Line 1: Line 1:
 
  '''Inner Products and Orthogonality'''
 
  '''Inner Products and Orthogonality'''
  
Primarily, it is necessary to begin with the basic definitions of Inner Products and Orthogonality. An inner product is defined by Bernard Kolman in his Elementary Linear Algebra book as being "a function V that assigns to each ordered pair of vectors u,v in V a real number (u,v) satisfying the following properties." There are four properties taken from Elementary Linear Algebra book that inner products must follow:
+
Primarily, it is necessary to begin with the basic definitions of Inner Products and Orthogonality. An inner product is defined by Bernard Kolman in his Elementary Linear Algebra book as being "a function V that assigns to each ordered pair of vectors u,v in V a real number (u,v) satisfying the following properties." The symbolism for an inner product consists of two vectors separated by a common and imposed by two parentheses. The inner product is as follows: (u,v).
 +
 
 +
There are four properties taken from Elementary Linear Algebra book that inner products must follow:
  
 
''1) (u,u) is greater than or equal to 0 ((u,u)=0 if u equals the zero vector)''
 
''1) (u,u) is greater than or equal to 0 ((u,u)=0 if u equals the zero vector)''
Line 15: Line 17:
 
The inner product is useful in computing various other items in mathematics as well. By knowing the inner product, one can then in turn figure out the angle between two vectors. This simple equation for determining the angle, theta, is given by:
 
The inner product is useful in computing various other items in mathematics as well. By knowing the inner product, one can then in turn figure out the angle between two vectors. This simple equation for determining the angle, theta, is given by:
  
cos(theta)= (u,v)
+
cos(θ)=
            ----
+
              (u,v)
        ||u|| ||v||
+
              ----
 +
          ||u|| ||v||
 +
where the denominator consists of the product of the lengths of vectors u and v.
  
  

Revision as of 16:53, 7 December 2011

Inner Products and Orthogonality

Primarily, it is necessary to begin with the basic definitions of Inner Products and Orthogonality. An inner product is defined by Bernard Kolman in his Elementary Linear Algebra book as being "a function V that assigns to each ordered pair of vectors u,v in V a real number (u,v) satisfying the following properties." The symbolism for an inner product consists of two vectors separated by a common and imposed by two parentheses. The inner product is as follows: (u,v).

There are four properties taken from Elementary Linear Algebra book that inner products must follow:

1) (u,u) is greater than or equal to 0 ((u,u)=0 if u equals the zero vector)

2) (v,u)=(u,v) for an u,v in V

3) (u+v,w)=(u,w)+(v,w) for an u,v,w in V

4) (cu,v)=c(u,v) for u, v in V and c a real scalar

The inner product also lies in a vector space that can be represented by V. This is called an inner product space. An inner product space is defined simply as a [1] vector space that contains a inner product. As a side note, if the vector space is to the nth power it is refered to as an [2] Euclidean space which is a finite space as well.

The inner product is useful in computing various other items in mathematics as well. By knowing the inner product, one can then in turn figure out the angle between two vectors. This simple equation for determining the angle, theta, is given by:

cos(θ)=

             (u,v)
              ----
          ||u|| ||v||

where the denominator consists of the product of the lengths of vectors u and v.


  • It may also be helpful to look at other explanations of inner products. These links will bring you to other people explaining inner products:

[3] The standard inner product

[4] More on inner products

Simply, as follows in the book is a definition for Orthogonality. "Two vectors u and v in V are orthogonal if (u,v)=0." This is to say that given one vector crossed with another vector is equal to zero, then they are orthogonal.

For example using variables:

u=[a;b] v=[c;d]

(u,v)=(u x v) = ac + bd = 0 => orthogonal vectors

For example using numbers:

u=[1;0] v=[0;1]

(u,v)=(u x v) = 1(0) + 0(1) = 0 => orthogonal vectors



Back to MA265 Fall 2011 Prof. Walther

Alumni Liaison

Ph.D. 2007, working on developing cool imaging technologies for digital cameras, camera phones, and video surveillance cameras.

Buyue Zhang