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Chapter 2A Matrices 2A.1 Definition, and Operations of Matrices: 1 Sums and Scalar Products; 2 Matrix Multiplication 2A.2 Properties of Matrix Operations; Mechanics of Matrix Multiplication 2A.3 The Inverse of a Matrix 2A.4 Elementary Matrices 2-1 2A.1 Operations with Matrices Matrix: a11 a12 a13 L a 21 a22 a 23 L A [aij ] a31 a32 a33 L M M M am1 am 2 am 3 L (i, j)-th entry: a ij row: m column: n size: m×n 2-2 a1n a2 n a3 n M m n M amn mn i-th row vector ri ai 1 ai 2 L j-th column vector c1 j c2 j cj M cmj row matrix ain column matrix Square matrix: m = n 2-3 Diagonal matrix: d1 0 A diag(d1 , d 2 ,L , d n ) M 0 0 K d2 L M O 0 L Trace: If A [aij ]nn Then Tr ( A) a11 a22 L ann 2-4 0 0 M nn M dn Ex: 1 2 3 r1 A 4 5 6 r2 r1 1 2 3, r2 4 5 6 1 2 3 A c1 c2 4 5 6 c3 1 2 3 c1 , c2 , c3 4 5 6 2-5 Equal matrix: Let A [aij ]mn , B [bij ]mn A B if and only if aij bij 1 i m , 1 j n Ex 1: (Equal matrix) 1 2 A 3 4 a b B c d If A B Then a 1, b 2, c 3, d 4 2-6 Matrix addition: If A [aij ]mn , B [bij ]mn Then A B [aij ]mn [bij ]mn [aij bij ]mn Scalar multiplication: If A [aij ]mn , c : scalar Then cA [caij ]mn 2-7 Matrix subtraction: A B A (1) B Example: Matrix addition 1 2 1 3 1 1 2 3 0 5 0 1 1 2 0 1 1 2 1 3 1 1 3 3 2 2 1 1 0 3 3 0 2 2 0 2-8 Matrix multiplication: The i, j entry of the matrix product is the dot product of row i of the left matrix with column j of the right one. 2-9 Matrix multiplication: a11 a12 L M M ai 1 ai 2 L M M an1 an 2 L a1n M ain M ann b11 b21 M bn1 L b1 j L M b2 j L M M L bnj L b1n b2 n ci 1 ci 2 L M bnn Notes: (1) A+B = B+A, (2) AB BA 2 - 10 cij L cin Matrix form of a system of linear equations: a11 x1 a12 x2 L a1n xn b1 a x a x L a x b 21 1 22 2 2n n 2 M am1 x1 am 2 x2 L amn xn bm m linear equations a11 a12 L a1n x1 b1 a x b a L a 22 2n 2 21 2 M M M M M M am1 am 2 L amn xn bm = = = A x b 2 - 11 Single matrix equation Axb m n n1 m 1 Partitioned matrices: a11 A a21 a31 a12 a22 a32 a13 a23 a33 a14 A11 a24 A21 a34 a11 A a21 a31 a12 a22 a32 a13 a23 a33 a14 r1 a24 r2 a34 r3 a11 A a21 a31 a12 a22 a32 a13 a23 a33 a14 a24 c1 c2 a34 2 - 12 submatrix A12 A22 c3 c4 a linear combination of the column vectors of matrix A: a11 a12 L a1n a a L a 22 2n A 21 c1 M M M M a a L a m2 mn m1 c2 L x1 x x 2 M xn cn a11 x1 a12 x2 L a1n xn a11 a21 a1n a x a x L a x a a a 22 2 2n n Ax 21 1 x1 21 x2 22 L xn 2 n M M M M a x a x L a x a a m2 2 mn n m1 m1 1 m1 m2 amn = c2 = = c1 cn linear combination of column vectors of A 2 - 13 Keywords in Section 2.1: row vector: 列向量 column vector: 行向量 diagonal matrix: 對角矩陣 trace: 跡數 equality of matrices: 相等矩陣 matrix addition: 矩陣相加 scalar multiplication: 純量積 matrix multiplication: 矩陣相乘 partitioned matrix: 分割矩陣 2 - 14 2A.2 Properties of Matrix Operations Three basic matrix operators: (1) matrix addition (2) scalar multiplication (3) matrix multiplication Zero matrix: Identity matrix of order n: 0 mn In 2 - 15 Properties of matrix addition and scalar multiplication: If A, B, C M mn , c, d : scalar Then (1) A+B = B + A Commutative law for addition (2) A + ( B + C ) = ( A + B ) + C Associative law for addition (3) ( cd ) A = c ( dA ) Associative law for scalar multiplication (4) 1A = A Unit element for scalar multiplication (5) c( A+B ) = cA + cB Distributive law 1 for scalar multiplication (6) ( c+d ) A = cA + dA Distributive law 2 for scalar multiplication 2 - 16 Properties of zero matrices: If A M mn , c : scalar Then (1) A 0mn A (2) A ( A) 0mn (3) cA 0mn c 0 or A 0mn Notes: (1) 0m×n: the additive identity for the set of all m×n matrices (2) –A: the additive inverse of A 2 - 17 Properties of matrix multiplication: Properties of the identity matrix: If A M mn Then (1) AI n A (2) I m A A 2 - 18 Transpose of a matrix: Properties of transposes: a11 a12 L a1n a a L a 22 2n If A 21 M m n M M M M am1 am 2 L amn a11 a21 L am1 a a L a 22 m2 Then AT 12 M nm M M M M a1n a2 n L amn 2 - 19 (1) ( AT )T A (2) ( A B)T AT BT (3) (cA)T c( AT ) (4) ( AB)T BT AT Symmetric matrix: A square matrix A is symmetric if A = AT Skew-symmetric matrix: A square matrix A is skew-symmetric if AT = –A Ex: 1 2 3 If A a 4 5 is symmetric, find a, b, c? b c 6 Sol: 1 2 3 1 a b T A A A a 4 5 AT 2 4 c a 2, b 3, c 5 b c 6 3 5 6 2 - 20 Ex: 0 1 2 If A a 0 3 is a skew-symmetric, find a, b, c? b c 0 Sol: 0 a b 0 1 2 A a 0 3 AT 1 0 c b c 0 2 3 0 A AT a 1, b 2, c 3 Note: AAT is symmetric Pf: ( AAT )T ( AT )T AT AAT AAT is symmetric 2 - 21 Real number: ab = ba (Commutative law for multiplication) Matrix: ABB A m n n p Three situations of the non-commutativity may occur : (1) If m p , then AB is defined ,BA is undefined. (2) If m p, m n, then AB M mm, BA M nn (Sizes are not the same) (3) If m p n, then AB M mm, BA M mm (Sizes are the same, but matrices are not equal) 2 - 22 Example (Case 3): Show that AB and BA are not equal for the matrices. 2 1 1 3 B A and 0 2 2 1 Sol: 5 1 3 2 1 2 AB 2 1 0 2 4 4 7 2 1 1 3 0 BA 0 2 2 1 4 2 2 - 23 Real number: ac bc, c 0 (Cancellation law) a b Matrix: AC BC C0 (1) If C is invertible (i.e., C-1 exists), then A = B (2) If C is not invertible, then A B (Cancellation is not valid) 2 - 24 Example: An example in which cancellation is not valid Show that AC=BC 1 3 2 4 1 2 A , B , C 0 1 2 3 1 2 Sol: 1 AC 0 2 BC 2 3 1 2 2 4 1 1 2 1 2 4 1 2 2 4 3 1 2 1 2 So AC BC But A B 2 - 25 C is noninvertible, (i.e., row 1 and row 2 are not independent) Keywords in Section 2.2: zero matrix: 零矩陣 identity matrix: 單位矩陣 transpose matrix: 轉置矩陣 symmetric matrix: 對稱矩陣 skew-symmetric matrix: 反對稱矩陣 2 - 26 2A.3 The Inverse of a Matrix Inverse matrix: Consider A M nn If there exists a matrix B M nn such that AB BA I n , Then (1) A is invertible (or nonsingular) (2) B is the inverse of A Note: A matrix that does not have an inverse is called noninvertible (or singular). 2 - 27 Theorem: The inverse of a matrix is unique If B and C are both inverses of the matrix A, then B = C. Pf: AB I C ( AB) CI (CA) B C IB C BC Consequently, the inverse of a matrix is unique. Notes: (1) The inverse of A is denoted by A1 (2) AA1 A1 A I 2 - 28 Find the inverse of a matrix A by Gauss-Jordan Elimination: A -Jordan Eliminatio n | I Gauss I | A1 Example: Find the inverse of the matrix 4 1 A 1 3 Sol: AX I 4 x11 1 1 3 x 21 x11 4 x21 x 3 x 11 21 x12 1 0 x22 0 1 x12 4 x22 1 0 x12 3x22 0 1 2 - 29 x11 4 x21 1 x11 3 x21 0 (1) x12 4 x22 0 x12 3 x22 1 (2) 1 4 M 1 1 2 ; 4 2 1 1 0 M 3 x11 3, x21 1 (1) 1 3 M 0 0 1 M 1 1 4 M 0 1 2 ; 4 2 1 1 0 M 4 x12 4, x22 1 (2) 1 3 M 1 0 1 M 1 Thus 3 4 X A 1 1 1 2 - 30 Note: 1 4 M1 1 3 M 0 A I 0 Gauss JordanElimination 1 0 M 3 4 1 2 ; 4 2 1 1 0 1 M 1 1 I A 1 If A can’t be row reduced to I, then A is singular. 2 - 31 Example: Find the inverse of the following matrix 1 1 0 A 1 0 1 6 2 3 Sol: A M I 1 1 0 M 1 0 0 1 0 1 M 0 1 0 6 2 3 M 0 0 1 1 1 0 M 1 0 0 1 1 0 M 1 0 0 1 2 0 6 1 3 0 1 1 M 1 1 0 1 1 M 1 1 0 6 2 3 M 0 0 1 0 4 3 M 6 0 1 1 1 0 M 1 0 0 1 1 0 M 1 0 0 3 4 2 3 0 0 1 1 M 1 1 0 1 1 M 1 1 0 0 0 0 0 1 M 2 4 1 1 M 2 4 1 2 - 32 1 1 0 M 1 0 0 3 2 2 1 0 1 0 M 3 3 1 0 0 1 M 2 4 1 [ I M A1 ] 1 0 0 M 2 3 1 0 1 0 M 3 3 1 0 0 1 M 1 4 1 So the matrix A is invertible, and its inverse is 2 3 1 A1 3 3 1 1 4 1 You can check: AA1 A1 A I 2 - 33 Power of a square matrix: (1) A0 I (2) Ak 144 AA 42L444A3 (k 0) k factors (3) Ar As Ar s r , s : integers ( Ar )s Ars d1 0 (4) D M 0 0 L d2 L M O 0 L 0 d1k 0 L k 0 0 d L k 2 D M M M dn 0 0 L 2 - 34 0 0 M k d n Theorem: Properties of inverse matrices If A is an invertible matrix, k is a positive integer, and c is a scalar, then (1) A1 is invertible and ( A1 )1 A (2) Ak is invertible and 1 1 1 k k ( Ak )1 A1*k 14444 A1 A42 L A ( A ) A 444443 k factors 1 1 (3) cA is invertible and (cA) A , c 0 c 1 (4) AT is invertible and ( AT )1 ( A1 )T 2 - 35 Theorem: The inverse of a product If A and B are invertible matrices of size n, then AB is invertible and ( AB) 1 B 1 A1 Pf: ( AB)( B 1 A1 ) A( BB 1 ) A1 A( I ) A1 ( AI ) A1 AA1 I ( B 1 A1 )( AB) B 1 ( A1 A) B B 1 ( I ) B B 1 ( IB) B 1B I If AB is invertible, then its inverse is unique. So ( AB) 1 B 1 A1 Note: A1 A2 A3 L An An1 L A31 A21 A11 1 2 - 36 Theorem: Cancellation properties If C is an invertible matrix, then the following properties hold: (1) If AC=BC, then A=B (Right cancellation property) (2) If CA=CB, then A=B (Left cancellation property) Pf: AC BC ( AC )C 1 ( BC )C 1 (C is invertible, so C-1 exists) A(CC 1 ) B(CC 1 ) AI BI AB Note: If C is not invertible, then cancellation is not valid. 2 - 37 Theorem: Systems of linear equations with unique solutions If A is an invertible matrix, then the system of linear equations Ax = b has a unique solution given by x A1b Pf: Ax b A1 Ax A1b ( A is nonsingular) Ix A1b x A1b If x1 and x2 were two solutions of equation Ax b. then Ax1 b Ax2 x1 x2 This solution is unique. 2 - 38 (Left cancellation property) Keywords in Section 2.3: inverse matrix: 反矩陣 invertible: 可逆 nonsingular: 非奇異 singular: 奇異 power: 冪次 2 - 39 2A.4 Elementary Matrices Row elementary matrix: An nn matrix is called an elementary matrix if it can be obtained from the identity matrix I by a single elementary row operation. Note: Only do a single elementary row operation. 2 - 40 Ex: (Elementary matrices and nonelementary matrices) 1 0 0 (a) 0 3 0 0 0 1 Yes (32 (I 3 )) 1 0 0 (d ) 0 0 1 0 1 0 (b) 1 0 0 0 1 0 1 0 0 (c) 0 1 0 0 0 0 No (not square) No (Row multiplica tion must be by a nonzero constan t) (e) 1 0 2 1 1 0 0 ( f ) 0 2 0 0 0 1 Yes ([ 2 3 ](I 3 )) Yes ([21 2 ](I 2 )) 2 - 41 No (Use two elementary row operations) Theorem: Representing elementary row operations Let E be the elementary matrix obtained by performing an elementary row operation on Im. If that same elementary row operation is performed on an mn matrix A, then the resulting matrix is given by the product EA. (I ) E ( A) EA Notes: (1) ij ( A) Pij A (2) k i ( A) M i ( k ) A (3) [k i j ]( A) C ij ( k ) A 2 - 42 Example: Using elementary matrices Find a sequence of elementary matrices that can be used to write the matrix A in row-echelon form. 1 3 5 0 A 1 3 0 2 2 6 2 0 Sol: 0 1 0 E1 12 ( I 3 ) 1 0 0 0 0 1 1 0 0 E2 [2 1 3 ]( I 3 ) 0 1 0 2 0 1 1 0 0 1 E3 [ 3 ]( I 3 ) 0 1 0 2 0 0 12 2 - 43 0 1 0 0 1 3 5 1 3 0 2 A1 12 ( A) E1 A 1 0 0 1 3 0 2 0 1 3 5 0 0 1 2 6 2 0 2 6 2 0 1 0 0 1 A2 [2 1 3 ]( A1 ) E2 A1 0 1 0 0 2 0 1 2 1 0 0 1 3 1 A3 [ 3 ]( A2 ) E3 A2 0 1 0 0 1 2 1 0 0 0 0 2 B E3 E2 E1 A 3 0 2 1 3 0 2 1 3 5 0 1 3 5 6 2 0 0 0 2 4 0 2 1 3 0 2 3 5 0 1 3 5 B 2 4 0 0 1 2 row-echelon form 1 or B [ 3 ][2 1 3 ]12 ( A) 2 2 - 44 Row-equivalent: Matrix B is row-equivalent to A if there exists a finite number of elementary matrices such that B Ek Ek 1 L E2 E1 A 2 - 45 Theorem: Elementary matrices are invertible If E is an elementary matrix, then E 1 exists and is an elementary matrix. Notes: (1) (Pij )1 Pij 1 (2) [M i ( k )] M i ( ) k (3) [Cij (k )]1 Cij (k ) 1 2 - 46 Ex: Elementary Matrix 0 1 0 E1 ( 12 ) 1 0 0 P12 0 0 1 Inverse Matrix 0 1 0 ( P12 )1 E11 1 0 0 P12 0 0 1 1 0 0 1 0 0 1 1 E2 ( 2 1 3 ) 0 1 0 C13 ( 2) [C13 ( 2)] E2 0 1 0 2 0 1 C13 (2) 2 0 1 1 0 0 1 1 E3 ( 3 ) 0 1 0 M 3 ( ) 2 2 0 0 12 1 1 [ M 3 ( )] E31 2 2 - 47 1 0 0 0 1 0 M 3 (2) 0 0 2 Theorem: A property of invertible matrices A square matrix A is invertible if and only if it can be written as the product of elementary matrices. Pf: (1) Assume that A is the product of elementary matrices. (a) Every elementary matrix is invertible. (b) The product of invertible matrices is invertible. Thus A is invertible. (2) If A is invertible, Ax 0 has only the trivial solution. AM 0 I M 0 Ek L E3 E2 E1 A I A E11 E21 E31 L Ek1 Thus A can be written as the product of elementary matrices. 2 - 48 Ex: Find a sequence of elementary matrices whose product is 1 2 A 3 8 Sol: 1 2 1 1 2 3 1 2 1 2 A 3 8 3 8 0 2 1 1 2 [ 2 2 1 ] 1 0 2 2 I 0 1 0 1 1 Therefore C21 ( 2) M 2 ( )C12 ( 3) M1 ( 1) A I 2 2 - 49 1 1 Thus A [ M1 (1)] [C12 ( 3)] [ M 2 ( )] [C21 ( 2)]1 2 1 1 M1 ( 1)C12 (3) M 2 (2)C21 (2) 1 0 1 0 1 0 1 2 3 1 0 2 0 1 0 1 Note: If A is invertible Then Ek L E3 E2 E1 A I A1 Ek L E3 E2 E1 Ek L E3 E2 E1 [ AM I ] [ I MA 1 ] 2 - 50 Thm: Equivalent conditions If A is an nn matrix, then the following statements are equivalent. (1) A is invertible. (2) Ax = b has a unique solution for every n1 column matrix b. (3) Ax = 0 has only the trivial solution. (4) A is row-equivalent to In . (5) A can be written as the product of elementary matrices. 2 - 51 LU-factorization: A nn matrix A can be written as the product of a lower triangular matrix L and an upper triangular matrix U, such as A LU L is a lower triangular matrix U is an upper triangular matrix Note: If a square matrix A can be row reduced to an upper triangular matrix U using only the row operation of adding a multiple of one row to another (pivot), then it is easy to find an LU-factorization of A. Ek L E2 E1 A U A E11 E21 L Ek1U A LU 2 - 52 Ex: LU-factorization (a) A 1 2 1 0 1 3 0 (b) A 0 1 3 2 10 2 Sol: (a) 1 2 1 1 2 1 2 A U 1 0 0 2 C12 (1) A U A [C12 ( 1)]1 U C12 (1)U LU 1 0 L [C12 ( 1)] C12 (1) 1 1 1 2 - 53 (b) 1 3 0 1 3 0 1 3 0 2 1 3 4 2 3 0 1 3 U A 0 1 3 0 1 3 2 10 2 0 4 2 0 0 14 C23 (4)C13 ( 2) A U A [C13 ( 2)]1[C 23 (4)]1 U LU L [C13 ( 2)]1[C 23 (4)]1 C13 (2)C 23 ( 4) 1 0 0 1 0 0 1 0 0 0 1 0 0 1 0 0 1 0 2 0 1 0 4 1 2 4 1 2 - 54 Solving Ax=b with an LU-factorization of A Ax b If A LU then LUx b Let y Ux then Ly b Two steps: (1) Write y = Ux and solve Ly = b for y (2) Solve Ux = y for x 2 - 55 Ex: Solving a linear system using LU-factorization x1 3 x2 5 x2 3 x3 1 2 x1 10 x2 2 x3 20 Sol: 0 0 1 3 0 1 3 0 1 A 0 1 3 0 1 0 0 1 3 LU 0 14 2 10 2 2 4 1 0 (1) Let y Ux, and solve Ly b 1 0 0 1 2 4 y1 5 0 y1 5 0 y2 1 y2 1 1 y3 20 y3 20 2 y1 4 y2 20 2(5) 4(1) 14 2 - 56 (2) Solve the following system Ux y 1 3 0 x1 5 0 1 3 x2 1 0 0 14 x3 14 So x3 1 x2 1 3x3 1 (3)(1) 2 x1 5 3x2 5 3(2) 1 Thus, the solution is 1 x2 1 2 - 57 Keywords in Section 2A.4: row elementary matrix: 列基本矩陣 row equivalent: 列等價 lower triangular matrix: 下三角矩陣 upper triangular matrix: 上三角矩陣 LU-factorization: LU分解 2 - 58