Invertibility
Arun Ram
Department of Mathematics and Statistics
University of Melbourne
Parkville, VIC 3010 Australia
aram@unimelb.edu.au
Last update: 13 August 2013
Invertibility
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An matrix is invertible if there is a matrix
such that
is a group with identity
are all subgroups of
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The matrices which contain a 1 in the
row and the column and zeros in all other entries are called matrix units.
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The matrices of the form
are called elementary matrices.
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The row rank of a matrix is
where are the vectors determined by the rows of
Any matrix is a product of elementary matrices.
Any matrix can be written in the form
where
and
is the row rank of
Determinants
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The determinant of an matrix
Laplace expansion
where
is a fixed permutation of
and the sum is over all possible divisions of
into two sets
and or according as
and
are like or unlike
derangements of
If and are matrices then
a) |
Let be the matrix obtained by switching two rows of Then
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b) |
Let be the matrix obtained by adding a multiple of a row of to another row of Then
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c) |
Let be the matrix obtained by multiplying a row of by a constant Then
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If two rows of are the same then
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The signed minor or cofactor,
of is
where
is the matrix with the row and the
column removed.
If is a unit in then
Cramer’s rule for
Put Thms VII-X of Hodge and Padoe as exercises.
If is a
of rank and
are its invariant factors then there exist
and such that
Two
and are equivalent if and only if they have the same invariant factors and if and only if they have the same
elementary divisors.
Note that these proofs work for any Euclidean domain.
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The characteristic polynomial of is the polynomial
Cayley-Hamilton Theorem.
Note that the proof of Theorem II §10 Hodge and Padoe!
Theorem III (Hodge and Padoe) gives minimal polynomial.
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A bilinear form on a vector space over is a map
such that
for all
and
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A bilinear form
is symmetric if
for all
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A bilinear form
is skew-symmetric if
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A Hermitian form
is a map such that
a) |
for all
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b) |
for all
and
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A bilinear form
is positive if
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A bilinear form
is positive semidefinite if
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A bilinear form
is negative definite if
for all
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A bilinear form
is indefinite if there exists such that
and
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The adjoint of a linear transformation
is the map determined by
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A matrix is
symmetric if
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A matrix is
skew-symmetric if
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A matrix is
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A linear transformation is self-adjoint if
When is the adjoint well defined?
a) |
If is a vector space over and has a symmetric positive definite bilinear form, then
is symmetric if and only if
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b) |
If is a vector space over and has a Hermitian form, then
is Hermitian if and only if
|
c) |
If is a vector space over and has a skew-symmetric form then
is skew-symmetric if and only if
|
a) |
If is a vector space over and has a symmetric positive definite bilinear form, then
is orthogonal if and only if
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b) |
If is a vector space over and has a Hermitian form, then is
Unitary if and only if
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c) |
If is a vector space over and and has a skewed-symmetric form, then is
symplectic if and only if
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A matrix is normal if
a) |
If is symmetric then there exists
such that
is diagonal.
|
b) |
If is Hermitian then there exists
such that
is diagonal and
|
c) |
is normal if and only if there
exists such that
is diagonal.
|
d) |
If is skew-symmetric then there
exists
such that is diagonal.
|
a) |
is a vector space over with symmetric positive definite bilinear form and
linear transformation. is orthogonal if and only if
is a change of basis matrix between orthonormal bases.
|
b) |
is a vector space over with Hermitian form and
linear transformation. is Hermitian if and only if
is a change of basis matrix between orthonormal bases.
|
c) |
is a vector space over with skew-symmetric form and
linear transformation. is symplectic if and only if
is a change of basis between symplectic bases.
|
aa) |
Let be a vector space over with positive definite symmetric bilinear form. Then there exists an orthonormal basis.
|
ab) |
Let be a symmetric positive
definite matrix. Then there exists
such that
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ba) |
Let be a vector space over with a Hermitian form. Then there exists an orthonormal basis.
|
bb) |
Let be a Hermitian matrix. Then
there exists
such that
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ca) |
Let be a vector space over with a symmetric bilinear form. Then there exists an orthogonal basis such that
or
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cb) |
Let be symmetric. Then there exists
such that
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da) |
Let be a vector space over with a skew-symmetric form. Then there exists a symplectic basis.
|
db) |
Let be a skew-symmetric matrix
Then there exists such that
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Example.
1) |
Schwartz Inequality.
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2) |
Triangle Inequality.
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3) |
Conics and Quadrics.
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4) |
Positive definite Exs.
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Let be a linear transformation.
-
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Let
Then there exists
and such that
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Martix of a linear transformation T with respect to basis
is
where
Let and be bases and let
be a linear transformation. Then let and
be the matrices of with respect to and
respectively. Let be the change of basis matrix
Then
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An eigenvector of a linear transformation is a vector
such that for
some
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An eigenvalue of a linear transformation is a vector
such that for
some
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The characteristic polynomial of a linear transformation is
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The minimal polynomial of a linear transformation is a polynomial
such that
a) |
and
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b) |
If and
then
divides
in
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Ex. Matrix in Jordan form, with
exists and is unique.
Let
be the prime factorization of the minimal polynomial of and let
Let then
is an eigenvalue of if and only if is a root of the characteristic polynomial of
a) |
Let such that
factors into linear factors in
Then there exists
such that is triangular.
|
b) |
Let and suppose
has distinct roots in
Then there exists
such that is diagonal.
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Ex. Does the converse hold?
Proofs for §X.
Let
be the prime factorization of the minimal polynomial of and let
Let then
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Proof. |
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Let
Then the have
Since is a Euclidean domain there exists
such that
Let
Then
So a)
To show:
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Proof. |
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So
So
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To show:
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Proof. |
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To show:
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Proof. |
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If then
So
since
But is the minimal polynomial.
So
So
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To show:
e) |
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Proof. |
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ea) |
Let
Then
So
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eb) |
Let
Then
So
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