- This exercise is recommended for all readers.
- This exercise is recommended for all readers.
- Problem 2
Find the nullspace, nullity, rangespace, and rank of each map.
-
given by

-
given by

-
given by

- the zero map
- Answer
- The nullspace is

while the rangespace is

and so the nullity is one and the rank is one.
- The nullspace is this.

The rangespace

is all of
(we can get any real number by taking
to be
and taking
to be the desired number). Thus, the nullity is three and the rank is one.
- The nullspace is

while the rangespace is
. Thus, the nullity is two and the rank is two.
- The nullspace is all of
so the nullity is three. The rangespace is the trivial subspace of
so the rank is zero.
- This exercise is recommended for all readers.
- This exercise is recommended for all readers.
- Problem 4
What is the nullspace of the differentiation transformation
? What is the nullspace of the second derivative, as a transformation of
? The
-th derivative?
- Answer
Because

we have this.

In the same way,

for
.
- Problem 5
Example 2.7 restates the first condition in the definition of homomorphism as "the shadow of a sum is the sum of the shadows". Restate the second condition in the same style.
- Answer
The shadow of a scalar multiple is the scalar multiple of the shadow.
- Problem 6
For the homomorphism
given by
find these.
-
-
-
- Answer
- Setting
gives
and
and
, so the nullspace is
.
- Setting
gives that
, and
, and
. Taking
as a parameter, and renaming it
gives this set description
.
- This set is empty because the range of
includes only those polynomials with a
term.
- This exercise is recommended for all readers.
- This exercise is recommended for all readers.
- Problem 9
Describe the nullspace and rangespace of a transformation given by
.
- Answer
For any vector space
, the nullspace

is trivial, while the rangespace

is all of
, because every vector
is twice some other vector, specifically, it is twice
. (Thus, this transformation is actually an automorphism.)
- Problem 10
List all pairs
that are possible for linear maps from
to
.
- Answer
Because the rank plus the nullity equals the dimension of the domain (here, five), and the rank is at most three, the possible pairs are:
,
,
, and
. Coming up with linear maps that show that each pair is indeed possible is easy.
- This exercise is recommended for all readers.
- Problem 13
- Prove that a homomorphism is onto if and only if its rank equals the dimension of its codomain.
- Conclude that a homomorphism between vector spaces with the same dimension is one-to-one if and only if it is onto.
- Answer
- One direction is obvious: if the homomorphism is onto then its range is the codomain and so its rank equals the dimension of its codomain. For the other direction assume that the map's rank equals the dimension of the codomain. Then the map's range is a subspace of the codomain, and has dimension equal to the dimension of the codomain. Therefore, the map's range must equal the codomain, and the map is onto. (The "therefore" is because there is a linearly independent subset of the range that is of size equal to the dimension of the codomain, but any such linearly independent subset of the codomain must be a basis for the codomain, and so the range equals the codomain.)
- By Theorem 2.21, a homomorphism is one-to-one if and only if its nullity is zero. Because rank plus nullity equals the dimension of the domain, it follows that a homomorphism is one-to-one if and only if its rank equals the dimension of its domain. But this domain and codomain have the same dimension, so the map is one-to-one if and only if it is onto.
- Problem 14
Show that a linear map is nonsingular if and only if it preserves linear independence.
- Answer
We are proving that
is nonsingular if and only if for every linearly independent subset
of
the subset
of
is linearly independent.
One half is easy— by Theorem 2.21, if
is singular then its nullspace is nontrivial (contains more than just the zero vector). So, where
is in that nullspace, the singleton set
is independent while its image
is not.
For the other half, assume that
is nonsingular and so by Theorem 2.21 has a trivial nullspace. Then for any
, the relation

implies the relation
. Hence, if a subset of
is independent then so is its image in
.
Remark. The statement is that a linear map is nonsingular if and only if it preserves independence for all sets (that is, if a set is independent then its image is also independent). A singular map may well preserve some independent sets. An example is this singular map from
to
.

Linear independence is preserved for this set

and (in a somewhat more tricky example) also for this set

(recall that in a set, repeated elements do not appear twice). However, there are sets whose independence is not preserved under this map;

and so not all sets have independence preserved.
- Problem 15
Corollary 2.17 says that for there to be an onto homomorphism from a vector space
to a vector space
, it is necessary that the dimension of
be less than or equal to the dimension of
. Prove that this condition is also sufficient; use Theorem 1.9 to show that if the dimension of
is less than or equal to the dimension of
, then there is a homomorphism from
to
that is onto.
- Answer
(We use the notation from Theorem 1.9.) Fix a basis
for
and a basis
for
. If the dimension
of
is less than or equal to the dimension
of
then the theorem gives a linear map from
to
determined in this way.

We need only to verify that this map is onto.
Any member of
can be written as a linear combination of basis elements
. This vector is the image, under the map described above, of
. Thus the map is onto.
- Problem 16
Let
be a homomorphism, but not the zero homomorphism. Prove that if
is a basis for the nullspace and if
is not in the nullspace then
is a basis for the entire domain
.
- Answer
By assumption,
is not the zero map and so a vector
exists that is not in the nullspace. Note that
is a basis for
, because it is a size one linearly independent subset of
. Consequently
is onto, as for any
we have
for some scalar
, and so
.
Thus the rank of
is one. Because the nullity is given as
, the dimension of the domain of
(the vector space
) is
. We can finish by showing
is linearly independent, as it is a size
subset of a dimension
space. Because
is linearly independent we need only show that
is not a linear combination of the other vectors. But
would give
and applying
to both sides would give a contradiction.
- This exercise is recommended for all readers.
- Problem 17
Recall that the nullspace is a subset of the domain and the rangespace is a subset of the codomain. Are they necessarily distinct? Is there a homomorphism that has a nontrivial intersection of its nullspace and its rangespace?
- Answer
Yes. For the transformation of
given by

we have this.

Remark. We will see more of this in the fifth chapter.
- Problem 18
Prove that the image of a span equals the span of the images. That is, where
is linear, prove that if
is a subset of
then
equals
. This generalizes Lemma 2.1 since it shows that if
is any subspace of
then its image
is a subspace of
, because the span of the set
is
.
- Answer
This is a simple calculation.
![{\displaystyle {\begin{array}{rl}h([S])&=\{h(c_{1}{\vec {s}}_{1}+\dots +c_{n}{\vec {s}}_{n})\,{\big |}\,c_{1},\dots ,c_{n}\in \mathbb {R} {\text{ and }}{\vec {s}}_{1},\dots ,{\vec {s}}_{n}\in S\}\\&=\{c_{1}h({\vec {s}}_{1})+\dots +c_{n}h({\vec {s}}_{n})\,{\big |}\,c_{1},\dots ,c_{n}\in \mathbb {R} {\text{ and }}{\vec {s}}_{1},\dots ,{\vec {s}}_{n}\in S\}\\&=[h(S)]\end{array}}}](https://wikimedia.org/api/rest_v1/media/math/render/svg/fa51153e59cadbff769c3ce31a104506c554e0d0)
- This exercise is recommended for all readers.
- Problem 19
- Prove that for any linear map
and any
, the set
has the form

for
with
(if
is not onto then this set may be empty). Such a
set is a coset of
and is denoted
.
- Consider the map
given by

for some scalars
,
,
, and
. Prove that
is linear.
- Conclude from the prior two items that for any linear system of the form

the solution set can be written (the vectors are members of
)

where
is a particular solution of that linear system (if there is no particular solution then the above set is empty).
- Show that this map
is linear

for any scalars
, ...,
. Extend the conclusion made in the prior item.
- Show that the
-th derivative map is a linear transformation of
for each
. Prove that this map is a linear transformation of that space

for any scalars
, ...,
. Draw a conclusion as above.
- Answer
-
We will show that the two sets are equal
by mutual inclusion. For the
direction, just note that
equals
, and so any member of the first set is a member of the second. For the
direction, consider
. Because
is linear,
implies that
. We can write
as
, and then we have that
, as desired, because
.
- This check is routine.
- This is immediate.
- For the linearity check, briefly, where
are scalars and
have components
and
, we have this.

The appropriate conclusion is that
.
- Each power of the derivative is
linear because of the rules

from calculus. Thus the given map is a linear transformation of the space because any linear combination of linear maps is also a linear map by Lemma 1.16. The appropriate conclusion is
, where the associated homogeneous differential equation has a constant of
.
- Problem 21
Show that for any space
of dimension
, the dual space

is isomorphic to
. It is often denoted
. Conclude that
.
- Answer
Fix a basis
for
. We shall prove that this map

is an isomorphism from
to
.
To see that
is one-to-one, assume that
and
are members of
such that
. Then

and consequently,
, etc. But a homomorphism is determined by its action on a basis, so
, and therefore
is one-to-one.
To see that
is onto, consider

for
.
This function
from
to

is easily seen to be linear, and to be mapped by
to the given vector in
, so
is onto.
The map
also preserves structure: where

we have

so
.
- Problem 22
Show that any linear map is the sum of maps of rank one.
- Answer
Let
be linear and fix a basis
for
. Consider these
maps from
to

for any
. Clearly
is the sum of the
's. We need only check that each
is linear: where
we have
.
- ↑ More information on equivalence relations is in the appendix.