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Transcript
Math 310, Lesieutre
Problem set #7
October 14, 2015
Problems for M 10/5:
3.3.1 Use Cramer’s rule to solve 5x1 + 7x2 = 3, 2x1 + 4x2 = 1.
We have
5 7
A=
,
2 4
3
b=
.
1
Note det A = 6. According to Cramer’s rule,
3 7 1 4 5
det A1 (b)
=
= .
x1 =
det A
6
6 5 3 2 1 1
det A2 (b)
=
=− .
x2 =
det A
6
6
3.3.7 Determine the values of s for which the system has a unique solution, and describe the
solution:
6sx1 + 4x2 = 5
9x1 + 2sx2 = −2.
This is another one for Cramer’s rule. Use
6s 4
A=
,
9 2s
5
b=
.
−2
This time det A = 12s2 − 36.
5 4
−2 2s
det A1 (b)
10s + 8
=
=
.
x1 =
2
det A
12s
− 36
12s2 − 36
6s 5 9 −2
det A2 (b)
12s + 45
x2 =
=
=−
.
2
det A
12s − 36
12s2 − 36
√
There’s a unique solution as long as 12s2 − 36 is not 0, which is to say that s 6= ± 3.
The solution then is what it says above.
3.3.11 Find the adjugate of the given matrix and use it to find the inverse:


0 −2 −1
0
0
A= 5
−1 1
1
(We didn’t define the adjugate in class, though we got close: take a look at page 181.)
The minors we need are
0 0 1 1 = 0
−2 −1
= −1
1
1 −2 −1
=0
0
0
5 0
−1 1 = 5
0 −1
−1 1 = −1
0 −1
5 0 = 5
To get the adjugate, with stick these guys in
− signs, then take the transpose.

0

adj(A) = −5
5
5 0
−1 1 = 5
0 −2
−1 1 = −2
0 −2
5 0 = 10
a grid with the usual alternating + and

1
0
−1 −5
2 10
To find the inverse, we need to know det A. Expanding by cofactors in the second row,
that’s
−2 −1
= (−5)(−1) = 5.
−5 1
1
So

1
0
0
5
= −1 − 15 −1 .
2
1
2
5

A−1
3.3.20 Find the area of the parallelogram with vertices (0, 0), (2, −4), (4, −5), and (2, −1)
Remember that determinant gives the area of a parallelogram (taking absolute value,
anyway). The area we’re after is
2
2
= 6.
area = −4 −1
3.3.29 Find a formula for the area of the triangle whose vertices are 0, v1 = (a, b), and
v2 = (c, d) in R2 .
The triangle is half of the parallelogram with legs those vectors, so
1 a b
ad − bc
area =
=
.
2 c d
2
Problems for W 10/7:
4.1.1 Let V be the first quadrant in the xy-plane, that is the set of all vectors (x, y) with
x ≥ 0 and y ≥ 0. In set notation, this is:
x
V =
: x ≥ 0, y ≥ 0 .
y
(a) If u and v are in V , is u + v in V ?
Yes, it is: if you add two vectors where both of the entries are positive, the sum
has both entries positive.
(b) Find a specific vector u in V and a specific scalar c such that cu is not in V .
(This is enough to show that V is not a vector space.)
Take
1
v=
.
1
and c = −1. Then
−1
cv =
,
−1
which isn’t in V . But this means that V isn’t a subspace.
4.1.3 Let H be the set of points inside and on the unit circle in the xy-plane:
x
2
2
H=
:x +y ≤1 .
y
Find a specific example – two vectors or a vector and a scalar – to show that H is not
a subspace of R2 .
Take
1/2
v=
.
1/2
Then v is in V because (1/2)2 + (1/2)2 = 1/2. Set c = 2. Then
1
cv =
,
1
which isn’t in V because 12 + 12 = 2 > 1. This means that V isn’t a subspace.
4.1.5 Let P2 be the vector space of polynomials of degree at most 2. Is the set of polynomials
of the form at2 a subset of P2 (where a is a scalar?)
It is a subspace. We have (at2 ) + (bt2 ) = (a + b)t2 , which is also of the required form.
So the set is closed under addition. Also, c(at2 ) = (ac)t2 , as needed.
4.1.7 Let P2 be the vector space of polynomials of degree at most 3. Is the set of all polynomials with integers as coefficients a subspace?
Nope this one isn’t a subspace. Take the vector v = t3 , which has integer coefficients.
Take c = 1/2. Then cv = t3 /2, which doesn’t have integers as coefficients.
Problems for F 10/9:


5b + 2c
4.1.11 Let W be the set of all vectors of the form  b . Find vectors u and v such that
c
W = span(u, v). Why does this show that W is a subspace of Rn ?
This is the span of
 
5

u = 1 ,
0
since
 
2

v = 0 ,
1
 
  

5
2
5b + 2c
bu + cv = b 1 + c 0 =  b  .
0
1
c
It shows that W is a subspace because the span of any set of vectors is always a
subspace.
4.2.4 Find an explicit description of the nullspace of the following matrix by listing a set of
vectors that span the nullspace:
1 −6 4 0
A=
0 0 2 0
We want to find the general solution in parametric vector form, and then take the
vectors that show up here. These span the set (in fact, they’re a basis for the nullspace
in the lingo from this week).
We need to get to rref:
1 −6 4 0
1 −6 0 0
1 −6 0 0
→
→
.
0 0 2 0
0 0 2 0
0 0 1 0
The variables x2 and x4 are free, and x1 = 6x2 and x3 = 0. The parametric vector
form is
 
 
 
0
x1
6
0
x2 
1
  = s  + t .
0
x3 
0
1
x4
0
A basis for the nullspace is
 
6
1

u=
0 ,
0
 
0
0

v=
0 .
1
4.2.7 Explain why the following set either is or is not a vector space:
 

 a

b : a + b + c = 2


c
 
2

This is not a vector space. For example, v = 0 is in the space, since 2 + 0 + 0 = 2.
0 
14

But if we multiply by the scalar 7, we get 7v = 0 , which isn’t, since 14 + 0 + 0 6= 2.
0
So the set in question is not closed under multiplication by scalars (in fact it isn’t
closed under addition, either.)
4.2.15 Find a matrix A such that the given set is the column space of A.



2s + 3t







r
+
s
−
2t

 : r, s, t are scalars .
 4r + s 






3r − s − t
This is a lot like the one we just did.


0 2
3
1 1 −2
.
A=
4 1
0
3 −1 −1
4.2.17 For what value of k is Nul(A) a subspace of Rk ? For what value of k is Col(A) a
subspace of Rk ?


2 −6
−1 3 

A=
−4 12  .
3 −9
Remember that for a m × n matrix, the nullspace is a subspace of Rn (the number
of columns), while the column space is a subspace of Rm (the number of rows). This
matrix is 4×2, so the nullspace is a subspace of R2 , and the column space is a subspace
of R4 . (Once you get to the bottom of things, this problem is really just asking you
what the dimensions of the matrix are.)