The Euclidean Space
Contents
4.7. The Euclidean Space#
This section consolidates major results for
the real Euclidean space
Definition 4.89 (
For any positive integer
An element
where each
Vector space operations on
When equipped with the standard inner product and standard norm (defined below),
Definition 4.90 (Standard basis)
An arbitrary vector
4.7.1. Inner Products#
Definition 4.91 (Standard inner product/ dot product)
The standard
inner product
(a.k.a. dot product) on
This makes
Remark 4.10
The dot product is always a real number. Hence we have symmetry:
It is a real inner product.
Definition 4.92 (
Let
4.7.2. Norms#
We use norms as a measure of strength of a signal or size of an error. Different norms signify different aspects of the signal.
Definition 4.93 (Euclidean norm)
The length of the vector (a.k.a. Euclidean norm
or
This makes
4.7.2.1. Angles#
Definition 4.94 (Angle)
The angle
4.7.2.2. Norms#
In addition to standard Euclidean norm, we define a family of norms indexed by
Definition 4.95 (
Let
We mention the special cases.
which is same as the standard Euclidean norm.
We need to justify that
Theorem 4.110 (Hölder’s inequality)
Let
We have:
where
Proof. If
Now, consider the case where
If
The same argument applies for the case of
We recall the
Hölder's inequality for real numbers.
For any
Let
We are now ready to prove that
Theorem 4.111 (
For any
Proof. [Positive definiteness]
By definition, if
[Positive homogeneity]
Let
For
[Triangle inequality]
Let
If
We are left with the case
By Hölder’s inequality:
Note that
Similarly:
Combining, we get:
Note that:
Thus, dividing both sides by
as desired.
4.7.2.3. Norm#
As we can see from definition,
So we have:
4.7.2.4. Norm#
From above definition, we have
4.7.2.5. Quasi-norms#
In some cases it is useful to extend the notion of
In such cases norm as defined in Definition 4.95 doesn’t satisfy triangle inequality. Hence it is not a proper norm function. We call such functions as quasi-norms.
4.7.2.6. “norm”#
Of specific mention is
Definition 4.96 (
where
Note that
Yet we can show that:
which justifies the notation.
Definition 4.97 (
The
4.7.2.7. Equivalence of Norms#
We first establish that
and norms are equivalent.We then establish that
and norms are equivalent.We recall the Heine-Borel theorem for Euclidean metric and show that closed and bounded sets of
are compact.We then take advantage of the fact that equivalent norms lead to same topologies (open, closed and compact sets) as well as bounded sets and show that closed and bounded sets of
are also compact.We are then in a position to demonstrate that all norms on
are indeed equivalent.
Theorem 4.112 (Equivalence of
The
Alternatively,
Proof. By Cauchy-Schwarz inequality
where
Also,
Thus,
Thus, the two norms are equivalent.
Theorem 4.113 (Equivalence of
The
Alternatively,
Proof. Let
Then,
.Thus,
.Taking the sum
.Taking the square root
.
For the other side, we note that
Thus,
Theorem 4.114 (Equivalence of
The
Proof. We proceed as follows:
By Theorem 4.112,
and norms are equivalent.By Theorem 4.113,
and norms are equivalent.By Theorem 4.58, equivalence of norms is an equivalence relation.
Hence, by transitivity,
and norms are equivalent.
Theorem 4.115 (Heine Borel theorem)
A subset of the normed linear space
Proof. The distance metric induced by
This result is follows directly from Theorem 3.84.
Theorem 4.116 (Closed and bounded sets under
A subset of the normed linear space
Proof. We just need to show that if a set is closed
and bounded in
The norms
and are equivalent (Theorem 4.114).Hence, the metrics induced by them are (strongly) equivalent (Theorem 4.59).
Thus, the open sets and closed sets in
and are identical.Hence, the compact sets in
and are identical (Theorem 3.90).Also the bounded sets in
and are identical due to Theorem 4.57.Now, let
be a closed and bounded set in .Then,
is closed and bounded in .But then by Heine Borel theorem,
is compact in .But then,
is compact in also.
Theorem 4.117 (Equivalence of norms on the Euclidean space)
Let
Proof. The
We shall show that any norm
In particular, if
Towards this end, let’s show that
any norm
We first show that there exists a constant
Let
be the standard basis for .Let
.Then, for any
, we have
We now show that there exists a constant
Define a function
asThen, for any
,Thus,
is Lipschitz continuous on the normed linear space .Therefore,
is continuous.Now, let
. is a closed set in since it is the boundary of the unit ball. is also bounded since for every .Then, by Theorem 4.116
is compact in .Hence, due to Theorem 3.85
attains a minimum value at some over the compact set .Let the minimum value of
over be say at some .Note that
by definition since .Thus,
Thus, for all
, we have .Now, for any nonzero
, the normalized vector, .But then
holds for every nonzero
.Also, the inequality
is satisfied trivially by .
We have shown that for
holds true for every
Thus, the two norms
4.7.3. Distances#
Definition 4.98 (Euclidean distance)
Distance between two vectors is defined as:
This distance function is known as Euclidean metric.
This makes
4.7.4. General Euclidean Space#
We can generalize the definition of a Euclidean space to a more abstract case.
Definition 4.99 (General Euclidean space)
A finite dimensional real vector space
The norm induced by the inner product is known as the Euclidean norm.
There are several properties emerging from this definition.
Let
be a Euclidean space.The field of scalars is
.Assume that
.The inner product is a real inner product.
is isomorphic to .If we choose a basis
for , then the coordinates for each vector form an element of .This forms a direct bijective mapping between
and . .The Euclidean norm makes it a normed linear space.
Recall from Theorem 4.65 that a finite dimensional normed linear space is complete.
Thus,
is a Banach space. is an inner product space which is complete.Hence
is also a Hilbert space. provides additional features like norms. Corresponding norms can be induced on by a coordinate mapping.
4.7.5. Complex Coordinate Space#
In this section we review important features of
Definition 4.100 (Complex coordinate space)
Let
An element
where each
Vector space operations on
We note that the basis is same as the basis for
An arbitrary vector
4.7.5.1. Sesquilinear Inner Product#
Definition 4.101 (Standard inner product)
Standard inner product on
where
This makes
4.7.5.2. Standard Norm#
Definition 4.102 (Norm)
The length of the vector (a.k.a.
This makes
4.7.5.3. Standard Distance#
Definition 4.103 (Distance)
The standard distance between two vectors is defined as:
This makes
4.7.5.4. Norms#
In addition to standard norm,
we define a family of norms indexed by
Definition 4.104
We can see that:
4.7.5.5. Norm#
From the general definition of
We use norms as a measure of strength of a signal or size of an error. Different norms signify different aspects of the signal.
4.7.5.6. Quasi-Norms#
In some cases it is useful to extend the notion of
In such cases norm as defined in (4.6) doesn’t satisfy triangle inequality, hence it is not a proper norm function. We call such functions as quasi-norms.
4.7.5.7. “norm”#
Of specific mention is
Definition 4.105
The
where
Note that
which justifies the notation.
4.7.6. over #
We next consider the real vector space of complex coordinates.
Definition 4.106 (Real vector space of complex coordinates)
For any positive integer
An element
where each
Vector space operations on
Theorem 4.118 (Standard basis and dimension)
The standard basis for
The dimension of
It is easy to see that
4.7.6.1. Bilinear Inner Product#
Definition 4.107 (Bilinear inner product)
The bilinear inner product on
This inner product satisfies all the requirements
of a real inner product (Definition 4.72)
as shown in Example 4.25.
This makes
4.7.6.2. Standard Norm#
Definition 4.108 (Norm on
The length of the vector (a.k.a.
This makes