Vector Space
المؤلف:
Arfken, G
المصدر:
Mathematical Methods for Physicists, 3rd ed. Orlando, FL: Academic Press
الجزء والصفحة:
pp. 530-534
7-8-2021
2378
Vector Space
A vector space
is a set that is closed under finite vector addition and scalar multiplication. The basic example is
-dimensional Euclidean space
, where every element is represented by a list of
real numbers, scalars are real numbers, addition is componentwise, and scalar multiplication is multiplication on each term separately.
For a general vector space, the scalars are members of a field
, in which case
is called a vector space over
.
Euclidean
-space
is called a real vector space, and
is called a complex vector space.
In order for
to be a vector space, the following conditions must hold for all elements
and any scalars
:
1. Commutativity:
 |
(1)
|
2. Associativity of vector addition:
 |
(2)
|
3. Additive identity: For all
,
 |
(3)
|
4. Existence of additive inverse: For any
, there exists a
such that
 |
(4)
|
5. Associativity of scalar multiplication:
 |
(5)
|
6. Distributivity of scalar sums:
 |
(6)
|
7. Distributivity of vector sums:
 |
(7)
|
8. Scalar multiplication identity:
 |
(8)
|
Let
be a vector space of dimension
over the field of
elements (where
is necessarily a power of a prime number). Then the number of distinct nonsingular linear operators on
is
and the number of distinct
-dimensional subspaces of
is
where
is a q-Pochhammer symbol.
A consequence of the axiom of choice is that every vector space has a vector basis.
A module is abstractly similar to a vector space, but it uses a ring to define coefficients instead of the field used for vector spaces. Modules have coefficients in much more general algebraic objects.
REFERENCES:
Arfken, G. Mathematical Methods for Physicists, 3rd ed. Orlando, FL: Academic Press, pp. 530-534, 1985.
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