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Math 221, Section 1.4 Today: (1) The ‘spanning’ problem as a linear system (2) Existence of solutions (3) Rewrite a linear system into a matrix equation 1 / 10 Last time: I I h1i h1i Given u = 2 and v = 0 , how do we determine if a third 2 3 vector w is in Span{u, v}? Answer: w is in Span{u, v} ⇔ w = su + tv for certain scalars s, t ⇔ the equation w = su + tv has solutions for s, t. I h1i Examples: take w = 2 , then the equation su + tv = w is 5 written as h1i h 1 i h s+t i h 1 i 2s s 2 +t 0 = = 2 . 3 This 1 2 3 2 3s+2t 5 s+t =1 2s =2 3s+2t =5 is a linear system whose augmented matrix is 1 1 0 2 . (What are the columns?) 2 5 2 / 10 Spanning problem as linear system (Continued from above) 1 1 1 1 1 1 I 2 0 2 −→ · · · (Exercise) −→ 0 1 0 . 3 2 5 0 0 2 REF The last equation reads 0s + 0t = 2 which is absurd, so I I I no solution s, t for this system, w is not in Span{u, v}. h3i (Exercise) What about w = 2 ? (Remember w = u + 2v.) 7 1 1 3 1 0 1 s=1 2 0 2 −→ · · · −→ 0 1 2 ⇒ t=2 3 2 7 0 0 0 RREF I I The solution exists. w lies in Span{u, v}. 3 / 10 Existence of solution I When asked whether w is in Span{u, v} or not, we don’t need to solve the solution of the linear system [uv|w]. We just want to know if the solution exists or not. I Question: How do we know if a solution exists without solving the system completely? I Answer: Read the REF (not the RREF). (Examples in Sec 1.2) I I I (Example of no solution) 1 −3/2 0 1 −4 8 2 −3 2 1 → · · · → 0 1 5 −8 7 1 0 0 1 −4 0 1/2 8 1 REF There is no solution if the last column, the constant vector, has a pivot (the leading entry, and is 1). 4 / 10 Existence of solution I (Example of unique solution) I I I 1 0 −4 −2 2 5 1 −8 9 0 1 −2 8 → ··· → 0 1 9 0 0 1 −4 1 0 4 21 REF There is a unique solution if every column except the last one contains a pivot (because we can further apply Step 5 (backward sub.) in the Gaussisn elimination to obtain the solution). (Example of infinity many solutions) I I 1 2 4 2 4 6 3 6 9 8 1 8 → ··· → 0 12 0 2 0 0 4 1 0 8 4 0 REF There are infinity many solutions if the last column and one of the columns of the coefficient matrix do not containing a pivot (because the variable corresponding 1 2 to a parameter, remember 0 0 0 0 to this non-pivotal column is assigned 0 −8 x + 2y = 8 1 4 ⇒ ). z =4 0 0 RREF 5 / 10 Focus on coefficient matrix What if I allow the constant vector to be arbitrary? h 1 −2 −1 i b1 (Sec 1.4, Ex 16) A = −2 2 0 and b = b2 . 4 −1 3 b3 (a) Show that the system with augmented matrix [A|b] does not have a solution for certain b. (b) Describe all b for which the system [A|b] has a solution. 6 / 10 Summary: Theorem 4 on p.37 Let A be a 3 × 3 matrix. Then the following statements are logically equivalent. That is, for a particular A, either they are all true statements or they are all false. (a) For every b in R3 , the augmented matrix [A|b] has a solution. (b) Each b in R3 is in the span of the columns of A (in other words, the span of columns of A is R3 ). (c) Each b in R3 is a linear combination of the columns of A. (d) The REF of A has a pivot on every row (so there is no zero row). (Warning: Theorem 4 is about the properties of a coefficient matrix A, not an augmented matrix [A|b].) 7 / 10 8 / 10 Rewrite a linear system into a matrix equation Write the left hand side of a linear system 1 −2 1 x 0 + y 2 + z −8 −4 5 9 as a matrix multiplication 1 −2 1 x 0 2 −8 y −4 5 9 z abbreviated as Ax (product h x i of a coefficient matrix A times and an unknown vector x = y ). z So an equation will be written as Ax = b. 9 / 10 Appendix: Properties of matrix multiplication Example (Practice exercise on p.40) A = [ 23 51 ], u = 4 −1 ,v= −3 5 . Compare A(u + v) and Au + Av. 10 / 10