eigenvalues and eigenvectors
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Chapter 6
Eigenvalues and Eigenvectors
Po-Ning Chen, Professor
Department of Electrical Engineering
National Chiao Tung University
Hsin Chu, Taiwan 30010, R.O.C.
6.1 Introduction to eigenvalues 6-1
Motivations
• The static system problem of Ax = b has now been solved, e.g., by Gauss-
Jordan method or Cramer’s rule.
• However, a dynamic system problem such as
Ax = λx
cannot be solved by the static system method.
• To solve the dynamic system problem, we need to find the static feature
of A that is “unchanged” with the mapping A. In other words, Ax maps to
itself with possibly some stretching (λ > 1), shrinking (0 < λ < 1), or being
reversed (λ < 0).
• These invariant characteristics of A are the eigenvalues and eigenvectors.
Ax maps a vector x to its column space C(A). We are looking for a v ∈ C(A)
such that Av aligns with v. The collection of all such vectors is the set of eigen-
vectors.
6.1 Eigenvalues and eigenvectors 6-2
Conception (Eigenvalues and eigenvectors): The eigenvalue-eigenvector
pair (λi,vi) of a square matrix A satisfies
Avi = λivi
where vi �= 0 (but λi can be zero).
Invariance of eigenvectors and eigenvalues.
• Property 1: The eigenvectors stay the same for every power of A.
The eigenvalues equal the same power of the respective eigenvalues.
I.e., Anvi = λni vi.
Avi = λivi =⇒ A2vi = A(λivi) = λiAvi = λ2ivi
• Property 2: If the null space of An×n consists of non-zero vectors, then 0 is
the eigenvalue of A.
Accordingly, there exists non-zero vi to satisfy Avi = 0 · vi = 0.
6.1 Eigenvalues and eigenvectors 6-3
•
Property 3: Assume with no loss of generality |λ1| > |λ2| > · · · > |λk|. Forany vector x = a1v1 + a2v2 + · · · + akvk that is the linear combination of
all eigenvectors, the normalized mapping P = 1λ1A (namely, Pv1 = v1)
(when being applied repeatedly) converges to the eigenvector with the largest
absolute eigenvalue.
I.e.,
limk→∞
Pkx = limk→∞
1
λk1
Akx = limk→∞
1
λk1
(a1A
kv1 + a2Akv2 + · · · + akA
kvk
)= lim
k→∞1
λk1
(a1λ
k1v1︸ ︷︷ ︸
steady state
+ a2λk2v2 + · · · + λk
kAkvk︸ ︷︷ ︸
transient states
)= a1v1.
6.1 How to determine the eigenvalues? 6-4
We wish to find a non-zero vector v to satisfy Av = λv; then
(A− λI)v = 0 ⇔ det(A− λI) = 0.
So by solving det(A− λI) = 0, we can obtain all the eigenvalues of A.
Example. Find the eigenvalues of A =
[0.5 0.5
0.5 0.5
].
Solution.
det(A− λI) = det
([0.5− λ 0.5
0.5 0.5− λ
])= (0.5− λ)2 − 0.52 = λ2 − λ = λ(λ− 1) = 0
⇒ λ = 0 or 1.
6.1 How to determine the eigenvalues? 6-5
Proposition: Projection matrix (defined in Section 4.2) has eigenvalues either 1
or 0.
Proof:
• A projection matrix always satisfies P 2 = P . So P 2v = Pv = λv.
• By definition of eigenvalues and eigenvectors, we have P 2v = λ2v.
• Hence, λv = λ2v for non-zero vector v, which immediately implies λ = λ2.
• Accordingly, λ is either 1 or 0. �
Proposition: Permutation matrix has eigenvalues satisfying λk = 1 for some
integer k.
Proof:
• A purmutation matrix always satisfies Pk+1 = P for some integer k.
Example. P =
0 0 1
1 0 0
0 1 0
. Then, Pv =
v3v1v2
and P 3v = v. Hence, k = 3.
• Accordingly, λk+1v = λv, which gives λk = 1 since the eigenvalue of P cannot
be zero. �
6.1 How to determine the eigenvalues? 6-6
Proposition: Matrix
αmAm + αm−1A
m−1 + · · · + α1A + α0I
has the same eigenvectors as A, but its eigenvalues become
αmλm + αm−1λ
m−1 + · · · + α1λ + α0,
where λ is the eigenvalue of A.
Proof:
• Let vi and λi be the eigenvector and eigenvalue of A. Then,(αmA
m + αm−1Am−1 + · · · + α0I
)vi =
(αmλ
m + αm−1λm−1 + · · · + α0
)vi
• Hence, vi and(αmλ
m + αm−1λm−1 + · · · + α0
)are the eigenvector and eigen-
value of the polynomial matrix. �
6.1 How to determine the eigenvalues? 6-7
Theorem (Cayley-Hamilton): (Suppose A has linearly independent eigen-
vectors.)
f(A) = An + αn−1An−1 + · · · + α0I = all-zero matrix
if
f(λ) = det(A− λI) = λn + αn−1λn−1 + · · · + α0.
Proof: The eigenvalues of f(A) are all zeros and the eigenvectors of A remain
the same as A. By definition of eigen-system, we have
f(A)[v1 v2 · · · vn
]=[v1 v2 · · · vn
]f(λ1) 0 · · · 0
0 f(λ2) · · · 0... ... . . . ...
0 0 · · · f(λn)
.
�
Corollary (Cayley-Hamilton): (Suppose A has linearly independent eigen-
vectors.)
(λ1I −A)(λ2I − A) · · · (λnI − A) = all-zero matrix
Proof: f(λ) can be re-written as f(λ) = (λ1 − λ)(λ2 − λ) · · · (λn − λ). �
6.1 How to determine the eigenvalues? 6-8
(Problem 11, Section 6.1) Here is a strange fact about 2 by 2 matrices with eigen-
values λ1 �= λ2: The columns of A− λ1I are multiples of the eigenvector x2. Any
idea why this should be?
Hint: (λ1I −A)(λ2I − A) =
[0 0
0 0
]implies
(λ1I − A)w1 = 0 and (λ1I − A)w2 = 0
where (λ2I − A) =[w1 w2
]. Hence,
the columns of (λ2I − A) give the eigenvectors of λ1 if they are non-zero vectors
and
the columns of (λ1I −A) give the eigenvectors of λ2 if they are non-zero vectors .
So, the (non-zero) columns of A − λ1I are (multiples of) the eigen-
vector x2.
6.1 Why Gauss-Jordan cannot solve Ax = λx? 6-9
• The forward elimination may change the eigenvalues and eigenvectors?
Example. Check eigenvalues and eigenvectors of A =
[1 −2
2 5
].
Solution.
– The eigenvalues of A satisfy det(A− λI) = (λ− 3)2 = 0.
– A = LU =
[1 0
2 1
] [1 −2
0 9
]. The eigenvalues of U apparently satisfy
det(U − λI) = (1− λ)(9− λ) = 0.
– Suppose u1 and u2 are the eigenvectors of U , respectively corresponding
to eigenvalues 1 and 9. Then, they cannot be the eigenvectors of A since if
they were,3u1 = Au1 = LUu1 = Lu1 =
[1 0
2 1
]u1 =⇒ u1 = 0
3u2 = Au2 = LUu2 = 9Lu2 = 9
[1 0
2 1
]u2 =⇒ u2 = 0.
�
Hence, the eigenvalues are nothing to do with pivots (except for a triangular A).
6.1 How to determine the eigenvalues? (revisited) 6-10
Solve det(A− λI) = 0.
• det(A− λI) is a polynomial of order n.
f(λ) = det(A− λI) = det
a1,1 − λ a1,2 a1,3 · · · a1,na2,1 a2,2 − λ a2,3 · · · a2,na3,1 a3,2 a3,3 − λ · · · a3,n... ... ... . . . ...
an,1 an,2 an,3 · · · an,n − λ
= (a1,1 − λ)(a2,2 − λ) · · · (an,n − λ) + · · · (By Leibniz formula)
= (λ1 − λ)(λ2 − λ) · · · (λn − λ)
Observations
• The coefficient of λn is (−1)n.
• The coefficient of λn−1 is∑n
i=1 λi =∑n
i=1 ai,i = trace(A).
• . . .
• The coefficient of λ0 is∏n
i=1 λi = f(0) = det(A).
6.1 How to determine the eigenvalues? (revisited) 6-11
These observations make easy the finding of the eigenvalues of 2× 2 matrix.
Example. Find the eigenvalues of A =
[1 1
4 1
].
Solution.
•{λ1 + λ2 = 1 + 1 = 2
λ1λ2 = 1− 4 = −3=⇒ (λ1 − λ2)
2 = (λ1 + λ2)2 − 4λ1λ2 = 16
=⇒ λ1 − λ2 = 4
=⇒ λ = 3,−1. �
Example. Find the eigenvalues of A =
[1 1
2 2
].
Solution.
•{λ1 + λ2 = 3
λ1λ2 = 0=⇒ λ = 3, 0. �
6.1 Imaginary eigenvalues 6-12
In some cases, we have to allow imaginary eigenvalues.
• In order to solve polynomial equations f(λ) = 0, the mathematician was forced
to image that there exists a number x satisfying x2 = −1 .
• By this technique, a polynomial equations of order n have exactly n (possibly
complex, not real) solutions.
Example. Solve λ2 + 1 = 0. =⇒ λ = ±i. �
• Based on this, to solve the eigenvalues, we were forced to accept imaginary
eigenvalues.
Example. Find the eigenvalues of A =
[0 1
−1 0
].
Solution. det(A− λI) = λ2 + 1 = 0 =⇒ λ = ±i. �
6.1 Imaginary eigenvalues 6-13
Proposition: The eigenvalues of a symmetric matrix A (with real entries) are
real, and the eigenvalues of a skew-symmetric (or antisymmetric) matrix B are
pure imaginary.
Proof:
• Suppose Av = λv. Then,
Av∗ = λ∗v∗ (A real)
=⇒ (Av∗)Tv = λ∗(v∗)Tv=⇒ (v∗)TATv = λ∗(v∗)Tv=⇒ (v∗)TAv = λ∗(v∗)Tv (symmetry means AT = A)
=⇒ (v∗)Tλv = λ∗(v∗)Tv (Av = λv)
=⇒ λ‖v‖2 = λ∗‖v‖2 (eigenvector must be non-zero, i.e., ‖v‖2 �= 0)
=⇒ λ = λ∗
=⇒ λ real
6.1 Imaginary eigenvalues 6-14
• Suppose Bv = λv. Then,
Bv∗ = λ∗v∗ (B real)
=⇒ (Bv∗)Tv = (λ∗v∗)Tv=⇒ (v∗)TBTv = λ∗(v∗)Tv=⇒ (v∗)T(−B)v = λ∗(v∗)Tv (skew-symmetry means BT = −B)
=⇒ (v∗)T(−λ)v = λ∗(v∗)Tv (Bv = λv)
=⇒ (−λ)‖v‖2 = λ∗‖v‖2 (eigenvector must be non-zero, i.e., ‖v‖2 �= 0)
=⇒ −λ = λ∗
=⇒ λ imaginary
�
6.1 Eigenvalues/eigenvectors of inverse 6-15
For invertible A, the relation between eigenvalues and eigenvectors of A and A−1
can be well-determined.
Proposition: The eigenvalues and eigenvectors of A−1 are(1
λ1,v1
),
(1
λ2,v2
), . . . ,
(1
λn,vn
),
where {(λi,vi)}ni=1 are the eigenvalues and eigenvectors of A.
Proof:
• The eigenvalues of invertible A must be non-zero because det(A) �= 0.
• Suppose Av = λv, where v �= 0 and λ �= 0. (I.e., λ and v are eigenvalue and
eigenvector of A.)
• So, Av = λv =⇒ A−1(Av) = A−1(λv) =⇒ v = λA−1v =⇒ 1λv = A−1v.
�
Note: The eigenvalues of Ak and A−1 are λk and λ−1 with the same eigenvectors
as A, where λ is the eigenvalue of A.
6.1 Eigenvalues/eigenvectors of inverse 6-16
Proposition: The eigenvalues of AT are the same as the eigenvalues of A. (But
they may have different eigenvectors.)
Proof: det(A− λI) = det ((A− λI)T) = det (AT − λIT) = det (AT − λI). �
Corollary: The eigenvalues of an invertible matrix A satisfying A−1 = AT are
on the unit circle of the complex plain.
Proof: Suppose Av = λv. Then,
Av∗ = λ∗v∗ (A real)
=⇒ (Av∗)Tv = λ∗(v∗)Tv=⇒ (v∗)TATv = λ∗(v∗)Tv=⇒ (v∗)TA−1v = λ∗(v∗)Tv (AT = A−1)
=⇒ (v∗)T 1λv = λ∗(v∗)Tv (A−1v = 1λv)
=⇒ 1λ‖v‖2 = λ∗‖v‖2 (eigenvector must be non-zero, i.e., ‖v‖2 �= 0)
=⇒ λλ∗ = |λ|2 = 1
�
Example. Find the eigenvalues of A =
[0 1
−1 0
]that satisfies AT = A−1.
Solution. det(A− λI) = λ2 + 1 = 0 =⇒ λ = ±i. �
6.1 Determination of eigenvectors 6-17
• After the identification of eigenvalues via det(A−λI) = 0, we can determine
the respective eigenvectors using the null space technique.
• Recall (from slide 3-41) how we completely solve
Bn×nvn×1 = (An×n − λIn×n)vn×1 = 0n×1.
Answer:
R = rref(B) =
[Ir×r Fr×(n−r)
0(n−r)×r 0(n−r)×(n−r)
](with no row exchange)
⇒ Nn×(n−r) =
[ −Fr×(n−r)
I(n−r)×(n−r)
]Then, every solution v for Bv = 0 is of the form
v(null)n×1 = Nn×(n−r)w(n−r)×1 for any w ∈ n−r.
Here, we usually find the (n − r) orthonormal bases for the null space
as the representative eigenvectors, which are exactly the (n − r) columns of
Nn×(n−r) (with proper normalization).
6.1 Determination of eigenvectors 6-18
(Problem 12, Section 6.1) Find three eigenvectors for this matrix P (projection
matrices have λ = 1 and 0):
Projection matrix P =
0.2 0.4 0
0.4 0.8 0
0 0 1
.
If two eigenvectors share the same λ, so do all their linear combinations. Find an
eigenvector of P with no zero components.
Solution.
• det(P − λI) = 0 gives λ(1− λ2) = 0; so λ = 0, 1.
• λ = 1: rref(P − I) =
1 −1
20
0 0 0
0 0 0
;
so F1×2 =[−1
2 0], andN3×2 =
1
2 0
1 0
0 1
, which implies eigenvectors =
1
2
1
0
and
001
.
6.1 Determination of eigenvectors 6-19
• λ = 0: rref(P ) =
1 2 0
0 0 0
0 0 1
(with no row exchange);
so F =
2−0
, and N3×1 =
−2
1
0
, which implies eigenvector =
−2
1
0
.
�
6.1 MATLAB revisited 6-20
In MATLAB:
• We can find the eigenvalues and eigenvectors of a matrix A by:
[V D]= eig(A); % Find the eigenvalues/vectors of A
• The columns of V are the eigenvectors.
• The diagonals of D are the eigenvalues.
Proposition:
• The eigenvectors corresponding non-zero eigenvalues are in C(A).
• The eigenvectors corresponding zero eigenvalues are in N (A).
Proof: The first one can be seen from Av = λv and the second one can be proved
by Av = 0. �
6.1 Some discussions on problems 6-21
(Problem 25, Section 6.1) Suppose A and B have the same eigenvalues λ1, . . . , λn
with the same independent eigenvectors x1, . . . ,xn. Then A = B. Reason:
Any vector x is a combintion c1x1 + · · · + cnxn. What is Ax? What is Bx?
Thinking over Problem 25: Suppose A and B have the same eigenvalues and
eigenvectors (not necessarily independent). Can we claim that A = B.
Answer to the thinking: Not necessarily.
As a counterexample, both A =
[1 −1
1 −1
]and B =
[2 −2
2 −2
]have eigenvalues 0, 0
and single eigenvector
[1
1
]but they are not equal.
If however the eigenvectors span the n-dimensional space (such as there are n of
them and they are linearly independent), then A = B.
Hint for Problem 25: A[x1 · · · xn
]=[x1 · · · xn
]λ1 0 · · · 0
0 λ2 · · · 0... ... . . . ...
0 0 · · · λn
.
This important fact will be re-emphasized in Section 6.2.
6.1 Some discussions on problems 6-22
(Problem 26, Section 6.1) The block B has eigenvalues 1, 2 and C has eigenvalues
3, 4 and D has eigenvalues 5, 7. Find the eigenvalues of the 4 by 4 matrix A:
A =
[B C
0 D
]=
0 1 3 0
−2 3 0 4
0 0 6 1
0 0 1 6
.
Thinking over Problem 26: The eigenvalues of
[B C
0 D
]are the eigenvalues of B
and D because we can show
det
([B C
0 D
])= det(B) · det(D).
(See Problems 23 and 25 in Section 5.2.)
6.1 Some discussions on problems 6-23
(Problem 23, Section 5.2) With 2 by 2 blocks in 4 by 4 matrices, you cannot always
use block determinants:∣∣∣∣A B
0 D
∣∣∣∣ = |A| |D| but
∣∣∣∣A B
C D
∣∣∣∣ = |A| |D| − |C| |B|.
(a) Why is the first statement true? Somehow B doesn’t enter.
Hint: Leibniz formula.
(b) Show by example that equality fails (as shown) when C enters.
(c) Show by example that the answer det(AD − CB) is also wrong.
6.1 Some discussions on problems 6-24
(Problem 25, Section 5.2) Block elimination subtracts CA−1 times the first
row[A B
]from the second row
[C D
]. This leaves the Schur complement
D − CA−1B in the corner:[I 0
−CA−1 I
] [A B
C D
]=
[A B
0 D − CA−1B
].
Take determinants of these block matrices to prove correct rules if A−1 exists:∣∣∣∣A B
C D
∣∣∣∣ = |A| |D − CA−1B| = |AD − CB| provided AC = CA.
Hint: det(A) · det(D − CA−1B) = det(A(D − CA−1B)
).
6.1 Some discussions on problems 6-25
(Problem 37, Section 6.1)
(a) Find the eigenvalues and eigenvectors of A. They depend on c:
A =
[.4 1− c
.6 c
].
(b) Show that A has just one line of eigenvectors when c = 1.6.
(c) This is a Markov matrix when c = .8. Then An will approach what matrix
A∞?
Definition (Markov matrix): A Markov matrix is a matrix with positive
entries, for which every column adds to one.
• Note that some researchers define the Markov matrix by replacing positive by
non-negative; thus, they will use the term positive Markov matrix. The below
observations hold for Markov matrices with “non-negative entries”.
6.1 Some discussions on problems 6-26
• 1 must be one of the eigenvalues of a Markov matrix.
Proof: A and AT have the same eigenvalues, and AT
1...1
=
1...1
. �
• The eigenvalues of a Markov matrix satisfy |λ| ≤ 1.
Proof: ATv = λv implies∑n
i=1 ai,jvi = λvj; hence, by letting vk satisfying
|vk| = max1≤i≤n |vi|, we have
|λvk| =∣∣∣∣∣
n∑i=1
ai,kvi
∣∣∣∣∣ ≤n∑i=1
ai,k |vi| ≤n∑
i=1
ai,k |vk| = |vk|
which implies the desired result. �
6.1 Some discussions on problems 6-27
(Problem 31, Section 6.1) If we exchange rows 1 and 2 and columns 1 and 2, the
eigenvalues don’t change. Find eigenvectors of A and B for λ1 = 11. Rank one
gives λ2 = λ3 = 0.
A =
1 2 1
3 6 3
4 8 4
and B = PAP T =
6 3 3
2 1 1
8 4 4
.
Thinking over Problem 31: This is sometimes useful in determining the eigenval-
ues and eigenvectors.
• If Av = λv and B = PAP−1 (for any invertible P ), then λ and u = Pv are
the eigenvalue and eigenvector of B.
Proof: Bu = PAP−1u = PAv = λPv = λu. �
For example, P =
0 1 0
1 0 0
0 0 1
. In such case, P−1 = P = P T.
6.1 Some discussions on problems 6-28
With the fact above, we can further claim that
Proposition. The eigenvalues of AB and BA are equal if one of A and B is
invertible.
Proof: This can be proved by (AB) = A(BA)A−1 or (AB) = B−1(BA)B. Note
that AB has eigenvector Av or B−1v if v is the eigenvector of BA. �
6.1 Some discussions on problems 6-29
The eigenvectors of a diagonal matrix Λ =
λ1 0 · · · 0
0 λ2 · · · 0... ... . . . ...
0 0 · · · λn
are apparently
ei =
0...
0
1
0...
0
position i , i = 1, 2, . . . , n
Hence, A = SΛS−1 have the same eigenvalues as Λ and have eigenvectors vi =
Sei. This implies that
S =[v1 v2 · · · vn
]where {vi} are the eigenvectors of A.
What if S is not invertible? Then, we have the next theorem.
6.2 Diagnolizing a matrix 6-30
A convenience for the eigen-system analysis is that we can diagonalize a matrix.
Theorem. A matrix A can be written as
A[v1 v2 · · · vn
]︸ ︷︷ ︸=S
=[v1 v2 · · · vn
]λ1 0 · · · 0
0 λ2 · · · 0... ... . . . ...
0 0 · · · λn
︸ ︷︷ ︸=Λ
where {(λi,vi)}ni=1 are the eigenvalue-eigenvector pairs of A.
Proof: The theorem holds by definition of eigenvalues and eigenvectors. �
Corollary. If S is invertible, then
S−1AS = Λ equivalently A = SΛS−1.
6.2 Diagnolizing a matrix 6-31
This makes easy the computation of polynomial with argument A.
Proposition (recall slide 6-6): Matrix
αmAm + αm−1A
m−1 + · · · + α0I
has the same eigenvectors as A, but its eigenvalues become
αmλm + αm−1λ
m−1 + · · · + α0,
where λ is the eigenvalue of A.
Proposition:
αmAm + αm−1A
m−1 + · · · + α0I = S(αmΛ
m + αm−1Λm−1 + · · · + α0
)S−1
Proposition:
Am = SΛmS−1
6.2 Diagnolizing a matrix 6-32
Exception
• It is possible that an n× n matrix does not have n eigenvectors.
Example. A =
[1 −1
1 −1
].
Solution.
– λ1 = 0 is apparently an eigenvalue for a non-invertible matrix.
– The second eigenvalue is λ2 = trace(A)− λ1 = [1 + (−1)]− λ1 = 0.
– This matrix however only has one eigenvector
[1
1
](or some may say “two
repeated eigenvectors”).
– In such case, we still have[1 −1
1 −1
]︸ ︷︷ ︸
A
[1 1
1 1
]︸ ︷︷ ︸
S
=
[1 1
1 1
]︸ ︷︷ ︸
S
[0 0
0 0
]︸ ︷︷ ︸
Λ
but S has no inverse. �
In such case, we cannot preform SAS−1; so we say A cannot be diagonalized.
6.2 Diagnolizing a matrix 6-33
When will S be guaranteed to be invertible?
One possible answer: When all eigenvalues are distinct.
Proof: Suppose for a matrixA, the first k eigenvectors v1, . . . ,vk are linearly inde-
pendent, but the (k+1)th eigenvector is dependent on the previous k eigenvectors.
Then, for some unique a1, . . . , ak,
vk+1 = a1v1 + · · · + akvk,
which implies{λk+1vk+1 = Avk+1 = a1Av1 + . . . + akAvk = a1λ1v1 + . . . + akλkvk
λk+1vk+1 = a1λk+1v1 + . . . + akλk+1vk
Accordingly, λk+1 = λi for 1 ≤ i ≤ k; i.e., that vk+1 is linearly dependent on
v1, . . . ,vk only occurs when they have the same eigenvalues. (The proof is not
yet completed here! See the discussion and Example below.)
The above proof said as long as we have the (k+1)th eigenvector, then it is linearly
dependent on the previous k eigenvectors only when all eigenvalues are equal! But
sometimes, we do not guarantee to have the (k + 1)th eigenvector.
6.2 Diagnolizing a matrix 6-34
Example. A =
5 4 2 1
0 1 −1 −1
−1 −1 3 0
1 1 −1 2
.
Solution.
• We have four eigenvalues 1, 2, 4, 4.
• But we can only have three eigenvectors for 1, 2 and 4.
• From the proof in the previous page, the eigenvectors for 1, 2 and 4 are linearly
indepedent because 1, 2 and 4 are not equal. �
Proof (Continue): One condition that guarantees to have n eigenvectors is that
we have n distinct eigenvalues, which now complete the proof. �
Definition (GM and AM): The number of linearly independent eigenvectors
for an eigenvalue λ is called its geometric multiplicity; the number of its
appearance in solving det(A− λI) is called its algebraic multiplicity.
Example. In the above example, GM=1 and AM=2 for λ = 4.
6.2 Fibonacci series 6-35
Eigen-decomposition is useful in solving Fibonacci series
Problem: Suppose Fk+2 = Fk+1+Fk with initially F1 = 1 and F0 = 0. Find F100.
Answer:
•[Fk+2
Fk+1
]=
[1 1
1 0
] [Fk+1
Fk
]=⇒
[Fk+2
Fk+1
]=
[1 1
1 0
]k+1 [F1
F0
]• So,[
F100
F99
]=
[1 1
1 0
]99 [1
0
]= SΛ99S−1
[1
0
]
=
[1+
√5
21−√
52
1 1
](1+
√5
2
)990
0(1−√
52
)99[1+
√5
21−√
52
1 1
]−1 [1
0
]
=
[1+
√5
21−√
52
1 1
](1+
√5
2
)990
0(1−√
52
)99 1(
1+√5
2
)−(1−√
52
) [ 1 −1−√5
2
−1 1+√5
2
][1
0
]
6.2 Fibonacci series 6-36
=
(1+
√5
2
)100 (1−√
52
)100(1+
√5
2
)99 (1−√
52
)99 1(
1+√5
2
)−(1−√
52
) [ 1
−1
]
=1(
1+√5
2
)−(1−√
52
)(1+
√5
2
)100−(1−√
52
)100(1+
√5
2
)99−(1−√
52
)99 .
�
6.2 Generalization to uk = Aku0 6-37
• A generalization of the solution to Fibonacci series is as follows.
Suppose u0 = a1v1 + a2v2 + · · · + anvn.
Then uk = Aku0 = a1Akv1 + a2A
kv2 + · · · + anAkvn
= a1λk1v1 + a2λ
k2v2 + . . . + anλ
knvn.
Examination:
uk =
[Fk+1
Fk
]=
[1 1
1 0
]k [F1
F0
]= Aku0
and
u0 =
[1
0
]=
1(1+
√5
2
)−(1−√
52
) [1+√5
2
1
]− 1(
1+√5
2
)−(1−√
52
) [1−√5
2
1
]
So
u99 =
[F100
F99
]=
(1+
√5
2
)99(1+
√5
2
)−(1−√
52
) [1+√5
2
1
]−
(1−√
52
)99(1+
√5
2
)−(1−√
52
) [1−√5
2
1
].
6.2 More applications of eigen-decomposition 6-38
(Problem 30, Section 6.2) Suppose the same S diagonalizes both A and B. They
have the same eigenvectors in A = SΛ1S−1 and B = SΛ2S
−1. Prove that AB =
BA.
Proposition: Suppose both A and B can be diagnosed, and one of A and B
have distinct eigenvalues. Then, A and B have the same eigenvectors if, and only
if, AB = BA.
Proof:
• (See Problem 30 above) If A and B have the same eigenvectors, then
AB = (SΛAS−1)(SΛBS
−1) = SΛAΛBS−1 = SΛBΛAS
−1 = (SΛBS−1)(SΛAS
−1) = BA.
• Suppose without loss of generality that the eigenvalues of A are all distinct.
Then, if AB = BA, we have for given Av� = λ�v� and u� = Bv�,
Au� = A(Bv�) = (AB)v� = (BA)v� = B(Av�) = B(λ�v�) = λ�(Bv�) = λ�u�.
Hence, u� = Bv� and v� are both the eigenvectors of A corresponding to the
same eigenvalue λ�.
6.2 More applications of eigen-decomposition 6-39
Let u� =∑n
i=1 aivi, where {vi}ni=1 are linearly independent eigenvectors of A.{Au� =
∑ni=1 aiAvi =
∑ni=1 aiλivi
Au� = λ�u� =∑n
i=1 aiλ�vi
=⇒ ai(λi − λ�) = 0 for 1 ≤ i ≤ n.
This implies
u� =∑
i:λi=λ�
aivi = a�v� = Bv� .
Thus, v� is an eigenvector of B. �
6.2 Problem discussions 6-40
(Problem 32, Section 6.2) Substitute A = SΛS−1 into the product (A−λ1I)(A−λ2I) · · · (A − λnI) and explain why this produces the zero matrix. We are sub-
stituting the matrix A for the number λ in the polynomial p(λ) = det(A− λI).
The Cayley-Hamilton Theorem says that this product is always p(A) =zero
matrix, even if A is not diagonalizable.
Thinking over Problem 32: The Cayley-Hamilton Theorem can be easily proved
if A is diagonalizable.
Corollary (Cayley-Hamilton): Suppose A has linearly independent eigen-
vectors.
(λ1I −A)(λ2I − A) · · · (λnI − A) = all-zero matrix
Proof:
(λ1I − A)(λ2I − A) · · · (λnI − A)
= S(λ1I − Λ)S−1S(λ2I − Λ)S−1 · · ·S(λnI − Λ)S−1
= S (λ1I − Λ)︸ ︷︷ ︸(1, 1)th entry= 0
(λ2I − Λ)︸ ︷︷ ︸(2, 2)th entry= 0
· · · (λnI − Λ)︸ ︷︷ ︸(n, n)th entry= 0
S−1
= S[all-zero entries
]S−1 =
[all-zero entries
]�
6.3 Applications to differential equations 6-41
We can use eigen-decomposition to solveu1(t)
u2(t)...
un(t)
=
du
dt= Au =
a1,1u1(t) + a1,2u2(t) + · · · + a1,nun(t)
a2,1u1(t) + a2,2u2(t) + · · · + a2,nun(t)...
an,1u1(t) + an,2u2(t) + · · · + an,nun(t)
where A is called the companion matrix.
By differential equation technique, we know that the solution is of the form
u = eλtv
for some constant λ and constant vector v.
Question: What are all λ and v that satisfydu
dt= Au?
Solution: Take u = eλtv into the equation:du
dt
(= λeλtv
)= Au
(= Aeλtv
)=⇒ λv = Av.
The answer are all eigenvalues and eigenvectors.
6.3 Applications to differential equations 6-42
Sincedu
dt= Au is a linear system, a linear combination of solutions is still a
solution.
Hence, if there are n eigenvectors, the complete solution can be represented as
c1eλ1tv1 + c2e
λ2tv2 + · · · + cneλntvn
where c1, c2, . . . , cn can be determined by the initial conditions.
Here, for convenience of discussion at this moment, we assume that A gives us
exactly n eigenvectors.
6.3 Applications to differential equations 6-43
It is sometimes convenient to re-express the solution ofdu
dt= Au is eAtu(0) for
a given initial condition u(0) as eAtu(0), i.e.,
c1eλ1tv1 + c2e
λ2tv2 + · · · + cneλntvn
=[v1 v2 · · · vn
]︸ ︷︷ ︸S
eλ1t 0 · · · 0
0 eλ2t · · · 0... ... . . . ...
0 0 · · · eλnt
c1c2...
cn
= eAtu(0)
where we define
eAt �∞∑k=0
1
k!(At)k =
∞∑k=0
tk
k!Ak =
∞∑k=0
tk
k!(SΛkS−1) = S
( ∞∑k=0
tk
k!Λk
)S−1
= S
∑∞
k=0tk
k!λk1 0 · · · 0
0∑∞
k=0tk
k!λk2 · · · 0
... ... . . . ...
0 0 · · · ∑∞k=0
tk
k!λkn
S−1 = S
eλ1t 0 · · · 0
0 eλ2t · · · 0... ... . . . ...
0 0 · · · eλnt
S−1.
and hence u(0) = Sc.
6.3 Applications to differential equations 6-44
Key to remember: Again, we define by convention that
f(A) = S
f(λ1) 0 · · · 0
0 f(λ2) · · · 0... ... . . . ...
0 0 · · · f(λn)
S−1.
So, eAt = S
eλ1t 0 · · · 0
0 eλ2t · · · 0... ... . . . ...
0 0 · · · eλnt
S−1.
6.3 Applications to differential equations 6-45
We can solve the second-order equation in the same manner.
Example. Solve my′′ + by′ + ky = 0.
Answer:
• Let z = y′. Then, the problem is reduced to{y′ = z
z′ = − kmy − b
mz
=⇒ du
dt= Au
with u =
[y
z
]and A =
[0 1
− km
− bm
].
• The complete solution for u is therefore
c1eλ1tv1 + c2e
λ2tv2.
�
6.3 Applications to differential equations 6-46
Example. Solve y′′ + y = 0 with initial y(0) = 1 and y′(0) = 0.
Solution.
• Let z = y′. Then, the problem is reduced to{y′ = z
z′ = −y=⇒ du
dt= Au
with u =
[y
z
]and A =
[0 1
−1 0
].
• The eigenvalues and eigenvectors of A are(ı,
[−ı
1
])and
(−ı,
[ı
1
]).
• The complete solution for u is therefore[y
y′
]= c1e
ıt
[−ı
1
]+ c2e
−ıt
[ı
1
]with initially
[1
0
]= c1
[−ı
1
]+ c2
[ı
1
].
So, c1 =ı2and c2 = − ı
2. Thus,
y(t) =ı
2eıt(−ı)− ı
2e−ıtı =
1
2eıt +
1
2e−ıt = cos(t).
�
6.3 Applications to differential equations 6-47
In practice, we will use a discrete approximation to approximate a continuous
function. There are however three different discrete approximations.
For example, how to approximate y′′(t) = −y(t) by a discrete system?
−Yn−1 Forward approximation
Yn+1 − 2Yn + Yn−1
(∆t)2=
Yn+1−Yn∆t − Yn−Yn−1
∆t
∆t= −Yn Centered approximation
−Yn+1 Backward approximation
Let’s take forward approximation as an example, i.e.,
Yn+1−Yn∆t︸ ︷︷ ︸Zn
− Yn−Yn−1∆t︸ ︷︷ ︸
Zn−1
∆t= −Yn−1.
Thus,{y′(t) = z(t)
z′(t) = −y(t)≈
Yn+1 − Yn
∆t= Zn
Zn+1 − Zn
∆t= −Yn
≈[Yn+1
Zn+1
]︸ ︷︷ ︸
un+1
=
[1 ∆t
−∆t 1
]︸ ︷︷ ︸
A
[Yn
Zn
]︸ ︷︷ ︸un
6.3 Applications to differential equations 6-48
Then, we obtain
un = Anu0 =
[1 1
ı −ı
] [(1 + ı∆t)n 0
0 (1− ı∆t)n
] [12− ı
212
ı2
] [1
0
]and
Yn =(1 + ı∆t)n + (1− ı∆t)n
2=[1 + (∆t)2
]n/2cos(n ·∆θ)
where ∆θ = tan−1(∆t).
Problem: Yn → ∞ as n large.
6.3 Applications to differential equations 6-49
Backward approximation will leave to Yn → 0 as n large.
{y′(t) = z(t)
z′(t) = −y(t)≈
Yn+1 − Yn
∆t= Zn+1
Zn+1 − Zn
∆t= −Yn+1
≈[1 −∆t
∆t 1
]︸ ︷︷ ︸
A−1
[Yn+1
Zn+1
]︸ ︷︷ ︸
un+1
=
[Yn
Zn
]︸ ︷︷ ︸un
A solution to the problem: Interleave the forward approximation with
the backward approximation.{y′(t) = z(t)
z′(t) = −y(t)≈
Yn+1 − Yn
∆t= Zn
Zn+1 − Zn
∆t= −Yn+1
≈[1 0
∆t 1
] [Yn+1
Zn+1
]︸ ︷︷ ︸
un+1
=
[1 ∆t
0 1
] [Yn
Zn
]︸ ︷︷ ︸un
We then perform this so-called leapfrog method. (See Problems 28 and 29.)[Yn+1
Zn+1
]︸ ︷︷ ︸
un+1
=
[1 0
∆t 1
]−1 [1 ∆t
0 1
] [Yn
Zn
]︸ ︷︷ ︸un
=
[1 ∆t
−∆t 1− (∆t)2
]︸ ︷︷ ︸|eigenvalues|=1 if ∆t≤2
[Yn
Zn
]︸ ︷︷ ︸un
6.3 Applications to differential equations 6-50
(Problem 28, Section 6.3) Centering y′′ = −y in Example 3 will produce Yn+1 −2Yn+Yn−1 = −(∆t)2Yn. This can be written as a one-step difference equation for
U = (Y, Z):
Yn+1 = Yn +∆t Zn
Zn+1 = Zn −∆t Yn+1
[1 0
∆t 1
] [Yn+1
Zn+1
]=
[1 ∆t
0 1
] [Yn
Zn
].
Invert the matrix on the left side to write this as Un+1 = AUn. Show that detA =
1. Choose the large time step ∆t = 1 and find the eigenvalues λ1 and λ2 = λ1 of
A:
A =
[1 1
−1 0
]has |λ1| = |λ2| = 1. Show that A6 is exactly I.
After 6 steps to t = 6, U6 equals U0. The exact y = cos(t) returns to 1 at t = 2π.
6.3 Applications to differential equations 6-51
(Problem 29, Section 6.3) That centered choice (leapfrog method ) in Problem 28 is
very successful for small time steps ∆t. But find the eigenvalues of A for ∆t =√2
and 2:
A =
[1
√2
−√2 −1
]and A =
[1 2
−2 −3
].
Both matrices have |λ| = 1. Compute A4 in both cases and find the eigenvectors
of A. That value ∆t = 2 is at the border of instability. Time steps ∆t > 2 will
lead to |λ| > 1, and the powers in Un = AnU0 will explode.
Note You might say that nobody would compute with ∆t > 2. But if an atom
vibrates with y′′ = −1000000y, then ∆t > .0002 will give instability. Leapfrog
has a very strict stability limit. Yn+1 = Yn + 3Zn and Zn+1 = Zn − 3Yn+1 will
explode because ∆t = 3 is too large.
6.3 Applications to differential equations 6-52
A better solution to the problem: Mix the forward approximation
with the backward approximation.{y′(t) = z(t)
z′(t) = −y(t)≈
Yn+1 − Yn
∆t=
Zn+1 + Zn
2Zn+1 − Zn
∆t= −Yn+1 + Yn
2
≈[1 −∆t
2∆t2
1
] [Yn+1
Zn+1
]︸ ︷︷ ︸
un+1
=
[1 ∆t
2
−∆t2
1
] [Yn
Zn
]︸ ︷︷ ︸un
We then perform this so-called trapezoidal method. (See Problem 30.)[Yn+1
Zn+1
]︸ ︷︷ ︸
un+1
=
[1 −∆t
2∆t2
1
]−1 [1 ∆t
2
−∆t2
1
] [Yn
Zn
]︸ ︷︷ ︸un
=1
1 +(∆t2
)2[1− (∆t
2
)2∆t
−∆t 1− (∆t2
)2]
︸ ︷︷ ︸|eigenvalues|=1 for all ∆t>0
[Yn
Zn
]︸ ︷︷ ︸un
6.3 Applications to differential equations 6-53
(Problem 30, Section 6.3) Another good idea for y′′ = −y is the trapezoidal method
(half forward/half back): This may be the best way to keep (Yn, Zn) exactly on a
circle.
Trapezoidal
[1 −∆t/2
∆t/2 1
] [Yn+1
Zn+1
]=
[1 ∆t/2
−∆t/2 1
] [Yn
Zn
].
(a) Invert the left matrix to write this equation as Un+1 = AUn. Show that A is an
orthogonal matrix: ATA = I. These points Un never leave the circle.
A = (I − B)−1(I + B) is always an orthogonal matrix if BT = −B (See the
proof on next page).
(b) (Optional MATLAB) Take 32 steps from U0 = (1, 0) to U32 with ∆t = 2π/32. Is
U32 = U0? I think there is a small error.
6.3 Applications to differential equations 6-54
Proof:
A = (I − B)−1(I +B)
⇒ (I − B)A = (I +B)
⇒ AT(I −B)T = (I + B)T
⇒ AT(I −BT) = (I + BT)
⇒ AT(I +B) = (I −B)
⇒ AT = (I −B)(I +B)−1
⇒ ATA = (I −B)(I +B)−1(I −B)−1(I + B)
= (I −B)[(I − B)(I +B)]−1(I +B)
= (I −B)[(I + B)(I − B)]−1(I +B)
= (I −B)(I −B)−1(I +B)−1(I + B)
= I
6.3 Applications to differential equations 6-55
Question: What if the number of eigenvectors is smaller than n?
Recall that it is convenient to say that the solution of du/dt = Au is eAtu(0)
for some constant vecor u(0).
Conveniently, we can presume that eAtu(0) is the solution of du/dt = Au even if
A does not have n eigenvectors.
Example. Solve y′′ − 2y′ + y = 0 with initially y(0) = 1 and y′(0) = 0.
Answer.
• Let z = y′. Then, the problem is reduced to{y′ = z
z′ = −y + 2z=⇒ du
dt=
[y′
z′
]=
[0 1
−1 2
]︸ ︷︷ ︸
A
[y
z
]= Au
• The solution is still eAtu(0) but
eAt �= SeΛtS−1
because there is only one eigenvector forA (it doesn’t matter whether we regard
this case as “S does not exist” or we regard this case as “S exists but has no
inverse”).
6.3 Applications to differential equations 6-56
[0 1
−1 2
]︸ ︷︷ ︸
A
[1 1
1 1
]︸ ︷︷ ︸
S
=
[1 1
1 1
]︸ ︷︷ ︸
S
[1 0
0 1
]︸ ︷︷ ︸
Λ
and eAt = eλIte(A−λI)t = eλIte(A−I)t
eAt = eIte(A−I)t (since (It)((A− I)t) = ((A− I)t)(It). See below.)
=
( ∞∑k=0
1
k!Iktk
)( ∞∑k=0
1
k!(A− I)ktk
)
=
(( ∞∑k=0
1
k!tk
)I
)(1∑
k=0
1
k!(A− I)ktk
)
where we know Ik = I for every k ≥ 0 and (A − I)k =all-zero matrix for
k ≥ 2. This gives
eAt =(etI)(I + (A− I)t) = et (I + (A− I)t)
and
u(t) = eAtu(0) = eAt[1
0
]= et (I + (A− I)t)
[1
0
]= et
[1− t
−t
]�
Note that eAeB, eBeA and eA+B may not be equal except AB = BA!
6.3 Applications to differential equations 6-57
Properities of eAt
• The eigenvalues of eAt are eλt for all eigenvalues λ of A.
For example, eAt = et (I + (A− I)t) has repeated eigenvalues et, et.
• The eigenvectors of eAt remains the same as A.
For example, eAt = et (I + (A− I)t) has only one eigenvector
[1
1
].
• The inverse of eAt always exist (hint: eλt �= 0), and is equal to e−At.
For example, e−At = e−Ite(I−A)t = e−t(I − (A− I)t).
• The transpose of eAt is
(eAt)T
=
( ∞∑k=0
1
k!Aktk
)T
=
( ∞∑k=0
1
k!(AT)ktk
)= eA
Tt.
Hence, if AT = −A (skew-symmetric), then(eAt)T
eAt = eATteAt = I ; so, eAt
is an orthogonal matrix (Recall that a matrix Q is orthogonal if QTQ = I).
6.3 Quick tip 6-58
• For a 2 × 2 matrix A =
[a1,1 a1,2a2,1 a2,2
], the eigenvector corresponding to the
eigenvalue λ1 is
[a1,2
λ1 − a1,1
].
(A− λ1I)
[a1,2
λ1 − a1,1
]=
[a1,1 − λ1 a1,2
a2,1 a2,2 − λ1
] [a1,2
λ1 − a1,1
]=
[0
?
]where ?= 0 because the two row vectors of (A− λ1I) are parallel.
This is especially useful when solving the differential equation because a1,1 = 0
and a1,2 = 1; hence, the eigenvector v1 corresponding to the eigenvalue λ1 is
v1 =
[1
λ1
].
Solve y′′ − 2y′ + y = 0. Let z = y′. Then, the problem is reduced to{y′ = z
z′ = −y + 2z=⇒ du
dt=
[y′
z′
]=
[0 1
−1 2
]︸ ︷︷ ︸
A
[y
z
]= Au =⇒ v1 =
[1
1
]
6.3 Problem discussions 6-59
Problem 6.3B and Problem 31: A convenient way to solve d2u/dt = Au.
(Problem 31, Section 6.3) The cosine of a matrix is defined like eA, by copying
the series for cos t:
cos t = 1− 1
2!t2 +
1
4!t4 − · · · cosA = I − 1
2!A2 +
1
4!A4 − · · ·
(a) If Ax = λx, multiply each term times x to find the eigenvalue of cosA.
(b) Find the eigenvalues of A =
[π π
π π
]with eigenvectors (1, 1) and (1,−1). From
the eigenvalues and eigenvectors of cosA, find that matrix C = cosA.
(c) The second derivative of cos(At) is −A2 cos(At).
u(t) = cos(At)u(0) solved2u
dt2= −A2u starting from u′(0) = 0.
Construct u(t) = cos(At)u(0) by the usual three steps for that specific A:
1. Expand u(0) = (4, 2) = c1x1 + c2x2 in the eigenvectors.
2. Multiply those eigenvectors by and (instead of eλt).
3. Add up the solution u(t) = c1 x1 + c2 x2. (Hint: See slide 6-45.)
6.3 Problem discussions 6-60
(Problem 6.3B, Section 6.3) Find the eigenvalues and eigenvectors of A and write
u(0) = (0, 2√2, 0) as a combination of the eigenvectors. Solve both equations
u′ = Au and u′′ = Au:
du
dt=
−2 1 0
1 −2 1
0 1 −2
u and
d2u
dt2=
−2 1 0
1 −2 1
0 1 −2
u with
du
dt(0) = 0.
The 1,−2, 1 diagonals make A into a second difference matrix (like a second
derivative).
u′ = Au is like the heat equation ∂u/∂t = ∂2u/∂x2.
Its solution u(t) will decay (negative eigenvalues).
u′′ = Au is like the wave equation ∂2u/∂t2 = ∂2u/∂x2.
Its solution will oscillate (imaginary eigenvalues).
6.3 Problem discussions 6-61
Thinking over Problem 6.3B and Problem 31: Solved2u
dt= Au.
Solution. The answer should be eA1/2tu(0). Note that A1/2 has the same eigenvec-
tors as A but its eigenvalues are the square root of A.
eA1/2t = S
eλ
1/21 t 0 · · · 0
0 eλ1/22 t · · · 0
... ... . . . ...
0 0 · · · eλ1/2n t
S−1.
As an example from Problem 6.3B, A =
−2 1 0
1 −2 1
0 1 −2
.
The eigenvalues of A are −2 and −2±√2.
So,
eA1/2t = S
eı√2 t 0
0 eı√
2−√2 t 0
0 0 eı√
2+√2 t
S−1.
A more direct solution is u(t) = cos(At)u(0). See Problem 31.
6.3 Problem discussions 6-62
Final reminder on the approach delivered in the textbook
• In solvingdu(t)
dt= At with initial u(0), it is convenient to find the solution as{u(0) = Sc = c1v1 + · · · + cnvn
u(t) = SeΛtc = c1eλ1v1 + · · · + cne
λnvn
This is what the textbook always does in Problems.
6.3 Problem discussions 6-63
You should practice these problems by yourself!
Problem 15: How to solvedu
dt= Au− b (for invertible A)?
(Problem 15, Section 6.3) A particular solution to du/dt = Au−b is up = A−1b,
if A is invertible. The usual solutions to du/dt = Au give un. Find the complete
solution u = up + un:
(a)du
dt= u− 4 (b)
du
dt=
[1 0
1 1
]u−
[4
6
].
Problem 16: How to solvedu
dt= Au− ectb (for non-eigenvalue c of A)?
(Problem 16, Section 6.3) If c is not an eigenvalue of A, substitute u = ectv and
find a particular solution to du/dt = Au−ectb. How does it break down when c is
an eigenvalue of A? The “nullspace” of du/dt = Au contains the usual solutions
eλitxi.
Hint: The particular solution vp satisfies (A− cI)vp = b.
6.3 Problem discussions 6-64
Problem 23: eAeB, eBeA and eA+B are not necessarily equal. (They are equal
when AB = BA.)
(Problem 23, Section 6.3) Generally eAeB is different from eBeA. They are both
different from eA+B. Check this using Problems 21-2 and 19. (If AB = BA, all
these are the same.)
A =
[1 4
0 0
]B =
[0 −4
0 0
]A +B =
[1 0
0 0
]
Problem 27: An interesting brain-storming problem!
(Problem 27, Section 6.3) Find a solution x(t), y(t) that gets large as t → ∞. To
avoid this instability a scientist exchanges the two equations:
dx/dt = 0x − 4y
dy/dt = −2x + 2ybecomes
dy/dt = −2x + 2y
dx/dt = 0x − 4y
Now the matrix
[−2 2
0 −4
]is stable. It has negative eigenvalues. How can this be?
Hint: The matrix is not the right one to be used to describe the transformed linear
equations.
6.4 Symmetric matrices 6-65
Definition (Symmetric matrix): A matrix A is symmetric if A = AT.
• When A is symmetric,
– its eigenvalues are all reals;
– it has n orthogonal eigenvectors (so it can be diagonalize). We can then
normalize these orthogonal eigenvectors to obtain an orthonormal basis.
Definition (Symmetric diagonalization): A symmetric matrix A can be
written as
A = QΛQ−1 = QΛQT with Q−1 = QT
where Λ is a diagonal matrix with real eigenvalues at the diagonal.
6.4 Symmetric matrices 6-66
Theorem (Spectral theorem or principal axis theorem) A symmetric
matrix A with distinct eigenvalues can be written as
A = QΛQ−1 = QΛQT with Q−1 = QT
where Λ is a diagonal matrix with real eigenvalues at the diagonal.
Proof:
• We have proved on slide 6-13 that a symmetric matrix has real eigenvalues
and a skew-symmetric matrix has pure imaginary eigenvalues.
• Next, we prove that eigenvectors are orthogonal, i.e., vT1v2 = 0, for unequal
eigenvalues λ1 �= λ2.
Av1 = λ1v1 and Av2 = λ2v2
=⇒ (λ1v1)Tv2 = (Av1)
Tv2 = vT1A
Tv2 = vT1Av2 = vT
1λ2v2
which implies
(λ1 − λ2)vT1v2 = 0.
Therefore, vT1v2 = 0 because λ1 �= λ2. �
6.4 Symmetric matrices 6-67
• A = QΛQT implies that
A = λ1q1qT1 + · · · + λnqnq
Tn
= λ1P1 + · · · + λnPn
Recall from slide 4-37, the projection matrix Pi onto a unit vector qi is
Pi = qi(qTiqi)
−1qTi = qiq
Ti
So, Ax is the sum of projections of vector x onto each eigenspace.
Ax = λ1P1x + · · · + λnPnx.
The spectral theorem can be extended to a symmetric matrix with repeated
eigenvalues.
To prove this, we need to introduce the famous Schur’s theorem.
6.4 Symmetric matrices 6-68
Theorem (Schur’s theorem): Every square matrix A can be factorized into
A = QTQ−1 with T upper triangular and Q† = Q−1,
where “†” denotes Hermisian transpose operation.
Further, if A has real eigenvalues (and hence has real eigenvectors), then Q and T
can be chosen real.
Proof: The existence of Q and T such that A = QTQ† and Q† = Q−1 can be
proved by induction.
• The theorem trivially holds when A is a 1× 1 matrix.
• Suppose that Schur’s Theorem is valid for all (n−1)× (n−1) matrices. Then,
we claim that Schur’s Theorem will hold true for all n× n matrices.
– This is because we can take t1,1 and q1 to be the eigenvalue and eigenvector
of An×n (as there must exist at least one pair of eigenvalue and eigenvector
for An×n). Then, choose any p2, . . ., pn such that they together with q1
span the n-dimensional space, and
P =[q1 p2 · · · pn
]is a orthonormal matrix.
6.4 Symmetric matrices 6-69
– We derive
P †AP =
q†1
p†2...
p†n
[Aq1 Ap2 · · · Apn
]
=
q†1
p†2...
p†n
[t1,1q1 Ap2 · · · Apn
](since A q1︸︷︷︸
eigenvector
= t1,1︸︷︷︸eigenvalue
q1)
=
t1,1 t1,2 · · · t1,n0...0
A(n−1)×(n−1)
where t1,j = q†1Apj and
A(n−1)×(n−1) =
p
†2Ap2 · · · p†
2Apn... . . . ...
p†nAp2 · · · p†
nApn
.
6.4 Symmetric matrices 6-70
– Since Schur’s Theorem is true for any (n− 1)× (n− 1) matrix, we can find
Q(n−1)×(n−1) and T(n−1)×(n−1) such that
A(n−1)×(n−1) = Q(n−1)×(n−1)T(n−1)×(n−1)Q†(n−1)×(n−1)
and
Q†(n−1)×(n−1) = Q−1
(n−1)×(n−1).
– Finally, define
Qn×n = P
[1 0T
0 Q(n−1)×(n−1)
]and
Tn×n =
t1,1 t1,2 · · · t1,n0...0
T(n−1)×(n−1)
satisfy that
Q†n×nQn×n =
[1 0T
0 Q†(n−1)×(n−1)
]P †P
[1 0T
0 Q(n−1)×(n−1)
]= In×n
6.4 Symmetric matrices 6-71
and
Qn×nTn×n = Pn×n
[1 0T
0 Q(n−1)×(n−1)
]t1,1 t1,2 · · · t1,n0...0
T(n−1)×(n−1)
= Pn×n
t1,1 t1,2 · · · t1,n0...0
Q(n−1)×(n−1)T(n−1)×(n−1)
= Pn×n
t1,1 t1,2 · · · t1,n0...0
A(n−1)×(n−1)Q(n−1)×(n−1)
= Pn×n
t1,1 t1,2 · · · t1,n0...0
A(n−1)×(n−1)
[1 0T
0 Q(n−1)×(n−1)
]
= Pn×n(P†n×nAn×nPn×n)
[1 0T
0 Q(n−1)×(n−1)
]= An×nQn×n
6.4 Symmetric matrices 6-72
• It remains to prove that if A has real eigenvalues, then Q and T can be chosen
real, which can be similarly proved by induction. Suppose “If A has real
eigenvalues, then Q and T can be chosen real.” is true for all (n− 1)× (n− 1)
matrices. Then, the claim should be true for all n× n matrices.
– For a given An×n with real eigenvalues (and real eigenvectors), we can
certainly have the real t1,1 and q1, and so are p2, . . . ,pn. This makes real
the resultant A(n−1)×(n−1) and t1,2, . . . , t1,n.
The eigenvector associated with a real eigenvalue can be chosen real. For
complex v and real λ and A, by its definition,
Av = λv
is equivalent to
A ·Re{v} = A · λ ·Re{v} and A · Im{v} = A · λ · Im{v}.
6.4 Symmetric matrices 6-73
– The proof is completed by noting that the eigenvalues of A(n−1)×(n−1) sat-
isfying
P †AP =
t1,1 t1,2 · · · t1,n0...0
A(n−1)×(n−1)
are also the eigenvalues ofAn×n; hence, they are all reals. So, by the validity
of the claimed statement for (n − 1) × (n − 1) matrices, the existence of
real Q(n−1)×(n−1) and real T(n−1)×(n−1) satisfying
A(n−1)×(n−1) = Q(n−1)×(n−1)T(n−1)×(n−1)Q†(n−1)×(n−1)
and
Q†(n−1)×(n−1) = Q−1
(n−1)×(n−1)
is confirmed. �
6.4 Symmetric matrices 6-74
Two important facts:
• P †AP and A have the same eigenvalues but possibly different eigenvectors. A
simple proof is that for v = Pv′,
(P †AP )v′ = P †Av = P †(λv) = λP †v = λv′.
• (Section 6.1: Problem 26 or see slide 6-22)
det(A) = det
([B C
0 D
])= det(B) · det(C)
Thus,
P †AP =
t1,1 t1,2 · · · t1,n0...0
A(n−1)×(n−1)
So the eigenvalues of A should be the eigenvalues of P †AP .
6.4 Symmetric matrices 6-75
Theorem (Spectral theorem or principal axis theorem) A symmetric
matrix A (not necessarily with distinct eigenvalues) can be written as
A = QΛQ−1 = QΛQT with Q−1 = QT
where Λ is a diagonal matrix with real eigenvalues at the diagonal.
Proof:
• A symmetric matrix certainly satisfies Schur’s Theorem.
A = QTQ† with T upper triangular and Q† = Q−1.
• A has real eigenvalues. So, both T and Q are reals.
• By AT = A, we have
AT = QT TQT = QTQT = A.
This immediately gives
T T = T
which implies the off-diagonals are zeros.
6.4 Symmetric matrices 6-76
• By AQ = QT , equivalently, Aq1 = t1,1q1
Aq2 = t2,2q2...
Aqn = tn,nqn
we know that Q is the matrix of eigenvectors (and there are n of them) and T
is the matrix of eigenvalues. �
This result immediately indicates that a symmetric A can always be diagonalized.
Summary
• A symmetric matrix has real eigenvalues and n real orthogonal eigenvec-
tors.
6.4 Problem discussions 6-77
(Problem 21, Section 6.4)(Recommended) This matrix M is skew-symmetric and
also . Then all its eigenvalues are pure imaginary and they also have
|λ| = 1. (‖Mx‖ = ‖x‖ for every x so ‖λx‖ = ‖x‖ for eigenvectors.) Find all
four eigenvalues from the trace of M :
M =1√3
0 1 1 1
−1 0 −1 1
−1 1 0 −1
−1 −1 1 0
can only have eigenvalues ı or − ı.
Thinking over Problem 14: The eigenvalues of an orthogonal matrix satisfies
|λ| = 1.
Proof:
‖Qv‖2 = (Qv)†Qv = v†Q†Qv = v†v = ‖v‖2implies
‖λv‖ = ‖v‖.�
|λ| = 1 and λ pure imaginary implies λ = ±ı.
6.4 Problem discussions 6-78
(Problem 15, Section 6.4) Show that A (symmetric but complex) has only
one line of eigenvectors:
A =
[ı 1
1 −ı
]is not even diagonalizable: eigenvalues λ = 0, 0.
AT = A is not such a special property for complex matrices. The good property
is AT = A (Section 10.2). Then all λ’s are real and eigenvectors are orthogonal.
Thinking over Problem 15: That a symmetric matrix A satisfying AT = A has
real eigenvalues and n orthogonal eigenvectors is only true for real symmetric
matrices.
For a complex matrix A, we need to rephrase it as “A Hermitian symmetric
matrix A satisfying A† = A has real eigenvalues and n orthogonal eigenvectors.”
Inner product and norm for complex vectors:
v ·w = v†w and ‖v‖2 = v†v
6.4 Problem discussions 6-79
Proof of the red-color claim: Suppose Av = λv. Then,
Av = λv
=⇒ (Av)†v = (λv)†v (i.e., (Av)Tv = (λv)Tv)
=⇒ v†A†v = λ∗v†v=⇒ v†Av = λ∗v†v=⇒ v†λv = λ∗v†v=⇒ λ‖v‖2 = λ∗‖v‖2=⇒ λ = λ∗
�
(Problem 28, Section 6.4) For complex matrices, the symmetry AT = A that
produces real eigenvalues changes to AT = A. From det(A − λI) = 0, find the
eigenvalues of the 2 by 2 “Hermitian” matrix A =[4 2 + ı; 2− ı 0
]= AT. To
see why eigenvalues are real when AT = A, adjust equation (1) of the text to
Ax = λx. (See the green box above.)
6.4 Problem discussions 6-80
(Problem 27, Section 6.4) (MATLAB) Take two symmetric matrices with different
eigenvectors, say A =
[1 0
0 2
]and B =
[8 1
1 0
]. Graph the eigenvalues λ1(A+ tB)
and λ2(A + tB) for −8 < t < 8. Peter Lax says on page 113 of Linear Algebra
that λ1 and λ2 appear to be on a collision course at certain values of t. “Yet at
the last minute they turn aside.” How close do they come?
Correction for Problem 27: The problem should be “. . . Graph the eigenvalues
λ1 and λ2 of A + tB for −8 < t < 8. . . ..”
Hint: Draw the pictures of λ1(t) and λ2(t) with respect to t and check λ1(t)−λ2(t).
6.4 Problem discussions 6-81
(Problem 29, Section 6.4)Normal matrices have ATA = AAT. For real matrices,ATA = AAT
includes symmetric, skew symmetric, and orthogonal matrices. Those have real λ, imaginary λ
and |λ| = 1. Other normal matrices can have any complex eigenvalues λ.
Key point: Normal matrices have n orthonormal eigenvectors. Those vectors xi
probably will have complex components. In that complex case orthogonality means xTixj = 0
as Chapter 10 explains. Inner products (dot products) become xTy.
The test for n orthonormal columns in Q becomes QTQ = I instead of QTQ = I.
A has n orthonormal eigenvectors (A = QΛQT) if and only if A is normal.
(a) Start from A = QΛQT with QTQ = I . Show that ATA = AAT.
(b) Now start from ATA = AAT. Schur found A = QTQT for every matrix A, with a triangular
T . For normal matrices we must show (in 3 steps) that this T will actually be diagonal.
Then T = Λ.
Step 1. Put A = QTQT into ATA = AAT to find T TT = T T T.
Step 2: Suppose T =
[a b
0 d
]has T TT = T T T. Prove that b = 0.
Step 3: Extend Step 2 to size n. A normal triangular T must be diagonal.
6.4 Problem discussions 6-82
Important conclusion from Problem 29: A matrix A has n orthogonal eigenvec-
tors if, and only if, A is normal.
Definition (Normal matrix): A matrix A is normal if A†A = A†A.
Proof:
• Schur’s theorem: A = QTQ† with T upper triangular and Q† = Q−1.
• A†A = AA† =⇒ T †T = TT † =⇒ T diagonal =⇒ Qmatrix of eigenvectors
by AQ = QT . �
6.5 Positive definite matrices 6-83
Definition (Positive definite): A symmetric matrix A is positive defi-
nite if its eigenvalues are all positive.
• The above definition only applies to a symmetric matrix because a non-symmetric
matrix may have complex eigenvalues (which cannot be compared with zero)!
Properties of positive definite (symmetric) matrices
• Equivalent Definition: A is positive definite if, and only if, xTAx > 0 for
all non-zero x.
xTAx is usually referred to as the quadratic form!
The proofs can be found in Problems 18 and 19.
(Problem 18, Section 6.5) If Ax = λx then xTAx = . If xTAx > 0,
prove that λ > 0.
6.5 Positive definite matrices 6-84
(Problem 19, Section 6.5) Reverse Problem 18 to show that if all λ > 0 then
xTAx > 0. We must do this for every nonzero x, not just the eigenvectors.
So write x as a combination of the eigenvectors and explain why all “cross
terms” are xTixj = 0. Then xTAx is
(c1x1+· · ·+cnxn)T(c1λ1x1+· · ·+cnλnxn) = c21λ1x
T1x1+· · ·+c2nλnx
Tnxn > 0.
Proof (Problems 18):
– (only if part : Problem 19) Avi = λivi implies vTi Avi = λvT
ivi > 0 for all
eigenvalues {λi}ni=1 and eigenvectors {vi}ni=1. The proof is completed by
noting that with x =∑n
i=1 civi and {vi}ni=1 orthogonal,
xT(Ax) =
(n∑
i=1
civTi
) n∑j=1
cjλjvj
=
n∑i=1
c2i λi‖vi‖2 > 0.
– (if part : Problem 18) Taking x = vi, we obtain that vTi (Avi) = vT
i (λvi) =
λi‖vi‖2 > 0, which implies λi > 0. �
6.5 Positive definite matrices 6-85
• Based on the above proposition, we can conclude similar to two positive scalars
(as “if a and b are both positive, so is a + b”) that
Proposition: If A and B are both positive definite, so is A +B.
• The next property provides an easy way to construct positive definite matrices.
Proposition: If An×n = RTn×mRm×n and Rm×n has linearly independent
columns, then A is positive definite.
Proof:
– x non-zero =⇒ Rx non-zero.
– Then, xT(RTR)x = (Rx)T(Rx) = ‖Rx‖2 > 0. �
6.5 Positive definite matrices 6-86
Since (symmetric) A = QΛQT, we can choose R = QΛ1/2QT, which requires
R to be a square matrix. This observation gives another equivalent definition
of positive definite matrices.
Equivalent Definition: An×n is positive definite if, and only if, there exists
Rm×n with independent columns such that A = RTR.
6.5 Positive definite matrices 6-87
• Equivalent Definition: An×n is positive definite if, and only if, all pivots
are positive.
Proof:
– (By LDU decomposition,) A = LDLT, where D is a diagonal matrix with
pivots as diagonals, and L is a lower triangular matrix with 1 as diagonals.
Then,
xTAx = xT(LDLT)x = (LTx)TD(LTx)
= yTDy where y = LTx =
lT1x...lTnx
= d1y21 + · · · + dny
2n
= d1(lT1x)2
+ · · · + dn(lTnx)2.
– So, if all pivots are positive, xTAx > 0 for all non-zero x. Conversely, if
xTAx > 0 for all non-zero x, which in turns implies yTDy > 0 for all
non-zero y (as L is invertible), then pivot di must be positive for the choice
of yj = 0 except for j = i. �
6.5 Positive definite matrices 6-88
An extension of the previous proposition is:
Suppose A = BCBT with B invertible and C diagonal. Then, A is positive
definite if, and only if, diagonals of C are all positive! See Problem 35.
(Problem 35, Section 6.5) Suppose C is positive definite (so yTCy > 0 when-
ever y �= 0) and A has independent columns (so Ax �= 0 whenever x �= 0).
Apply the energy test to xTATCAx to show that ATCA is positive definite:
the crucial matrix in engineering.
6.5 Positive definite matrices 6-89
Equivalent Definition: An×n is positive definite if, and only if, the n upper
left determinants (i.e., the n leading principle minors) are all positive.
Definition (Minors, Principle minors and leading principle mi-
nors):
– A minor of a matrix A is the determinant of some smaller square matrix,
obtained by removing one or more of its rows or columns.
– The first-order (respectively, second-order, etc) minor is a minor, obtained
by removing (n− 1) (respectively, (n− 2), etc) rows or columns.
– A principle minor of a matrix is a minor, obtained by removing the same
rows and columns.
– A leading principle minor of a matrix is a minor, obtaining by removing
the last few rows and columns.
6.5 Positive definite matrices 6-90
The below example gives three upper left determinants (or three leading
principle minors), det(A1×1), det(A2×2) and det(A3×3).
a1,1 a1,2a2,1 a2,2
a1,3a2,3
a3,1 a3,2 a3,3
Proof of the equivalent definition: This can be proved based on slide 5-18:
By LU decomposition,
A =
1 0 0 · · · 0
l2,1 1 0 · · · 0
l3,1 l3,2 1 · · · 0... ... ... . . . ...
ln,1 ln,2 ln,3 · · · 1
d1 u1,2 u1,3 · · · u1,n0 d2 u2,3 · · · d2,n0 0 d3 · · · d3,n... ... ... . . . ...
0 0 0 · · · dn
=⇒ dk =det(Ak×k)
det(A(k−1)×(k−1))�
6.5 Positive definite matrices 6-91
Equivalent Definition: An×n is positive definite if, and only if, all (2n − 2)
principle minors are positive.
• Based on the above equivalent definitions, a positive definite matrix cannot
have either zero or negative value in its main diagonals. See Problem 16.
(Problem 16, Section 6.5) A positive definite matrix cannot have a zero (or even
worse, a negative number) on its diagonal. Show that this matrix fails to have
xTAx > 0:
[x1 x2 x3
] 4 1 1
1 0 2
1 2 5
x1x2x3
is not positive when (x1, x2, x3) = ( , , ).
With the above discussion of positive definite matrices, we can proceed to de-
fine similar notions like negative definite, positive semidefinite, negative
semidefnite matrices.
6.5 Positive semidefinite (or nonnegative definite) 6-92
Definition (Positive semidefinite): A symmetric matrix A is positive
semidefinite if its eigenvalues are all nonnegative.
Equivalent Definition: A is positive semidefinite if, and only if, xTAx≥0 for
all non-zero x.
Equivalent Definition: An×n is positive semidefinite if, and only if, there exists
Rm×n (perhaps with dependent columns) such that A = RTR.
Equivalent Definition: An×n is positive semidefinite if, and only if, all pivots
are nonnegative.
Equivalent Definition: An×n is positive semidefinite if, and only if, all principle
minors are non-negative.
Example. Non-positive semidefinite A =
1 0 0
0 0 0
0 0 −1
has (23−2) principle minors.
[1 0
0 0
],
[1 0
0 −1
],
[0 0
0 −1
],[1],[0],[−1].
Note: It is not sufficient to define the positive semidefinite based on the non-
negativity of leading principle minors. Check the above example.
6.5 Negative definite, negative semidefinite, indefinite 6-93
We can similarly define negative definite.
Definition (Negative definite): A symmetric matrix A is negative def-
inite if its eigenvalues are all negative.
Equivalent Definition: A is negative definite if, and only if, xTAx<0 for all
non-zero x.
Equivalent Definition: An×n is negative definite if, and only if, there exists
Rm×n with independent columns such that A = −RTR.
Equivalent Definition: An×n is negative definite if, and only if, all pivots are
negative.
Equivalent Definition: An×n is negative definite if, and only if, all odd-order
leading principle minors are negative and all even-order leading principle minors
are positive.
Equivalent Definition: An×n is negative definite if, and only if, all odd-order
principle minors are negative and all even-order principle minors are positive.
6.5 Negative definite, negative semidefinite, indefinite 6-94
We can also similarly define negative semidefinite.
Definition (Negative definite): A symmetric matrix A is negative
semidefinite if its eigenvalues are all non-positive.
Equivalent Definition: A is negative semidefinite if, and only if, xTAx≤0 for
all non-zero x.
Equivalent Definition: An×n is negative semidefinite if, and only if, there
exists Rm×n (possibly with dependent columns) such that A = −RTR.
Equivalent Definition: An×n is negative semidefinite if, and only if, all pivots
are non-positive.
Equivalent Definition: An×n is negative definite if, and only if, all odd-order
principle minors are non-positive and all even-order principle minors are non-
negative.
Note: It is not sufficient to define the negative semidefinite based on the non-
positivity of leading principle minors.
Finally, if some of the eigenvalues of a symmetric matrix are positive, and some are
negative, the matrix will be referred to as indefinite.
6.5 Quadratic form 6-95
• For a positive definite matrix A2×2,
xTAx = xT(QΛQT)x = (QTx)TΛ(QTx)
= yTΛy where y = QTx =
[qT1x
qT2x
]= λ1
(qT1x)2
+ λ2
(qT2x)2
So, xTAx = c gives an ellipse if c > 0.
Example. A =
[5 4
4 5
]
– λ1 = 9 and λ2 = 1, and q1 =1√2
[1
1
]and q2 =
1√2
[1
−1
].
– xTAx = λ1 (qT1x)
2+ λ2 (q
T2x)
2= 9
(x1 + x2√
2
)2
+
(x1 − x2√
2
)2
–
{qT1x is an axis perpendicular to q1. (Not along q1 as the textbook said.)
qT2x is an axis perpendicular to q2.
Tip: A = QΛQT is called the principal axis theorem (cf. slide 6-66) because
xTAx = yTΛy = c is an ellipse with axes along the eigenvectors.
6.5 Problem discussions 6-96
(Problem 13, Section 6.5) Find a matrix with a > 0 and c > 0 and a + c > 2b
that has a negative eigenvalue.
Missing point in Problem 13: The matrix to be determined is of the shape
[a b
b c
].
6.6 Similar matrices 6-97
Definition (Similarity): Two matrices A and B are similar if B = M−1AM
for some invertible M .
Theorem: A and M−1AM have the same eigenvalues.
Proof: For eigenvalue λ and eigenvector v of A, define v′ = M−1v (hence, v =
Mv′). We then derive
(M−1AM)v′ = M−1A(Mv′) = M−1Av = λM−1v = λv′
So, λ is also the eigenvalue of M−1AM (associated with eigenvector v′ = M−1v).
�
Notes:
• The LU decomposition over a symmetric matrixA givesA = LDLT but A and
D (pivot matrix) apparently may have different eigenvalues. Why? Because
(LT)−1 �= L. Similarity is defined based on M−1,not MT.
• The converse to the above theorem is wrong!. In other words, we cannot
say that “two matrices with the same eigenvalues are similar.”
Example. A =
[0 1
0 0
]and B =
[0 0
0 0
]have the same eigenvalues 0, 0, but
they are not similar.
6.6 Jordan form 6-98
• Why introducing matrix similarity?
Answer: We can then extend the diagonalization of a matrix with less than
n eigenvectors to the Jordan form.
• For an un-diagonalizable matrix A, we can find invertible M such that
A = MJM−1,
where
J =
J1 0 · · · 0
0 J2 · · · 0... ... . . . ...
0 0 · · · Js
and s is the number of distinct eigenvalues, and the size of Ji is equal to the
multiplicity of eigenvalue λi, and Ji is of the form
Ji =
λi 1 0 · · · 0
0 λi 1 · · · 0
0 0 λi · · · 0... ... ... . . . ...
0 0 0 · · · λi
6.6 Jordan form 6-99
• The idea behind the Jordan form is that A is similar to J .
• Based on this, we can now compute
A100 = MJ100M−1 = M
J1001 0 · · · 0
0 J1002 · · · 0
... ... . . . ...
0 0 · · · J100s
M−1.
• How to find Mi corresponding to Ji?
Answer: By AM = MJ with M =[M1 M2 · · · Ms
], we know
AMi = MiJi for 1 ≤ i ≤ s.
Specifically, assume that the multiplicity of λi is two. Then,
A[v(1)i v
(2)i
]=[v(1)i v
(2)i
] [λi 1
0 λi
]which is equivalent to{
Av(1)i = λiv
(1)i
Av(2)i = v
(1)i + λiv
(2)i
=⇒{(A− λiI)v
(1)i = 0
(A− λiI)v(2)i = v
(1)i
6.6 Problem discussions 6-100
(Problem 14, Section 6.6) Prove that AT is always similar to A (we know the λ’s
are the same):
1. For one Jordan block Ji: Find Mi so that M−1i JiMi = JT
i .
2. For any J with blocks Ji: Build M0 from blocks so that M−10 JM0 = JT.
3. For any A = MJM−1: Show that AT is similar to JT and so to J and to A.
6.6 Problem discussions 6-101
Thinking over Problem 14: AT and A are always similar.
Answer:
• It can be easily checked thatu1,1 u1,2 · · · u1,nu2,1 u2,2 · · · u2,n... ... . . . ...
un,1 un,2 · · · un,n
=
0 · · · 0 1... · · · 1 0... · · · ... ...
1 · · · 0 0
un,n · · · un,2 un,1... . . . ... ...... · · · u2,2 u2,1
u1,n · · · u1,2 u1,1
0 · · · 0 1... · · · 1 0... · · · ... ...
1 · · · 0 0
= V −1
un,n · · · un,2 un,1... . . . ... ...... · · · u2,2 u2,1
u1,n · · · u1,2 u1,1
V
where here V represents a matrix with zero entries except vi,n+1−i = 1 for
1 ≤ i ≤ n. We note that V −1 = V T = V .
So, we can use the proper size of Mi = V to obtain
JTi = M−1
i JiMi.
6.6 Problem discussions 6-102
Define
M =
M1 0 · · · 0
0 M2 · · · 0... ... . . . ...
0 0 · · · Ms
We have
JT = MJM−1,
where
J =
J1 0 · · · 0
0 J2 · · · 0... ... . . . ...
0 0 · · · Js
and s is the number of distinct eigenvalues, and the size of Ji is equal to the
multiplicity of eigenvalue λi, and Ji is of the form
Ji =
λi 1 0 · · · 0
0 λi 1 · · · 0
0 0 λi · · · 0... ... ... . . . ...
0 0 0 · · · λi
6.6 Problem discussions 6-103
Finally, we know
– A is similar to J ;
– AT is similar to JT;
– JT is similar to J .
So, AT is similar to A. �
(Problem 19, Section 6.6) If A is 6 by 4 and B is 4 by 6, AB and BA have different
sizes. But with blocks,
M−1FM =
[I −A
0 I
] [AB 0
B 0
] [I A
0 I
]=
[0 0
B BA
]= G.
(a) What sizes are the four blocks (the same four sizes in each matrix)?
(b) This equation is M−1FM = G, so F and G have the same eigenvalues. F
has the 6 eigenvalues of AB plus 4 zeros; G has the 4 eigenvalues of BA plus
6 zeros. AB has the same eigenvalues as BA plus zeros.
6.6 Problem discussions 6-104
Thinking over Problem 19: Am×nBn×m and Bn×mAm×n have the same eigenval-
ues except for additional (m− n) zeros.
Solution: The example shows the usefulness of the similarity.
•[Im×m −Am×n
0n×m In×n
] [Am×nBn×m 0m×n
Bn×m 0n×n
] [Im×m Am×n
0n×m In×n
]=
[0m×m 0m×n
Bn×m Bn×mAm×n
]
• Hence,
[Am×nBn×m 0m×n
Bn×m 0n×n
]and
[0m×m 0m×n
Bn×m Bn×mAm×n
]are similar and have the
same eigenvalues.
• From Problem 26 in Section 6.1 (see slide 6-22), the desired claim is proved.�
6.6 Problem discussions 6-105
(Problem 21, Section 6.6) If J is the 5 by 5 Jordan block with λ = 0, find J2 and
count its eigenvectors (are these the eigenvectors?) and find its Jordan form (there
will be two blocks).
Problem 21 : Find the Jordan form of A = J2, where
J =
0 1 0 0 0
0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
0 0 0 0 0
.
Solution.
• A = J2 =
0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
0 0 0 0 0
0 0 0 0 0
, and the eigenvalues of A are 0, 0, 0, 0, 0.
6.6 Problem discussions 6-106
• Av1 = A
v1,1v2,1v3,1v4,1v5,1
=
v3,1v4,1v5,10
0
= 0 =⇒ v3,1 = v4,1 = v5,1 = 0 =⇒ v1 =
v1,1v2,10
0
0
.
• Av2 = A
v1,2v2,2v3,2v4,2v5,2
=
v3,2v4,2v5,20
0
= v1 =⇒
v3,2 = v1,1
v4,2 = v2,1
v5,2 = 0
=⇒ v2 =
v1,2v2,2v1,1v2,10
• Av3 = A
v1,3v2,3v3,3v4,3v5,3
=
v3,3v4,3v5,30
0
= v2 =⇒
v3,3 = v1,2
v4,3 = v2,2
v5,3 = v1,1
v2,1 = 0
=⇒ v3 =
v1,3v2,3v1,2v2,2v1,1
6.6 Problem discussions 6-107
• To summarize,
v1 =
v1,1v2,10
0
0
=⇒ v2 =
v1,2v2,2v1,1v2,10
=⇒ If v2,1 = 0, then v3 =
v1,3v2,3v1,2v2,2v1,1
v(1)1 =
1
0
0
0
0
=⇒ v(1)2 =
v(1)1,2
v(1)2,2
1
0
0
=⇒ v(1)3 =
v(1)1,3
v(1)2,3
v(1)1,2
v(1)2,2
1
v(2)1 =
0
1
0
0
0
=⇒ v(2)2 =
v(2)1,2
v(2)2,2
0
1
0
6.6 Problem discussions 6-108
Since we wish to choose each of v(1)2 and v
(2)2 to be orthogonal to both v
(1)1 and
v(2)1 ,
v(1)1,2 = v
(1)2,2 = v
(2)1,2 = v
(2)2,2 = 0,
i.e.,
v(1)1 =
1
0
0
0
0
=⇒ v(1)2 =
0
0
1
0
0
=⇒ v(1)3 =
v(1)1,3
v(1)2,3
0
0
1
v(2)1 =
0
1
0
0
0
=⇒ v(2)2 =
0
0
0
1
0
Since we wish to choose v(1)3 to be orthogonal to all of v
(1)1 , v
(2)1 , v
(1)2 and v
(2)2 ,
v(1)1,3 = v
(1)2,3 = 0.
6.6 Problem discussions 6-109
As a result,
A[v(1)1 v
(1)2 v
(1)3 v
(2)1 v
(2)2
]=[v(1)1 v
(1)2 v
(1)3 v
(2)1 v
(2)2
]0 1 0 0 0
0 0 1 0 0
0 0 0 0 0
0 0 0 0 1
0 0 0 0 0
�
• Are all v(1)1 ,v
(1)2 ,v
(1)3 ,v
(2)1 and v
(2)2 eigenvectors of A (satisfying Av = λv)?
Hint: A does not have 5 eigenvectors. More specifically, A only has 2 eigen-
vectors? Which two? Think of it.
• Hence, the problem statement may not be accurate as I mark “(are these the
eigenvectors?)”.
6.7 Singular value decomposition (SVD) 6-110
• Now we can represent all square matrix in the Jordan form:
A = M−1JM.
• What if the matrix Am×n is not a square one?
– Problem: Av = λv is not possible! Specifically, v cannot have two different
dimensionalities.
Am×nvn×1 = λvn×1 infeasible if n �= m.
– So, we can only have
Am×nvn×1 = σum×1.
6.7 Singular value decomposition (SVD) 6-111
• If we can find enough numbers of orthogonal u and v such that
Am×n
[v1 v2 · · · vn
]n×n
=[u1 u2 · · · um
]m×m
σ1 · · · 0 0 · · · 0... . . . ... ... . . . ...
0 · · · σr 0 · · · 0
0 · · · 0 0 · · · 0... . . . ... ... . . . ...
0 · · · 0 0 · · · 0
m×n
.
where r is the rank of A, then we can perform the so-called singular value
decomposition (SVD)
A = UΣV −1.
Note again that the required enough number of orthogonal u and v may be
impossible when A has repeated “eigenvalues.”
6.7 Singular value decomposition (SVD) 6-112
• If V is chosen to be an orthogonal matrix satisfying V −1 = V T, then we have
the so-called reduced SVD
A = UΣV T
=r∑
i=1
λiuivTi
=[u1 · · · ur
]m×r
σ1 · · · 0
... . . . ...
0 · · · σr
r×r
vT
1...
vTr
r×n
• Usually, we prefer to choose an orthogonal V (as well as orthogonal U).
• In the sequel, we will assume the found U and V are orthogonal matrices in
the first place; later, we will confirm that orthogonal U and V can always be
found.
6.7 How to determine U , V and {σi}? 6-113
• A = UΣV T
=⇒ ATA =(UΣV T
)T (UΣV T
)= V ΣTUTUΣV T = V Σ2V T.
So, V is the (orthogonal) matrix of n eigenvectors of symmetric ATA.
• A = UΣV T
=⇒ AAT =(UΣV T
) (UΣV T
)T= UΣV TV ΣTUT = UΣ2UT.
So, U is the (orthogonal) matrix of m eigenvectors of symmetric AAT.
• Remember that ATA and AAT have the same eigenvalues except for additional
(m− n) zeros.
Section 6.6, Problem 19 (see slide 6-104): Am×nBn×m and Bn×mAm×n have
the same eigenvalues except for additional (m− n) zeros.
In fact, there are only r non-zero eigenvalues for ATA and AAT, which satisfy
λi = σ2i , where 1 ≤ i ≤ r.
6.7 How to determine U , V and {σi}? 6-114
Example (Problem 21 in Section 6.6): Find the SVD of A = J2, where
J =
0 1 0 0 0
0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
0 0 0 0 0
.
Solution.
• ATA =
0 0 0 0 0
0 0 0 0 0
0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
and AAT =
1 0 0 0 0
0 1 0 0 0
0 0 1 0 0
0 0 0 0 0
0 0 0 0 0
.
• So V =
0 0 0 1 0
0 0 0 0 1
1 0 0 0 0
0 1 0 0 0
0 0 1 0 0
and U =
1 0 0 0 0
0 1 0 0 0
0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
for Λ = Σ2 =
1 0 0 0 0
0 1 0 0 0
0 0 1 0 0
0 0 0 0 0
0 0 0 0 0
.
6.7 How to determine U , V and {σi}? 6-115
• Hence, 0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
0 0 0 0 0
0 0 0 0 0
︸ ︷︷ ︸A
=
1 0 0 0 0
0 1 0 0 0
0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
︸ ︷︷ ︸U
1 0 0 0 0
0 1 0 0 0
0 0 1 0 0
0 0 0 0 0
0 0 0 0 0
︸ ︷︷ ︸Σ
0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
1 0 0 0 0
0 1 0 0 0
︸ ︷︷ ︸V T
�
We may compare this with the Jordan form.0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
0 0 0 0 0
0 0 0 0 0
︸ ︷︷ ︸A
=
1 0 0 0 0
0 0 0 1 0
0 1 0 0 0
0 0 0 0 1
0 0 1 0 0
︸ ︷︷ ︸M
0 1 0 0 0
0 0 1 0 0
0 0 0 0 0
0 0 0 0 1
0 0 0 0 0
︸ ︷︷ ︸J
1 0 0 0 0
0 0 1 0 0
0 0 0 0 1
0 1 0 0 0
0 0 0 1 0
︸ ︷︷ ︸M−1
6.7 How to determine U , V and {σi}? 6-116
Remarks on the previous example
• In the above example, we only know Λ = Σ2 =
1 0 0 0 0
0 1 0 0 0
0 0 1 0 0
0 0 0 0 0
0 0 0 0 0
.
• Hence, Σ =
±1 0 0 0 0
0 ±1 0 0 0
0 0 ±1 0 0
0 0 0 0 0
0 0 0 0 0
.
• However, by Avi = σiui = (−σi)(−ui), we can always choose positive σi by
adjusting the sign of ui.
6.6 SVD 6-117
Important notes:
• In terminology, σi, where 1 ≤ i ≤ r, is called the singular value.
Hence, the name of singular value decomposition is used.
• The singular value is always non-zero (even though the eigenvalues of A can
be zeros).
Example. A =
0 0 1 0 0
0 0 0 1 0
0 0 0 0 1
0 0 0 0 0
0 0 0 0 0
but Σ =
1 0 0 0 0
0 1 0 0 0
0 0 1 0 0
0 0 0 0 0
0 0 0 0 0
.
• It is good to know that:
The first r columns of V ∈ row space R(A) and are bases of R(A)
The last (n− r) columns of V ∈ null space N (A) and are bases of N (A)
The first r columns of U ∈ column space C(A) and are bases of C(A)
The last (m− r) columns of U ∈ left null space N (AT) and are bases of N (AT)
How useful the above facts are can be seen from the next example.
6.6 SVD 6-118
Example. Find the SVD of A4×3 = x4×1yT1×3.
Solution.
• A is a rank-1 matrix. So, r = 1 and Σ =
σ1 0 0
0 0 0
0 0 0
0 0 0
, where σ1 �= 0. (Actually,
σ1 = 1.)
• The base of the row space is v1 =y
‖y‖; pick up perpendicular v2 and v3 that
span the null space.
• The base of the column space is u1 = x‖x‖; pick up perpendicular u2,u3,u4
that span the left null space.
• The SVD is then
A4×3 =
[x
‖x‖︸︷︷︸column space
u2 u3 u4︸ ︷︷ ︸left null space
]4×4
Σ4×3
yT
‖y‖vT2
vT3
3×3
row space}null space
�
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