Chapter 4 Flashcards

1
Q

Let V be a vector space over F and T: V โ†’ V is a linear map. What is an eigenvector?

A

A non-zero vector ๐ฏ is an eigenvector if T(๐ฏ) = ฦ›๐ฏ

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2
Q

Let V be a vector space over F and T: V โ†’ V is a linear map. What is the ฦ›-eigenspace?

A

V = {๐ฏ โ‹ฒ V: T(๐ฏ) = ฦ›๐ฏ}

= {๐ฏ โ‹ฒ V: (T - ฦ›I)๐ฏ = ๐ŸŽ}

= ker (T - ฦ›I)

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3
Q

Let V be a vector space over F and T: V โ†’ V is a linear map. How do you know the ฦ›-eigenspace is a subspace of V?

A

Since the eigenspace is a kernel

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4
Q

Why do we take ๐ฏ โ‹ฒ โ„‚^n and ฦ› โ‹ฒ โ„‚, even if the matrix A has real components?

A

A real matrix might have complex eigenvectors

as real polynomials can have complex roots

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5
Q

What is the characteristic polynomial of an n x n matrix A?

A

๐“ง_A (t) = det (A - tI)

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6
Q

How are the eigenvalues of A and the roots of characteristic polynomial related?

A

The eigenvalues of A are the roots of the characteristic polynomial

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7
Q

What are the eigenvalues of an upper triangular matrix?

A

Its diagonal entries

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8
Q

What is true of the determinant and characteristic polynomial for similar matrices?

A

They are the same

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9
Q

If A and B are similar, so that A = PโปยนBP, what is ๐“งA(t) equal to?

A

๐“งA(t) = ๐“งB(t)

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10
Q

Suppose A is an n x n matrix and ฦ› โ‹ฒ โ„‚ is an eigenvalue of A. What is the geometric multiplicity of ฦ›?

A

The dimension of the ฦ›-eigenspace

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11
Q

Suppose A is an n x n matrix and ฦ› โ‹ฒ โ„‚ is an eigenvalue of A. What is the algebraic multiplicity of ฦ›?

A

The multiplicity of the root ฦ› in the characteristic polynomial

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12
Q

How are the geometric and algebraic multiplicities of ฦ› related?

A

The geometric multiplicity of ฦ› is less than or equal to the algebraic multiplicity of ฦ›

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13
Q

If ๐ฏโ‚, โ€ฆ, ๐ฏn are eigenvectors of A corresponding to distinct eigenvalues ฦ›โ‚, โ€ฆ, ฦ›n, then what does this mean for {๐ฏโ‚, โ€ฆ, ๐ฏn}?

A

{๐ฏโ‚, โ€ฆ, ๐ฏn} is linearly independent

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14
Q

When is an n x n matrix A called diagonalisable?

A

If it is similar to a diagonal matrix

That is, there exists a P, such that PโปยนAP is diagonal

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15
Q

Let A be an n x n matrix and let V = โ„‚^n. What statements about A are equivalent?

A
  1. A is diagonalisable
  2. A has n linearly independent eigenvectors
  3. V = V_ฦ›โ‚ โŠ• โ€ฆ โŠ• V_ฦ›k, where ฦ›โ‚, โ€ฆ, ฦ›k are the distinct eigenvalues of A
  4. For all eigenvalues ฦ›, the geometric and algebraic multiplicities are equal
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16
Q

What is a practical way to check if a matrix is diagonalisable or not?

A

See if A has n linearly independent eigenvectors

17
Q

A is an n x n matrix, and its characteristic polynomial has n distinct roots in โ„‚. Is A diagonalisable?

A

Yes

18
Q

If A is an n x n matrix over โ„‚, and

f(t) = aโ‚€ + aโ‚t + โ€ฆ a_m t^m is a polynomial with complex coefficients. How is f(A) defined?

A

f(A) = aโ‚€ + aโ‚A + โ€ฆ + a_m A^m

which is an n x n matrix

19
Q

What is the Cayley-Hamilton theorem?

A

Every square matrix A satisfies its own characteristic equation, ๐“งA(A) = 0

20
Q

What is a Jordan block matrix? (try to draw)

A

A square matrix of the form

J_n(ฦ›) = (ฦ› 1 0 โ€ฆ 0)
( โ€ฆ โ€ฆ 1)
(0 โ€ฆ โ€ฆ 0 ฦ›)

with ฦ› on the diagonal and 1 just above the diagonal (for some fixed scalar ฦ›). The subscript n gives the size.

21
Q

When is a square matrix A said to be in Jordan Normal Form (JNF)?

A

If it consists of Jordan block matrices on the diagonal, with zeros elsewhere

22
Q

Is a Jordan block matrix in JNF?

A

Yes

23
Q

What is any n x n matrix similar to?

A

A matrix in Jordan normal form

24
Q

What is the determinant of a matrix equal to in terms of its eigenvalues?

A

The product of its eigenvalues

25
Q

Let A be an n x n matrix which is similar to a JNF matrix B. What is true for each eigenvalue ฦ›?

A

1) The algebraic multiplicity of ฦ› is the total number of copies of ฦ› on the diagonal of B
2) The geometric multiplicity of ฦ› is the number of Jordan blocks with eigenvalue ฦ› in B