Title: Section 4.1: Vector Spaces and Subspaces
1- Section 4.1 Vector Spaces and Subspaces
2REVIEW
Recall the following algebraic properties of
3Definition A vector space is a nonempty set V of
objects, called vectors, on which are defined two
operations, called addition and multiplication by
scalars, subject to the ten axioms
4Examples
the set of polynomials of degree at most n
the set of all real-valued functions defined on
a set D.
5- Definition
- A subspace of a vector space V is a subset H of V
that satisfies - The zero vector of V is in H.
- H is closed under vector addition.
- H is closed under multiplication by scalars.
6Properties a-c guarantee that a subspace H of V
is itself a vector space. Why? a, b, and c in
the defn are precisely axioms 1, 4, and 6.
Axioms 2, 3, 7-10 are true in H because they
apply to all elements in V, including those in H.
Axiom 5 is also true by c. Thus every
subspace is a vector space and conversely, every
vector space is a subspace (or itself or possibly
something larger). -
7Examples
- The zero space 0, consisting of only the zero
vector in V - is a subspace of V.
8 5. Given and in a vector space V,
let Show that H is a subspace of V.
9Theorem 1 If are in a vector
space V, then Span
is a subspace of V.
10Example