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Chapter 6 Linear Transformations 6.1 Introductions to Linear Transformations • Function T that maps a vector space V into a vector space W: T : V mapping W , V ,W : vector space V: the domain of T W: the codomain of T 6-1 • Image of v under T: If v is in V and w is in W such that T ( v) w Then w is called the image of v under T . • the range of T: The set of all images of vectors in V. • the preimage of w: The set of all v in V such that T(v)=w. 6-2 • Notes: (1) A linear transformation is said to be operation preserving, because the same result occurs whether the operations of addition and scalar multiplication are performed before or after T. T (u v) T (u) T ( v) Addition in V Addition in W T (cu) cT (u) Scalar multiplication in V Scalar multiplication in W (2) A linear transformation T : V V from a vector space into itself is called a linear operator. 6-3 6-4 • Two simple linear transformations: Zero transformation: T ( v) 0, v V T :V W Identity transformation: T ( v) v, v V T :V V 6-5 6-6 6-7 6.2 The Kernel and Range a Linear Transformation 6-8 6-9 • Note: The kernel of T is sometimes called the nullspace of T. 6-10 T (x) Ax (a linear transformati on T : R n R m ) Ker (T ) NS ( A) x | Ax 0, x R m (subspace of R m ) • Range of a linear transformation T: Let T : V W be a L.T. Then the set of all vectors w in W that are images of vectors in V is called the range of T and is denoted by range(T ) range(T ) {T ( v) | v V } 6-11 • Notes: T : V W is a L.T. (1) Ker (T ) is subspace of V (2)range(T ) is subspace of W 6-12 • Note: Let T : R n R m be the L.T. given by T (x) Ax, then rank (T ) rank ( A) nullity (T ) nullity ( A) 6-13 6-14 • One-to-one: A function T : V W is called one - to - one if the preimage of every w in the range consists of a single vector. T is one - to - one iff for all u and v inV, T (u) T ( v) implies that u v. one-to-one not one-to-one • Onto: A function T : V W is said to be onto if every element in w has a preimage in V (T is onto W when W is equal to the range of T.) 6-15 6-16 6-17 6-18 6.3 Matrices for Liner Transformations • Two representations of the linear transformation T:R3→R3 : (1)T ( x1 , x2 , x3 ) (2 x1 x2 x3 , x1 3x2 2 x3 ,3x2 4 x3 ) 2 1 1 x1 (2)T (x) Ax 1 3 2 x2 0 3 4 x3 • Three reasons for matrix representation of a linear transformation: – It is simpler to write. – It is simpler to read. – It is more easily adapted for computer use. 6-19 6-20 • Notes: (1) The standard matrix for the zero transformation from Rn into Rm is the mn zero matrix. (2) The standard matrix for the identity transformation from Rn into Rn is the nn identity matrix In • Composition of T1:Rn→Rm with T2:Rm→Rp : T ( v) T2 (T1 ( v)), v R n T T2 T1 domain of T domain of T1 6-21 • Note: T1 T2 T2 T1 6-22 • Note: If the transformation T is invertible, then the inverse is unique and denoted by T–1 . 6-23 6-24 6-25 6.4 Transition Matrices and Similarty T :V V ( a L.T. ) B {v1 , v2 , , vn } ( a basis of V ), B' {w1 , w2 , , wn } (a basis of V ) A T (v1 )B , T (v2 )B ,, T (vn )B A' T (w1 )B ' , T ( w2 )B ' ,, T (wn )B ' P w1 B , w2 B ,, wn B P 1 v1 B ' , v2 B ' ,, vn B ' ( matrix of T relative to B) (matrix of T relative to B' ) ( transitio n matrix from B' to B ) ( transitio n matrix from B to B' ) v B Pv B ' , vB ' P 1vB T ( v)B AvB T ( v)B ' A' vB ' 6-26 • Two ways to get from vB ' to T ( v) : B' indirect (1)(direct ) A'[ v]B ' [T ( v)] B ' (2)(indirect) P 1 AP[ v]B ' [T ( v)]B ' A' P 1 AP direct 6-27 6-28 • Note: From the definition of similarity it follows that any tow matrices that represent the same linear transformation T : V V with respect to different based must be similar. 6-29 6.5 Applications of Linear Transformations 6-30 6-31 6-32 6-33 6-34