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Encyclopedia > Rank of a matrix

In linear algebra, the column rank (row rank respectively) of a matrix A with entries in some field is defined to be the maximal number of columns (rows respectively) of A which are linearly independent.


The column rank and the row rank are indeed equal; this common number is simply called the rank of A. It is commonly denoted by either rk(A) or rank A.

Contents

Alternative definitions

The maximal number of linearly independent columns of the m-by-n matrix A with entries in the field F is equal to the dimension of the column space of A (the column space being the subspace of Fm generated by the columns of A).


Alternatively and equivalently, we can define the rank of A as the dimension of the row space of A.


If one considers the matrix A as a linear map

f : FnFm

with the rule

f(x) = Ax

then the rank of A can also be defined as the dimension of the image of f, or as n minus the dimension of the kernel of f (see linear map for a discussion of image and kernel). These definitions have the advantage that they can be applied to any linear map without need for a specific matrix. (The fact that the image dimension equals n minus the kernel dimension is one formulation of the rank-nullity theorem.)


Properties

We assume that A is an m-by-n matrix over the field F and describes a linear map f as above.

  • only the zero matrix has rank 0
  • the rank of A is at most min(m,n)
  • f is injective if and only if A has rank n (in this case, we say that A has full column rank).
  • f is surjective if and only if A has rank m (in this case, we say that A has full row rank).
  • In the case of a square matrix A (i.e., m = n), then A is invertible if and only if A has rank n (we say that A has full rank).
  • If B is any n-by-k matrix, then the rank of AB is at most the minimum of the rank of A and the rank of B.
As an example of the "<" case, consider the product
Both factors have rank 1, but the product has rank 0.
  • If B is an n-by-k matrix with rank n, then AB has the same rank as A.
  • If C is an l-by-m matrix with rank m, then CA has the same rank as A.
  • The rank of A is equal to r if and only if there exists an invertible m-by-m matrix X and an invertible n-by-n matrix Y such that
where Ir denotes the r-by-r identity matrix.
  • The rank of a matrix plus the nullity of the matrix equals the number of columns of the matrix (this is the "rank theorem" or the "rank-nullity theorem").

Computation

The easiest way to compute the rank of a matrix A is given by the Gauss elimination method. The row-echelon form of A produced by the Gauss algorithm has the same rank as A, and its rank can be read off as the number of non-zero rows.


Consider for example the 4-by-4 matrix

We see that the second column is twice the first column, and that the fourth column equals the sum of the first and the third. The first and the third columns are linearly independent, so the rank of A is two. This can be confirmed with the Gauss algorithm. It produces the following row echelon form of A:

which has two non-zero rows.


Generalization

There are different generalisations of the concept of rank to matrices over arbitrary rings. In those generalisations, column rank, row rank, dimension of column space and dimension of row space of a matrix may be different from the others or may not exist.


  Results from FactBites:
 
Rank (linear algebra) - Wikipedia, the free encyclopedia (730 words)
In linear algebra, the column rank (row rank respectively) of a matrix A with entries in some field is defined to be the maximal number of columns (rows respectively) of A which are linearly independent.
The rank of a matrix plus the nullity of the matrix equals the number of columns of the matrix (this is the "rank theorem" or the "rank-nullity theorem").
Numerical determination of rank requires a criterion for deciding when a value, such as a singular value from the SVD, should be treated as zero, a practical choice which depends on both the matrix and the application.
  More results at FactBites »


 

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