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1.3 Matrices and Matrix Operations. A matrix is a rectangular array of numbers. The numbers in the arry are called the Entries in the matrix. The size of a matrix is described in terms of number of rows and columns in contains. A matrix with only one column is called a column matrix (or a column vector). A matrix with only one row is called a row matrix (or a row vector). Example: 1 1 2 9 2 4 3 1 3 6 5 0 3 e 2 9 4 5 0 11 6 Matrices The entry that occurs in row i and column j of a matrix of A will be denoted by aij. A general 3X4 matrix might be written as A general mXn matrix as a11 a12 A a21 a22 a31 a32 a11 a12 A a a m1 m 2 It can be written as aij mn or aij a1n amn a13 a23 a33 a14 a24 a34 The entry in row I and column j of a matrix A is also commonly denoted by the Symbol ( A)ij Example: A 4 5 0 11 ( A)21 0 A general 1Xn row matrix a and a general mX1 column matrix b would be written as a [a1 a2 ... an ] b1 b b 2 bm A matrix A with n rows and n columns is called a square matrix of order n, and the Shaded entries a11 a22 ... ann of A are said to be on the main diagonal of A a11 A a n1 a1n ann Operations on Matrices Two matrices are defined to be equal if they have the same size and their Corresponding entries are equal. In matrix notation, if A [aij ] and B [bij ] have the same size, then A=B if and only if aij bij for all i and j. If A and B are matrices of the same size, then the sum A+B is the matrix obtained by Adding the entries of B to the corresponding entries of A, and the difference A-B is The matrix obtained by subtracting the entries of B from the corresponding entries of A. Matrices of different sizes cannot be added or subtracted. In matrix notation, if A [aij ] and B [bij ] , then ( A B)ij ( A)ij ( B)ij aij bij and ( A B)ij ( A)ij ( B)ij aij bij If A is any matrix and c is any scalar (real number), then the product cA is the matrix Obtained by multiplying each entry of the matrix A by c. The matrix cA is caid to be A scalar multiple of A. In matrix notation, if A= [aij ], then (cA)ij c( A)ij caij If A1 , A2 ,..., An are matrices of the same size and c1 , c2 ,..., cn are scalars, then c1 A1 c2 A2 ... cn An Is called a linear combination of A1 , A2 ,..., An with coefficients c1 , c2 ,..., cn If A is an m×r matrix and B is an r×n matrix, then the product AB is the m×n matrix whose entries are determined as follows. To find the entry in row i and column j of AB, single out row i from the matrix A and column j from the matrix B. Multiply the corresponding entries from the row and column together and then add up the resulting products The definition of matrix multiplication requires that the number of columns of the First factor A be the same as the number of rows of the second factor B in order To form the product AB. If this condition is not satisfied, the product is undefined. In general, if A [aij ] is an mXr matrix and B [bij ] is an rXn matrix, then a11 a12 a 21 a22 AB ai1 ai 2 am1 am 2 a1r a2 r b11 b12 b21 b22 air br1 br 2 air b1 j b2 j brj The entry ( AB )ij in row i and column j of AB is given by ( AB)ij ai1b1 j ai 2b2 j ai 3b3 j air brj b1n b2 n brn 1 3 B 2 5 1 2 C 4 0 Partitioned Matrices A matrix can be subdivided or partitioned into smaller matrices by inserting horizontal and vertical rules between selected rows and columns Example a11 a12 A a21 a22 a31 a32 a13 a23 a33 a14 A11 a24 A21 a34 a11 a12 A a21 a22 a31 a32 a13 a23 a33 a14 r1 a24 r2 a34 r3 a11 a12 A a21 a22 a31 a32 a13 a23 a33 a14 a24 c1 c2 a34 A12 A22 c3 c4 Matrix Multiplication by Columns and by Rows jth column matrix of AB = A [ jth column matrix of B ] ith row matrix of AB = [ ith row matrix of A ] B If a1, a2, … , am denote the row matrices of A and b1, b2, . . ., bn denote the column matrices of B, then it follows that AB A b1 b2 a1 a1 B a a B AB 2 B 2 a 3 a3 B a a B 4 4 bn Ab1 Ab2 Abn Example: 1 3 A 2 5 1 2 B 4 0 1 3 1 11 2 5 4 18 1 3 2 2 2 5 0 4 1 2 1 3 4 0 11 2 1 2 2 5 4 0 18 4 11 2 AB 18 4 Matrix Products as Linear Combinations Row and column matrices provide an alternative way of thinking about matrix multiplication. a11 a A 21 ... am1 a12 a22 ... ... a1n ... a2 n ... ... am 2 ... amn a11 x1 a12 x2 a x a x AX 21 1 22 2 am1 x1 am 2 x2 x1 x x 2 xn a1n xn a11 a21 a a a2 n xn x1 21 x2 22 amn xn a m1 am 2 a1n a xn 2 n amn In words, the product Ax of a matrix A with a column matrix x is a linear combination Of the column matrices of A with the coefficients coming from the matrix x Example: 2 5 11 3 2 5 11 4 1 10 1 8 4 10 8 1 3 3 9 7 1 3 9 7 Similarly, you can show that The product yA of a 1Xm matrix y with an mXn matrix A is a linear combination of the Row matrices of A with scalar coefficients coming from y. Example 2 5 11 3 3 1 1 4 10 8 1 32 5 11 1 4 10 8 13 9 7 3 9 7 1 It follows that the jth column matrix of a product AB is a linear combination of the Column matrices of A with the coefficients coming from the jth column of B. Example: 4 1 4 3 1 2 4 12 27 30 13 2 6 0 0 1 3 1 8 4 26 12 2 7 5 2 12 1 2 4 8 4 2 0 6 2 0 27 1 2 4 4 1 2 1 6 7 0 30 1 2 4 4 3 5 26 2 6 0 13 1 2 4 12 3 2 1 6 2 0 Matrix Form of a Linear System a11 x1 a12 x2 ... a1n xn b1 a21 x1 a22 x2 ... a2 n xn b2 ... am1 x1 am 2 x2 ... amn xn bm a11 x1 a12 x2 a x a x 21 1 22 2 am1 x1 am 2 x2 a11 a 21 ... am1 a1n xn b1 a2 n xn b2 amn xn bm a12 a22 ... ... a1n ... a2 n ... ... am 2 ... amn x1 b1 x b 2 2 xn bn Let a11 a A 21 ... am1 a12 a22 ... ... a1n ... a2 n ... ... am 2 ... amn b1 x1 b x 2 2 x b bm xn then the original system of linear equations can be replaced by the matrix equation Ax=b Here A is called the coefficient matrix. Transpose of a Matrix If A is any m×n matrix, then the transpose of A, denoted by AT , is defined to be the n×m matrix that results from interchanging the rows and columns of A; That is, the first column of AT is the first row of A, the second column of AT is the second row of A, and so forth. Example: 2 7 4 A 9 5 3 1 2 B 3 4 1 7 0 C 5 3 2 0 6 12 2 9 AT 7 5 4 3 BT 1 2 3 4 1 5 0 C T 7 3 6 0 2 12 Trace of a Matrix If A is a square matrix, then the trace of A , denoted by tr(A), is defined to be the sum of the entries on the main diagonal of A. The trace of A is undefined if A is not a square matrix. Example: 1 7 0 A 5 3 2 0 6 12 tr ( A) 1 3 12 16