Mark each statement as True or False. Justify each answer.
- a. If A is invertible and 1 is an eigenvalue for A, then 1 is also an eigenvalue of A−1.
- b. If A is row equivalent to the identity matrix I, then A is diagonalizable.
- c. If A contains a row or column of zeros, then 0 is an eigenvalue of A.
- d. Each eigenvalue of A is also an eigenvalue of A2.
- e. Each eigenvector of A is also an eigenvector of A2.
- f. Each eigenvector of an invertible matrix A is also an eigenvector of A−1.
- g. Eigenvalues must be nonzero scalars.
- h. Eigenvectors must be nonzero
vectors . - i. Two eigenvectors corresponding to the same eigenvalue are always linearly dependent.
- j. Similar matrices always have exactly the same eigenvalues.
- k. Similar matrices always have exactly the same eigen vectors.
- l. The sum of two eigenvectors of a matrix A is also an eigenvector of A.
- m. The eigenvalues of an upper triangular matrix A are exactly the nonzero entries on the diagonal of A.
- n. The matrices A and AT have the same eigenvalues, counting multiplicities.
- ○. If a 5 × 5 matrix A has fewer than 5 distinct eigenvalues, then A is not diagonalizable.
- p. There exists a 2 × 2 matrix that has no eigenvectors in ℝ2.
- q. If A is diagonalizable, then the columns of A are linearly independent.
- r. A nonzero vector cannot correspond to two different eigenvalues of A.
- s. A (square) matrix A is invertible if and only if there is a
coordinate system in which the transformation x i ↦ Ax is represented by a diagonal matrix. - t. If each vector ej in the standard basis for ℝn is an eigenvector of A, then A is a diagonal matrix.
- u. If A is similar to a diagonalizable matrix B, then A is also diagonalizable.
- v. If A and B are invertible n × n matrices, then AB is similar to BA.
- w. An n × n matrix with n linearly independent eigenvectors is invertible.
- x. If A is an n × n diagonalizable matrix, then each vector in ℝn can be written as a linear combination of eigenvectors of A.
(a)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
If A is invertible and 1 is an eigenvalue for A, then 1 is also an eigenvalue of
Explanation:
Consider the equation as follows:
Left-multiply with
Rewrite the equation as follows:
In this equation, x cannot be equal to zero. That is,
Therefore, 1 is an eigenvalue of
The given statement is true.
(b)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
If A is a row equivalent to the identity matrix I, then A is diagonalizable.
Explanation:
If A is a row that is equivalent to the identity matrix, then A is invertible.
Refer to Example 4 in section 5.3:
The given matrix is invertible. However, matrix A is not diagonalizable.
The given statement is false.
(c)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
If A contains a row or column of zeros, then 0 is an eigenvalue of A.
Explanation:
Theorem: The Invertible Matrix Theorem
Let Abe an
s. The number 0 is not an eigenvalue of A.
t. The determinant of A is not zero.
As given in the statement, if A contains a row or column of zeros, then A is not a row equivalent to the identity matrix.
Therefore, matrix A is not invertible.
Refer to the invertible matrix theorem, o is an eigenvalue of matrix A.
The given statement is true.
(d)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
Each eigenvalue of A is also an eigenvalue of
Explanation:
Consider a diagonal matrix whose eigenvalues are 1 and 2.
The value of
Then, the diagonal entries in the matrix are squaresof the eigenvalues of matrix A.
Therefore, the eigenvalues of
The given statement is false.
(e)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
Each eigenvector of A is also an eigenvector of
Explanation:
Consider a nonzero vector x.
The condition to be satisfied is
Left-multiply with A on both sides.
The derived equation shows that x is also an eigenvector of
The given statement is true.
(f)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
Each eigenvector of an invertible matrix A is also an eigenvector of
Explanation:
Consider a nonzero vector x.
The condition to be satisfied is
Left-multiply with
Matrix A is invertible and the eigenvalue of the matrix is nonzero.
The derived equation shows that x is also an eigenvector of
The given statement is true.
(g)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
Eigenvalues must be nonzero scalars.
Explanation:
For each singular square matrix, 0 will be the eigenvalue.
The given statement is false.
(h)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
Eigenvectors must be nonzero vectors.
Explanation:
Definition:
An eigenvector of an
Refer to the definition; an eigenvector must be nonzero.
The given statement is true.
(i)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
Two eigenvectors corresponding to the same eigenvalue are always linearly independent.
Explanation:
Refer to example 4 in section 5.1.
The eigenvalue for the given matrix is 2.
However, the calculated eigenvector for the eigenvalue is not linearly independent.
The given statement is false.
(j)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
Similar matrices always have exactly the same eigenvalues.
Explanation:
Theorem 4 (Section 5.2):
If
Refer to theorem 4; the given statement is correct.
The given statement is true.
(k)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
Similar matrices always have exactly the same eigenvectors.
Explanation:
Refer to example 3 in section 5.3.
Consider
The eigenvalues of the matrix are
The diagonalizable matrix is
Consider the matrix A is similar to the matrix D.
Suppose the eigenvalues of matrix D to be in column
Therefore, the given statement is incorrect.
The given statement is false.
(l)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
The sum of two eigenvectors of matrix A is also an eigenvector of A.
Explanation:
Consider a
The value of
The value of
Here,
Therefore, the given statement is incorrect.
The given statement is false.
(m)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
The eigenvalues of upper triangular matrix A are the exact nonzero entries on the diagonal of A.
Explanation:
Theorem 1: (Section 5.1):
The eigenvalues of a triangular matrix are the entries on its main diagonal.
In the given problem, the upper triangular matrix A has exactly nonzero entries. In reality, it is not necessary for that to be the case. Zero entries can also be available.
The given statement is false.
(n)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
Matrices A and
Explanation:
Apply the concept of determinant transpose property.
Show the determinant calculation of matrix A as follows:
Therefore, matrices A and
The given statement is true.
(o)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
If a
Explanation:
Refer to practice problem 3 in section 5.3.
Consider an identity matrix A that is
The given statement is false.
(p)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
A
Explanation:
Consider matrix A.
Matrix A rotates the vectors through
The value of Ax is not a multiple of x when x is a nonzero value.
The given statement is true.
(q)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
If A is diagonalizable, then the columns of A are linearly independent.
Explanation:
Consider a diagonal matrix A with 0 as diagonals.
Then, the columns of the diagonal matrix A are not linearly independent.
The given statement is false.
(r)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
A nonzero vector cannot correspond to two different eigenvalues of A.
Explanation:
Consider the following example:
Equate both the values of
Suppose x cannot be equal to zero, that is,
Therefore, for a nonzero vector, two different eigenvalues are the same.
The given statement is true.
(s)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
A (square) matrix A is invertible if and only if there is a coordinate system in which the transformation
Explanation:
Theorem 8 (Section 5.4):
Diagonal Matrix Representation:
Suppose
Consider a singular matrix A that is diagonalizable.
Refer to the theorem; the transformation
The given statement is false.
(t)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
If each vector
Explanation:
Refer to the definition of matrix multiplication.
Show the multiplication of matrix A with I as follows:
If the values are considered as
Then, matrix A becomes a diagonal matrix with the diagonal entries of
Therefore, the given statement is correct.
The given statement is true.
(u)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
If A is similar to diagonalizable matrix B, then A is also diagonalizable.
Explanation:
Consider matrix B.
For a diagonalizable matrix:
Here, D is a diagonalizable matrix.
Consider matrix A. Write the equation as follows:
Substitute
Therefore, matrix A is diagonalizable.
The given statement is true.
(v)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
If A and B are invertible
Explanation:
If the matrix B is invertible, the value of AB is similar to
This calculated value is equal to BA.
The given statement is true.
(w)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is false.
Explanation of Solution
Given statement:
An
Explanation:
Theorem 5 (Section 5.3):
The diagonalization theorem:
An
In fact,
Refer to the theorem; the
The given statement is false.
(x)
![Check Mark](/static/check-mark.png)
To mark: Each statement as true of false.
To justify: The answer.
Answer to Problem 1SE
The given statement is true.
Explanation of Solution
Given statement:
If A is an
Explanation:
Theorem 5 (Section 5.3):
The diagonalization theorem:
An
In fact,
A is diagonalizable if and only if A has n linearly independent eigenvectors
Refer to basis theorem:
That is, each vector in
The given statement is true.
Want to see more full solutions like this?
Chapter 5 Solutions
LINEAR ALGEBRA AND ITS APPLICATION -TEX
Additional Math Textbook Solutions
Calculus for Business, Economics, Life Sciences, and Social Sciences (14th Edition)
Intro Stats, Books a la Carte Edition (5th Edition)
Elementary Statistics
Basic Business Statistics, Student Value Edition
Algebra and Trigonometry (6th Edition)
- Graph without using the calculator y-1 = | x+4 |arrow_forward9:43 AS く Akbar © Printed in the United States 15) Scale: 1 cmal unit on both axes .ill 64% The graph above shows a straight line QT intersecting the y-axis at T. i State the co-ordinates of T. ii Calculate the gradient of QT 16) iii Determine the equation of QT. A (-1, 9) ||| i L Г (5 marks)arrow_forwardPls help.arrow_forward
- Solve the system of equation for y using Cramer's rule. Hint: The determinant of the coefficient matrix is -23. - 5x + y − z = −7 2x-y-2z = 6 3x+2z-7arrow_forwarderic pez Xte in z= Therefore, we have (x, y, z)=(3.0000, 83.6.1 Exercise Gauss-Seidel iteration with Start with (x, y, z) = (0, 0, 0). Use the convergent Jacobi i Tol=10 to solve the following systems: 1. 5x-y+z = 10 2x-8y-z=11 -x+y+4z=3 iteration (x Assi 2 Assi 3. 4. x-5y-z=-8 4x-y- z=13 2x - y-6z=-2 4x y + z = 7 4x-8y + z = -21 -2x+ y +5z = 15 4x + y - z=13 2x - y-6z=-2 x-5y- z=-8 realme Shot on realme C30 2025.01.31 22:35 farrow_forwardUse Pascal's triangle to expand the binomial (6m+2)^2arrow_forward
- Linear Algebra: A Modern IntroductionAlgebraISBN:9781285463247Author:David PoolePublisher:Cengage LearningElementary Linear Algebra (MindTap Course List)AlgebraISBN:9781305658004Author:Ron LarsonPublisher:Cengage LearningAlgebra & Trigonometry with Analytic GeometryAlgebraISBN:9781133382119Author:SwokowskiPublisher:Cengage
![Text book image](https://www.bartleby.com/isbn_cover_images/9781285463247/9781285463247_smallCoverImage.gif)
![Text book image](https://www.bartleby.com/isbn_cover_images/9781305658004/9781305658004_smallCoverImage.gif)