Finding Eigenvectors and Eigenvalues

In summary: OK, that calculation is correct. You originally had ##v_2 = [-2, 1, 1]##, so you probably made a sign error in your earlier attempt.So let's summarize: you have eigenvalues ##0,2,3## with eigenvectors ##[-1, -1, 1]##, ##[2, 1, -1]##, and ##[0,0,1]##.In summary, the matrix A has 3 distinct eigenvalues λ1<λ2<λ3. The first eigenvalue is 0, with the corresponding eigenvector [-1,-1,1]. The second eigenvalue is 2, with the corresponding eigenvector
  • #1
concon
65
0

Homework Statement


The Matrix A is as follows
A= [4 -4 0
2 -2 0
-2 5 3]

and has 3 distinct eigenvalues λ1<λ2<λ3
Let Vi be the unique eigenvector associated with λi with a 1 as its first nonzero component.
Let
D = [ λ1 0 0
0 λ2 0
0 0 λ3]

and P= [v1|v2|v3]

Find D and P.



Homework Equations


not going to right it out but I know you find eigenvectors by (λI-A)X = 0
and eigenvalues by det(λI-A).



The Attempt at a Solution



So I already found D with the eigenvalues as {0,2,3}

I tried to solve for P and got

[-1 -2 0
1 1 0
1 1 1]
but this is wrong.

I am kinds confused b/c the textbook says (λI-A)X=0 but my professor uses (A-λI)X=0 in class!
 
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  • #2
concon said:
So I already found D with the eigenvalues as {0,2,3}

I tried to solve for P and got

[-1 -2 0
1 1 0
1 1 1]
but this is wrong.
The columns of ##P = [v_1 | v_2 | v_3]## should be eigenvectors of ##A##. But calculating ##Av_1## and ##Av_2## shows that the first two columns are not eigenvectors.

I am kinds confused b/c the textbook says (λI-A)X=0 but my professor uses (A-λI)X=0 in class!
Both are correct. One is simply the negative of the other. Since a vector is zero if and only if its negative is zero, the equations are equivalent.
 
  • #3
jbunniii said:
The columns of ##P = [v_1 | v_2 | v_3]## should be eigenvectors of ##A##. But calculating ##Av_1## and ##Av_2## shows that the first two columns are not eigenvectors.


Both are correct. One is simply the negative of the other. Since a vector is zero if and only if its negative is zero, the equations are equivalent.

What do you mean? That the eigenvectors that I calculated v1,v2,v3 are not correct? Or that they are not actual eigenvectors?

What should I do then?
 
  • #4
concon said:
What do you mean? That the eigenvectors that I calculated v1,v2,v3 are not correct? Or that they are not actual eigenvectors?

What should I do then?
They are not eigenvectors:
$$Av_1 = \begin{bmatrix}4 & -4 & 0 \\
2 & -2 & 0 \\
-2 & 5 & 3 \\
\end{bmatrix}
\begin{bmatrix}
-1 \\ 1 \\ 1 \end{bmatrix}
=
\begin{bmatrix}
-8 \\ -4 \\ 10 \end{bmatrix}
$$
which is not a multiple of
$$\begin{bmatrix}
-1 \\ 1 \\ 1 \end{bmatrix}
$$
Similarly, ##A v_2## is not a multiple of ##v_2##.
 
  • #5
jbunniii said:
They are not eigenvectors:
$$Av_1 = \begin{bmatrix}4 & -4 & 0 \\
2 & -2 & 0 \\
-2 & 5 & 3 \\
\end{bmatrix}
\begin{bmatrix}
-1 \\ 1 \\ 1 \end{bmatrix}
=
\begin{bmatrix}
-8 \\ -4 \\ 10 \end{bmatrix}
$$
which is not a multiple of
$$\begin{bmatrix}
-1 \\ 1 \\ 1 \end{bmatrix}
$$
Similarly, ##A v_2## is not a multiple of ##v_2##.

So then what is/how do i find P?
 
  • #6
concon said:
So then what is/how do i find P?
The columns of ##P## should be eigenvectors of ##A##. Your eigenvalues are correct. How did you calculate the corresponding eigenvectors? Maybe you just made an arithmetic mistake.
 
  • #7
jbunniii said:
The columns of ##P## should be eigenvectors of ##A##. Your eigenvalues are correct. How did you calculate the corresponding eigenvectors? Maybe you just made an arithmetic mistake.

So I took each value 0,2,3 and did (A-λI)X = 0

For zero:
(4-0) -4 0
2 (-2-0) 0
-2 5 (3-0)

then I reduced and got
v1 = -1,-1,1
and did same process for the other values and got

v2=-2,-1,1
v3=0,0,1

Everytime I solve this problem I get the same values, but the signs change but the numbers are still the same. Have you tried solving it? Is this what you got? What could I be doing wrong?
 
  • #8
concon said:
So I took each value 0,2,3 and did (A-λI)X = 0

For zero:
(4-0) -4 0
2 (-2-0) 0
-2 5 (3-0)

then I reduced and got
v1 = -1,-1,1
OK, that's fine. Using this ##v_1## we calculate ##Av_1 = 0##, so ##v_1## is an eigenvalue associated with the eigenvalue ##0##. In your original post you had v1 = [-1, 1, 1], so maybe you made a sign error last time you calculated it.
and did same process for the other values and got

v2=-2,-1,1
Nope, using this ##v_2## I calculate ##A v_2 = [0, 0, -3]##, which is not a multiple of ##[-2, -1, 1]##.
v3=0,0,1
This is fine, assuming it goes with the eigenvalue 3.
Everytime I solve this problem I get the same values, but the signs change but the numbers are still the same. Have you tried solving it? Is this what you got? What could I be doing wrong?
I think you're making sign errors in some of your calculations. Can you show how you computed ##v_2##?
 
  • #9
jbunniii said:
OK, that's fine. Using this ##v_1## we calculate ##Av_1 = 0##, so ##v_1## is an eigenvalue associated with the eigenvalue ##0##. In your original post you had v1 = [-1, 1, 1], so maybe you made a sign error last time you calculated it.

Nope, using this ##v_2## I calculate ##A v_2 = [0, 0, -3]##, which is not a multiple of ##[-2, -1, 1]##.

This is fine, assuming it goes with the eigenvalue 3.

I think you're making sign errors in some of your calculations. Can you show how you computed ##v_2##?
Okay here is calculation again for v2:
λ=2

(4-2) -4 0
2 (-2-2) 0
-2 5 1


simplified:
2 -4 0
2 -4 0
-2 5 1

row 1 minus row 2
2 -4 0
0 0 0
-2 5 1

row 1 plus row 3

2 -4 0
0 0 0
0 1 1

divide row one by 2

1 -2 0
0 0 0
0 1 1

x= 2t
y= t
z= -t

thus v2 = 2,1,-1
 
  • #10
concon said:
x= 2t
y= t
z= -t

thus v2 = 2,1,-1
OK, that calculation is correct. You originally had ##v_2 = [-2, 1, 1]##, so you probably made a sign error in your earlier attempt.

So let's summarize: you have eigenvalues ##0,2,3## with corresponding eigenvectors ##v_1 = [-1, -1, 1]##, ##v_2 = [2, 1, -1]##, and ##v_3 = [0, 0, 1]##. So your ##P## matrix could be
$$P = [v_1 | v_2 | v_3] = \begin{bmatrix}
-1 & 2 & 0 \\
-1 & 1 & 0 \\
1 & -1 & 1 \end{bmatrix}$$
However, there is one more thing the original problem asked for:
Let Vi be the unique eigenvector associated with λi with a 1 as its first nonzero component.
Your ##v_1## has ##-1## as its first component, and your ##v_2## has ##-2##. So you have to normalize your vectors to get ##1## as the first nonzero component. (##v_3## is OK as is.)
 
  • #11
jbunniii said:
OK, that calculation is correct. You originally had ##v_2 = [-2, 1, 1]##, so you probably made a sign error in your earlier attempt.

So let's summarize: you have eigenvalues ##0,2,3## with corresponding eigenvectors ##v_1 = [-1, -1, 1]##, ##v_2 = [2, 1, -1]##, and ##v_3 = [0, 0, 1]##. So your ##P## matrix could be
$$P = [v_1 | v_2 | v_3] = \begin{bmatrix}
-1 & 2 & 0 \\
-1 & 1 & 0 \\
1 & -1 & 1 \end{bmatrix}$$
However, there is one more thing the original problem asked for:

Your ##v_1## has ##-1## as its first component, and your ##v_2## has ##-2##. So you have to normalize your vectors to get ##1## as the first nonzero component. (##v_3## is OK as is.)

Wait but doesn't normalizing a vector mean taking v1/||v1|| ?

How would that give me a 1 as the first nonzero component?
Also if I use v2 = 2,1,-1 do I also need to normalize it if the 2 isn't negative?
 
  • #12
concon said:
Wait but doesn't normalizing a vector mean taking v1/||v1|| ?

How would that give me a 1 as the first nonzero component?
Sorry, I meant you need to scale the vectors so that the first nonzero component is 1. So for example, if you had an eigenvector ##v = [-3, 1, -5]## you would multiply it by -1/3 to get ##[1, -1/3, 5/3]##.

Note that any nonzero multiple of an eigenvector is still an eigenvector associated with the same eigenvalue, because if ##Av = \lambda v## then multiplying ##v## by a constant scalar ##c##, we get ##A(cv) = c(Av) = c(\lambda v) = \lambda(cv)##.

Generally there's no need to scale the eigenvectors in any particular way unless the problem requests it. Probably your instructor wants them scaled with a 1 in the first nonzero component so your answer is guaranteed to match his/hers if it is correct.
 
  • #13
jbunniii said:
Sorry, I meant you need to scale the vectors so that the first nonzero component is 1. So for example, if you had an eigenvector ##v = [-3, 1, -5]## you would multiply it by -1/3 to get ##[1, -1/3, 5/3]##.

Note that any nonzero multiple of an eigenvector is still an eigenvector associated with the same eigenvalue, because if ##Av = \lambda v## then multiplying ##v## by a constant scalar ##c##, we get ##A(cv) = c(Av) = c(\lambda v) = \lambda(cv)##.

Generally there's no need to scale the eigenvectors in any particular way unless the problem requests it. Probably your instructor wants them scaled with a 1 in the first nonzero component so your answer is guaranteed to match his/hers if it is correct.

Okay so scaling would give me:
1 2 0
1 1 0
-1 -1 1
Is this correct?
 
  • #14
concon said:
Okay so scaling would give me:
1 2 0
1 1 0
-1 -1 1
Is this correct?
The first and third columns are OK. The second column's first component is 2, not 1, so it is not scaled as requested.
 
  • #15
jbunniii said:
The first and third columns are OK. The second column's first component is 2, not 1, so it is not scaled as requested.
whoops forget to scale that one! Thanks for all your help I really appreciate it! For some reason the scaling thing didn't register with me on what the professor wanted and I was confused with the sign changing.
 

Related to Finding Eigenvectors and Eigenvalues

1. What are eigenvectors and eigenvalues?

Eigenvectors and eigenvalues are mathematical concepts that are used to analyze linear transformations. An eigenvector is a vector that remains in the same direction after a linear transformation is applied to it. An eigenvalue is a scalar value that represents how much the eigenvector is scaled during the transformation.

2. Why are eigenvectors and eigenvalues important?

Eigenvectors and eigenvalues are important because they can provide useful insights into the behavior of linear transformations. They can help identify the direction and magnitude of the transformation and can be used to simplify complex calculations.

3. How do you find eigenvectors and eigenvalues?

To find eigenvectors and eigenvalues, you first need to create a matrix from the linear transformation. Then, you can use various methods, such as the characteristic polynomial or the power iteration method, to calculate the eigenvalues. Once you have the eigenvalues, you can use them to solve for the corresponding eigenvectors.

4. What is the significance of the determinant when finding eigenvalues and eigenvectors?

The determinant of a matrix is closely related to its eigenvalues. The eigenvalues can be obtained by solving the characteristic polynomial, which involves the determinant of the matrix. The determinant also plays a role in determining the linear independence of eigenvectors.

5. How are eigenvectors and eigenvalues used in real-world applications?

Eigenvectors and eigenvalues have various applications in fields such as physics, engineering, and computer science. They can be used in image and signal processing, data compression, and machine learning algorithms. In physics, they are used to analyze the behavior of quantum systems. In engineering, they can help solve problems related to structures and vibrations. In computer science, they are used in graph algorithms and data analysis.

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