62 ( ) True or False: If A and B are nxn matrices so that det(A) = det(B), then A and B are %3D cousins. Hint: part of Theorem 2 should be useful.

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Chapter2: Matrices
Section2.1: Operations With Matrices
Problem 77E
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plz provide answer for 6.2

6.1
Use the result of the Example above to compute Al00 (for A the matrix from the Example).
Hint: consider (PBP-1)100, What is B100?
6.2 (
cousins. Hint: part of Theorem 2 should be useful.
) True or False: If A and B are n xn matrices so that det(A) = det(B), then A and B are
63
True or False: If A and B are cousins and v is an eigenvector of A, then v is an
eigenvector of B.
Transcribed Image Text:6.1 Use the result of the Example above to compute Al00 (for A the matrix from the Example). Hint: consider (PBP-1)100, What is B100? 6.2 ( cousins. Hint: part of Theorem 2 should be useful. ) True or False: If A and B are n xn matrices so that det(A) = det(B), then A and B are 63 True or False: If A and B are cousins and v is an eigenvector of A, then v is an eigenvector of B.
6.
Read the following carefully, and then answer the questions that follow.
We say that two n x n matrices are cousins, if there is some invertible matrix P so that
A = PBP-1
"Notice that if A and B are cousins, then B = P-AP = (P|A(P)-1. Thus, the definition is "symmetric" (ie. the order we say it
doesn't matterk if A and B are cosusins then B and A are cousins.
One of the first things you might notice about the notion of cousins, it that it is clearly connected to
diagonalizability:
Theorem 1
A matrix A is diagonalizable if and only if there is a diagonal matrix D so that A and D are
cousins.
One might think from the definition that the main use of the definition of cousin matrices is to
reframe diagonalizability. However, it actually allows us to generalize it in useful ways - in the
following example and the first question below, we'll see matrices A and B which are cousins,
but where neither of which is diagonal, and for which techniques from our study of diagonalizable
matrices can be applied.
-7 -5]
Let A =
and let B = R3/2 =
be the matrix of rotation by 3n/2.
10
-1 0
1
Then with P=
-1
2
,if you compute PBP1, you will see that the end result is A.
Thus, A and B are cousins.
The next theorem shows us that cousins share a lot of important properties in common:
Theorem 2
If A and B are cousins, then:
1. det(A) = det(B), and
2. CA(x) = cB(x) (and hence A and B have the same eigenvalues.)
Proof: Let A = PBP- for some invertible matrix P.
1. det(A) = det(PBP-1) = det(P) - det(B) - det(P1) = det(B) (using that det(P) = 1/det(P1).)
2. CA(x) = det(xi – A) = det(xI – PBP-1). But we can rewrite I as PIP-1 and substitute
this in; so, continuing we have: .. = det(XPIP-1- PBP-1).
But then you can check that XPIP-1 - PBP-1 = P(xI – B)P1, by multiplying out the
right-hand side. This allows us to continue with:
... = det (P(xl – B)P1) = det(P) det (xl – B) det(P1) = det(xl - B) = cB(x)
Continues on the next page..
MAT223 - Winter 2022
Midterm 2
6.1
Use the result of the Example above to compute A100 (for A the matrix from the Example).
Hint: consider (PBP-)100, What is Bl002
6.2 (
) True or False: If A and B are nxn matrices so that det(A) = det(B), then A and B are
cousins. Hint: part of Theorem 2 should be useful.
63 *
***) True or False: If A and B are cousins and v is an eigenvector of A, then v is an
eigenvector of B.
Transcribed Image Text:6. Read the following carefully, and then answer the questions that follow. We say that two n x n matrices are cousins, if there is some invertible matrix P so that A = PBP-1 "Notice that if A and B are cousins, then B = P-AP = (P|A(P)-1. Thus, the definition is "symmetric" (ie. the order we say it doesn't matterk if A and B are cosusins then B and A are cousins. One of the first things you might notice about the notion of cousins, it that it is clearly connected to diagonalizability: Theorem 1 A matrix A is diagonalizable if and only if there is a diagonal matrix D so that A and D are cousins. One might think from the definition that the main use of the definition of cousin matrices is to reframe diagonalizability. However, it actually allows us to generalize it in useful ways - in the following example and the first question below, we'll see matrices A and B which are cousins, but where neither of which is diagonal, and for which techniques from our study of diagonalizable matrices can be applied. -7 -5] Let A = and let B = R3/2 = be the matrix of rotation by 3n/2. 10 -1 0 1 Then with P= -1 2 ,if you compute PBP1, you will see that the end result is A. Thus, A and B are cousins. The next theorem shows us that cousins share a lot of important properties in common: Theorem 2 If A and B are cousins, then: 1. det(A) = det(B), and 2. CA(x) = cB(x) (and hence A and B have the same eigenvalues.) Proof: Let A = PBP- for some invertible matrix P. 1. det(A) = det(PBP-1) = det(P) - det(B) - det(P1) = det(B) (using that det(P) = 1/det(P1).) 2. CA(x) = det(xi – A) = det(xI – PBP-1). But we can rewrite I as PIP-1 and substitute this in; so, continuing we have: .. = det(XPIP-1- PBP-1). But then you can check that XPIP-1 - PBP-1 = P(xI – B)P1, by multiplying out the right-hand side. This allows us to continue with: ... = det (P(xl – B)P1) = det(P) det (xl – B) det(P1) = det(xl - B) = cB(x) Continues on the next page.. MAT223 - Winter 2022 Midterm 2 6.1 Use the result of the Example above to compute A100 (for A the matrix from the Example). Hint: consider (PBP-)100, What is Bl002 6.2 ( ) True or False: If A and B are nxn matrices so that det(A) = det(B), then A and B are cousins. Hint: part of Theorem 2 should be useful. 63 * ***) True or False: If A and B are cousins and v is an eigenvector of A, then v is an eigenvector of B.
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