The span of a set of vectors, also called linear span, is the linear space formed by all the vectors that can be written as linear combinations of the vectors belonging to the given set.
Let us start with a formal definition of span.
Definition
Let
be a linear space. Let
be
vectors. The linear span of
,
denoted
by
is the set of all the linear combinations
that
can be obtained by arbitrarily choosing
scalars
,
...,
.
A very simple example of a linear span follows.
Example
Let
and
be
column vectors defined as
follows:
Let
be a linear combination of
and
with coefficients
and
.
Then,
Thus,
the linear span is the set of all vectors
that can be written
as
where
and
are two arbitrary scalars.
The following proposition, although elementary, is extremely important.
Proposition The linear span of a set of vectors is a linear space.
Let
be the linear span of
vectors
.
Then,
is the set of all vectors
that can be represented as linear
combinations
Take
two vectors
and
belonging to
.
Then, there exist coefficients
and
such
that
The
span
is a linear space if and only if, for any two coefficients
and
,
the linear
combination
also
belongs to
.
But,
Thus,
the linear combination
can
itself be expressed as a linear combination of the vectors
with coefficients
,
...,
.
As a consequence, it belongs to the span
.
In summary, we have proved that any linear combination of vectors belonging to
the span
also belongs to the span
.
This means that
is a linear space.
Below you can find some exercises with explained solutions.
Define the following
vectors:
Does
belong to the linear span of
and
?
The linear span of
and
is the set of all vectors
that can be written as linear combinations of
and
with scalar coefficients
and
:
In
other words,
contains all the scalar multiples of the
vector
But
is not a scalar multiple of
.
Therefore,
does not belong to
.
Does the zero
vectorbelong
to the span of the vectors
and
defined above?
We have proved that the span is a linear space, and the zero vector always belongs to a linear space (by the very definition of linear space).
Please cite as:
Taboga, Marco (2021). "Linear span", Lectures on matrix algebra. https://www.statlect.com/matrix-algebra/linear-span.
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