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Matrices CHAPTER 8.1 ~ 8.8. Ch8.1-8.8_2 Contents  8.1 Matrix Algebra 8.1 Matrix Algebra  8.2 Systems of Linear Algebra Equations 8.2 Systems of Linear.

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Presentation on theme: "Matrices CHAPTER 8.1 ~ 8.8. Ch8.1-8.8_2 Contents  8.1 Matrix Algebra 8.1 Matrix Algebra  8.2 Systems of Linear Algebra Equations 8.2 Systems of Linear."— Presentation transcript:

1 Matrices CHAPTER 8.1 ~ 8.8

2 Ch8.1-8.8_2 Contents  8.1 Matrix Algebra 8.1 Matrix Algebra  8.2 Systems of Linear Algebra Equations 8.2 Systems of Linear Algebra Equations  8.3 Rank of a Matrix 8.3 Rank of a Matrix  8.4 Determinants 8.4 Determinants  8.5 Properties of Determinants 8.5 Properties of Determinants  8.6 Inverse of a Matrix 8.6 Inverse of a Matrix  8.7 Cramer’s Rule 8.7 Cramer’s Rule  8.8 The Eigenvalue Problem 8.8 The Eigenvalue Problem

3 Ch8.1-8.8_3 8.1 Matrix Algebra  Matrix The forms (x 1 x 2 … x n ) or(1) Each array in (1) is called a matrix.

4 Ch8.1-8.8_4  Entry or Element: a mn, the members in the array Size: m  n Square matrix: n  n, n is called the order. Main diagonal entries: a nn A matrix is any rectangular array of numbers or functions (2) DEFINITION 8.1 Matrix

5 Ch8.1-8.8_5 A n  1 matrix is called a column vector. A 1  n matrix is called a row vector. DEFINITION 8.2 Column and Row Vectors Two matrices A, B are equal if aij = bij. DEFINITION 8.4 Equality of Matrices

6 Ch8.1-8.8_6 Example 1 (a) The following matrix are not equal, since they are not of the same size. (b) The following matrix are not equal, since the corresponding entries are not all equal.

7 Ch8.1-8.8_7 The sum of two m  n matrices A, B is A + B = (a ij + b ij ) m  n DEFINITION 8.4 Matrix Addition

8 Ch8.1-8.8_8 Example 2 (a)

9 Ch8.1-8.8_9 Example 2 (2) (b) The sum is not defined.

10 Ch8.1-8.8_10 If k is a real number, then the scalar multiple is DEFINITION 8.5 Scalar Multiple of a Matrix

11 Ch8.1-8.8_11 If A, B, C are m  n matrices, k 1 and k 2 are scalars (i) A + B = B + A (ii) A + (B + C) = (A + B) + C (iii) (k 1 k 2 ) A = k 1 (k 2 A) (iv) 1 A = A (v) k 1 (A + B) = k 1 A + k 1 B (vi) (k 1 + k 2 ) A = k 1 A + k 2 A THEOREM 8.1 Matrix Multiplication

12 Ch8.1-8.8_12 If A is m  p, B is p  n, then the product is DEFINITION 8.6 Matrix Multiplication

13 Ch8.1-8.8_13 Example 3 (a) (b) Note: In general, AB  BA

14 Ch8.1-8.8_14  We can write a system of linear equations as the form of product. eg:  Associate Law: A(BC) = (AB)C  Distributive Law: A(B + C) = AB + BC

15 Ch8.1-8.8_15 The transpose of (2) is DEFINITION 8.7 Transpose of a Matrix

16 Ch8.1-8.8_16  Note: (A + B + C) T = A T + B T + C T (ABC) T = C T B T A T Suppose A and B are matrices and k a scalar, (i) (A T ) T = A (ii) (A + B) T = A T + B T (iii) (AB) T = B T A T (iv) (kA) T = kA T THEOREM 8.2 Properties of Transpose

17 Ch8.1-8.8_17 Zero Matrices  A + 0 = A(4) andA + (–A) = 0(5)

18 Ch8.1-8.8_18 Triangular Matrices  For square n  n matrices

19 Ch8.1-8.8_19 Diagonal Matrices  For square n  n matrices, i≠j, a ij = 0

20 Ch8.1-8.8_20 Scalar Matrices  Diagonal matrices with equal a ii

21 Ch8.1-8.8_21 Identity Matrices  A: m  n, then I m A = A I n = A

22 Ch8.1-8.8_22 Symmetric  An n × n matrix A is said to be symmetric if A T = A.

23 Ch8.1-8.8_23 8.2 Systems of Linear Algebraic Equations  General Form (1)

24 Ch8.1-8.8_24 Solution  A solution of a (1) is said to be consistent if it has at least one solution and inconsistent if it has no solutions.  If a linear system is consistent: (i) a unique solution (ii) infinitely many solutions See Fig 8.2

25 Ch8.1-8.8_25 Fig 8.2

26 Ch8.1-8.8_26 Example 1 Verify that x 1 = 14 + 7t, x 2 = 9 + 6t, x = t, where t is any real number, is a solution of 2x 1 – 3x 2 + x 3 = 1 x 1 – x 2 – x 3 = 5 Solution 2(14 + 7t) – 3(9 + 6t) + 4t = 1 14 + 7t – (9 + 6t) – t = 5 For each number of t, we obtain a different solution.

27 Ch8.1-8.8_27 Solving Systems: Elementary Operations  (i) Multiply an equation by a nonzero constant. (ii) Interchange the position of equations (iii) Add a nonzero multiple of one equation to another one.

28 Ch8.1-8.8_28 Example 2 Solve 2x 1 + 6x 2 + x 3 = 7 x 1 + 2x 2 – x 3 = –1 5x 1 + 7x 2 – 4x 3 = 9 Solution (i) Interchange positions x 1 + 2x 2 – x 3 = –1 …(a) 2x 1 + 6x 2 + x 3 = 7…(b) 5x 1 + 7x 2 – 4x 3 = 9…(c) (ii) −2  (a) + (b) x 1 + 2x 2 – x 3 = –1 …(a) 2x 2 + 3x 3 = 9…(b)’ 5x 1 + 7x 2 – 4x 3 = 9…(c)

29 Ch8.1-8.8_29 Example 2 (2) (iii) −5  (a) + (c) x 1 + 2x 2 – x 3 = –1 …(a) 2x 2 + 3x 3 = 9…(b)’ –3x 2 + x 3 = 14…(c)’ (iv) From (b)’ and (c)’, we have x 2 = −3, x 3 = 5, then x 1 = 10

30 Ch8.1-8.8_30 Augmented Matrix  To solve (1) we can use the augmented matrix (2)

31 Ch8.1-8.8_31 Example 3  (a) The augmented matrix represents x 1 – 3x 2 + 5x 3 = 2 4x 1 + 7x 2 – x 3 = 8  (b)x 1 – 5x 3 = – 1 x 1 + 0x 2 – 5x 3 = – 1 2x 1 + 8x 2 = 7 and2x 1 + 8x 2 + 0x 3 = 7 x 2 + 9x 3 = 10x 1 + x 2 + 9x 3 = 1 are the same. Thus the matrix of the system is

32 Ch8.1-8.8_32 Elementary Row Operations  (i) Multiply a row by a nonzero constant. (ii) Interchange the position of rows (iii) Add a nonzero multiple of one row to another one.  Matrices after elementary row operations are called row equivalent. The procedure is called row reduction.

33 Ch8.1-8.8_33 Example 4  (a) and are in row-echelon form.  (b) and are in reduced row-echelon form.

34 Ch8.1-8.8_34 Example 5 Solve the equations in example 2. Solution (a)

35 Ch8.1-8.8_35 Example 5 (2) and x 3 = 5, x 2 = –3, x 1 = 10

36 Ch8.1-8.8_36 Example 5 (3) (b) we have the same solution.

37 Ch8.1-8.8_37 Example 6 Use Gauss-Jordan method to solve x 1 + 3x 2 – 2x 3 = – 7 4x 1 + x 2 + 3x 3 = 5 2x 1 – 5x 2 + 7x 3 = 19 Solution

38 Ch8.1-8.8_38 Example 6 (2) We havex 2 – x 3 = –3 x 1 + x 3 = 2 Let x 3 = t, then x 2 = –3 + t, x 1 = 2 – t.

39 Ch8.1-8.8_39 Example 7 Solve x 1 + x 2 = 1 4x 1 − x 2 = −6 2x 1 – 3x 2 = 8 Solution We have 0 + 0 = 16, no solutions.

40 Ch8.1-8.8_40 Networks  From Fig 8.3, we have or(3)

41 Ch8.1-8.8_41 Fig 8.3

42 Ch8.1-8.8_42 Example 8 Solve (3) where R 1 = 10 ohms, R 2 = 20 ohms, R 2 = 10 ohms, E = 12 volts Solution From the data, we have i 1 – i 2 – i 3 = 0 10i 1 + 20i 2 = 12 20i 2 – 10i 3 = 0

43 Ch8.1-8.8_43 Example 8 (2) Use Gauss-Jordan method We have i 1 = 18/25, i 2 = 6/25, i 3 = 12/25.

44 Ch8.1-8.8_44 Homogeneous Systems  The system of equations (4) is always consistent, since x 1 = x 2 = … = x n = 0 will satisfy the system.

45 Ch8.1-8.8_45 The system (4) possesses nontrivial solutions if the number m of equations is less than the number n of unknowns. THEOREM 8.3 Existence of Nontrivial Solutions

46 Ch8.1-8.8_46 Example 9 Solve 2x 1 − 4x 2 + 3x 3 = 0 x 1 + x 2 − 2x 3 = 0 Solution Use Gauss-Jordan method

47 Ch8.1-8.8_47 Example 9 (2) Let x 3 = t, then x 1 = (5/6)t, x 2 = (7/6)t, and the system has nontrivial solutions.

48 Ch8.1-8.8_48 Example 10: Chemical Equations Balance C 2 H 6 + O 2  CO 2 + H 2 O Solution Assuming x 1 C 2 H 6 + x 2 O 2  x 3 CO 2 + x 4 H 2 O, we have2x 1 = x 3 (for C) 6x 1 = 2x 4 (for H) 2x 2 = 2x 3 + 2x 4 (for O) Then

49 Ch8.1-8.8_49 Thus x 4 = t, x 1 = t/3, x 2 = 7t/6, x 3 = 2t/3. We choose t = 6, then x 1 = 2, x 2 = 7, x 3 = 4, x 4 = 6 2C 2 H 6 + 7O 2  4CO 2 + 6H 2 O Example 10 (2)

50 Ch8.1-8.8_50 8.3 Rank of a Matrix  Introduction Row vectors: u 1 = (a 11 a 12 … a 1n ), u 2 = (a 21 a 22, … a 2n ),…, u m = (a m1 a m2 … a mn )

51 Ch8.1-8.8_51 Column Vectors:

52 Ch8.1-8.8_52 The rank of a m  n matrix A, denoted by rank(A), is the maximum linearly independent row vectors. DEFINITION 8.8 Rank of a Matrix

53 Ch8.1-8.8_53 Example 1 Consider (1) The row vectors are in turn denoted as u 1, u 2, u 3. Since 4u 1 – ½u 2 + u 3 = 0, they are linearly dependent. In addition, u 1 and u 2 are not constant multiple couples, so they are linearly independent. rank(A) = 2

54 Ch8.1-8.8_54 Row Space  As in Example 1, Span(u 1, u 2, u 3 ) is called the Row Space of A. If a matrix A is row equivalent to a row-echelon form B, then (i) Row space of A = Row space of B (ii) The nonzero rows form a basis for the row space of A (iii)rank(A) = the number of nonzero rows in B THEOREM 8.4 Rank of a Matrix by Row Reduction

55 Ch8.1-8.8_55 Example 2 Consider the matrix in (1) rank(A) = 2

56 Ch8.1-8.8_56 Example 3 Determine whether the set of u 1 =, u 2 =, u 3 = is linearly independent. Solution Form a matrix A by using u 1, u 2, u 3, and reduce it. We have rank(A) = 3, so the set of vectors is linearly independent.

57 Ch8.1-8.8_57 Rank and Linear Systems  Consider Make an augmented matrix and reduce it:

58 Ch8.1-8.8_58 We have rank(A|B) = 3. Since then rank(A) = 2

59 Ch8.1-8.8_59 AX = B is consistent if and only if rank(A|B) = rank(A) THEOREM 8.5 Consistence of AX = B Suppose AX = B with m equations and n unknowns is consistent. If rank(A) = r, then the solution contains n – r parameters. THEOREM 8.6 Number of Parameters in a Solution

60 Ch8.1-8.8_60 Example x 1 + 3x 2 – 2x 3 = –7 4x 1 + x 2 + 3x 3 = 5(3) 2x 1 – 5x 2 + 7x 3 = 19 We already know that (3) is consistent and has infinitely many solutions. Since We have rank(A|B) = rank(A) = 2, then the number of parameter of the solution is 3 – 2 = 1.

61 Ch8.1-8.8_61 Flow chart AX = 0 Always consistent Unique solution X = 0 rank(A) = n Infinity of solutions Rank(A) < n n – r parameters

62 Ch8.1-8.8_62 AX = B, B≠0 Inconsistent rank(A) < rank(A│B) consistent rank(A) = rank(A│B) Unique solution rank(A) = n Infinity of solutions rank(A) < n n – r parameters

63 Ch8.1-8.8_63 8.4 Determinants  Notation

64 Ch8.1-8.8_64  eg: The determinant is (1) DEFINITION 8.9 Determinant of 2 × 2 Matrix

65 Ch8.1-8.8_65 The determinant is (1) DEFINITION 8.10 Determinant of 3 × 3 Matrix

66 Ch8.1-8.8_66 In view of (1), we have (4) where A has been expanded by cofactors along the first row, with the cofactors of a 11, a 12, a 13 : Thus det A = a 11 C 11 + a 12 C 12 + a 13 C 13 (5)

67 Ch8.1-8.8_67 In general, the cofactors of a ij is C ij = (–1) i+ j M ij (6) where M ij is called a minor determinant. From (3), we have (8) Similarly, we can expand by cofactors along the third rows: det A = a 31 C 31 + a 32 C 32 + a 33 C 33 (9) Note: We can expand by cofactors along any rows or any columns.

68 Ch8.1-8.8_68 Example 1 Find the determinant of Solution Along the first row:

69 Ch8.1-8.8_69 Example 1 (2)

70 Ch8.1-8.8_70  We also can expanded along the second row, since it has zero entry.

71 Ch8.1-8.8_71 Example 2 Find the determinant of Solution Along the third column:

72 Ch8.1-8.8_72 Let A = (a ij ) n × n ne an n × n matrix. For each the cofactor expansion of det A along the ith row is For each the cofactor expansion of det A along the ith column is THEOREM 8.7 Consistence of AX = B

73 Ch8.1-8.8_73 Example 3 Find the determinant of Solution Along the fourth row where

74 Ch8.1-8.8_74 Example 3 (2)

75 Ch8.1-8.8_75 Example 3 (3)

76 Ch8.1-8.8_76 8.5 Properties of Determinants If A T is the transpose of the n × n matrix A, then det A T = det A THEOREM 8.8 Determinant of a Transpose If any two rows (columns) of an n × n matrix A are the same, then det A = 0. THEOREM 8.9 Two Identical Rows

77 Ch8.1-8.8_77 Example 1

78 Ch8.1-8.8_78 If all the entries in a row (column) of an n × n matrix A are all zeros, then det A = 0. THEOREM 8.10 Zero Row or Column If B is the matrix obtained by interchanging any two rows (columns) of an n × n matrix A, then det B = −det A THEOREM 8.11 Interchanging Rows

79 Ch8.1-8.8_79  If B is obtained by interchanging the first and third row of

80 Ch8.1-8.8_80 If B is obtained from an n × n matrix A by multiplying a row (column) by a nonzero real number k, then det B = k det A THEOREM 8.12 Constant Multiple of a Row

81 Ch8.1-8.8_81 Example 2  (a)  (b)

82 Ch8.1-8.8_82 If A and B are both n × n matrices, then det AB = det A  det B. THEOREM 8.13 Determinant of a Matrix Product

83 Ch8.1-8.8_83 Example 3 Suppose then Now det AB = −24, det A = −8, det B = 3, Thus det AB = det A  det B.

84 Ch8.1-8.8_84 Suppose B is the matrix obtained from an n × n matrix A by multiplying the entries in a row (column) by Nonzero real number k and adding the result to the corresponding entries in another row (column). Then det B = det A. THEOREM 8.14 Determinant is Unchanged

85 Ch8.1-8.8_85 Example 4 We have det A = 45 = det B = 45.

86 Ch8.1-8.8_86 Proof Suppose A is an n × n matrix (upper or lower). Then det A = a 11 a 22 … a nn where a 11, a 22, …, a nn are the entries on the main diagonal of A. THEOREM 8.15 Determinant of a Triangular Product

87 Ch8.1-8.8_87 Example 5  (a)

88 Ch8.1-8.8_88  (b)

89 Ch8.1-8.8_89 Example 6 Find the determinant of Solution

90 Ch8.1-8.8_90 Example 6 (2)

91 Ch8.1-8.8_91 Suppose A is a n  n matrix. If a i1, a i2, …, a in are the entries in the ith row and C k1, C k2, …, C kn are the cofactors in the kth row, then a i1 C k1 + a i2 C k2 + …+ a in C kn = 0, for i  k If a 1j, a 2j, …, a nj are the entries in the jth column and C 1k, C 2k, …, C nk are the cofactors in the kth column, then a 1j C 1k + a 2j C 2k + …+ a nj C nk = 0, for j  k THEOREM 8.16 A Property of Cofactors

92 Ch8.1-8.8_92 THEOREM 8.16 Proof Let B be the matrix obtained from A by letting the entries in the ith row of A be the same as the ones in the kth row, that is, a i1 = a k1, a i2 = a k2, …, a in = a kn then there are two identical rows in B, det B = 0, then

93 Ch8.1-8.8_93 Example 7 Consider the matrix we have

94 Ch8.1-8.8_94 8.6 Inverse of a Matrix  Note: If A has no inverse, then A is called singular. Let A be an n  n matrix. If there exists an n  n matrix B such that AB = BA = I(1) where I is the n  n identity, then A is said to be nonsingular or invertible. Then B is said to be the inverse of A. DEFINITION 8.11 Inverse of a Matrix

95 Ch8.1-8.8_95 Proof (i)A -1 A = AA -1 = I, A = (A -1 ) -1 (ii)(AB)(AB) -1 = I, B -1 A -1 (AB)(AB) -1 = B -1 A -1 (AB) -1 = B -1 A -1 Let A, B be nonsingular matrices. (i)(A -1 ) -1 = A (ii)(AB) -1 = B -1 A -1 (iii)(A T ) -1 = (A -1 ) T THEOREM 8.17 Properties of the Inverse

96 Ch8.1-8.8_96 Let A be an n × n matrix. The matrix that is the Transpose of the matrix of cofactors corresponding to the entries of A: is called the adjoint of A and is denoted by adj A. DEFINITION 8.12 Adjoint Matrix

97 Ch8.1-8.8_97 Proof For n = 3, (3) Let A be an n × n matrix. If det A  0, then (2) THEOREM 8.18 Finding the Inverse

98 Ch8.1-8.8_98 From Theorem 8.16, we have Thus A -1 = adj A/det A

99 Ch8.1-8.8_99  For 2  2 matrix (4)

100 Ch8.1-8.8_100  For 3  3 matrix (5)

101 Ch8.1-8.8_101 Example 1 Find the inverse of Solution Check

102 Ch8.1-8.8_102 Example 2 Find the inverse of Solution Since

103 Ch8.1-8.8_103 Example 2 (2) We have

104 Ch8.1-8.8_104 An n  n matrix A is nonsingular if and only if det A  0 THEOREM 8.19 Nonsingular Matrices and det A

105 Ch8.1-8.8_105 Example 3 has no inverse. A is singular, since det A = 0

106 Ch8.1-8.8_106 An n  n matrix A can be transformed into the n  n identity matrix I by a sequence of elementary row operations, then A is nonsingular. The same operations that transforms A into the identity I will also transform I into A -1. THEOREM 8.20 Finding the Inverse

107 Ch8.1-8.8_107  First we construct the augmented matrix (A|I), and the process for finding A -1 is outlined.

108 Ch8.1-8.8_108 Row operations on A until I is obtained )IA(| )A|I( 1  Simultaneously applying the same operations

109 Ch8.1-8.8_109 Example 4 Find the inverse of Solution

110 Ch8.1-8.8_110 Example 4 (2)

111 Ch8.1-8.8_111 Example 4 (3) Thus

112 Ch8.1-8.8_112 Example 5 Find the inverse of Solution

113 Ch8.1-8.8_113 Example 5 (2) There is a row of zeros, it is singular

114 Ch8.1-8.8_114 Using the Inverse  A system of m linear equations in n unknowns (6) can be written as AX = B, where

115 Ch8.1-8.8_115 Special Case  When m = n, if A is nonsingular, then X = A -1 B(7)

116 Ch8.1-8.8_116 Example 6 Use the inverse to solve Solution The system can be written as Since, it is nonsingular. From (4)

117 Ch8.1-8.8_117 Example 6 (2) Using (7) Thus

118 Ch8.1-8.8_118 Example 7 Use the inverse to solve Solution From the equations we have

119 Ch8.1-8.8_119 Example 7 (2) Thus (7) gives Thus

120 Ch8.1-8.8_120 A homogeneous system of n linear equations in n unknowns AX = 0 has only the trivial solution if and only if A is nonsingular. THEOREM 8.21 Trivial Solution Only A homogeneous system of n linear equations in n unknowns AX = 0 has a nontrivial solution if and only if A is singular. THEOREM 8.22 Existence of Nontrivial Solutions

121 Ch8.1-8.8_121 8.7 Cramer’s Rule  Introduction For example, the equations (1) possesses the solution (2) where a 11 a 22 – a 12 a 21  0

122 Ch8.1-8.8_122 Rewrite (2) as determinant forms, we have (3)

123 Ch8.1-8.8_123 Special Matrix  For the following system (4)

124 Ch8.1-8.8_124  We define a special matrix

125 Ch8.1-8.8_125 Let A be the coefficient matrix of the system (1). If det A  0, then the solution of (1) is given by where A k, k = 1, 2, …, n, is defined in (5) THEOREM 8.23 Cramer’s Rule

126 Ch8.1-8.8_126 Proof

127 Ch8.1-8.8_127 Now the entry in the kth row is (7)

128 Ch8.1-8.8_128 Example 1 Solve Solution

129 Ch8.1-8.8_129 Example 1 (2) From (3), we have

130 Ch8.1-8.8_130 8.8 The Eigenvalue Problems Let A be n  n matrix. A number is said to be an eigenvalue of A if there exists a nonzero solution vector K of AK = K(1) The solution vector K is said to be an eigenvector corresponding to the eigenvalue. DEFINITION 8.13 Eigenvalues and Eigenvectors

131 Ch8.1-8.8_131 Example 1 Verify that is an eigenvector of the matrix Solution Since we conclude that K is an eigenvector of A.

132 Ch8.1-8.8_132  From (1), we have (A – I)K = 0(2) However, (2) is the same as a homogeneous system of linear equations. Since we want K to be nontrivial, we must have det (A – I) = 0(4) Inspection of (4) shows det (A – I) results in an nth- degree polynomial in, and is called the characteristic equation.

133 Ch8.1-8.8_133 Example 2 Find the eigenvalues and eigenvectors of Solution

134 Ch8.1-8.8_134 Example 2 (2) We have – 3 – 2 + 12 = 0 or ( + 4)( – 3) = 0 then = 0, −4, 3. To find the eigenvectors, (i) 1 = 0,

135 Ch8.1-8.8_135 Example 2 (3) Choose k 3 = −13, then

136 Ch8.1-8.8_136 Example 2 (4) (ii) For 2 = −4,

137 Ch8.1-8.8_137 Example 2 (5) implies k 1 = −k 3, k 2 = 2k 3. Choose k 3 = 1, then

138 Ch8.1-8.8_138 Example 2 (6) (iii) 2 = 3, implies k 1 = – k 3, k 2 = –(3/2)k 3. Choose k 3 = –2,

139 Ch8.1-8.8_139 Example 3 Find the eigenvalues and eigenvectors of Solution We see 1 = 2 = 5 is an eigenvalue of multiplicity 2. From (A – 5I|0), we get

140 Ch8.1-8.8_140 Example 3 (2) Choose k 2 = 1, we have k 1 = 2, then We can have only one eigenvector though A is a 2  2 matrix.

141 Ch8.1-8.8_141 Example 4 Find the eigenvalues and eigenvectors of Solution We see 1 = 11, 2 = 3 = 8 is of multiplicity 2.

142 Ch8.1-8.8_142 Example 4 (2) (i) For 1 = 11, Gauss-Jordan method gives Hence k 1 = k 3, k 2 = k 3. If k 3 = 1, then

143 Ch8.1-8.8_143 Example 4 (3) (ii) Now for 2 = 8, we have For k 1 + k 2 + k 3 = 0, we can select two of them arbitrarily. We choose: k 2 = 1, k 3 = 0, and k 2 = 0, k 3 = 1, then

144 Ch8.1-8.8_144 Proof Since AK = K, The proof is completed. Let A be a square matrix with real entries. If =  + i ,   0, is a complex eigenvalue of A, then its conjugate is also an eigenvalue of A. If K is an eigenvector corresponding to, then is an eigenvector corresponding to. THEOREM 8.24 Complex Eignvalues and Eigenvectors

145 Ch8.1-8.8_145 Example 5 Find the eigenvalues and eigenvectors of Solution For 1 = 5 + 2i,

146 Ch8.1-8.8_146 Example 5 (2) Since k 2 = (1 – 2i) k 1, after choosing k 1 = 1, then From Theorem 8.24, then

147 Ch8.1-8.8_147 The eigenvalues of an upper triangular, lower triangular, or diagonal matrix are the main diagonal entries. THEOREM 8.25 Triangular and Diagonal Matrices

148


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