Title: Rank and Nullity
1Section 5.6
2FOUR FUNDAMENTAL MATRIX SPACES
If we consider matrices A and AT together, then
there are six vector spaces of interest row
space A row space AT column space A column
space AT nullspace A nullspace AT. Since
transposing converts row vectors to column
vectors and vice versa, we really only have four
vector spaces of interest row space A column
space A nullspace A nullspace AT These are
known as the fundamental matrix spaces associated
with A.
3ROW SPACE AND COLUMN SPACE HAVE EQUAL DIMENSION
Theorem 5.6.1 If A is any matrix, then the row
space and column space of A have the same
dimension.
4RANK AND NULLITY
The common dimension of the row space and column
space of a matrix A is called the rank of A and
is denoted by rank(A). The dimension of the
nullspace of A is called the nullity of A and is
denoted by nullity(A).
5RANK OF A MATRIX AND ITS TRANSPOSE
Theorem 5.6.2 If A is any matrix, then rank(A)
rank(AT).
6DIMENSION THEOREM FOR MATRICES
Theorem 5.6.3 If A is any matrix with n
columns, then rank(A) nullity(A) n.
7THEOREM
Theorem 5.6.4 If A is an mn matrix,
then (a) rank(A) the number of leading
variables in the solution of Ax
0. (b) nullity(A) the number of parameters in
the general solution of Ax  0.
8MAXIMUM VALUE FOR RANK
If A is an mn matrix, then the row vectors lie
in Rn and the column vectors in Rm. This means
the row space is at most n-dimensional and the
column space is at most m-dimensional.
Thus, rank(A) min(m, n).
9THE CONSISTENCY THEOREM
Theorem 5.6.5 If Ax b is a system of m
equations in n unknowns, then the following are
equivalent. (a) Ax b is consistent. (b) b is in
the column space of A. (c) The coefficient matrix
A and the augmented matrix A b have the
same rank.
10THEOREM
Theorem 5.6.6 If Ax b is a linear system of m
equations in n unknowns, then the following are
equivalent. (a) Ax b is consistent for every
m1 matrix b. (b) The column vectors of A span
Rm. (c) rank(A) m.
11PARAMETERS AND RANK
Theorem 5.6.7 If Ax b is a consistent linear
systems of m equations in n unknowns, and if A
has rank r, then the general solution of the
system contains n - r parameters.
12THEOREM
Theorem 5.6.8 If A is an mn matrix, then the
following are equivalent. (a) Ax 0 has only the
trivial solution. (b) The column vectors of A are
linearly independent. (c) Ax b has at most one
solution (none or one) for every m1 matrix b.
13THE BIG THEOREM
Theorem 5.6.9 If A is an nn matrix, and if TA
Rn ? Rn is multiplication by A, then the
following are equivalent. (a) A is
invertible (b) Ax 0 has only the trivial
solution. (c) The reduced row-echelon form of A
is In. (d) A is expressible as a product of
elementary matrices. (e) Ax b is consistent for
every n1 matrix b. (f) Ax b has exactly one
solution for every n1 matrix b. (g) det(A) ?
0 (h) The range of TA is Rn.
14THE BIG THEOREM (CONCLUDED)
(i) TA is one-to-one. (j) The column vectors of A
are linearly independent. (k) The row vectors of
A are linearly independent. (l) The column
vectors of A span Rn. (m) The row vectors of A
span Rn. (n) The column vectors of A form a basis
for Rn. (o) The row vectors of A form a basis for
Rn. (p) A has rank n. (q) A has nullity 0.