* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Download Example: Let be the set of all polynomials of degree n or less. (That
Eigenvalues and eigenvectors wikipedia , lookup
System of linear equations wikipedia , lookup
Singular-value decomposition wikipedia , lookup
Cross product wikipedia , lookup
Exterior algebra wikipedia , lookup
LaplaceโRungeโLenz vector wikipedia , lookup
Matrix calculus wikipedia , lookup
Euclidean vector wikipedia , lookup
Vector space wikipedia , lookup
Example:
Let ๐๐ be the set of all polynomials of
degree n or less. (That is
๐๐ = {๐0 + ๐1 ๐ฅ + ๐2
2
๐ฅ
+ โฏ+
Then ๐๐ is a vector space.
๐
๐๐ ๐ฅ |๐๐
โ โ} )
4.2 Subspaces
Definition 1
A subset ๐ of a vector space is called a subspace of ๐ if ๐
itself a vector space under the addition & scalar multiplication
defined on ๐. (pg. 340)
Theorem: Test for a subspaces
Wโ โ
๐ is a subspace iff
i. ๐ข, ๐ฃ โ ๐ค โ ๐ข + ๐ฃ โ ๐ค
ii. ๐ scalar, ๐ข โ ๐ค โ ๐๐ข โ ๐ค (pg. 341)
Examples
1. ๐ is a vector space.
Then W={0} is a subspace of ๐.
2. ๐ is the set of all (๐ฅ, ๐ฆ, ๐ง) such that
๐ฅ = 0.
3. ๐ is the set of all (๐ฅ, ๐ฆ, ๐ง) such that
๐ฅ + ๐ฆ + ๐ฅ = 0.
Building Subspaces
Theorem
(pg. 345)
If ๐ค1 , ๐ค2 , โฆ , ๐ค๐ are subspaces of a vector spaces ๐, then the
intersection of these subspaces is also a subspace of ๐.
Proof:
๐
๐=1 ๐ค๐
Let ๐ข , ๐ฃ โ
โ โ
(since 0 โ ๐ค๐ ๐๐๐ ๐๐๐โ ๐)
๐
๐=1 ๐ค๐
โ ๐ข, ๐ฃ โ ๐ค๐ for each i=1,..,r
โ ๐ข + ๐ฃ โ ๐ค๐ for each i=1,..,r
โ ๐ข+๐ฃ โ
Similarly k u โ
๐ค๐
wi (completing the proof)
Recall :
The vector ๐ค is called a linear
combination of the vectors
๐ฃ1 , ๐ฃ2 , โฆ , ๐ฃ๐ provided there exist
scalars ๐1 , ๐2 , . . . , ๐๐ such that
๐ค = ๐1 ๐ฃ1 +๐2 ๐ฃ2 + โฏ + ๐๐ ๐ฃ๐ .
Theorem :
If ๐ = {๐ค1 , ๐ค2 , . . . , ๐ค๐ } is a non-empty set of vectors
in a vector space ๐,
then the set ๐ of all linear combinations of the
vectors in ๐ is a subspace of ๐.
(Note: This ๐ is the space spanned by the vectors
๐ค1 , ๐ค2 , . . . , ๐ค๐ and write ๐ = ๐ ๐๐๐(๐ )
= ๐ ๐๐๐ { ๐ค1 , ๐ค2 , . . . , ๐ค๐ }
Proof : Refer pg. 347
Definition: Linear Independence
The vectors ๐ฃ1 , ๐ฃ2 , โฆ , ๐ฃ๐ in a vector space ๐ are
said to be linearly independent provided that the
equation :
๐1 ๐ฃ1 +๐2 ๐ฃ2 + โฏ + ๐๐ ๐ฃ๐ = 0
has only the trivial solution.
(ie. ๐1 ๐ฃ1 +๐2 ๐ฃ2 + โฏ + ๐๐ ๐ฃ๐ = 0
๐๐ =0.)
Example 1
๐
The standard unit vectors in โ
๐1 =(1,0,0,โฆ,0)
๐2 =(0,1,0,...,0)
โฎ
๐๐ =(0,0,0,โฆ,1)
are linearly independent.
Read: Example 2 (pg. 361)
Bases for vector spaces
Definition: Basis
If ๐ is any vector space and ๐ = {๐ฃ1 , ๐ฃ2 , โฆ , ๐ฃ๐ }
is a finite set of vectors in ๐, then ๐ is called a
basis for ๐ provided that
a) The vectors in ๐ are linearly independent, and
b)The vectors in ๐ ๐ ๐๐๐ ๐(ie.every vector is a linear
(pg. 378)
combination of the vectors in S).
Example 1:
๐1 =(1,0,0), ๐2 =(0,1,0) & ๐3 =(0,0,1)
3
unit vectors in โ forms a basis for
3
โ . (called the standard basis for โ3)
Read examples 3,4 on page 379
Note :
1. Any linearly independent ๐ vectors in
๐
โ
is a basis for
๐
โ .
2. Any set of more than ๐ vectors in
linearly dependent.
๐
โ
is
Note:
๐ = (๐1 , ๐2 , ๐3 ), ๐ = (๐1 , ๐2 , ๐3 )
๐1 ๐1 ๐1
iff ๐2 ๐2 ๐2 โ 0
๐3 ๐3 ๐3
and ๐
= (๐1 , ๐2 , ๐3 ) are linearly independent
Proof : ๐, ๐, ๐ are linearly independent
โบ ๐ผ๐ +๐ฝ๐ +๐พ๐ = 0 gives ๐ผ = ๐ฝ = ๐พ = 0
๐1
๐1
๐1
0
โบ ๐ผ ๐2 + ๐ฝ ๐2 + ๐พ ๐2 = 0 gives ๐ผ = ๐ฝ = ๐พ = 0
๐3
๐3
๐3
0
๐ผ
๐1 ๐1 ๐1
0
โบ ๐2 ๐2 ๐2 ๐ฝ = 0 has only the trivial solutions
๐พ
๐3 ๐3 ๐3
0
๐1
๐2
๐3
๐1
๐2
๐3
๐1
๐2 is invertible.
๐3
๐1
โบ ๐2
๐3
๐1
๐2
๐3
๐1
๐2 โ 0
๐3
โบ
Remark:
๐
Independent of ๐-vectors in โ
The ๐-vectors
๐
๐ฃ1 , ๐ฃ2 , โฆ , ๐ฃ๐ in โ are linearly
independent iff the ๐ × ๐ matrix
๐ด = [๐ฃ1 ๐ฃ2 โฆ ๐ฃ๐ ] with them as column
vectors has non-zero determinant.
Example 2:
2
๐ = 1, ๐ฅ, ๐ฅ , โฆ , ๐ฅ
๐
is a basis for the
vector space ๐๐ of polynomials of
degree ๐ or less.
(called as the standard basis)
Theorem: Uniqueness of basis representation
(pg. 382)
If {๐ฃ1 , ๐ฃ2 , โฆ , ๐ฃ๐ } is a basis for a vector space ๐,
then every vector ๐ฃ in ๐ can be expressed in the
form
๐ฃ = ๐1 ๐ฃ1 +๐2 ๐ฃ2 + โฏ + ๐๐ ๐ฃ๐
in exactly one way.
Dimension
(pg.391)
Note that for any vector space
with a finite basis, any two bases
for a vector space consist of the
same number of vectors.
A non-zero vector space ๐ is called finitedimensional provided that a basis of ๐ has
only finitely many vectors.
In this case dimension of ๐ is the number of
vectors in a basis. (written as ๐๐๐๐)
Read: Theorem 4.5.2 (page 391)
&
Theorem 4.5.4 (page 395)
Example 1 :
Dimensions of Some Familiar Vector Spaces
๐
dim โ = ๐
The standard basis has ๐ vectors.
dim ๐๐ = ๐ + 1 The standard basis has ๐ + 1 vectors.
dim ๐๐๐ = ๐๐ The standard basis has ๐๐ vectors.
Read Example 6 (Bases by Inspection)
(page 395)