Solutions
- This exercise is recommended for all readers.
- Problem 2
For each matrix, find the characteristic equation, and the
eigenvalues and associated eigenvectors.
-
-
- Answer
- The characteristic equation is
.
Its roots, the eigenvalues, are
and
.
For the eigenvectors we consider this equation.

For the eigenvector associated with
,
we consider the resulting linear system.

The eigenspace is the set of vectors whose second component is
twice the first component.

(Here, the parameter is
only because that is the variable that
is free in the above system.)
Hence, this is an eigenvector associated with the eigenvalue
.

Finding an eigenvector associated with
is similar.
This system

leads to the set of vectors whose first component is
zero.

And so this is an eigenvector associated with
.

- The characteristic equation is

and so the eigenvalues are
and
.
To find eigenvectors, consider this system.

For
we get

leading to this eigenspace and eigenvector.

For
the system is

leading to this.

- This exercise is recommended for all readers.
- Problem 5
For each matrix, find the characteristic equation, and the
eigenvalues and associated eigenvectors.
-
-
- Answer
- The characteristic equation is

and so the eigenvalues are
and also the
repeated eigenvalue
.
To find eigenvectors, consider this system.

For
we get

leading to this eigenspace and eigenvector.

For
the system is

leading to this.

- The characteristic equation is

and the eigenvalues are
and (by using the
quadratic equation)
and
.
To find eigenvectors, consider this system.

Substituting
gives the system
![{\displaystyle {\begin{array}{*{3}{rc}r}-4\cdot b_{1}&+&b_{2}&&&=&0\\&&-4\cdot b_{2}&+&b_{3}&=&0\\4\cdot b_{1}&-&17\cdot b_{2}&+&4\cdot b_{3}&=&0\end{array}}{\xrightarrow[{}]{\rho _{1}+\rho _{3}}}{\begin{array}{*{3}{rc}r}-4\cdot b_{1}&+&b_{2}&&&=&0\\&&-4\cdot b_{2}&+&b_{3}&=&0\\&&-16\cdot b_{2}&+&4\cdot b_{3}&=&0\end{array}}{\xrightarrow[{}]{-4\rho _{2}+\rho _{3}}}{\begin{array}{*{3}{rc}r}-4\cdot b_{1}&+&b_{2}&&&=&0\\&&-4\cdot b_{2}&+&b_{3}&=&0\\&&&&0&=&0\end{array}}}](../../52bea7399d1edc7cabda473f0221af1d580bc8e9.svg)
leading to this eigenspace and eigenvector.

Substituting
gives the system
![{\displaystyle {\xrightarrow[{}]{(-4/(-2-{\sqrt {3}}))\rho _{1}+\rho _{3}}}{\begin{array}{*{3}{rc}r}(-2-{\sqrt {3}})\cdot b_{1}&+&b_{2}&&&=&0\\&&(-2-{\sqrt {3}})\cdot b_{2}&+&b_{3}&=&0\\&+&(-9-4{\sqrt {3}})\cdot b_{2}&+&(6-{\sqrt {3}})\cdot b_{3}&=&0\end{array}}}](../../6df9fe09848a7e475b4eeca267241a7d2a136c2f.svg)
(the middle coefficient in the third equation equals
the number
; find a common denominator
of
and then rationalize the denominator by
multiplying the top and bottom of the frsction by
)
![{\displaystyle {\xrightarrow[{}]{((9+4{\sqrt {3}})/(-2-{\sqrt {3}}))\rho _{2}+\rho _{3}}}{\begin{array}{*{3}{rc}r}(-2-{\sqrt {3}})\cdot b_{1}&+&b_{2}&&&=&0\\&&(-2-{\sqrt {3}})\cdot b_{2}&+&b_{3}&=&0\\&&&&0&=&0\end{array}}}](../../82ddf214db557fd80d367fed70ac52c192bf7ef6.svg)
which leads to this eigenspace and eigenvector.

Finally, substituting
gives the system
![{\displaystyle {\begin{aligned}&{\xrightarrow[{}]{(-4/(-2+{\sqrt {3}}))\rho _{1}+\rho _{3}}}{\begin{array}{*{3}{rc}r}(-2+{\sqrt {3}})\cdot b_{1}&+&b_{2}&&&=&0\\&&(-2+{\sqrt {3}})\cdot b_{2}&+&b_{3}&=&0\\&&(-9+4{\sqrt {3}})\cdot b_{2}&+&(6+{\sqrt {3}})\cdot b_{3}&=&0\end{array}}\\&{\xrightarrow[{}]{((9-4{\sqrt {3}})/(-2+{\sqrt {3}}))\rho _{2}+\rho _{3}}}{\begin{array}{*{3}{rc}r}(-2+{\sqrt {3}})\cdot b_{1}&+&b_{2}&&&=&0\\&&(-2+{\sqrt {3}})\cdot b_{2}&+&b_{3}&=&0\\&&&&0&=&0\end{array}}\end{aligned}}}](../../8aa9b7b601a720a4f172cd13d88244c2ce7b1e58.svg)
which gives this eigenspace and eigenvector.

- This exercise is recommended for all readers.
- This exercise is recommended for all readers.
- Problem 8
Find the eigenvalues and associated eigenvectors of the
differentiation operator
.
- Answer
Fix the natural basis
.
The map's action is
,
,
,
and
and its representation is easy to compute.

We find the eigenvalues with this computation.

Thus the map has the single eigenvalue
.
To find the associated eigenvectors, we solve

to get this eigenspace.

- Problem 9
- Prove that
the eigenvalues of a triangular matrix (upper or lower triangular)
are the entries on the diagonal.
- Answer
The determinant of the triangular matrix
is the product down the diagonal, and so it factors into the product of the terms
.
- This exercise is recommended for all readers.
- Problem 10
Find the formula for the characteristic polynomial of a
matrix.
- Answer
Just expand the determinant of
.

- Problem 11
Prove that
the characteristic polynomial of a transformation is well-defined.
- Answer
Any two representations of that transformation are similar, and similar matrices have the same characteristic polynomial.
- This exercise is recommended for all readers.
- Problem 12
- Can any non-
vector in any nontrivial vector space
be a eigenvector?
That is, given a
from a nontrivial
,
is there a transformation
and a scalar
such that
?
- Given a scalar
, can any non-
vector in any
nontrivial vector space be an eigenvector associated with the
eigenvalue
?
- Answer
- Yes, use
and the identity map.
- Yes, use the transformation that multiplies by
.
- This exercise is recommended for all readers.
- This exercise is recommended for all readers.
- Problem 15
Prove that if
is nonsingular and has eigenvalues
then
has eigenvalues
.
Is the converse true?
- Answer
Consider an eigenspace
. Any
is the image
of some
(namely,
). Thus, on
(which is a nontrivial subspace) the action of
is
, and so
is an eigenvalue of
.
- This exercise is recommended for all readers.
- This exercise is recommended for all readers.
- Problem 19
Do matrix-equivalent matrices have the same eigenvalues?
- Answer
No. These are two same-sized, equal rank, matrices with different eigenvalues.

- Problem 20
Show that a square matrix with real entries and an odd number of rows
has at least one real eigenvalue.
- Answer
The characteristic polynomial has an odd power and so has at least one real root.
References
- Morrison, Clarence C. (proposer) (1967), "Quickie", Mathematics Magazine, 40 (4): 232.
- Strang, Gilbert (1980), Linear Algebra and its Applications (Second ed.), Harcourt Brace Jovanovich.