Undergrad Proof of Column Extraction Theorem for Finding a Basis for Col(A)

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SUMMARY

The Proof of Column Extraction Theorem establishes that the columns of a matrix A corresponding to leading ones in its reduced row echelon form (RREF) constitute a basis for Col(A), confirming that dimCol(A) equals rank(A). The discussion emphasizes the linearity of linear maps, illustrating that if B is a basis for vector space V, then the image of B under a linear map α spans α(V). An example RREF matrix is provided, demonstrating how basis columns can be identified and how non-basis columns can be expressed as linear combinations of these basis columns.

PREREQUISITES
  • Understanding of linear maps and their properties
  • Familiarity with reduced row echelon form (RREF)
  • Knowledge of vector spaces and basis concepts
  • Ability to perform linear combinations of vectors
NEXT STEPS
  • Study the properties of linear maps in detail
  • Learn how to compute the reduced row echelon form of matrices
  • Explore the relationship between rank and dimension in linear algebra
  • Practice identifying basis columns in various matrices
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Students of linear algebra, educators teaching matrix theory, and anyone seeking to deepen their understanding of vector spaces and linear transformations.

mattTch
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Let A be an m×n matrix. I am not sure why it's immediately obvious that the set B containing all and only the column vectors of R = RREF(A) which have leading ones, forms a basis for R. In particular, why is it the case that Span(B) = Col(R)? FYI: The linear independence of B is obvious to me.
Theorem: The columns of A which correspond to leading ones in the reduced row echelon form of A form a basis for Col(A). Moreover, dimCol(A)=rank(A).
 
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Consider:

1. If \alpha : V \to W is a linear map and B = \{b_i\} is a basis for V, then \alpha(B) spans \alpha(V). This follows from linearity of \alpha: If v \in V then v = \sum_i a_ib_i and <br /> \alpha(v) = \alpha\left(\sum _ia_i b_i\right) = \sum_i a_i \alpha(b_i).

2. The ith column of a matrix is the image of the ith standard basis vector.

3. It follows from the definition of RREF that columns which don't have a leading 1 are linear combinations of the columns which do.
 
Why does 3 follow from the definition of RREF?
 
mattTch said:
Why does 3 follow from the definition of RREF?
Can chip in? If I've understood your question this might help.

Consider an example RREF matrix:

##\begin{bmatrix}
1 & 0 & 2 & 0 & 8\\
0 & 1 & 7 & 0 & 3\\
0 & 0 & 0 & 1 & 2\\
0 & 0 & 0 & 0 & 0
\end{bmatrix} ##

Some columns contain a leading '1' (with zeroes for all other elements). These are the basis columns.

Other columns do not contain a leading '1'. These are non-basis columns.

The basis columns here are ##C_1 = \begin{bmatrix}
1\\
0\\
0\\
0
\end{bmatrix}##, ##C_2 = \begin{bmatrix}
0\\
1\\
0\\
0
\end{bmatrix}## and ##C_4 = \begin{bmatrix}
0\\
0\\
1\\
0
\end{bmatrix}##.

From inspection it should be clear that any non-basis column can be constructed as a linear combination of the basis columns, e.g. ##C_5 = 8C_1 + 3C_2 + 2C_4##.

That’s because every non-zero coefficient in a non-basis column is a simple multiple of the ‘1’ in a basis column.
 
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