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 Page 1


Inner Product Spaces
1. Preliminaries
An inner product space is a vector space V along with a function h,i called an inner product which
associates each pair of vectors u,v with a scalarhu,vi, and which satis?es:
(1) hu,ui= 0 with equality if and only if u =0
(2) hu,vi =hv,ui and
(3) hau+v,wi =ahu,wi+hv,wi
Combining (2) and (3), we also havehu,av+wi =ahu,vi+hu,wi. Condition (1) is called positive de?nite,
condition (2) is called symmetric and condition (3) with the note above is called bilinear. Thus an inner
product is an example of a positive de?nite, symmetric bilinear function or form on the vector space V.
De?nition 1.0.1. Let V be an inner product space and u and v be vectors in V. We make the following
de?nitions:
(1) The length or norm of the vector u is:
||u|| =
p
hu,ui
(2) The distance between u and v is:
||u-v||
(3) The angle between u and v is:
? = cos
-1

hu,vi
||u||·||v||

(4) We say that u and v are orthogonal if
hu,vi = 0
(5) The orthogonal projection of u onto the space spanned by v is:
p =

hu,vi
hv,vi

v
Note that, a priori, we do not know that-1=
hu,vi
||u||·||v||
= 1 so ? may not be de?ned. Later we will show that
these bounds are valid and so our de?nition of ? is also valid. When referring to (5), we will usually say “the
projection of u onto v”.
Now we give some preliminary results:
Theorem 1.0.2 (Pythagorean Theorem). Suppose that u and v are orthogonal vectors. Then
||u±v||
2
=||u||
2
+||v||
2
Page 2


Inner Product Spaces
1. Preliminaries
An inner product space is a vector space V along with a function h,i called an inner product which
associates each pair of vectors u,v with a scalarhu,vi, and which satis?es:
(1) hu,ui= 0 with equality if and only if u =0
(2) hu,vi =hv,ui and
(3) hau+v,wi =ahu,wi+hv,wi
Combining (2) and (3), we also havehu,av+wi =ahu,vi+hu,wi. Condition (1) is called positive de?nite,
condition (2) is called symmetric and condition (3) with the note above is called bilinear. Thus an inner
product is an example of a positive de?nite, symmetric bilinear function or form on the vector space V.
De?nition 1.0.1. Let V be an inner product space and u and v be vectors in V. We make the following
de?nitions:
(1) The length or norm of the vector u is:
||u|| =
p
hu,ui
(2) The distance between u and v is:
||u-v||
(3) The angle between u and v is:
? = cos
-1

hu,vi
||u||·||v||

(4) We say that u and v are orthogonal if
hu,vi = 0
(5) The orthogonal projection of u onto the space spanned by v is:
p =

hu,vi
hv,vi

v
Note that, a priori, we do not know that-1=
hu,vi
||u||·||v||
= 1 so ? may not be de?ned. Later we will show that
these bounds are valid and so our de?nition of ? is also valid. When referring to (5), we will usually say “the
projection of u onto v”.
Now we give some preliminary results:
Theorem 1.0.2 (Pythagorean Theorem). Suppose that u and v are orthogonal vectors. Then
||u±v||
2
=||u||
2
+||v||
2
Proof: We’ll just do the case ||u+v||
2
as the argument for the other case is similar. Note, as u and v are
orthogonal, hu,vi = 0. Now:
||u+v||
2
= hu+v,u+vi
= hu,ui+hu,vi+hv,ui+hv,vi
= hu,ui+hv,vi
= ||u||
2
+||v||
2

Theorem 1.0.3. Suppose that p is the orthogonal projection of u onto the space spanned by v. Then p and
u-p are orthogonal.
Proof: Recall that the projection of u onto v is given by:
p =
hu,vi
hv,vi
v
For notational convenience, we set ß =
hu,vi
hv,vi
. Then
hp,u-pi = hp,ui-hp,pi
= hßv,ui-hßv,ßvi
= ßhv,ui-ß
2
hv,vi
=
hu,vi
hv,vi
hv,ui-
hu,vi
2
hv,vi
2
hv,vi
=
hu,vi
2
hv,vi
-
hu,vi
2
hv,vi
= 0
Therefore they are orthogonal. 
Theorem 1.0.4 (Cauchy-Schwarz Inequality). Suppose that v and v are vectors in an inner product space.
Then
|hu,vi|=||u||·||v||
Proof: Let p be the orthogonal projection of u onto v. From the previous result, p and u-p are orthogonal.
We may then apply the Pythagorean Theorem to get
||p||
2
+||u-p||
2
= ||(p)+(u-p)||
2
= ||u||
2
Subtracting||u-p||
2
from both sides and noting 0=||u-p||
2
gives:
||p||
2
=||u||
2
-||u-p||
2
=||u||
2
In the proof of the previous theorem, we found that
||p||
2
=hp,pi =
hu,vi
2
hv,vi
=
hu,vi
2
||v||
2
Page 3


Inner Product Spaces
1. Preliminaries
An inner product space is a vector space V along with a function h,i called an inner product which
associates each pair of vectors u,v with a scalarhu,vi, and which satis?es:
(1) hu,ui= 0 with equality if and only if u =0
(2) hu,vi =hv,ui and
(3) hau+v,wi =ahu,wi+hv,wi
Combining (2) and (3), we also havehu,av+wi =ahu,vi+hu,wi. Condition (1) is called positive de?nite,
condition (2) is called symmetric and condition (3) with the note above is called bilinear. Thus an inner
product is an example of a positive de?nite, symmetric bilinear function or form on the vector space V.
De?nition 1.0.1. Let V be an inner product space and u and v be vectors in V. We make the following
de?nitions:
(1) The length or norm of the vector u is:
||u|| =
p
hu,ui
(2) The distance between u and v is:
||u-v||
(3) The angle between u and v is:
? = cos
-1

hu,vi
||u||·||v||

(4) We say that u and v are orthogonal if
hu,vi = 0
(5) The orthogonal projection of u onto the space spanned by v is:
p =

hu,vi
hv,vi

v
Note that, a priori, we do not know that-1=
hu,vi
||u||·||v||
= 1 so ? may not be de?ned. Later we will show that
these bounds are valid and so our de?nition of ? is also valid. When referring to (5), we will usually say “the
projection of u onto v”.
Now we give some preliminary results:
Theorem 1.0.2 (Pythagorean Theorem). Suppose that u and v are orthogonal vectors. Then
||u±v||
2
=||u||
2
+||v||
2
Proof: We’ll just do the case ||u+v||
2
as the argument for the other case is similar. Note, as u and v are
orthogonal, hu,vi = 0. Now:
||u+v||
2
= hu+v,u+vi
= hu,ui+hu,vi+hv,ui+hv,vi
= hu,ui+hv,vi
= ||u||
2
+||v||
2

Theorem 1.0.3. Suppose that p is the orthogonal projection of u onto the space spanned by v. Then p and
u-p are orthogonal.
Proof: Recall that the projection of u onto v is given by:
p =
hu,vi
hv,vi
v
For notational convenience, we set ß =
hu,vi
hv,vi
. Then
hp,u-pi = hp,ui-hp,pi
= hßv,ui-hßv,ßvi
= ßhv,ui-ß
2
hv,vi
=
hu,vi
hv,vi
hv,ui-
hu,vi
2
hv,vi
2
hv,vi
=
hu,vi
2
hv,vi
-
hu,vi
2
hv,vi
= 0
Therefore they are orthogonal. 
Theorem 1.0.4 (Cauchy-Schwarz Inequality). Suppose that v and v are vectors in an inner product space.
Then
|hu,vi|=||u||·||v||
Proof: Let p be the orthogonal projection of u onto v. From the previous result, p and u-p are orthogonal.
We may then apply the Pythagorean Theorem to get
||p||
2
+||u-p||
2
= ||(p)+(u-p)||
2
= ||u||
2
Subtracting||u-p||
2
from both sides and noting 0=||u-p||
2
gives:
||p||
2
=||u||
2
-||u-p||
2
=||u||
2
In the proof of the previous theorem, we found that
||p||
2
=hp,pi =
hu,vi
2
hv,vi
=
hu,vi
2
||v||
2
So we have
hu,vi
2
||v||
2
=||u||
2
hu,vi
2
=||u||
2
·||v||
2
which ?nally leads to
|hu,vi|=||u||·||v||

2. Examples of Inner Product Spaces
2.1. Example: R
n
. Just as R
n
is our template for a real vector space, it serves in the same way as the
archetypical inner product space. The usual inner product onR
n
is called the dot product or scalar product
onR
n
. It is de?ned by:
hx,yi =x
T
y
where the right-hand side is just matrix multiplication. In particular, if
x =
?
?
?
?
?
?
?
?
x
1
x
2
.
.
.
x
n
?
?
?
?
?
?
?
?
and y =
?
?
?
?
?
?
?
?
y
1
y
2
.
.
.
y
n
?
?
?
?
?
?
?
?
then
hx,yi =x
T
y = (x
1
,...,x
n
)
?
?
?
?
?
?
?
?
y
1
y
2
.
.
.
y
n
?
?
?
?
?
?
?
?
=x
1
y
1
+···+x
n
y
n
****PROOF OF DOT PRODUCT BEING INNER PRODUCT GOES HERE****
****GEOMETRIC PROOF OF ORTHOGONAL PROJECTIONS GOES HERE****
****SPECIFIC EXAMPLE GOES HERE****
p =

x
T
y
y
T
y

y
x
T
y =||x||·||y||cos(?)
An alternate inner product can be de?ned onR
n
by:
hx,yi =x
T
*A*y
where the right-hand side is just matrix multiplication. The n×n matrix A must be a type of matrix known as
a symmetric, positive de?nite matrix in order for this to satisfy the conditions of an inner product. If we choose
A to be a symmetric matrix in which all of its entries are non-negative and has only positive entries on the main
diagonal, then it will be such a matrix. (More generally a symmetric, positive de?nite matrix is a symmetric
matrix with only positive eigenvalues.)
Page 4


Inner Product Spaces
1. Preliminaries
An inner product space is a vector space V along with a function h,i called an inner product which
associates each pair of vectors u,v with a scalarhu,vi, and which satis?es:
(1) hu,ui= 0 with equality if and only if u =0
(2) hu,vi =hv,ui and
(3) hau+v,wi =ahu,wi+hv,wi
Combining (2) and (3), we also havehu,av+wi =ahu,vi+hu,wi. Condition (1) is called positive de?nite,
condition (2) is called symmetric and condition (3) with the note above is called bilinear. Thus an inner
product is an example of a positive de?nite, symmetric bilinear function or form on the vector space V.
De?nition 1.0.1. Let V be an inner product space and u and v be vectors in V. We make the following
de?nitions:
(1) The length or norm of the vector u is:
||u|| =
p
hu,ui
(2) The distance between u and v is:
||u-v||
(3) The angle between u and v is:
? = cos
-1

hu,vi
||u||·||v||

(4) We say that u and v are orthogonal if
hu,vi = 0
(5) The orthogonal projection of u onto the space spanned by v is:
p =

hu,vi
hv,vi

v
Note that, a priori, we do not know that-1=
hu,vi
||u||·||v||
= 1 so ? may not be de?ned. Later we will show that
these bounds are valid and so our de?nition of ? is also valid. When referring to (5), we will usually say “the
projection of u onto v”.
Now we give some preliminary results:
Theorem 1.0.2 (Pythagorean Theorem). Suppose that u and v are orthogonal vectors. Then
||u±v||
2
=||u||
2
+||v||
2
Proof: We’ll just do the case ||u+v||
2
as the argument for the other case is similar. Note, as u and v are
orthogonal, hu,vi = 0. Now:
||u+v||
2
= hu+v,u+vi
= hu,ui+hu,vi+hv,ui+hv,vi
= hu,ui+hv,vi
= ||u||
2
+||v||
2

Theorem 1.0.3. Suppose that p is the orthogonal projection of u onto the space spanned by v. Then p and
u-p are orthogonal.
Proof: Recall that the projection of u onto v is given by:
p =
hu,vi
hv,vi
v
For notational convenience, we set ß =
hu,vi
hv,vi
. Then
hp,u-pi = hp,ui-hp,pi
= hßv,ui-hßv,ßvi
= ßhv,ui-ß
2
hv,vi
=
hu,vi
hv,vi
hv,ui-
hu,vi
2
hv,vi
2
hv,vi
=
hu,vi
2
hv,vi
-
hu,vi
2
hv,vi
= 0
Therefore they are orthogonal. 
Theorem 1.0.4 (Cauchy-Schwarz Inequality). Suppose that v and v are vectors in an inner product space.
Then
|hu,vi|=||u||·||v||
Proof: Let p be the orthogonal projection of u onto v. From the previous result, p and u-p are orthogonal.
We may then apply the Pythagorean Theorem to get
||p||
2
+||u-p||
2
= ||(p)+(u-p)||
2
= ||u||
2
Subtracting||u-p||
2
from both sides and noting 0=||u-p||
2
gives:
||p||
2
=||u||
2
-||u-p||
2
=||u||
2
In the proof of the previous theorem, we found that
||p||
2
=hp,pi =
hu,vi
2
hv,vi
=
hu,vi
2
||v||
2
So we have
hu,vi
2
||v||
2
=||u||
2
hu,vi
2
=||u||
2
·||v||
2
which ?nally leads to
|hu,vi|=||u||·||v||

2. Examples of Inner Product Spaces
2.1. Example: R
n
. Just as R
n
is our template for a real vector space, it serves in the same way as the
archetypical inner product space. The usual inner product onR
n
is called the dot product or scalar product
onR
n
. It is de?ned by:
hx,yi =x
T
y
where the right-hand side is just matrix multiplication. In particular, if
x =
?
?
?
?
?
?
?
?
x
1
x
2
.
.
.
x
n
?
?
?
?
?
?
?
?
and y =
?
?
?
?
?
?
?
?
y
1
y
2
.
.
.
y
n
?
?
?
?
?
?
?
?
then
hx,yi =x
T
y = (x
1
,...,x
n
)
?
?
?
?
?
?
?
?
y
1
y
2
.
.
.
y
n
?
?
?
?
?
?
?
?
=x
1
y
1
+···+x
n
y
n
****PROOF OF DOT PRODUCT BEING INNER PRODUCT GOES HERE****
****GEOMETRIC PROOF OF ORTHOGONAL PROJECTIONS GOES HERE****
****SPECIFIC EXAMPLE GOES HERE****
p =

x
T
y
y
T
y

y
x
T
y =||x||·||y||cos(?)
An alternate inner product can be de?ned onR
n
by:
hx,yi =x
T
*A*y
where the right-hand side is just matrix multiplication. The n×n matrix A must be a type of matrix known as
a symmetric, positive de?nite matrix in order for this to satisfy the conditions of an inner product. If we choose
A to be a symmetric matrix in which all of its entries are non-negative and has only positive entries on the main
diagonal, then it will be such a matrix. (More generally a symmetric, positive de?nite matrix is a symmetric
matrix with only positive eigenvalues.)
2.2. Example: R
m×n
. Suppose A = (a
ij
) and B = (b
ij
) are matrices in R
m×n
. The usual inner product on
R
m×n
is given by:
hA,Bi =
m
X
i=1
n
X
j=1
a
ij
b
ij
Note that this is the sum of the point-wise products of the elements of A and B.
****PROOF OF THIS PRODUCT BEING INNER PRODUCT GOES HERE****
****SPECIFIC EXAMPLE GOES HERE****
2.3. Example: P
n
. Here we will describe a type of inner product on P
n
which we will term a discrete inner
product on P
n
. Let {x
1
,...,x
n
} be distinct real numbers. If p(x) is a polynomial in P
n
, then it has degree at
most (n-1), and therefore has at most (n-1) roots. This means that p(x
i
)6= 0 for at least one i. We know
de?ne an inner product by:
hp(x),q(x)i =
n
X
i=1
p(x
i
)q(x
i
)
****PROOF OF THIS PRODUCT BEING INNER PRODUCT GOES HERE****
****SPECIFIC EXAMPLE GOES HERE****
Since every polynomial is continuous at every real number, we can use the next example of an inner product
as an inner product onP
n
. Each of these are a continuous inner product onP
n
.
2.4. Example: C[a,b]. An inner product on C[a,b] is given by:
hf(x),g(x)i =
Z
b
a
f(x)g(x)w(x)dx
where w(x) is some continuous, positive real-valued function on [a,b]. The standard inner product on C[a,b]
is where w(x) = 1 in the above de?nition.
****PROOF OF THIS PRODUCT BEING INNER PRODUCT GOES HERE****
****SPECIFIC EXAMPLE GOES HERE****
3. Subspaces, Orthogonal Complements and Projections
De?nition 3.0.1. Let U and V be subspaces of a vector space W such that U nV ={0}. The direct sum of
U and V is the set U?V ={u+v|u?U and v?V}.
De?nition 3.0.2. Let S be a subspace of the inner product space V. The the orthogonal complement of S
is the set S
?
={v?V |hv,si = 0 for all s?S}.
Theorem 3.0.3. (1) If U and V are subspaces of a vector space W with UnV ={0}, then U?V is also
a subspace of W.
(2) If S is a subspace of the inner product space V, then S
?
is also a subspace of V.
Proof: (1.) Notethat0+0 =0isinU?V. Nowsupposew
1
,w
2
?U?V, thenw
1
=u
1
+v
1
andw
2
=u
2
+v
2
with u
i
? U and v
i
? V and w
1
+w
2
= (u
1
+v
1
)+(u
2
+v
2
) = (u
1
+u
2
)+(v
1
+v
2
). Since U and V are
subspaces, itfollowsthatw
1
+w
2
?U?V. Supposenowthataisascalar, thenaw
1
=a(u
1
+v
1
) =au
1
+av
1
.
As above, it then follows that aw
1
?U?V. Thus U?V is a subspace for W.
Page 5


Inner Product Spaces
1. Preliminaries
An inner product space is a vector space V along with a function h,i called an inner product which
associates each pair of vectors u,v with a scalarhu,vi, and which satis?es:
(1) hu,ui= 0 with equality if and only if u =0
(2) hu,vi =hv,ui and
(3) hau+v,wi =ahu,wi+hv,wi
Combining (2) and (3), we also havehu,av+wi =ahu,vi+hu,wi. Condition (1) is called positive de?nite,
condition (2) is called symmetric and condition (3) with the note above is called bilinear. Thus an inner
product is an example of a positive de?nite, symmetric bilinear function or form on the vector space V.
De?nition 1.0.1. Let V be an inner product space and u and v be vectors in V. We make the following
de?nitions:
(1) The length or norm of the vector u is:
||u|| =
p
hu,ui
(2) The distance between u and v is:
||u-v||
(3) The angle between u and v is:
? = cos
-1

hu,vi
||u||·||v||

(4) We say that u and v are orthogonal if
hu,vi = 0
(5) The orthogonal projection of u onto the space spanned by v is:
p =

hu,vi
hv,vi

v
Note that, a priori, we do not know that-1=
hu,vi
||u||·||v||
= 1 so ? may not be de?ned. Later we will show that
these bounds are valid and so our de?nition of ? is also valid. When referring to (5), we will usually say “the
projection of u onto v”.
Now we give some preliminary results:
Theorem 1.0.2 (Pythagorean Theorem). Suppose that u and v are orthogonal vectors. Then
||u±v||
2
=||u||
2
+||v||
2
Proof: We’ll just do the case ||u+v||
2
as the argument for the other case is similar. Note, as u and v are
orthogonal, hu,vi = 0. Now:
||u+v||
2
= hu+v,u+vi
= hu,ui+hu,vi+hv,ui+hv,vi
= hu,ui+hv,vi
= ||u||
2
+||v||
2

Theorem 1.0.3. Suppose that p is the orthogonal projection of u onto the space spanned by v. Then p and
u-p are orthogonal.
Proof: Recall that the projection of u onto v is given by:
p =
hu,vi
hv,vi
v
For notational convenience, we set ß =
hu,vi
hv,vi
. Then
hp,u-pi = hp,ui-hp,pi
= hßv,ui-hßv,ßvi
= ßhv,ui-ß
2
hv,vi
=
hu,vi
hv,vi
hv,ui-
hu,vi
2
hv,vi
2
hv,vi
=
hu,vi
2
hv,vi
-
hu,vi
2
hv,vi
= 0
Therefore they are orthogonal. 
Theorem 1.0.4 (Cauchy-Schwarz Inequality). Suppose that v and v are vectors in an inner product space.
Then
|hu,vi|=||u||·||v||
Proof: Let p be the orthogonal projection of u onto v. From the previous result, p and u-p are orthogonal.
We may then apply the Pythagorean Theorem to get
||p||
2
+||u-p||
2
= ||(p)+(u-p)||
2
= ||u||
2
Subtracting||u-p||
2
from both sides and noting 0=||u-p||
2
gives:
||p||
2
=||u||
2
-||u-p||
2
=||u||
2
In the proof of the previous theorem, we found that
||p||
2
=hp,pi =
hu,vi
2
hv,vi
=
hu,vi
2
||v||
2
So we have
hu,vi
2
||v||
2
=||u||
2
hu,vi
2
=||u||
2
·||v||
2
which ?nally leads to
|hu,vi|=||u||·||v||

2. Examples of Inner Product Spaces
2.1. Example: R
n
. Just as R
n
is our template for a real vector space, it serves in the same way as the
archetypical inner product space. The usual inner product onR
n
is called the dot product or scalar product
onR
n
. It is de?ned by:
hx,yi =x
T
y
where the right-hand side is just matrix multiplication. In particular, if
x =
?
?
?
?
?
?
?
?
x
1
x
2
.
.
.
x
n
?
?
?
?
?
?
?
?
and y =
?
?
?
?
?
?
?
?
y
1
y
2
.
.
.
y
n
?
?
?
?
?
?
?
?
then
hx,yi =x
T
y = (x
1
,...,x
n
)
?
?
?
?
?
?
?
?
y
1
y
2
.
.
.
y
n
?
?
?
?
?
?
?
?
=x
1
y
1
+···+x
n
y
n
****PROOF OF DOT PRODUCT BEING INNER PRODUCT GOES HERE****
****GEOMETRIC PROOF OF ORTHOGONAL PROJECTIONS GOES HERE****
****SPECIFIC EXAMPLE GOES HERE****
p =

x
T
y
y
T
y

y
x
T
y =||x||·||y||cos(?)
An alternate inner product can be de?ned onR
n
by:
hx,yi =x
T
*A*y
where the right-hand side is just matrix multiplication. The n×n matrix A must be a type of matrix known as
a symmetric, positive de?nite matrix in order for this to satisfy the conditions of an inner product. If we choose
A to be a symmetric matrix in which all of its entries are non-negative and has only positive entries on the main
diagonal, then it will be such a matrix. (More generally a symmetric, positive de?nite matrix is a symmetric
matrix with only positive eigenvalues.)
2.2. Example: R
m×n
. Suppose A = (a
ij
) and B = (b
ij
) are matrices in R
m×n
. The usual inner product on
R
m×n
is given by:
hA,Bi =
m
X
i=1
n
X
j=1
a
ij
b
ij
Note that this is the sum of the point-wise products of the elements of A and B.
****PROOF OF THIS PRODUCT BEING INNER PRODUCT GOES HERE****
****SPECIFIC EXAMPLE GOES HERE****
2.3. Example: P
n
. Here we will describe a type of inner product on P
n
which we will term a discrete inner
product on P
n
. Let {x
1
,...,x
n
} be distinct real numbers. If p(x) is a polynomial in P
n
, then it has degree at
most (n-1), and therefore has at most (n-1) roots. This means that p(x
i
)6= 0 for at least one i. We know
de?ne an inner product by:
hp(x),q(x)i =
n
X
i=1
p(x
i
)q(x
i
)
****PROOF OF THIS PRODUCT BEING INNER PRODUCT GOES HERE****
****SPECIFIC EXAMPLE GOES HERE****
Since every polynomial is continuous at every real number, we can use the next example of an inner product
as an inner product onP
n
. Each of these are a continuous inner product onP
n
.
2.4. Example: C[a,b]. An inner product on C[a,b] is given by:
hf(x),g(x)i =
Z
b
a
f(x)g(x)w(x)dx
where w(x) is some continuous, positive real-valued function on [a,b]. The standard inner product on C[a,b]
is where w(x) = 1 in the above de?nition.
****PROOF OF THIS PRODUCT BEING INNER PRODUCT GOES HERE****
****SPECIFIC EXAMPLE GOES HERE****
3. Subspaces, Orthogonal Complements and Projections
De?nition 3.0.1. Let U and V be subspaces of a vector space W such that U nV ={0}. The direct sum of
U and V is the set U?V ={u+v|u?U and v?V}.
De?nition 3.0.2. Let S be a subspace of the inner product space V. The the orthogonal complement of S
is the set S
?
={v?V |hv,si = 0 for all s?S}.
Theorem 3.0.3. (1) If U and V are subspaces of a vector space W with UnV ={0}, then U?V is also
a subspace of W.
(2) If S is a subspace of the inner product space V, then S
?
is also a subspace of V.
Proof: (1.) Notethat0+0 =0isinU?V. Nowsupposew
1
,w
2
?U?V, thenw
1
=u
1
+v
1
andw
2
=u
2
+v
2
with u
i
? U and v
i
? V and w
1
+w
2
= (u
1
+v
1
)+(u
2
+v
2
) = (u
1
+u
2
)+(v
1
+v
2
). Since U and V are
subspaces, itfollowsthatw
1
+w
2
?U?V. Supposenowthataisascalar, thenaw
1
=a(u
1
+v
1
) =au
1
+av
1
.
As above, it then follows that aw
1
?U?V. Thus U?V is a subspace for W.
For (2.), ?rst note that 0? S
?
. Now suppose that v
1
and v
2
? S
?
. Then hv
1
,si =hv
2
,si = 0 for all s? S.
So hv
1
+v
2
,si =hv
1
,si+hv
2
,si = 0+0 = 0 for all s? S. Thus v
1
+v
2
? S
?
. Similarly, if a is a scalar, then
hav
1
,si =ahv
1
,si =a·0 = 0 for all s?S. Thus S
?
is a subspace of V. 
Theorem 3.0.4. If U and V are subspaces of W with UnV ={0} and w?U?V, then w =u+v for unique
u?U and v?V.
Proof: Write w =u
1
+v
1
and w =u
2
+v
2
. Then u
1
+v
1
=u
2
+v
2
?u
1
-u
2
=v
2
-v
1
?u
1
-u
2
=0 =
v
2
-v
1
?u
1
=u
2
and v
2
=v
1
. 
Recall that one of the axioms of an inner product is that hx,xi = 0 with equality if and only if x = 0. An
immediate consequence of this is that SnS
?
= 0.
De?nition 3.0.5. Let S be a subspace of the inner product space V and let {x
1
,...,x
n
} be a basis for S such
that hx
i
,x
j
i = 0 if i6= j, then this basis is called an orthogonal basis. Furthermore, if hx
i
,x
i
i = 1 then this
basis is called an orthonormal basis.
De?nition 3.0.6. Let S be a ?nite dimensional subspace of the inner product space V and let {x
1
,...,x
n
} be
an orthogonal basis for S. If v is any vector in V then the orthogonal projection of v onto S is the vector:
p =
n
X
i=1
hv,x
i
i
hx
i
,x
i
i
x
i
Note that if{x
1
,...,x
n
} is an orthonormal basis, then we have the simpler expression:
p =
n
X
i=1
hv,x
i
ix
i
Also in the special case whereS is spanned be the single vectorx
1
, thenp is just the usual orthogonal projection
of v onto S, which is the line spanned by x
1
.
Now we can prove the main theorem of this section:
Theorem 3.0.7. Let S be a ?nite dimensional subspace of the inner product space V and v be some vector in
V. Moreover let{x
1
,...,x
n
} be an orthogonal basis for S and p be the orthogonal projection of v onto S. Then
(1) v-p?S
?
.
(2) V =S?S
?
.
(3) If y is any vector in S with y6=p, then ||v-p||<||v-y||
Note that part (3.) says that p is the vector in S which is closest to v. Moreover, an immediate consequence
of (2.) is that the orthogonal projection p of v onto S is independent of the choice of orthogonal basis for S.
Proof: (1.) We need to show that p and v-p are orthogonal. So consider hp,v-pi =hp,vi-hp,pi. Note
that hx
i
,x
j
i = 0 when i6=j, so that
hp,vi =
n
X
i=1
hc
i
x
i
,vi with c
i
=
hv,x
i
i
hx
i
,x
i
i
andhp,pi =
n
X
i=1
hc
i
x
i
,c
i
x
i
i?
hp,vi =
n
X
i=1
hv,x
i
i
hx
i
,x
i
i
hx
i
,vi andhp,pi =
n
X
i=1
hv,x
i
i
2
hx
i
,x
i
i
2
hx
i
,x
i
i
Read More
556 videos|198 docs

FAQs on Inner Product Spaces - Matrix Algebra, CSIR-NET Mathematical Sciences - Mathematics for IIT JAM, GATE, CSIR NET, UGC NET

1. What is an inner product space?
Ans. An inner product space is a vector space equipped with an inner product, which is a function that takes two vectors and returns a scalar. The inner product satisfies certain properties, such as linearity in one argument, conjugate symmetry, and positive definiteness. It allows us to define notions of length (norm) and angle between vectors.
2. How is matrix algebra related to inner product spaces?
Ans. Matrix algebra provides a convenient way to represent and manipulate vectors and linear transformations in inner product spaces. Matrices can be used to represent inner products, norms, orthogonal projections, and other operations in a concise and efficient manner. By applying matrix operations, we can perform computations and solve problems related to inner product spaces.
3. What are some important properties of inner products?
Ans. Inner products have several important properties. Some of these include linearity in one argument (additivity and homogeneity), conjugate symmetry, positive definiteness (the inner product of a vector with itself is always non-negative), and the Cauchy-Schwarz inequality (which bounds the absolute value of the inner product between two vectors).
4. How can inner product spaces be used in practical applications?
Ans. Inner product spaces have a wide range of applications in various fields. For example, in signal processing, inner products can be used to measure similarity between signals or to extract relevant information. In quantum mechanics, inner products play a fundamental role in computing probabilities and expectations. Inner product spaces are also used in image processing, data compression, optimization, and many other areas.
5. Can all vector spaces be considered as inner product spaces?
Ans. No, not all vector spaces can be considered as inner product spaces. To be an inner product space, a vector space must have an inner product defined on it that satisfies specific properties. These properties, such as conjugate symmetry and positive definiteness, may not be satisfied by all vector spaces. However, any finite-dimensional vector space can always be equipped with an inner product by defining it appropriately.
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