Assume that all spaces are finite-dimensional unless otherwise stated.
- This exercise is recommended for all readers.
- Problem 1
Find a basis for, and the dimension of,
.
- Answer
One basis is
, and so the dimension is three.
- Problem 2
Find a basis for, and the dimension of, the solution set of this system.

- Answer
The solution set is

so a natural basis is this

(checking linear independence is easy). Thus the dimension is three.
- This exercise is recommended for all readers.
- Problem 3
Find a basis for, and the dimension of,
, the vector space of
matrices.
- Answer
For this space

this is a natural basis.

The dimension is four.
- Problem 4
Find the dimension of the vector space of matrices

subject to each condition.
-
-
and
-
,
, and
- Answer
- As in the prior exercise, the space
of matrices without restriction has this basis

and so the dimension is four.
- For this space

this is a natural basis.

The dimension is three.
- Gauss' method applied to the two-equation linear system gives that
and that
. Thus, we have this description

and so this is a natural basis.

The dimension is two.
- This exercise is recommended for all readers.
- Problem 5
Find the dimension of each.
- The space of cubic polynomials
such
that
- The space of cubic polynomials
such
that
and
- The space of cubic polynomials
such
that
,
, and
- The space of cubic polynomials
such
that
,
,
, and
- Answer
The bases for these spaces are developed in the answer set of the prior subsection.
- One basis is
. The dimension is three.
- One basis is
so the dimension is two.
- A basis is
. The dimension is one.
- This is the trivial subspace of
and so the basis is empty. The dimension is zero.
- Problem 6
What is the dimension of the span of the set
? This span is a subspace of the space of all real-valued functions of one real variable.
- Answer
First recall that
, and so deletion of
from this set leaves the span unchanged. What's left, the set
, is linearly independent (consider the relationship
where
is the zero function, and then take
,
, and
to conclude that each
is zero). It is therefore a basis for its span. That shows that the span is a dimension three vector space.
- Problem 7
Find the dimension of
, the vector space of
-tuples of complex numbers.
- Answer
Here is a basis

and so the dimension is
.
- Problem 8
What is the dimension of the vector space
of
matrices?
- Answer
A basis is

and thus the dimension is
.
- This exercise is recommended for all readers.
- Problem 9
Show that this is a basis for
.

(The results of this subsection can be used to simplify this job.)
- Answer
In a four-dimensional space a set of four vectors is linearly independent if and only if it spans the space. The form of these vectors makes linear independence easy to show (look at the equation of fourth components, then at the equation of third components, etc.).
- This exercise is recommended for all readers.
- Problem 11
- Where
is a set, the functions
form a vector space under the natural operations: the sum
is the function given by
and the scalar product is given by
. What is the dimension of the space resulting for each domain?
-
-
-
- Answer
- One
- Two
-
- Problem 13
(See Problem 11.)
What is the dimension of the vector space of functions
, under the natural operations, where the domain
is the empty set?
- Answer
Considering a function to be a set, specifically, a set of ordered pairs
, then the only function with an empty domain is the empty set. Thus this is a trivial vector space, and has dimension zero.
- Problem 14
Show that any set of four vectors in
is linearly dependent.
- Answer
Apply Corollary 2.8.
- Problem 15
Show that the set
is a basis if and only if there is no plane through the origin containing
all three vectors.
- Answer
A plane has the form
. (The first chapter also calls this a "
-flat", and contains a discussion of why this is equivalent to the description often taken in Calculus as the set of points
subject to a condition of the form
). When the plane passes through the origin we can take the particular vector
to be
. Thus, in the language we have developed in this chapter, a plane through
the origin is the span of a set of two vectors.
Now for the statement. Asserting that the three are not coplanar is the same as asserting that no vector lies in the span of the other two— no vector is a linear combination of the other two. That's simply an assertion that the three-element set is linearly independent. By Corollary 2.12, that's equivalent to an assertion that the set is a basis for
.
- Problem 17
Where is the finiteness of
used in Theorem 2.3?
- Answer
It ensures that we exhaust the
's. That is, it justifies the first sentence of the last paragraph.
- This exercise is recommended for all readers.
- Problem 19
Because a basis for a space is a subset of that space, we are naturally led to how the property "is a basis" interacts with set operations.
- Consider first how bases might be related by "subset". Assume that
are subspaces of some vector space and that
. Can there exist bases
for
and
for
such that
? Must such bases exist?
For any basis
for
, must there be a basis
for
such that
?
For any basis
for
, must there be a basis
for
such that
?
For any bases
for
and
, must
be a subset of
?
- Is the intersection of bases a basis? For what space?
- Is the union of bases a basis? For what space?
- What about complement?
(Hint. Test any conjectures against some subspaces of
.)
- Answer
First, note that a set is a basis for some space if and only if it is linearly independent, because in that case it is a basis for its own span.
- The answer to the question in the second paragraph is "yes" (implying "yes" answers for both questions in the first paragraph). If
is a basis for
then
is a linearly independent subset of
. Apply Corollary 2.10 to expand it to a basis for
. That is the desired
.
The answer to the question in the third paragraph is "no", which implies a "no" answer to the question of the fourth paragraph. Here is an example of a basis for a superspace with no sub-basis forming a basis for a subspace: in
, consider the standard basis
. No sub-basis of
forms a basis for the subspace
of
that is the line
. - It is a basis (for its span) because the intersection of linearly independent sets is linearly independent (the intersection is a subset of each of the linearly independent sets).
It is not, however, a basis for the intersection of the spaces. For instance, these are bases for
:

and
, but
is empty. All we can say is that the intersection of the bases is a basis for a subset of the intersection of the spaces.
- The union of bases need not be a basis: in

have a union
that is not linearly independent. A necessary and sufficient condition for a union of two bases to be a basis
![{\displaystyle B_{1}\cup B_{2}{\text{ is linearly independent }}\quad \iff \quad [B_{1}\cap B_{2}]=[B_{1}]\cap [B_{2}]}](https://wikimedia.org/api/rest_v1/media/math/render/svg/5c35753bba0c37aebe2d5862bf5f2725beda0ce0)
it is easy enough to prove (but perhaps hard to apply).
- The complement of a basis cannot be a basis because it contains the zero vector.
- This exercise is recommended for all readers.
- Problem 20
Consider how "dimension" interacts with "subset". Assume
and
are both subspaces of some vector space, and that
.
- Prove that
.
- Prove that equality of dimension holds if and only if
.
- Show that the prior item does not hold if they are infinite-dimensional.
- Answer
- A basis for
is a linearly independent set in
and so can be expanded via Corollary 2.10 to a basis for
.
The second basis has at least as many members as the first.
- One direction is clear: if
then they have the same dimension. For the converse, let
be a basis for
. It is a linearly independent subset of
and so can be expanded to a basis for
. If
then this basis for
has no more members than does
and so equals
. Since
and
have the same bases, they are equal.
- Let
be the space of finite-degree polynomials and let
be the subspace of polynomials that have only even-powered terms
. Both spaces have infinite dimension, but
is a proper subspace.
- ? Problem 21
For any vector
in
and any permutation
of the numbers
,
, ...,
(that is,
is a rearrangement of those numbers into a new order), define
to be the vector whose components are
,
, ..., and
(where
is the first number in the rearrangement, etc.). Now fix
and let
be the span of
. What are the possibilities for the dimension of
? (Gilbert, Krusemeyer & Larson 1993, Problem 47)
- Answer
The possibilities for the dimension of
are
,
,
, and
.
To see this, first consider the case when all the coordinates of
are equal.

Then
for every permutation
, so
is just the span of
, which has dimension
or
according to whether
is
or not.
Now suppose not all the coordinates of
are equal; let
and
with
be among the coordinates of
. Then we can find permutations
and
such that

for some
. Therefore,

is in
. That is,
, where
,
, ...,
is the standard basis for
. Similarly,
, ...,
are all in
. It is easy to see that the vectors
,
, ...,
are linearly independent (that is, form a linearly independent set), so
.
Finally, we can write

This shows that if
then
is in the span of
, ...,
(that is, is in the span of the set of those vectors); similarly, each
will be in this span, so
will equal this span and
. On the other hand, if
then the above equation shows that
and thus
, so
and
.
- Gilbert, George T.; Krusemeyer, Mark; Larson, Loren C. (1993), The Wohascum County Problem Book, The Mathematical Association of America.