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Our main goal in this section is to define inverse matrices and
to take a look at some nice properties involving matrices. We won’t actually be finding any inverse
matrices in this section. That is the
topic of the next section.
We’ll also take a quick look at elementary matrices which as
we’ll see in the next section we can use to help us find inverse matrices. Actually, that’s not totally true. We’ll use them to help us devise a method for
finding inverse matrices, but we won’t be explicitly using them to find the
inverse.
So, let’s start off with the definition of the inverse
matrix.
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Definition 1 If
A is a square matrix and we can
find another matrix of the same size, say B,
such that

then we call A invertible
and we say that B is an inverse of the matrix A.
If we can’t
find such a matrix B we call A a singular matrix.
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Note that we only talk about inverse matrices for square
matrices. Also note that if A is invertible it will on occasion be
called non-singular. We should also point out that we could also
say that B is invertible and that A is the inverse of B.
Before proceeding we need to show that the inverse of a
matrix is unique, that is for a given invertible matrix A there is exactly one inverse for the matrix.
Proof : Since B is an inverse of A we know that 
. Now multiply both sides of this by C to get 
. However, by the associative law of matrix
multiplication we can also write 
as 
. Therefore, putting these two pieces together
we see that 
or 
.

So, the inverse for a matrix is unique. To denote this fact we now will denote the
inverse of the matrix A as 
from this point on.
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Example 1 Given
the matrix A verify that the
indicated matrix is in fact the inverse.

Solution
To verify that we do in fact have the inverse we’ll need
to check that

This is easy enough to do and so we’ll leave it to you to verify
the multiplication.

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As the definition of an inverse matrix suggests, not every
matrix will have an inverse. Here is an
example of a matrix without an inverse.
In the previous section we introduced the idea of matrix
exponentiation. However, we needed to
restrict ourselves to positive exponents.
We can now take a look at negative exponents.
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Example 3 Compute
 for the matrix,

Solution
From Example 1 we know that the inverse of A is,

So, this is easy enough to compute.

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Next, let’s take a quick look at some nice facts about the
inverse matrix.
Proof :
Note that in each case in order to prove that the given
matrix is invertible all we need to do is show that the inverse is what we
claim it to be. Also, don’t get excited
about showing that the inverse is what we claim it to be. In these cases all we need to do is show that
the product (both left and right product) of the given matrix and what we claim
is the inverse is the identity matrix.
That’s it.
Also, do not get excited about the inverse notation. For example, in the first one we state that 
. Remember that the 
is just the notation that we use to denote the
inverse of AB. This notation will not be used in the proof
except in the final step to denote the inverse.
(a) Now, as
suggested above showing this is not really all that difficult. All we need to do is show that 
and 
. Here is that work.
So, we’ve shown both and so we now know that AB is in fact invertible (since we’ve
found the inverse!) and that 
.
(b) Now, we know
from the fact that A is invertible
that
But this is telling us that if we multiply 
by A
on both sides then we’ll get the identity matrix. But this is exactly what we need to show that

is invertible and that its inverse is A.
(c) The best way
to prove this part is by a proof technique called induction. However, there’s a chance that a good many of
you don’t know that and that isn’t the point of this class. Luckily, for this part anyway, we can at
least outline another way to prove this.
To officially prove this part we’ll need to show that 
. We’ll show one of the inequalities and leave
the other to you to verify since the work is pretty much identical.
Again, we’ll leave the second product to you to verify, but
the work is identical. After doing this
product we can see that 
is invertible and 
.
(d) To prove this
part we’ll need to show that 
. As with the last part we’ll do half the work
and leave the other half to you to verify.
Upon doing the second product we can see that cA is invertible and 
.
(e) The part will
require us to show that 
and in keeping with tradition of the last
couple parts we’ll do the first one and leave the second one to you to verify.
This one is a little tricky at first, but once you realize
the correct formula to use it’s not too bad.
Let’s start with 
and then remember that 
. Using this fact (backwards) on 
gives us,
Note that we used the fact that 
here which we’ll leave to you to verify.
So, upon showing the second product we’ll have that 
is invertible and 
.

Note that the first part of this theorem can be easily
extended to more than two matrices as follows,

Now, in the previous section we saw that in general we don’t
have a cancellation law or a zero factor property. However, if we restrict ourselves just a
little we can get variations of both of these.
Proof :
(a) Since we know
that A is invertible we know that 
exists so multiply on the left by 
to get,
(b) Again we know
that 
exists so multiply on the left by 
to get,

Note that this theorem only required that A be invertible, it is completely
possible that the other matrices are singular.
Note as well with the first one that we’ve got to remember
that matrix multiplication is not commutative and so if we have 
then there is no reason to think that 
even if A
is invertible. Because we don’t know
that 
we’ve got to leave this as is. Also when we multiply both sides of the
equation by 
we’ve got multiply each side on the left or
each side on the right, which is again because we don’t have the commutative
law with matrix multiplication. So, if
we tried the above proof on 
we’d have,
In either case we don’t have 
.
Okay, it is now time to take a quick look at Elementary
matrices.
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Definition 3 A
square matrix is called an elementary
matrix if it can be obtained by applying a single elementary row
operation to the identity matrix of the same size.
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Here are some examples of elementary matrices and the row
operations that produced them.
Note that the fourth example above shows that any identity
matrix is also an elementary matrix since we can think of arriving at that
matrix by taking one times any row (not just the second as we used) of the
identity matrix.
Here’s a really nice theorem about elementary matrices that
we’ll be using extensively to develop a method for finding the inverse of a
matrix.
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Example 5 For
the following matrix perform the row operation  on it and then find the elementary matrix, E,
for this operation and verify that EA
will give the same result.

Solution
Performing the row operation is easy enough.

Now, we can find E
simply by applying the same operation to  and so we have,

We just need to verify that EA is then the same matrix that we got above.

Sure enough the same matrix as the theorem predicted.
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Now, let’s go back to Example 4 for a second and notice that
we can apply a second row operation to get the given elementary matrix back to
the original identity matrix.
These kinds of operations are called inverse operations and each row operation will have an inverse
operation associated with it. The
following table gives the inverse operation for each row operation.
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Row operation
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Inverse Operation
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Multiply row i
by 
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Multiply row i
by 
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Interchange rows i
and j
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Interchange rows j
and i
|
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Add c times row i
to row j
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Add  times row i to row j
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Now that we’ve got inverse operations we can give the
following theorem.
Proof : This is
actually a really simple proof. Let’s
start with 
. We know from Theorem 4 that this is the same
as if we’d applied the inverse operation to E,
but we also know that inverse operations will take an elementary matrix back to
the original identity matrix. Therefore
we have,
Likewise, if we look at 
this will be the same as applying the original
row operation to 
. However, if you think about it this will only
undo what the inverse operation did to the identity matrix and so we also have,
Therefore, we’ve proved that 
and so E
is invertible and 
.

Now, suppose that we’ve got two matrices of the same size A and B. If we can reach B by applying a finite number of row
operations to A then we call the two
matrices row equivalent. Note that this will also mean that we can
reach A from B by applying the inverse operations in the reverse order.
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Example 7 Consider

then

is row equivalent to A
because we reached B by first
multiplying row 2 of A by -2 and
the adding 3 times row 1 onto row 2.
For the practice let’s do these operations using
elementary matrices. Here are the
elementary matrices (and their inverses) for the operations on A.

Now, to reach B
Theorem 4 tells us that we need to multiply the left side of A by each of these in the same order
as we applied the operations.

Sure enough we get B
as we should.
Now, since A and
B are row equivalent this means
that we should be able to get to A
from B by applying the inverse
operations in the reverse order. Let’s
see if that does in fact work.

So, we sure enough end up with the correct matrix and
again remember that each time we multiplied the left side by an elementary matrix
Theorem 4 tells us that is the same thing as applying the associated row
operation to the matrix.
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