Answer questions about vector spaces of polynomials or matrices.
Subsection2.8.1Class Activities
Fact2.8.1.
Every vector space with finite dimension, that is, every vector space \(V\) with a basis of the form \(\{\vec v_1,\vec v_2,\dots,\vec v_n\}\) is said to be isomorphic to a Euclidean space \(\IR^n\text{,}\) since there exists a natural correspondance between vectors in \(V\) and vectors in \(\IR^n\text{:}\)
We've already been taking advantage of the previous fact by converting polynomials and matrices into Euclidean vectors. Since \(\P_3\) and \(M_{2,2}\) are both four-dimensional:
Suppose \(W\) is a subspace of \(\P_8\text{,}\) and you know that the set \(\{ x^3+x, x^2+1, x^4-x \}\) is a linearly independent subset of \(W\text{.}\) What can you conclude about \(W\text{?}\)
The dimension of \(W\) is 3 or less.
The dimension of \(W\) is exactly 3.
The dimension of \(W\) is 3 or more.
Activity2.8.4.
Suppose \(W\) is a subspace of \(\P_8\text{,}\) and you know that \(W\) is spanned by the six vectors
The space of polynomials \(\P\) (of any degree) has the basis \(\{1,x,x^2,x^3,\dots\}\text{,}\) so it is a natural example of an infinite-dimensional vector space.
Since \(\P\) and other infinite-dimensional spaces cannot be treated as an isomorphic finite-dimensional Euclidean space \(\IR^n\text{,}\) vectors in such spaces cannot be studied by converting them into Euclidean vectors. Fortunately, most of the examples we will be interested in for this course will be finite-dimensional.
Subsection2.8.2Videos
Figure21.Video: Polynomial and matrix calculations
Calculate a basis for the row space and a basis for the column space of the matrix \(\left[\begin{array}{cccc}2&0&3&4\\0&1&1&-1\\3&1&0&2\\10&-4&-1&-1\end{array}\right]\text{.}\)
Exploration2.8.8.
If you are given the values of \(a,b,\) and \(c\text{,}\) what value of \(d\) will cause the matrix \(\left[\begin{array}{cc}a&b\\c&d\end{array}\right]\) to have rank 1?