Example II
Let V=Rn and consider the following elements in V:
- e1 = (1,0,0,...,0)
- e2 = (0,1,0,...,0)
- ...
- en = (0,0,0,...,1)
Then e1,e2,...,en are linearly independent.
Proof:
Suppose that a1, a2, ,an are elements of Rn such that
- a1e1 + a2e2 + ... + anen = 0
Since
- a1e1 + a2e2 + .. + anen = (a1,a2,..,an)
then ai = 0 for all i in {1,..,n}.
Example III: (Calculus required)
Let V be the vector space of all functions of a real variable t. Then the functions et and e2t in V are linearly independent.
Proof:
Suppose a and b are two real numbers such that
- aet + be2t = 0 (1)
for all values of t. We need to show that a=0 and b=0. In order to do this,
we differentiate equation (1) to get
- aet + 2be2t = 0 (2)
which also holds for all values of t.
Subtracting the first relation from the second relation, we obtain:
- be2t = 0
and, by plugging in t = 0, we get b = 0.
From the first relation we then get:
- aet = 0
and again for t = 0 we find a = 0.
A linear dependence among vectors v1,...,vn is a vector (a1,...,an) with n scalar components, not all zero, such that a1v1+...+anvn=0.
If such a linear dependence exists, then the n vectors are linearly dependent. It makes sense to identify two linear dependences if one arises as a non-zero multiple of the other, because in this case the two describe the same linear relationship among the vectors. Under this identification, the set of all linear dependences among v1, ...., vn is a projective space.
See also: