Linear Transformations
Introduction to Linear Transformations
Finding Linear Transformations from Basis
Vectors
The Kernel and Range of a Linear
Transformation
4.1
Introduction to Linear Transformations
A function T that maps a vector space V into a vector space W:
mapping
T : V W, V ,W : vector spaces
V: the domain of T W: the codomain of T
Image of v under T :
If v is a vector in V and w is a vector in W such
that
T ( v ) w,
then w is called the image of v under T
(For each v, there is only one w)
The range of T :
The set of all images of vectors in V (see the figure
on the next slide)
4.2
The preimage of w :
The set of all v in V such that T(v)=w
(For each w, v may not be unique)
The graphical representations of the domain, codomain,
and range
For eg: as . Then Range
T =X-axis.
Also, observe that x=1
line maps to (1,0).
Therefore, preimage of
(1,0) is x=1 line
4.3
Linear Transformation :
V , W:vector spaces
T : V W:A linear transformation of V into W if the
following two properties are true
1. T (u v) T (u) T ( v), u, v V Homogeneity property
2. T (cu) cT (u), c R Additivity property
4.4
Ex 1: A function from R2 into R2
T : R 2 R 2 v (v1 , v2 ) R 2
T (v1 , v2 ) (v1 v2 , v1 2v2 )
(a) Find the image of v=(-1,2) (b) Find the preimage of
w=(-1,11)
Sol:
(a) v (1, 2)
T ( v) T (1, 2) ( 1 2, 1 2(2)) (3, 3)
(b) T ( v) w ( 1, 11)
T (v1 , v2 ) (v1 v2 , v1 2v2 ) (1, 11)
v1 v2 1
v1 2v2 11
v1 3, v2 4 Thus {(3, 4)} is the preimage of w=(-1, 11)
4.5
Ex 2: Verifying a linear transformation T from R2 into R2
T (v1 , v2 ) (v1 v2 , v1 2v2 )
Pf:
u (u1 , u2 ), v (v1 , v2 ) : vector in R 2 , c : any real number
(1) Vector addition :
u v (u1 , u2 ) (v1 , v2 ) (u1 v1 , u2 v2 )
T (u v) T (u1 v1 , u2 v2 )
((u1 v1 ) (u2 v2 ), (u1 v1 ) 2(u2 v2 ))
((u1 u2 ) (v1 v2 ), (u1 2u2 ) (v1 2v2 ))
(u1 u2 , u1 2u2 ) (v1 v2 , v1 2v2 )
T (u) T ( v)
4.6
(2) Scalar multiplication
cu c(u1 , u2 ) (cu1 , cu2 )
T (cu) T (cu1 , cu 2 ) (cu1 cu 2 , cu1 2cu 2 )
c(u1 u 2 , u1 2u 2 )
cT (u)
Therefore, T is a linear transformation
4.7
2 2
Let T : R isR a linear transformation defined by
2 0
T (u , v) (u, vthen
) (2u , v)
0 0
4.8
2 2
Let T : R isR a linear transformation defined by
0 0 1
T (u , v) then
(u , v) (u , v)
0 1/ 2 2
4.9
2 2
Let T : R R
is a linear transformation defined by
2 0
T (u , v) (u , v) , (then
2u ,2v)
0 2
4.10
2 2
Let T : R isRa linear transformation defined by
0 0
T (u , v) ,(uthen
, v) (u ,v)
0 1
4.11
Zero transformation :
T :V W T ( v) 0, v V
Identity transformation :
T :V V T ( v) v, v V
Theorem 6.1: Properties of linear transformations
T : V W , u, v V
(1)T (0) 0 (T(cv) = cT(v) for c=0)
(2) T ( v) T ( v) (T(cv) = cT(v) for c=-1)
(3) T (u v) T (u) T ( v) (T(u+(-v))=T(u)+T(-v) and property (2))
(4) If v c1v1 c2 v2 cn vn ,
then T ( v) T (c1v1 c2 v2 cn vn )
c1T (v1 ) c2T (v2 ) cnT (vn )
(Iteratively using T(u+v)=T(u)+T(v) and T(cv) = cT(v)) 4.12
Ex 4: Linear transformations and bases
Let T : R 3 R 3 be a linear transformation such
that T (1,0,0) (2,1,4)
T (0,1,0) (1,5,2)
T (0,0,1) (0,3,1)
Find T(2, 3, -2)
Sol:
(2,3,2) 2(1,0,0) 3(0,1,0) 2(0,0,1)
T (2,3,2) 2T (1,0,0) 3T (0,1,0) 2T (0,0,1)
2(2,1,4) 3(1,5,2) 2T (0,3,1)
(7,7,0)
4.13
Ex 5: A linear transformation defined by a matrix
3 0
2 3 v1
The functionT : R R is defined as T ( v) Av 2 1
v 2
1 2
(a) Find T ( v), where v (2, 1)
(b) Show that T is a linear transformation form R 2 into R3
Sol:
(a) v (2, 1) R 2 vector R 3 vector
3 0 6
2
T ( v ) Av 2 1 3
1
1 2 0
T (2,1) (6,3,0)
(b) T (u v) A(u v) Au Av T (u) T ( v) (vector addition)
T (cu) A(cu) c( Au) cT (u) (scalar
multiplication)
4.14
Theorem 6.2: The linear transformation defined by a
matrix
Let A be an mn matrix. The function T defined by
T ( v) Av
is a linear transformation from Rn into Rm
Note: R n vector R m vector
a11 a12 a1n v1 a11v1 a12v2 a1n vn
a21 a22 a2 n v2 a21v1 a22v2 a2 n vn
Av
am1 am 2 amn vn am1v1 am 2v2 amnvn
T ( v) Av T : Rn
R m
4.15
Ex 7: Rotation in the plane
Show that the L.T. T : R 2 R 2 given by the
matrix
cos sin
A
sin cos
has the property that it rotates every vector in R2
counterclockwise about the origin through the angle
Sol:
(Polar coordinates: for every point on the xy-
v ( x, y ) (r cos , r sin ) plane, it can be represented by a set of (r, α))
2 2 T(v
r : the length of v x y
)
( ) v
: the angle from the positive
x-axis counterclockwise to
4.16
cos sin x cos sin r cos
T ( v ) Av
sin cos y sin cos r sin
r cos cos r sin sin
r sin cos r cos sin according to the addition
formula of trigonometric
r cos( ) identities
r sin( )
r : remain the same, that means the length of T(v) equals
the
length of v
+ : the angle from the positive x-axis counterclockwise to
Thus,the vector
T(v) is theT(v)
vector that results from rotating the vector v
counterclockwise through the angle
4.17
Ex 8: A projection in R3
The linear transformation T : R 3 R 3 is given by
1 0 0
A 0 1 0
0 0 0
is called a projection in R3
1 0 0 x x
If v is ( x, y, z ), Av 0 1 0 y y
0 0 0 z 0
※ In other words, T maps every vector in R3
to its orthogonal projection in the xy-
plane, as shown in the right figure 4.18
Ex 9: The transpose function is a linear transformation from
Mmn into Mn m
T ( A) AT (T : M mn M nm )
Show that T is a linear transformation
Sol:
A, B M mn
T ( A B) ( A B)T AT BT T ( A) T ( B)
T (cA) (cA)T cAT cT ( A)
Therefore, T (the transpose function) is a linear
transformation from Mmn into Mnm
4.19
Example: Dilation and Contraction Operators
If V is a vector space and k is any scalar, then the
mapping T : V V given by T ( v ) kv, v V is a linear
operator on V.
If 0 k 1 , then T is called the contraction of V with
factor k.
If k ,it1 is called the dilation of V with factor k.
4.20
A Linear Transformation from Pn to Pn + 1
T ( p( x)) x. p( x)
n 1 n
T ( p( x)) a0 a1 x ... an1 x 0x
A Linear Transformation Using an Inner Product
T (v) v, v0
A Linear Transformation on Matrix Spaces
T
T ( A) A
T ( A) det( A)
4.21
Ex 3: Functions that are not linear transformations
(a) f ( x) sin x
sin( x1 x2 ) sin( x1 ) sin( x2 )
(f(x) = sin x is not a linear
sin( 2 3 ) sin( 2 ) sin( 3 ) transformation)
(b) f ( x) x 2
( x1 x2 ) 2 x12 x22
(f(x) = x2 is not a linear transformation)
(1 2) 2 12 22
(c) f ( x) x 1
f ( x1 x2 ) x1 x2 1
f ( x1 ) f ( x2 ) ( x1 1) ( x2 1) x1 x2 2
f ( x1 x2 ) f ( x1 ) f ( x2 ) (f(x) = x+1 is not a linear transformation,
although it is a linear function)
In fact, f (cx) cf ( x) 4.22
The Kernel of a Linear Transformation
Kernel of a linear transformation T:
Let T : V W be a linear transformation. Then
the set of all vectors v in V that satisfy T ( v) 0 is
called the kernel of T and is denoted by ker(T)
ker(T ) {v | T ( v) 0, v V }
※ For example, V is R3, W is R3, and T is the orthogonal projection
of any vector (x, y, z) onto the xy-plane, i.e. T(x, y, z) = (x, y, 0)
※ Then the kernel of T is the set consisting of (0, 0, s), where s is a
real number, i.e.
ker(T ) {(0, 0, s ) | s is a real number}
4.23
The Range of a Linear Transformation
Range of a linear transformation T:
Let T : V W be a linear transformation. Then
the set of all vectors v in W that satisfy T (u ) v is
called the range of T and is denoted by Range (T)
Range (T ) {T (u ), : u V }
※ For example, V is R3, W is R3, and T is the orthogonal projection
of any vector (x, y, z) onto the xy-plane, i.e. T(x, y, z) = (x, y, 0)
※ Then the range of T is xy plane
4.24
Ex 1: Finding the kernel of a linear transformation
T
T
(
A
)
A(T
:M
3
2M
)
2
3
Sol:
0 0
ker(T ) 0 0
0 0
Ex 2: The kernel of the zero and identity
transformations T :V W
(a) If T(v) = 0 (the zero transformation), then ker(T ) V
(b) If T(v) = v (the identity transformation T : V V ,
then ker(T ) {0}
4.25
Ex 5: Finding the kernel of a linear transformation
x1
1 1 2 3 2
T ( x ) Ax x2 (T : R R )
1 2 3 x
3
ker(T ) ?
Sol:
ker(T ) {( x1 , x2 , x3 ) | T ( x1 , x2 , x3 ) (0, 0), and ( x1 , x2 , x3 ) R 3}
T ( x1 , x2 , x3 ) (0,0)
x1
1 1 2 0
1 2 x2
3 0
x3
4.26
By Gauss Jordan elimination
1 1 2 0 G.-J. E. 1 0 1 0
1 2 3 0 0 1 1 0
x1 t 1
x2 t t 1
x3 t 1
ker(T ) {t (1,1,1) | t is a real number}
span{(1,1,1)}
4.27
Theorem: The kernel is a subspace of V
The kernel of a linear transformation T : V W
is a subspace of the domain V
Pf:
T (0) 0 (by Theorem 6.1) ker(T ) is a nonempty subset of V
Let u and v be vectorsin the kernel of T . Then
T (u v) T (u) T ( v) 0 0 0 (u ker(T ), v ker(T ) u v ker(T ))
T is a linear transformation
T (cu) cT (u) c0 0 (u ker(T ) cu ker(T ))
Thus, ker(T ) is a subspace of V (according to Theorem 4.5
that a nonempty subset of V is a subspace of V if it is closed
under vector addition and scalar multiplication)
4.28
Ex 6: Finding a basis for the kernel
Let T : R 5 R 4 be defined by T (x) Ax, where x is in R 5 and
1 2 0
1 1
2 1 3 1 0
A
1 0 2 0 1
0 0 0 2 8
Find a basis for ker(T) as a subspace of R5
Sol:
To find ker(T) means to find all x satisfying T(x) = Ax = 0.
Thus we need to form the augmented matrix A 0 first
4.29
A 0
1 2 0
1 1 0 1 0 2 0 1 0
2 1 1 0 0 G.-J. E. 0
3 1 1 0 2 0
1 0 2 0 1 0 0 0 0 1 4 0
0 0 0 2 8 0 0 0 0 0 0 0
s t
x1 2 s t 2 1
x s 2t 1 2
2
x x3 s s 1 t 0
x
4 4t 0 4
x5 t 0 1
B (2, 1, 1, 0, 0), (1, 2, 0, 4, 1): one basis for the kernel of T
4.30
Corollary:
Let T : R n R m be the linear fransformation given by T ( x) Ax.
Then the kernel of T is equal to the solution space of Ax 0
T (x) Ax (a linear transformation T : R n R m )
ker(T ) NS ( A) x | Ax 0, x R n (subspace of R n )
※ The kernel of T equals the nullspace of A and these
two are both subspaces of Rn.
※ So, the kernel of T is sometimes called the nullspace
of T
4.31
Range of a linear transformation T:
Let T : V W be a linear tra nsformatio n. Then the set of all
vectors w in W that are images of any vector s in V is called the
range of T and is denoted by range (T )
range(T ) {T ( v ) | v V }
4.32
Theorem: The range of T is a subspace of W
The range of a linear tra nsformatio n T : V W is a subspace of W
Pf:
T (0) 0 (Theorem 6.1)
range(T ) is a nonempty subset of W
Since T (u ) and T ( v ) are vectors in range(T ), and we have
because u v V
Range of T is closed under vector addition
T (u) T ( v ) T (u v) range(T )
because T (u), T ( v), T (u v) range(T )
T is a linear transformation
cT (u) T (cu) range(T ) Range of T is closed under scalar multi-
plication because T (u) and T (cu) range(T )
because cu V
Hence T(V) is subspace of W.
4.33
Notes:
T : V W is a linear transformation
(1) ker(T ) is subspace of V
(2) range(T ) is subspace of W
4.34
Thank
You
4.35