1 MAC 2103 Module 9 General Vector Spaces II. 2 Rev.F09 Learning Objectives Upon completing this module, you should be able to: 1. Find the coordinate.

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Presentation transcript:

1 MAC 2103 Module 9 General Vector Spaces II

2 Rev.F09 Learning Objectives Upon completing this module, you should be able to: 1. Find the coordinate vector with respect to the standard basis for any vector in ℜ ⁿ. 2. Find the coordinate vector with respect to another basis. 3. Determine the dimension of a vector space V from a basis for V. 4. Find a basis for and the dimension of the null space of A, null(A). 5. Find a basis for and the dimension of the column space of A, col(A). a) Show that the non-leading columns of A are linearly dependent since they can be written as a linear combination of the leading columns of A. b) Show that the leading columns of A are linearly independent and therefore form a basis for col(A). 6. Find a basis for and the dimension of the row space of A, row(A). Click link to download other modules.

3 Rev.09 General Vector Spaces II Click link to download other modules. Coordinate Vectors Basis and Dimension Null Space, Column Space, and Row Space of a Matrix There are three major topics in this module:

4 Rev.F09 Quick Review Click link to download other modules. In module 8, we have learned that if we let S = {v 1, v 2, …, v r } be a finite set of non-zero vectors in a vector space V, the vector equation has at least one solution, namely the trivial solution, 0 = k 1 = k 2 = … = k r. If the only solution is the trivial solution, then S is a linearly independent set. Otherwise, S is a linearly dependent set. If every vector in the vector space V can be expressed as a linear combination of the vectors in S, then S is the spanning set of the vector space V. If S is a linearly independent set, then S is a basis for V and span(S) = V.

5 Rev.F09 What is the Coordinate Vector with Respect to the Standard Basis for any Vector? Click link to download other modules. The set of standard basis vectors in ℜ ⁿ is B = {e 1, e 2, …, e n }. If v ∈ ℜ ⁿ, then and has components The coordinate vector v B has the coefficients from the linear combination of the basis vectors as its components. So, A better name might be coefficient vector, but it is not used. So, v is its own coordinate vector with respect to the standard basis,

6 Rev.F09 What is the Coordinate Vector with Respect to Another Basis? Click link to download other modules. Example: Let B 1 = {v 1, v 2 }, with To show B 1 is a basis, we solve If the only solution is, then v 1, v 2 are linearly independent, and B 1 = {v 1, v 2 } is a linearly independent set and a basis for ℜ ².

7 Rev.F09 What is the Coordinate Vector with Respect to Another Basis? (Cont.) Click link to download other modules. The and A -1 exists, so the only solution to Ac = 0 is A -1 Ac = I 2 c = A -1 0 = 0; so, c = 0. Thus, B 1 = {v 1, v 2 }, is a basis for ℜ ² and not the standard basis.

8 Rev.F09 What is the Coordinate Vector with Respect to Another Basis? (Cont.) Click link to download other modules. Let We want to solve Ac = v for c, the vector of coefficients, which is the coordinate vector, We solve [A|v] as follows: Thus, and

9 Rev.F09 What is the Coordinate Vector with Respect to Another Basis? (Cont.) Click link to download other modules. So, the c i that are the components of the coordinate vector are the coefficients in the linear combination of the basis vectors for v. Thus, the coordinate vector with respect to B 1 is

10 Rev.F09 What is a Basis for a Vector Space, and What is the Dimension of a Vector Space? Click link to download other modules. Let Then is a basis for the vector space V if both of the following conditions hold: 1. S is a set of linearly independent vectors or it is a linearly independent set, and 2. The vectors in S can span the vector space V. This means that the span(S) = {all linear combinations of } = V. The dimension of a vector space is the number of vectors in any basis for the vector space. dim(V) = n. The vector space V could have infinitely many bases, for V ≠ span({0}).

11 Rev.F09 How to Find a Basis for and the Dimension of the Null Space of A, Null(A)? Click link to download other modules. Example: Find a basis for and the dimension of the null space of A, null(A), which is the solution space of the homogeneous system: We shall use Gauss Elimination to obtain a row echelon form.

12 Rev.F09 How to Find a Basis for and the Dimension of the Null Space of A, Null(A)?(Cont.) Click link to download other modules.

13 Rev.F09 How to Find a Basis for and the Dimension of the Null Space of A, Null(A)?(Cont.) Click link to download other modules. G has red leading 1’s in column 1, column 3, and column 4. These are the three leading columns of G. G is a row-echelon form of A. These columns are linearly independent and correspond to the linearly independent columns of A, which form a basis for the column space of A, col(A). The non-leading columns of G are column 2 and column 5 which correspond to linearly dependent columns of A and give us the free variables, x 2 = s and x 5 = t in our solution of the homogeneous system, Ax = 0.

14 Rev.F09 How to Find a Basis for and the Dimension of the Null Space of A, Null(A)?(Cont.) Click link to download other modules. We know x 2 = s and x 5 = t. Use back-substitution to find the solution x. All of the components of x are in terms of s and t.

15 Rev.F09 How to Find a Basis for and the Dimension of the Null Space of A, Null(A)?(Cont.) Click link to download other modules. The solution x of Ax=0 is a linear combination of v 1 and v 2. The solution space is the span({v 1, v 2 }), the set {v 1, v 2 } is linearly independent (since v 1 is not a multiple of v 2 ) and is a basis for the solution space of the homogeneous system or the null space of A, null(A). So, null(A) = span({v 1, v 2 }). Null(A) is a subspace of ℜ⁵ and has a dimension of 2, dim(null(A))=2. Thus, for some s and t iff x is in the null(A).

16 Rev.F09 How to Find a Basis for and the Dimension of the Column Space of A, Col(A)? Click link to download other modules. By definition, the column space of A, col(A) = span({a 1,a 2, a 3 a 4, a 5 }), but not all of the vectors in the set are linearly independent. The linearly independent columns of A correspond to the leading columns of G; hence, col(A) = span({a 1,a 3, a 4 }), and {a 1,a 3, a 4 } is a basis for col(A). Then dim(col(A))=3. We will prove these statements for A in the next few slides.

17 Rev.F09 How to Find a Basis for and the Dimension of the Column Space of A, Col(A)? (Cont.) Click link to download other modules. The last matrix is the reduced row-echelon form for [A|0]. We can see that v 2 =(1)v 1 +(0)v 3 +(0)v 4 =v 1 or v 2 =v 1. v 5 =(1)v 1 +(1)v 3 +(0)v 4 =v 1 +v 3 or v 5 =v 1 +v 3. Thus, v 2 and v 5 are linearly dependent columns in the span of {v 1, v 3, v 4 }.

18 Rev.F09 How to Find a Basis for and the Dimension of the Column Space of A, Col(A)?(Cont.) Click link to download other modules. The linear dependencies will hold for the columns of A. We can see that a 2 =a 1, and a 5 =a 1 +a 3. Thus, a 2 and a 5 are linearly dependent columns in the span{a 1, a 3, a 4 } = col(A).

19 Rev.F09 How to Find a Basis for and the Dimension of the Column Space of A, Col(A)? (Cont.) Click link to download other modules. J is the reduced echelon form of A. The leading columns v 1, v 3, v 4 are the linearly independent columns of J, since they are standard basis vectors in ℜ 4. v 1 = e 1, v 3 = e 2, v 4 = e 3. which proves linear independence.

20 Rev.F09 How to Find a Basis for and the Dimension of the Column Space of A, Col(A)? (Cont.) Click link to download other modules. Now, we will show that {a 1, a 3, a 4 } is a linearly independent set. Let and let E be the product of all elementary matrices, such that EA=J. Then, with leading columns Ea 1 =v 1 =e 1, Ea 3 =v 3 =e 2, Ea 4 =v 4 =e 3, as seen from the previous slide. Multiplying by E gives us c = 0 is the unique solution since E is invertible. Therefore, {a 1, a 3, a 4 } is a linearly independent set and a basis for the col(A). Then, dim(col(A)) = 3.

21 Rev.F09 How to Find a Basis for and the Dimension of the Row Space of A, Row(A)? Click link to download other modules. The nonzero row vectors in the matrix J are linearly independent. The row vectors w 1,w 2, w 3 form a basis for the row space of J. Likewise, the nonzero row vectors in the matrix G are linearly independent and those three row vectors form a basis for row(G).

22 Rev.F09 How to Find a Basis for and the Dimension of the Row Space of A, Row(A)? (Cont.) Click link to download other modules. Elementary row operations are linear operators from ℜ⁵ into ℜ⁵ and the new rows are linear combinations of the original rows. So, row(A) = row(G) = row(J), and the span({w 1, w 2, w 3 }) = row(A). Then dim(row(A))=3. In A, 2w 1 -w 2 = r 1, -w 1 +2w 2 -3w 3 = r 2, w 1 -2w 2 = r 3, and w 2 +w 3 = r 4. This proves row(J) = row(A). A basis for the row(A) is {w 1, w 2, w 3 } = {[ ], [ ], [ ]}. The row(A) = col(A T ) since the rows of A are the columns of A T. If we only find a basis for row(A), then we can find a basis for col(A T ) and switch the column vectors back to row vectors (see Example 8 on page 274).

23 Rev.F09 What have we learned? We have learned to : 1. Find the coordinate vector with respect to the standard basis for any vector in ℜ ⁿ. 2. Find the coordinate vector with respect to another basis. 3. Determine the dimension of a vector space V from a basis for V. 4. Find a basis for and the dimension of the null space of A, null(A). 5. Find a basis for and the dimension of the column space of A, col(A). a) Show that the non-leading columns of A are linearly dependent since they can be written as a linear combination of the leading columns of A. b) Show that the leading columns of A are linearly independent and therefore form a basis for col(A). 6. Find a basis for and the dimension of the row space of A, row(A). Click link to download other modules.

24 Rev.F09 Credit Some of these slides have been adapted/modified in part/whole from the following textbook: Anton, Howard: Elementary Linear Algebra with Applications, 9th Edition Click link to download other modules.