ROW EQUIVALENCE

In linear algebra, two matrices are 'row equivalent' if one can be changed to the other by a sequence of elementary row operations. Alternatively, two ''m'' × ''n'' matrices are row equivalent if and only if they have the same row space. The concept is most commonly applied to matrices that represent systems of linear equations, in which case two matrices are row equivalent if and only if the corresponding systems have the same information content.
Because elementary row operations are reversible, row equivalence is an equivalence relation. It is commonly denoted by a tilde (~).

Contents
Elementary row operations
Row space
Equivalence of the definitions
Additional properties
See also
References

Elementary row operations


An elementary row operation is any one of the following moves:
# Swap two rows of a matrix.
# Multiply a row of a matrix by a nonzero constant.
# Add to one row of a matrix some multiple of another row.
Two matrices ''A'' and ''B'' are 'row equivalent' if it is possible to transform ''A'' into ''B'' by a sequence of elementary row operations.

Row space


Main articles: Row and column spaces

The row space of a matrix is the set of all possible linear combinations of its row vectors. If the rows of the matrix represent a system of linear equations, then the row space consists of all linear equations that can be deduced algebraically from those in the system. Two ''m'' × ''n'' matrices are row equivalent if and only if they have the same row space.
For example, the matrices
:egin{pmatrix}1 & 0 & 0 \ 0 & 1 & 1end{pmatrix}
;;;; ext{and};;;;
egin{pmatrix}1 & 0 & 0 \ 1 & 1 & 1end{pmatrix}
are row equivalent, the row space being all vectors of the form egin{pmatrix}a & b & bend{pmatrix}. The corresponding systems of homogeneous equations convey the same information:
:egin{matrix}x = 0 \ x+y+z=0end{matrix};;;; ext{and};;;;egin{matrix} x=0 \ y+z=0end{matrix}
In particular, both of these systems imply every equation of the form ax+by+bz=0,!.

Equivalence of the definitions


The fact that two matrices are row equivalent if and only if they have the same row space is an important theorem in linear algebra. The proof is based on the following observations:
# Elementary row operations do not affect the row space of a matrix. In particular, any two row equivalent matrices have the same row space.
# Any matrix can be reduced by elementary row operations to a matrix in reduced row echelon form.
# Two matrices in reduced row echelon form have the same row space if and only if they are equal.
This line of reasoning also proves that every matrix is row equivalent to a unique matrix with reduced row echelon form.

Additional properties



★ Because the null space of a matrix is the orthogonal complement of the row space, two matrices are row equivalent if and only they have the same null space.

★ The rank of a matrix is equal to the dimension of the row space, so row equivalent matrices must have the same rank. This is equal to the number of pivots in the reduced row echelon form.

★ A matrix is invertible if and only if it is row equivalent to the identity matrix.

See also



Elementary row operations

Row space

Basis (linear algebra)

Row reduction

Reduced row echelon form

References



Linear algebra and its applications, Lay, David C., , , Pearson/Addison-Wesley, 2006,

Schaum's outline of theory and problems of linear algebra, Lipson, Marc; Lipschutz, Seymour, , , McGraw-Hill, 2001,

★ Beezer, Rob, ''A First Course in Linear Algebra'', licensed under GFDL.

★ Jim Hefferon: ''Linear Algebra'' (Online textbook)

★ Edwin H. Connell: ''Elements of Abstract and Linear Algebra'' (Online textbook)

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