - I$ (or more generally, the matrix $(A -\lambda I)^k$ where $(A - \lambda I)^k \neq 0$ but $(A - \lambda I)^{k+1} = 0$). The columns of $A - I$ have the following important properties:

  • Each column $x$ satisfies $(A - I)x = 0$
  • Each column $x$ is of the form $(A - I)v$ for some vector $v$
  • A vector $v$ such that $(A - I)v = x$ satisfies $(A - I)^2v = (A - I)x = 0$

With that in mind, we see that $$ A - I = \pmatrix{ -3&-3&6\\ 1 & 1 & -2\\ -1& -1 & 2}. $$ The first column of $A$ is non-zero, so it is a suitable choice of $x$. Moreover, because $x = (-3,1,-1)$ is the first column of $A - I$, we can write $x$ in the form $x = A \mathbf e_1$, where $\mathbf e_1$ denotes the first column of the identity matrix, $\mathbf e_1 = (1,0,0)$. That is, $\mathbf e_1$ is a suitable choice for our generalized eigenvector $v$.

From there, we need to extend the set $\{x\}$ into a full basis for the eigenspace of $A$ associated with $1$. As you correctly computed, this eigenspace has the basis $\{(-1,1,0),(2,0,1)\}$. In this case, we can just use the first vector from the basis you computed: the set $\{(-3,1,-1),(-1,1,0)\}$ is a set of eigenvectors that is linearly independent and has two elements, so it is a basis of the eigenspace.

So, we can take $y = (-3,1,-1)$ and use $(x,v,y)$ as our Jordan basis.