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Eigenvectors and Linear Transformations

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We say that A is similar to C in case A = PCP-1 for some invertible matrix P. ... Nullity A and C have the same nullity. Trace A and C have the same trace ... – PowerPoint PPT presentation

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Title: Eigenvectors and Linear Transformations


1
Eigenvectors and Linear Transformations
  • Recall the definition of similar matrices
    Let A and C be n?n matrices. We say that A is
    similar to C in case A PCP-1 for some
    invertible matrix P.
  • A square matrix A is diagonalizable if A is
    similar to a diagonal matrix D.
  • An important idea of this section is to see that
    the mappings are
    essentially the same when viewed from the proper
    perspective. Of course, this is a huge
    breakthrough since the mapping
    is quite simple and easy to understand. In some
    cases, we may have to settle for a matrix C which
    is simple, but not diagonal.

2
Similarity Invariants for Similar Matrices A and C
Property
Description
Determinant A and C
have the same determinant
Invertibility A is
invertible ltgt C is invertible
Rank A
and C have the same rank
Nullity A
and C have the same nullity
Trace A
and C have the same trace
Characteristic Polynomial A and C have the
same char. polynomial
Eigenvalues A and C
have the same eigenvalues
Eigenspace dimension
If ? is an eigenvalue of A and C, then the
eigenspace of A corresponding to ? and the
eigenspace of C corresponding to ? have the same
dimension.
3
The Matrix of a Linear Transformation wrt Given
Bases
  • Let V and W be n-dimensional and m-dimensional
    vector spaces, respectively. Let TV?W be a
    linear transformation. Let B b1, b2, ..., bn
    and B' c1, c2, ..., cm be ordered bases for V
    and W, respectively. Then M is the matrix
    representation of T relative to these bases where
  • Example. Let B be the standard basis for R2, and
    let B' be the basis for R2 given by
    If T
    is rotation by 45º counterclockwise, what is
    M?

4
Linear Transformations from V into V
  • In the case which often happens when W is the
    same as V and B' is the same as B, the matrix M
    is called the matrix for T relative to B or
    simply, the B-matrix for T and this matrix is
    denoted by TB. Thus, we have
  • Example. Let T be defined
    by This is the
    _____________ operator. Let B B' 1, t, t2,
    t3.

5
Similarity of two matrix representations
Multiplication by A
Multiplication by P1
Multiplication by P
Multiplication by C
Here, the basis B of is formed from the
columns of P.
6
A linear operator geometric description
  • Let T be defined as follows
    T(x) is the reflection of x in the line y x.

y
T(x)
x
x
7
Standard matrix representation of T and its
eigenvalues
  • Since T(e1) e2 and T(e2) e1, the standard
    matrix representation A of T is given by
  • The eigenvalues of A are solutions of
  • We have
  • The eigenvalues of A are 1 and 1.

8
A basis of eigenvectors of A
  • Let
  • Since Au u and Av v, it follows that B u,
    v is a basis for consisting of
    eigenvectors of A.
  • The matrix representation of T with respect to
    basis B

9
Similarity of two matrix representations
  • The change-of-coordinates matrix from B to the
    standard basis is P where
  • Note that P-1 PT and that the columns of P are u
    and v.
  • Next,
  • That is,

10
A particular choice of input vector w
  • Let w be the vector with E coordinates given by

y
x?
y?
w
v
u
x
T(w)
11
Transforming the chosen vector w by T
  • Let w be the vector chosen on the previous slide.
    We have
  • The transformation w T(w) can be written as
  • Note that

12
What can we do if a given matrix A is not
diagonalizable?
  • Instead of looking for a diagonal matrix which is
    similar to A, we can look for some other simple
    type of matrix which is similar to A.
  • For example, we can consider a type of upper
    triangular matrix known as a Jordan form (see
    other textbooks for more information about Jordan
    forms).
  • If Section 5.5 were being covered, we would look
    for a matrix of the form
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