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Lecture 2 Matrix Operations • transpose, sum & difference, scalar multiplication • matrix multiplication, matrix-vector product • matrix inverse 2–1 Matrix transpose transpose of m×n matrix A, denoted AT or A′, is n×m matrix with T A =A ij ji rows and columns of A are transposed in AT 0 4 T 0 7 3 example: 7 0 = 4 0 1 : 3 1 • transpose converts row vectors to column vectors, vice versa • ATT = A Matrix Operations 2–2 Matrix addition & subtraction if A and B are both m×n, we form A+B by adding corresponding entries 0 4 1 2 1 6 example: 7 0 + 2 3 = 9 3 3 1 0 4 3 5 can add row or column vectors same way (but never to each other!) matrix subtraction is similar: 1 6 −I = 0 6 9 3 9 2 (here we had to figure out that I must be 2 × 2) Matrix Operations 2–3 Properties of matrix addition • commutative: A+B = B +A • associative: (A+B)+C = A+(B+C), so we can write as A+B+C • A+0=0+A=A;A−A=0 T T T • (A+B) =A +B Matrix Operations 2–4
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