Principles of Mathematics in Operations Research

(Rick Simeone) #1
56 4 Eigen Values and Vectors

Example 4.3.3 From the previous example,

A =

MO

i 1 0
0 I 3
"44

=*Ai = 1, A 3 =

Ax = X\x <&

\x\ + |x2 = 0 <£> x\ + x 2 = 0
I x 2 + |x 3 = 0 & x 2 + x 3 = 0

±X1
\x\ + x 2
;X 2 + fx 3 _

=

1*1"
1*2
1*3.

:}


Ax = X 2 x <=>

|*i
5X1 + X 2
fX 2 |*3

Thus, v\ =

Xi
x 2
X3

7*2 - 7X3 = 0 <4> X 2

Ax = A 3 x <=>

H = 0.1


  • X 3 = 0. J
    Thus, v 2 =


1*1
\x\ + x 2
[X2 + fx 3 _

=

"fail"

fx 2

.1*3.
xx =0.
O- §xi - \x 2 = 0 =>• 2a:i + x 2 = 0. \ Thus, v 3 =
x 2 = 0.

Therefore, S =

[S\I]

Then,

100
-1 10
1 1 1

100
-1 10
111

100'
010
001

-4

"100
010
0 1 1

100'
1 10
-10 1


'100
010
001

1 00"
1 10
-2-1 1

= [I\S -ii

S^AS ••

1 00'
1 10
2 -1 1

1 00"

\ 10
0 1 2
."44.

100'
-1 10
111

=

loo"
01 0
oof

= A.

Remark 4.3.4 Any matrix with distinct eigen values can be diagonalized.
However, the diagonalization matrix S is not unique; hence neither is the
basis {«}"_!• If we multiply an eigen vector with a scalar, it will still remain
an eigen vector. Not all matrices posses n linearly independent eigen vectors;
therefore, some matrices are not dioganalizable.

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