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Numerical Calculus
Numerical Calculus Approximations, Interpolation, Finite Differences, Numerical Integration, and Curve Fitting
By William Edmund tjYCilne
1949 PRINCETON UNIVERSITY PRESS PRINCETON, NEW JERSEY
COPYRIGHT, I949, BY PRINCETON UNIVERSITY PRESS LONDON: GEOFFREY CUMBERLEGE, OXFORD UNIVERSITY PRESS
PRINTED IN THE UNITED STATES OF AMERICA
PREFACE The growth of computational facilities in the period since World War I has already been phenomenal, and the possibilities in the near future are beyond imagining. The number of excellent calculating machines now avail able in almost every office or laboratory, to say nothing of the amazing Sequence Controlled Calculator, or the equally marvelous Electronic Numerical Integrator and Calculator, makes it possible to solve whole categories of problems that only yesterday were prohibitively diffi cult. In consequence the subject of numerical analysis is surely destined to make enormous strides in the decades to come. On the other hand our traditional courses in college and graduate mathemati.es too often turn out students poorly trained in the art of translating' theoretical analysis into the concrete numerical results generally required in practical applications. As a physicist friend of mine once said, 'Tou mathematicians know how to solve this problem but you can't actually do it". The aim of this book is to aid in bridging the considerable gulf between classroom mathematics and the numerical applications. It is designed to provide rudi mentary instruction in such topics as solution of equa tions, interpolation, numerical integration, numerical solution of differential equations, finite differences, approximations by Least Squares, smoothing of data, and simple equations infinite differences. The presentation is intentionally elementary so that anyone with some knowledge of calculus and differential equations can read it understandingly. Mathematical elegance and rigor have frequently been sacrificed in favor of a purely naive treatment. ν
PREFACE Prom the wealth of material available the decision to include or to exclude specific topics has posed a vexing problem, and personal interest rather than object ive logic has doubtless influenced the choice. It is hoped that enough has been included to meet a fairly general need and to stimulate wider study of this interesting and useful branch of mathematics. The author is indebted to Mr. James Price for the calculation of Table VI, to Professor William M. Stone for some of the material in Article 82, and to Professor Burns W. Brewer for criticisms of Chapter VIII. WilliamEdmund Milne, Ph.D., D.Sc. Professor of Mathematics Oregon State College Corvallis, Oregon March 19^8
CONTENTS Page Chapter I.
SIMULTANEOUS LINEAR EQUATIONS
1 . Determinants
3 3
2.
Solution of Linear Equations by Determinants . .
3.
Homogeneous Equations
11
4.
The Method of Elimination
15
5.
Numerical Solution of Linear Equations
17
6.
Symmetrical Equations
2b
7
7.
Check on Accuracy of Computation
25
8.
Evaluation of Determinants
26
9.
10.
Calculation of Cofactora
27
IVbgnitude of Inherent Errors
29
Chapter II. SOLUTION OP EQUATIONS BY SUCCESSIVE APPROXIMATIONS
36
11 .
One Equation in One Unknown
36
12.
Exceptional Cases
M
13.
Simultaneous Equations
1l·.
Successive Substitutions
^7
15.
Exceptional Cases
k9
16.
Complex Roots of Algebraic Equations
53
17·
Solutions of λ-determinants
57
Chapter III. INTERPOLATION
63
18.
Interpolating Functions
63
19.
Linear Interpolation
68
20.
Aitken's Process of Iteration
69
21.
22.
Neville's Method of Iteration Inverse Interpolation
73
23.
The Error in Polynomial Interpolation
78
2k.
Lagrange's Interpolation Formula
83
25.
Equally Spaced Points
89
72
Page Chapter
IV.
NUMERICAL D I F F E R E N T I A T I O N AND INTEGRATION
26.
Numerical
27.
Differentiation Points.
93
Differentiation
.
Formulas
93 for
Equally
Spaced
,
96
28.
Numerical
Integration
29.
Undetermined
30.
Investigation
31 .
C a l c u l a t i o n of
32.
The T r a p e z o i d a l
100
Coefficients of
the
the
10k
Error
108
Error
114
Rule
116
35-
Simpson's
3^.
Newton-Cotes
Rule Quadrature
Formulas,
Closed Type
.
122
120
35.
Newton-Cotes
Quadrature
Formulas,
Open Type
.
126
36.
Summary
.
127
Chapter V.
NUMERICAL S O L U T I O N OF D I F F E R E N T I A L EQUATIONS
37-
First
38.
Second Method
39-
Equations
ko.
Special
M .
Simultaneous
b2.
Use o f
of
13k Second
Order
for
138
Second-Order
Equations
.
.
Equations
Five-term
k3.
Factorial
The B i n o m i a l
b5.
Finite
h6.
Detection
1 k2
Formulas
1^5
Polynomials
11*5
Coefficients
150
Differences
Newton's Forward Newton's
of
.
Errors
Binomial
Interpolation
.
1 51+
.
158
Formula,-
Differences Binomial
1^0 1U1
F I N I T E DIFFERENCES
41)-.
U8.
132
Formulas
Chapter V I .
^7.
131
Method
1 60
Interpolation
l>ormula,
Backward D i f f e r e n c e s
161
^9.
Gauss's
I n t e r p o l a t i o n Formulas
50.
Central
Differences.
Stirling's
viii
163 Formula.
. . .
172
Page 51. 52.
53· 54. 55. 56.
57· 58.
Everett's Central Difference Formula Bessel1s Formula
178
Tabulationof Polynomials Subtabulation Derivatives in Terms of Differences Integral of Newton's InterpolationFormula ... Symmetric Integrals of Stirling's Formula. . . . Integral of Everett's Formula
1 83 185 19 1
Chapter VII. DIVIDED DIFFERENCES 5 9 . Definition of Divided Differences 6 0 . The Interpolating Polynomial in Terms of Divided Differences 61. Other Forms of the Interpolating Polynomial. . . Chapter VIII. RECIPROCAL DIFFERENCES 6 2 . Approximation by Means of Rational Fractions . . 6 3 . Reduction of the Determinant 6 k . Reciprocal Differences 6 5 . Further Properties of Reciprocal Differences . . 6 6 . Exceptional Cases
195 196 1 97 201 201
207
215 219 219 221 226 232 236
Chapter IX. 67. 68. 69. 70. 71. 72. 73.
lk. 75.
POLYNOMIAL APPROXIMATION BY LEAST SQUARES Least Sauares Further Investigation of Least Squares Least Squares for Integrals Orthogonal Polynomials .... Use of Orthogonal Polynomials Orthogonal Polynomials. Equally Spaced Points . Graduation, or Smoothing of Data Alternative Treatment of Smoothing Formulas. . . Gauss's Method of Numerical Integration
181
Chapter X. OTHER APPROXIMATIONS BY LEAST SQUARES. 7 6 . General Problem of Approximation by Least Squares
2^2 2^2 250 255 257 263 265 275 280 285 291 291
Page 77.
Fundamental
78.
Trigonometric
79-
Harmonic
80.
Calculation
81 .
The G r a m - C h a r l i e r
82.
Case o f
Chapter 83.
Approximation
of
300
Coefficients
317
S I M P L E D I F F E R E N C E EQUATIONS
8^.
Calculus
Differences
85.
The D i f f e r e n c e Exact Linear
88.
Linear
the
Appendix
309
Approximation
a Difference
86.
302
Points
S o l u t i o n of
87.
29U
Analysis
Discrete
XI.
292
Theorem
of
32k
Equation
32U •
328
Eouation
331
Equations
337
Difference
Equations
of
Order
Higher
Than
First
.
Equations,
A.
Variable
Coefficients
3^6
N O T A T I O N A N D SYMBOLS
351
Appendix B.
TEXTS,
Appendix
C.
C I A S S I F I E D G U I D E TO FORMUIAS AND METHODS.
Tables.
I. II.
T A B L E S , AND B I B L I O G R A P H I E S
Binomial
. . . .
353
Coefficients
Interpolation Newton's
for
Interpolation
Formula
366
I I I .
Everett's
IV.
Lagrange's Equally
Interpolation Coefficients
Spaced
Coefficients for
Legendre's
VI.
Orthogonal Polynomials
Polynomials
.
369
Five 371
(Adapted
to
the 373
Interval
Equally
.
Points.
V.
VII.
359 365
Coefficients
Binomial
341
Spaced
Integrals
of
for
n
+ 1
Points
Binomial
375 Coefficients, 382
VIII.Gamma INDEX
a n d Digamma F u n c t i o n s
'
383 385
x
NUMERICAL CALCULUS
Chapter I SIMJIiTANEOUS LIKEAE EQUATIONS A great variety of problems in pure mathematics and in the several branches of applied mathematics involve either directly or indirectly seta of simultaneous linear equations.
Hence, it is appropriate to devote this first
chapter to methods of solving such equations and to an estimate of the attainable accuracy of the solution. For theoretical investigations and for the case of equations with literal coefficients we commonly employ determinants.
For the case of numerical coefficients we
uae a systematic scheme of elimination adapted to machine calculations.
While the two methods are not fundamentally
distinct, they differ so much in details of operation that it is convenient to treat them separately.
However, since
a knowledge of determinants is almost essential for a full understanding of the method of elimination it is not practical to make the two treatments entirely independent. 1.
DETERMINANTS
We present here without proof a brief account of the elementary properties of determinants. (a)
The value of a two-rowed determinant is given
by the formula,
a
(b)
I
b
2
"
a
2
b
i
The value of a three-rowed determinant is given
by the formula,
h
1.
(c) n-rowed
The
determinant
determinant
column is row
SIMULTANEOUS L I N E A R
called
and t h e
by
the
j-th
of
n-1
striking
minor
column.
EQUATIONS
of
rows
out
the
Thus
obtained
the
i-th
element
in
the
from
row
in
an
and
the
j-th
i-th
determinant
(1 )
the
minor
In a columns nal
of
similar
determinant,
j-th
By t h e column is
by
elements by
by
the
by
(e)
small letter
The
of
cofactor meant It
same
striking
of
two
out
three
letters
order of
the
w i l l
two
less
minor be
of
products
in
that
from
and
the
three
i-th
element to
two
origi-
etc. row
multi-
designate
corresponding
Thus
of
and
less,
convenient
and t h e i r
rows
than the
rows
three
an element
capitalized.
sum o f
out
order
striking
we o b t a i n m i n o r s
(d)
plied
mariner b y
we o b t a i n m i n o r s
columns
and
is
cofactors
(1)
we
have
each element
of
a
row
or
1.. (or
column)
ant.
For
(f)
by
its
example,
The
column)
by the
(or
column)
is
(g) are in
two
If
of
products
to
of
zero.
columns
interchanged,
the
5
equal
to
the
determin-
(1)
corresponding
equal
two
is
(or
value
each element
of
cofactors
another
of
a
row row
Thus two
of
rows)
the
of
a
determinant
determinant
is
changed
sign. (h)
If
corresponding
elements
rows)
of
a
are
determinant
two
from
aum o f
(or
DETERMINANTS
own c o f a c t o r
is
determinant
of
equal,
two the
columns value
the
columns
(or
zero.
(i)
If
corresponding
elements
rows)
of
a determinant
are proportional,
the
determinant
(j)
is
The v a l u e
of
a determinant
Rows a n d c o l u m n s
(2)
A factor
•changing t h e
(3)
row
(or is
The
elements
row
(k) of
two
the
order
value
of
they
a row
(or
a d d i t i o n of
column).
rows
(or
if without
occur.
elements
resulting
by t h i s
corresponding
determinant.
unchanged
i n which
and t h e
of
by the
the
is
interchanged
removed f r o m a l l
column)
(or
The number the
are
multiplied
changed
order
is
ant
times
of
zero.
(1)
0
(or
of
of
determin-
factor. column) a
are
constant
element
of
another
Thus,
columns)
a
is
called
the
6
1. (1 )
Rank o f
determinant said
to
order to
SIMULTANEOUS L I N E A R
be
of
of of
be t h e
a determinant.
n-th rank
the
order n.
is
If
the
non-vanishing
rank
of
EQUATIONS
the
not
If zero
the the
determinant
minor
of
value
of
a
determinant is
highest
zero
is
the
order
is
said
row as
in
(e).
determinant.
Exercises Evaluate
by
(b)
k.
Evaluate
1,
2,
3 by
cofactors
of
first
5.
Evaluate
1,
2,
3 by
cofactors
of
second
6.
Verify
3,
elements
by
(f)
in
cofactors
1, of
2,
7.
Evaluate
by
8.
Evaluate
7 by method
9.
Show
10.
Show t h a t
is
first
row
in x
whose
row.
(e)
an algebraic
Find 1,
of
in(e).
(j,
3).
that
roots 11.
taking
second
c o l u m n as
2,
are
a,
the- rank 3,
7-
equation of
b,
c.
of
the
third
determinants
degree
in
Exercises
1. 2.
SIMULTANEOUS L I N E A R EQUATIONS
S O L U T I O N OF L I N E A R EQUATIONS B Y
Let
ua
consider
a
set
of
linear
7
DETERMINANTS
equations
in
n
unknowns.
(1 )
Let of
the the
value x's
in
multiply
the
etc.,
addition,
the
determinant
be denoted b y D,
element
,
of
this
f i r s t
let
determinant
of
the
by
equations.
the
by the
"
of
Now l e t
us
,
The
properties
the
result
of
coefficients
cofactor
be
e q u a t i o n above
and add t h e i n view
and
formed
the
the
second of
by
the
cofactors,
is
(2) It
is
the
readily
expansion
seen that in
the
elements
of
expression on the the
first
right
column of
is
the
determinant
that
is,
first
it
is
the
determinant
column replaced
determinant
by
determinant
obtained
by
the
Three
column of
cases
are
,
by
and
the
Let
i n general
let
from D by
b's.
now t o
D with
b's.
us
replacing
T h e n we h a v e
be
the
the
distinguished.
elements
of
denote
this
denote
the
the
i-th
equations,
the
column
8
1. SIMULTANEOUS LINEAR EQUATIONS I. D ^ 0. In this case the equations have one and onl? one solution, which is given by
That this is actually a solution may be proved by direct substitution back into the original equations. II. D=O, not all D^ = 0. Then we have the im possible equation, 0 = D^, and the equations have no solution. III. D=O, all D^ = 0. Let r be the rank of D and r^ the rank of D^. Then (a) If any r^ is greater than r, there is no solution. (b) If no r^ is greater than r, then r of the unknowns can be obtained in terms of the remaining η - r unknowns, as follows: Rearrange (if necessary) the order of the equations and the order of the unknowns in the equations so that the r-rowed determinant in the upper left hand corner of D ( as rearranged) will not be zero. In the first r equations transpose to the right all the variables beyond the first r, and solve the first r equations for the first r unknowns as in Case I. The solutions thus found will satisfy the remaining equations also and will contain η - r undetermined variables. Nbtrix. A system of ran quantities arranged in a rectangular array of m rows and η columns is called a matrix. In contrast to a determinant, which is a quantity determined from its matrix by certain rules, a matrix is not a quantity at all but an array of quantities. Por example two determinants with different elements may have the same value, but two matrices with different elements are different matrices. We shall not be concerned with the general properties of matrices, but we do find it convenient to define and use the term rank of a matrix. From any given matrix it
2.SOHJTION OF LINEAR EQUATIONS BY DETERMINANTS 9 is possible to set up determinants by striking out (if necessary) certain rows and columns from the matrix. The determinant of highest order that can be so formed has an order equal to the lesser of the two numbers m and n, if m and η are unequal, or equal to m if m and η are equal. The highest rank of the determinants of highest order is said to be the rank of the matrix. Thesquare matrix consisting of the array of co efficients in the left-hand members of equations (1) is called the matrix of the coefficients. The matrix a 11
aI 2
aIn
bI
a21
a22
a2n
b2
arn
an2 '
ann
bn
···
with η rows and η + 1 columns is called the augmented matrix. Using this terminology we can express the results Ij II, III above in the following'way. I. If the matrix of the coefficients is of rank η the equations have a unique solution. II. If the rank of the augmented matrix is greater than the rank of the matrix of the coefficients the equations have no solutions. Ill· If the ranks of the augmented matrix and of the matrix of the coefficients are both equal to η - k there are an infinite number of solutions expressible in terms of k arbitrary parameters. Exercises Determine whether the following equations have solutions, and obtain solutions when possible. Use determinants.
10
1 . SIMULTANEOUS LINEAR EQUATIONS
1.
2.
3.
7.
8 9.
Solve
the
set
of
equations
SSo ol vl ve e t ht he e s se et t o of f e eq qu ua at it oi on ns s
2. TO.
S O L U T I O N OP L I N E A R EQUATIONS B Y DETERMINANTS
Show t h a t
always
have
simple 11.
equations
a unique
of
the
solution,
11
type
which
c a n be f o u n d
by
substitutions.
Show t h a t
10 m a y b e
the
solution
of
the
equations
in
Exercise
written
3. A set
of
unknowns
of
i n which
the
n
the
HOMOGENEOUS EQUATIONS
simultaneous
linear
equations
with
n
form
constant
terms
are
a l l
zero
always
has
at
12
1.
least the
is
one
solution,
not
is
of the
zero rank
the r
where r
side,
and
If
the
D are
express to
zero. the
set of
row
not
are
where
k
is
actually of
remaining
Investigate
the
equations
the
of In
one row a l l
determinant
this
1 , we
1,
get
-
not
a l l
case a more
solve n
-
r
rank
of
the
to
the
cofactor
(provided
the
cofactors
since
for
r
variables.
We
the
right
s y m m e t r i c a l way
proportional D
D
cofactors
of
of
If
2.
to
solutions
the
homogeneous of
to
equations the
of
j-th
this
Thus
constant.
solutions
this
of
1,
n
to
say z,
D is
an arbitrary
Article
D is
one v a r i a b l e , obtaining
zero).
furnish
possible
x and y ,
non-zero
Applying Example
is the
each x .
element
solution.
it
for
rank
other
of
transpose
solve
no
< n,
that
may t h e r e f o r e
have
terms
in
1.
H e r e we f i n d
(f)
namely
equations
variables
Example
is
EQUATIONS
determinant
of
of
SIMULTANEOUS L I N E A R
follows
That at
in this'case
procedure
to
the
these
once D =
values
from
0.
equations
of
(e)
and
3.HOMOGENEOUS EQUATIONS
or
if
This
we
13
let
result
is
seen to
be e q u i v a l e n t
of
problem that
to
the
one
previously
obtained. A type variety
of
applications
is
arises
frequently
illustrated
in
by the
a
wide
following
example: Example the
2.
For what
non-zero
the
parameter
A
y,
we
w i l l
solutions.
Collecting; the
that
not
zero
the
the
determinant
which
the
determinant
I n order
the
Solving
the
the
determinant
D must
equation for
given equations
x,
equations
we o b t a i n t h e must
of
homogeneous
homogeneous
parameter
this
coefficients D of
z,
a
vanish.
Upon cubic
, we f i n d
a
have
following
.37228, have
and
obtain
equations
solution expanding equation
satisfy:
.62772, the
of
equations
have
as
value
set
of
three for
non-zero
values each of
which
solutions.
u
1.
SIMULTANEOUS L I N E A R
EQUATIONS
Exercises 1.
Solve
2.
Solve
3.
Determine
and f i n d
the
corresponding
non-zero
solutions:
k.
Determine
and f i n d
the
corresponding
non-zero
solutions:
5.
Show t h a t
the
equat ions
sin
have
no
real
non-zero
solutions.
6 ^ 0 .
1 . SIMULTANEOUS LINEAR EQUATIONS
15
I k THE METHOD OF E L I M I N A T I O N The use
of
determinants
for
equations
becomes
excessively
equations
exceeds
four
coefficients
are
practical
method of
elimination.
of
four
can r e a d i l y should
the
extend
Let
in
the
the
of
is
not
zero.
the
the
next
to
if
of the
digits. a
systematic
given for as
the
general steps
make c l e a r
actual
equations
is
detailed
given to
shown i n
set
the
to
so
to
unknowns,
procedure
a pattern for
the
four
linear
number
several
The e x p l a n a t i o n with
i n mind t h a t
process as
if
and e s p e c i a l l y
expressed
discussion are
short
intended
s o l u t i o n of
c a l c u l a t i o n we r e s o r t
equations
be k e p t
following
five
numbers
Hence f o r
case
or
the
cumbrous
case. in
the
Article,
the
reader It
the basis
and a r e
for
not
computation. be
solved
be w r i t t e n
as
follows:
(1 )
(2)
(3) (*)
where first
equation
equations
is
choosing
coefficient
for
of
is
The f i r s t
stage
following
steps:
a)
Divide
equation
b)
Multiply
tract
from
t h e n by of
the
- and
the
coefficient
we r e a r r a n g e the
not of
(1)
(2);
subtract
first
the
of
order
e q u a t i o n one
in of
the
the
i n which
the
zero.) the
elimination
by
resulting
equation
equations
(If
zero,
is
effected
by
the
; equation f i r s t
then by from
(4).
and The
by
and
subtract result
is
sub-
from the
(3); set
16
1 . SIMULTANEOUS L I N E A R
EQUATIONS
(5)
(6) (7) (8)
where
the
b's
srs
obtsjLn6d f r o m
the
a's
by th©
formulas
(9) (10)
To p e r f o r m t h e operate
same m a n n e r (5),
second
on equations a s we d i d
and
(K),
The
third
(6),
stage (7),
i n the
of
and
case
the (8)
of
elimination in precisely
equations
(1),
on equations
(12)
we the (2),
obtaining
(11 ) (12)
(13) where (U)
(15)
(13)
(16)
(17) where
(18)
(19)
giving
stage
is
performed
and
k. The f o u r t h by
,
THE METHOD OP E L I M I N A T I O N stage
consists
simply
in
17
dividing
(17)
giving
(20)
i n which
The v a l u e s equations
(20),
of
the
(16),
x's
are
(11),
now f o u n d
and
(5),
in
as
turn
from
follows:
(21 )
(22) (23) (21+)
Simple s u b s t i t u t i o n s In without to
case the
follow
is
necessary
aid
of
a
the
5. If
the that
(A)
the to
calculating outlined
s o l u t i o n by
solve
a
set
machine,
operations the
equations
compressed
machine
into
is
used
described
entire
elimination.
of
it
equations
may b e
best
above.
NUMERICAL S O L U T I O N OF L I N E A R
telescope
be
steps
a calculating
an extent original
complete
it
the
final
the
following
is
possible
in Article
computation,
and
EQUATIONS
it
4 to
including
values compact
of
the
form:
to
such
the
x's,
can
1 . SIMULTANEOUS LINEAR EQUATIONS 18
(B)
(C)
The m a t r i x (1) of
to
(k)
numbers
(C)
of
are
tions
is
(C), the
augmented m a t r i x
at
various
consisting
x's.
inserted
and t o
the
The m a t r i x
occurring
The m a t r i x values
(A)
Article
The
to
facilitate
Copy t h e
[2]
Divide
first
the
row
equations
the
consist
elimination.
gives in
order
the
(B) of
and
opera-
explanation.
column of
first
of
only,
the
of
seen to
i n brackets
indicate
the
is
stages
one
numbers
solely
[1]
of
(B)
row
of
(A). (A)
(excepting
by
Note the
[3]
Compute
that
the
row and
desired the
, comes
1
or
its
number
-
bar
is
of
numerator
is
number
s t i l l
is
and t h e
to
on the in
by the
the
found
put
by
then recorded
The
performed
is
according
Compute
(A) w h i l e
column of
The
complement)
[! P·
1021,
November, 19^7-
Chapter II SOLUTION OP EQUATIONS BY SUCCESSIVE APPROXIMATIONS It is usually impractical to solve either transcend ental equations or algebraic equations of higher than the second degree by means of direct analytical operations. Practically all of the many methods which have been devised to solve such equations are in effect methods of approximation whereby a crude guess at the root is used to obtain a closer value, the latter again used to obtain a still closer value, and so on, until the desired accuracy is secured.
Some of the most useful ways of
carrying out the method of successive approximations are described and illustrated in this chapter. 1 1 .O N E E Q U A T I O N I N O N E U N K N O W N Suppose that the equation to be solved is (1 )
y = f(x) = 0.
Suppose also that by means of a rough graph or otherwise we have ascertained that there is a root of the equation in the vicinity of
χ = xQ.
The method of successive
approximations consists in finding a sequence of numbers xQ, X1, x2, ..., converging to a limit f(a) = 0.
a
such that
The recurrence relation by which xn+1 is
calculated after Xn has been obtained may be expressed in the form (2)
xn+1 = xn - fUn)M
in which m denotes the slope of a suitably chosen line. The ideal choice of m is obviously the slope of the chord joining the point (xn, y ), where yn = f(xn), to the point
11. ONE EQUATION IN ONE UNKNOWN
37
(a, 0), for then x n + 1 = a, and the problem Is solved. Since of course the point
a
is unknown this ideal value
of m is also unknown and we are obliged to use some type of approximation for m.
There are several ways of
choosing an approximate value for m. 1)
The slope of the tangent to the curve
y = f(x)
at x = x n gives
2)
The slope of the chord joining two points
already calculated, say
3)
If
and
, gives
and x = x g are values of x for which
f(x1 ) and f(x 2 ) have unlike .signs, so that the desired root lies between x 1 and x g , it is frequently satisfactory to use
throughout the successive steps.
Since m is calculated
once for all, this choice saves considerable labor. 4)
Similarly if the curvature is not too great
near the root it may suffice to use
throughout the successive steps.
This is especially
advantageous if the computation of successive values of :
laborious. 5)
If the curvature does not change sign near the
root, it is clear from a consideration of the graph that a value of m between those given by 3) and 4) will often
38
II. SOLUTION BY SUCCESSIVE APPROXIMATIONS
be better than either one.
Hence, we may employ the
arithmetic mean
as our approximate value of m. No inflexible rule can be given for the best choice of m.
The computer need only remember that the ideal
value is the slope of the chord joining a known point (x^, y 1 )'on the curve with the point (a, 0), and then make the wisest choice available in the particular problem. The several methods mentioned above will now be illustrated by numerical examples. Example 1.
Find the positive root of
Here we have, using method l),
By substituting a few trial values of x we find that indicating a root between x = 1 and x = 2, probably nearer x = 2. x Q = 2.
Hence X q is chosen as
The computation may be arranged as shown below:
The desired root to 5 decimal places is
x = 1.79632.
11. ONE EQUATION IN ONE UNKNOWN Example 2.
Find the smaller positive root of
To five places the desired root is Example 5•
39
x = 0.44881
Find the positive root of
By method 1)
From a rough sketch we conclude that the root is somewhere near
x = 2.
The computation may be arranged as
shown:
The last number in the right-hand column is the root to nine places.
40
II. SOLUTION BY SUCCESSIVE APPROXIMATIONS Example 4.
Find the largest positive root of
By trial substitutions we locate the largest positive root between
x = 4
and x = 5 .
Since
f(4) = - 2 3 ,
f(5) = 94, approximately, the slope of the chord is 117. The approximate value of
is 50.
Using method 5)
we take a value of m about,half way between 50 and 117, say
m = 8 5 , and let
x Q = 4.
The substitutions are
performed by the usual method of synthetic substitution. This can be done in a continuous operation on the calculating machine.
(In the case of machines where the
carry-over is not effective over all the dials in certain positions it may be necessary to replace negative numbers* on the dials by their complements, in which case the change of sign must be carefully watched.)
The work may
be arranged as shown:
It is possible to prove that with suitable limitations on f(x) and on the choice of the Initial value X q the process of successive approximations will give a sequence X q , x 1 , x g , ... which converges to a root of f(x) = 0.
For the practical computer, however, such a
theorem is of somewhat academic interest, since the numerical process itself either converges with reasonable rapidity to a value which is obviously a root, or else by its behavior gives warning that x Q was poorly chosen
11 . ONE EQUATION IN ONE UNKNOWN
41
or that f(x) haa some peculiarity near the supposed root. Some peculiar cases will be considered in the next article. Exercises Find to five places all real roots of
12. EXCEPTIONAL CASES If the derivative f'(x) ?anishes at or near a root of f(x) = 0, the process of approximation encounters trouble becauae the divisor m is small.
In such a case it is
frequently best to obtain the root of
first
of all, especially if f"(x) is not near zero.
Suppose
that we have found the root x = a of the equation f'(x) = 0.
We next calculate f(a) and f"(a). the quantity
a
Then
is a double root,
and f(a) and f"(a) have like signs, there is no root of f(x) = 0 in the vicinity of x = a. For under these conditions the curve
is
concave away from the x-axis and cannot cross the axis in the neighborhood of x = a. 3)
If f(a) + 0 and f(a) and f"(a) have unlike signs,
we may expect to find two roots of f(x) = 0, one greater than
a
f(x) at
and one less than
a.
Using Taylor's series for
x = a, noting that f'(a) = 0
and neglecting
terms of third and higher degree we obtain the approximate values
b2
II. SOLUTION BY SUCCESSIVE APPROXIMATIONS
for the two roots. Each one of these may now be refined by successive approximations in the usual manner. Example 1.
Tabulating a few values of f(x) and Its derivatives we have
These values show a root of and
between
x = 1
x = 2, with the possibility of two roots of in the same interval.
tion applied to
The method of approxima-
f'(x) = 0 gives
We next find and these values in conjunction with formulas (1) and (2) above yield as a first approximation for the two roots of f(x) = 0
For the first value x^
12. EXCEPTIONAL CASES
10
and the method of approximation gives the improved value
Similarly
Example 2.
Here f'(x) = 3 - 6 cos x, which vanishes for Also l/2f"(a) = 2.598. Use of formula (1) gives as an approximate value for the root
The method of approximation applied to this value now yields The other root is found in a similar manner. When all three quantities, f(x), f'(x), f"(x) vanish close to the same point additional complications occur. As such instances are rare and the analysis is lengthy these cases will be omitted.
II. SOLUTION BY SUCCESSIVE APPROXIMATIONS Exercises Find to five places the roots of
13. SIMULTANEOUS EQUATIONS The method of approximation may also be extended to the solution of simultaneous equations.
Thus if
are two equations in two unknowns, and if a" point close to a solution has been determined by graphical methods or otherwise a closer point (x, y ) can usually be obtained as follows: Let
Expand F(x, y) and
B(x, y ) in Taylor's series to terms of the first degree, and assume that (x, y) is a solution, i. e., Then, approximately,
in which for brevity we have set etc.
The two equations are
solved for 6x and rfy and the new approximation to the solution is given by
The process is repeated until the desired accuracy is secured.
13· SIMULTANEOUS EQUATIONS The following scheme of computation is convenient for the case of two equations.
F
D
GX
Fy O
G
Px
-Sx
+Sj
X
J
The values of F, G, Fx etc. are calculated for χ= , y = Jr1 and inserted in the proper places in the scheme. Then the first column is covered and the remaining two-rowed determinant D=F G - F G χ y y x is evaluated on the machine by cross multiplication and entered in the place shown. Next the second column is covered and the remaining two-rowed determinant FGy - GFy is evaluated on the machine, and while the result is still on the dials the division by D is performed. This gives - Sx, which is entered as shown. Finally the third column is covered, the determinant FGΛv - GF-Λ.v is evaluated, the result is divided by D, and recorded for Sj· The improved values of χ and y are now given by χ = X1 + Sx, y = y1 + Sj and are recorded. The next step will be an exact repetition of the foregoing with the new values of χ and y. If it is found that the values of Fx, F , ΰχ, Gy are not much changed in successive calculations, we need not recompute them at every step but merely copy them, together with D, from the previous step.
46
II. SOHJTION BY SUCCESSIVE APPROXIMATIONS Example.
Find a solution (different from the
obvious solution
x = 0,
y = 0) of the equations
An examination shows that in the first quadrant a solution occurs in each interyal in which both and
cos x
sin x
are positive, i. e., for etc.
Accordingly, we first make the
change of v a r i a b l e w h i c h
transforms
the given equation to
We take as initial estimates for x' and y the values and carry out the computation according to the scheme described above.
1 3 • SIMULTANEOUS EQUATIONS x1 = -1.279
0.2
y
47 =
-8.879
0.8107
1 . 1 0 0
-79.49 x'
=
-0.029562 0.15277 -58.751
-8.879
-0.8107
- 0 . 1 3 6
-O.132
0.336
y
=
x
=
0.001496 0.0004830 -58.51
-7.4883
-7.4883
-1.6359 0.00049
0.35629
y
=
1
=
2.76849
1.790
"7-437
-7-^37
"1.790
-0.00002 x
2.768
1.6359
-0.02029 1
2.9
0.00020
0.35631
y
=
2.76869
O.OOOO563
1.79*
-7.44*
0.0000455
-7.44*
-1-79*
-58.5*
-0.00000
*Not recomputed.
x'
=
X
=
x =
0.00001
0.35631
7.85398
-
y =
2.76870
y =
2.7687
x'
7-^977
14. SUCCESSIVE SUBSTITUTIONS It may be possible by suitable manipulation and combination of the given equations y) = 0
F(x, y ) = 0,
to transform them to a n equivalent pair
such that for values of x and y near a common solution the following inequalities are satisfied:
46 II. SOHJTION BY SUCCESSIVE APPROXIMATIONS where k denotes some positive constant less than unity. Whenever this is possible a process of successive substitutions will lead to a solution. Example.
The pair of equations used in the example
of Article 13 can be expressed in the form
We take
x' = 0
in the first equation, compute y, put
this y in the second equation and compute x", put this x' in the first equation and compute y, etc.
This process
gives us the following sequence of values:
These values check closely with the values obtained for x 1 and y in the Example of Article 13• Exercises Solve by the methods of Articles 13 or 14.
II. SOLUTION BY SUCCESSIVE APPROXIMATIONS 15. EXCEPTIONAL CASES When the determinant
1+9
F D= G„ vanishes at or near a supposed solution of F(x, y)= 0, G(x, y) = O we may anticipate difficulty with the method described in Article 13· The vanishing of D indicates (a) multiple solutions, (b) two or more solutions close together, or (c) no solution at all. The locus of points defined by the equation D(x, y) = 0 is the curve on which the loci of F(x, y) = const., G(x, y) = const. have either common tangents or singular points. If the two determinants D y (DG) = (DF) = F„ G„ are not both zero in the vicinity of the point in question we may proceed as follows: I. Construct a graph of the curves showing the approximate point of intersection or tangency, and also showing the signs of the functions F(x, y) and G(x, y) in the several regions bounded by the curves. II. Solve the simultaneous set F=O, D=O (or G=O, D=O, whichever seems easier) by successive approximations. We suppose that the intersection of F=O, D=O is found to be χ = a, y = b. Then cal culate G(a,b). If G(a, b) = 0, the curves are tan gent at (a, b) and the point (a, b) is the desired solution. If G(a, b) + 0 its sign, compared with the signs of F and G as shown in I, will determine whether a) There is no solution, or b) Two nearby solutions.
50
II. SOLUTION BY SUCCESSIVE APPROXIMATIONS III.
G(x, y )
If case b) occurs we expand
F(x, y )
in Taylor's series at (a,b), assume
G(x, y) = 0;
recall that
F(a, b) = 0,
and
F(x.,y) = o,
and obtain
where < The solution of this pair of simultaneous quadratic equations for
(fx and
task in itself. 1.
f j normally would be a considerable
Here however we are aided by two facts.
Since
we have
so that if we multiply (1) by k and subtract from (2) we eliminate all terms of first degree and obtain
(3)
in which 2.
If we set
will differ only slightly f
we may expect that jn r
o
m
t
h
e
slope of
the tangent to Therefore setting in the form
and equation (5) in the form
we rewrite equation (1)
15• EXCEPTIONAL CASES
(If F
y
is small compared to F x it is better to set and solve for v
and
gj. ) The two equations
(k) and (5) are easily sdlved by successive substitutions. We then have approximations to the two points of intersection IV.
Each of these trial pairs is now refined to the
desired degree of accuracy by the usual method of successive approximations. Example.
Investigate the solutions of
The stages of the investigation as outlined above are as follows. I.
The graph of the curves, showing the signs of
F and G, is given in Fig. 1 and indicates points of tangency at approximately (1.9, +2.7)-
Figure 1
52
II. SOLUTION BY SUCCESSIVE APPROXIMATIONS
II. The general expression for D as a function of x and y proves to be
Accordingly, we solve the simultaneous equations
(It happens here that these equations can be solved analytically, but usually we must resort to the method of approximations.)
For these value?
The solution in the first quadrant is
G(a, b) =
-0.018586,
and the fact that
G(a, b) is negative shows, by a consideration of the signs in Fig. 1, that there are two nearby points of intersection. III.
At the point (a, b) we now find
Using these values we set up equations (4) and (5) as in the text.
They prove to be
Starting with the trial value /i= -0.35356 in (5) and
15- EXCEPTIONAL CASES
53
using successive substitutions we get (choosing the negative sign)
This gives IV.
x = 1.88371,
y = 2.71592.
Returning to the original equations P = 0
and G = 0, we solve by successive approximations, starting with the values
x = 1 .88371,
y = 2.71592, and after
three steps obtain
The other solution is found in a similar manner. Exercises Solve the sets of equations.
1 6. COMPLEX ROOTS OP ALGEBRAIC EQUATIONS Corresponding to a pair of complex roots of the algebraic equation
with, real coefficients there is a real quadratic factor Instead of determining the complex root directly by the method of Article 11, we may avoid all substitutions of complex numbers by determining the p and q of the corresponding quadratic factor.
To do this
in a systematic manner with the calculating machine we set up a procedure for synthetic division by a quadratic factor
5k
II. SOLUTION BY SUCCESSIVE APPROXIMATIONS
analogous to the well known synthetic division by a linear factor.
The coefficients
a column.
are arranged in
Then a second column of b's is computed by the
formulas
The b's are the coefficients in the quotient. P
same way we divide the quotient by taining a column of c's.
z
In the
+ pz + q,
ob-
The complete computational
setup is shown below:
The recursion formulas are
16. COMPLEX ROOTS OP ALGEBRAIC EQUATIONS
55
Also
The quantities D,
dp, and - tfq are computed on the
calculating machine just as mere the D,
-
e
s
second degree p o l y n o m i a l f o r etc.
Since i n each case t h e p o l y n o m i a l
clear that
the order of
subscripts
is
is
unique i t
immaterial,
so
is that
),etc. Of t h e v a r i o u s ways i n w h i c h t h e p o l y n o m i a l may be e x p r e s s e d , machine c a l c u l a t i o n i s
is
machine by cross m u l t i p l i c a t i o n , on the d i a l s , Example.
is
Given
e a s i l y evaluated on the and t h e r e s u l t ,
sin
Evaluating the determinant removed f r o m
for
following:
while
d i v i d e d by
From t h e t r i g o n o m e t r i c
cos
interpolating
t h e most c o n v e n i e n t
probably the
For the two-rowed determinant still
linear
f i n d cos t a b l e s we h a v e
a n d d i v i d i n g b y 2k we
obtain
N o t e t h a t a n y common f a c t o r may b e and
Hence,
1 9 . LINEAR INTERPOLATION we may i g n o r e
the decimal point
as i n t e g e r s . in
and
Note a l s o t h a t will
69
and t r e a t
common d i g i t s
also occur i n y .
those
quantities
on the
Thus i n t h e
a b o v e we c o u l d h a v e i g n o r e d t h e d i g i t s
left
example
825 a n d
written
only
so t h a t
again
cos
interpolations may e f f e c t
_.
I n t h e case o f
repeated
w i t h n u m b e r s c a r r i e d t o many f i g u r e s
a worth-while
saving of
this
labor.
Exercises The s t u d e n t
s h o u l d a p p l y t h e above method
interpolation i n tables functions,
etc.,
until
of
logarithms,
the process
is
to
trigonometric thoroughly
mastered. 2 0 . A I T K E N ' S PROCESS OF ITERATION When l i n e a r
interpolation fails
a c c u r a c y more p o i n t s
to give
may b e u s e d , w i t h a n
interpolating
p o l y n o m i a l of h i g h e r degree t h a n t h e f i r s t . the
adequate Consider
expression
Note f i r s t and formed f o r polynomial
that
this
expression i s formed f o r
i n e x a c t l y t h e same m a n n e r a s and y 2 . i n x of
Secondly,
degree 2.
it
is
Finally,
evidently if
is a
70.
III.
IOTERP0LATI0N
and i f it
Prom t h e s e
follows
that
I n o t h e r w o r d s , we may o b t a i n t h e s e c o n d d e g r e e polating polynomial
by a p p l y i n g
interpolation to could obtain the
and same r e s u l t
. from either
the interpolating polynomial f o r o b t a i n e d by l i n e a r
of
t h e two
In
points
i n t e r p o l a t i o n a p p l i e d t o two
i n t e r p o l a t i n g polynomials For
n + 1
example
each formed f o r
inter-
linear
E v i d e n t l y we
T h i s p r o c e s s n a y be e x t e n d e d i n d e f i n i t e l y .
points.
results
n of
forms
general is different the
given
20.
A I T K E N ' S PROCESS OP ITERATION
71
etc.
In Aitken'a la
process a n a r r a y of
set up a c c o r d i n g t o t h e f o l l o w i n g
The c a l c u l a t i o n s
linear scheme:
are e a s i l y performed on the
c u l a t i n g machine by c r o s s m u l t i p l i c a t i o n and since the elements of
interpolations
cal-
division,
the numerator determinant
occur
in
t h e a r r a y i n t h e same r e l a t i v e p o s i t i o n s r as i n the 1 s t degree 2 n d degree 3 d degree x^ - X x i determinant. E x0 a. 2m9p8l 5 e0 1. From t h e t a b u l a t e d v a l u e s o f t h e- 1 6 2 0.3 f0.1+ u n c t i o0.3961+6 n S i ( x ) a 0.1+57195 t i n t e r v a l s of 0.1 c a l c u l a t e S i ( 0 -. 6426 2 ) . T h0.1+9311 e c o m p l e t e c o m p u t a t i o0.1+56537 n appears below. The c o38 lumns 0.1+56134 0.5 headed and a r e t a k e n f r o m t h e t a b l e a n d t h e r e 138 0.456484 0.456557 0.1+51+900 0.6 0.58813 m a i n i n g v a l u e s a r0.1+53502 e c a l c u l a t e0d. 4 5i 6n 4 3a2c c o r d0a.n4c5e6 5w e 5 7i t h t h 238 0.68122 0.7 s t nd r d scheme a b o v e . x^ 1 degree 2 degree 3 d e g r e e x.^ - x 0.3
0.29850
-162
OA
0.3961+6
0.457195
0.5
0.1+931 1
0.1+5613^
0.1+56537
-62
0.6 0.7
0.58813 0.68122
0.1+51+900 0.1+53502
0.1+561+81+ 0.1+561+32
38 0.1+56557 0.1+56557
138 238
72
III.
INTERPOLATION
The c o m p u t a t i o n s h a v e b e e n c a r r i e d t o one decimal place errors is
due t o n e g l e c t e d d i g i t s .
n o t r e a l l y needed b u t
fact
that
and a l s o
is a partial indicates
unnecessary. places,
The l i n e f o r
x =
s e r v e s as a c o n t r o l ,
t h e two e n t r i e s
identical
additional
i n order t o reduce the accumulation of
i n the
the
degree column are
check on t h e n u m e r i c a l
that
0.7
since
computation
a h i g h e r degree p o l y n o m i a l
is
Since t h e o r i g i n a l data were g i v e n t o
five
t h e i n t e r p o l a t e d v a l u e s h o u l d a l s o be r o u n d e d
to f i v e places, value of
giving
Si(0.462)
to
Si(0.462) = 0.45656. seven places
our i n t e r p o l a t e d value
is really
is
The
0.4565566,
quite
off
true so
that
close to the
true
value. Example 2 . radians at
Prom a t a b l e o f
sin x for x given
intervals
of
0.1 f i n d
The c a l c u l a t i o n
is
shown b e l o w
at 1 s t ddeeggrreeee
X X
s il nt t ix
4 0 4 .. 0
-0.75680250
4.1
.8182771' .81 827711
-.9031 - . 9 0 3 1 11207 207
4.2
.87157577 .87157577
--.89338269 .89338269
2 nn dd ddeeggrreeee 2
the value of
3 r d ddeeggrreeee 3
sin
4 tt hh d de eg g rr e ee e 4
in
4.238.
th 5 5th d d ee gg rr ee ee
xx^ - x x _ 2 J 8 -238
i4t .. 3 3
.. 9 4 91 16 61 16 65 59 94
-.88323083 -.88323083
939401 939401
4 .4 4.4
.95160207 .95160207
-.87270824
91 12 26 63 31 1 9
4.5
•97753018 .97753018
-.86186885 -.86186885
888316 888316
The v a l u e should be
-,38 -138 -38 -38
-.88968553 -.88968553 -0.88957475 -0.88957475 7928 7928 8390 8390
62 -0.88957194
-0.88957194 11
-- 00 .. 88 8 5 77 11 99 99 89 95
162 162 262 262
-0.88957200.
Exercises 1.
From t h e t a b l e o f
values
calculate Si(0.45); 2.
Prom t h e t a b l e calculate
of
s i n ^.25;
g i v e n i n Example 1
Si(0.4-7);
Si(043).
v a l u e s g i v e n i n Example 2 s i n 4.275;
2 1 . N E V I L L E ' S METHOD OP
sin
A v a r i a t i o n of the f o r e g o i n g process Neville.
Its
basic principle
is
4.23.
ITERATION is
due
t h e same as i n
to Aitken's
method b u t t h e c o m p u t a t i o n a l s e t u p i s m o d i f i e d as
follows:
2 1 . N E V I L L E ' S METHOD OP ITERATION
Cd,re must be e x e r c i s e d t o s e l e c t the column same l i n e
of
the determinant.
c o m p u t a t i o n as t h e e n t r i e s
Example.
entries
,1«stt degree
ain x
For
for
lie
the
in
from the
left-hand
instance
The p r o b l e m g i v e n i n E x a m p l e 2 o f A r t .
i s here worked by N e v i l l e ' s
4 4.. 00
the correct
s i n c e t h e s e do n o t a l w a y s
column of
x X
73
20
Method.
n d degree 2ru3
33rr n.
If k is odd
If k is even
In either case there are k + 2 constants, one of which is arbitrary, since numerator and denominator may be divided by any non-zero coefficient. Theorem 1. If i are k + 1 points with distinct x's, there cannot exist two distinct irreducible rational fractions y = N 1 (x)/D 1 (x) and y = N (x)/D 2 (x) of order k both of which are satisfied by the given k + 1 pairs of values (x^, y^). For if both fractions are satisfied then the equation
65. PROPERTIES OF RECIPROCAL DIFFERENCES 235 is true for k + 1 distinct values of x . But each member of this equation is a polynomial of degree not exceeding k , and hence, the two members must be identically equal and must contain identical linear factors (real or imaginary). Moreover, since N ^ x ) and D ^ x ) have no common factors, all the linear factors of N ^ x ) must be in N g (x) and all the factors of D ^ x ) must be in D 2 (x). Likewise, all linear factors of -N2(x) must be in N n (x) and all linear factors of D 2 ( x ) must be in D ^ x ) . Hence, N ^ x J / D ^ x ) and N 2 (x)/D 2 (x) are identical fractions. Theorem 2. If y = R lc (x) is. an irreducible rational fraction of order k , the reciprocal- differences of order k are constant. For using we get by the reduction of Article 6b
while using
we have
th
that If where formed because constant, In for of this order the Theorem This Rexample for (x) way, of determinant kkmay nare symmetry.
P5(a)
204 68 -28 -89 -120 -126 -1 12 "83 -44 0 44 83 1 12 126 1 20 89 28 -68 -204
612 -68 -388 "453 "354 -168 42 227 352 396 352 227 42 -168 -354 -453 -388 -68 612
1 02 -68 -98 -58 3 54 79 74 44 0 -44 -74 -79 -54 -3 58 98 68 -1 02
213180
3
2 288132
891 48
V I . ORTHOGONAL POLYNOMIALS
381
n = 19 (20 points) s 0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 s» m
P., (a) 19 17 15 13 11 9 7 5 3 1 -1 -3 -5 -7 -9 -11 "13 -15 "17 -19 2660
Pa(s) 57 39 23 9 "3 -13 -21 -27 -31 -33 -33 -31 -27 -21 -13 -3 9 23 39 57 17556
P,(a) 969 357 -85 "377 -539 -591 -553 -445 -287 -99 99 287 445 553 591 539 377 85 -357 -969 4903140
1938 -1 02 -1 122 -1402 -1187 -687 "77 503 948 1188 1188 948 503 "77 -687 -1187 -1 402 -1 122 -1 02 1938 22881320
1938 -1 1 22 -1 802 -1 222 -187 771 1351 1441 1076 396 -396 -1076 -1441 -1351 -771 187 1 222 1802 1 122 -1938 31201800
n = 20 (21 points) s
P,(a)
Pa(8)
0 1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20
10 9 8 7 6 5 4 3 2 1 0 -1 -2 "3 -4 -5 -6 -7 -8 -9 -1 0
1 90 135 82 37 -2 -35 -62 -83 -98 -1 07 -1 1 0 -107 -98 -83 -62 "35 -2 37 82 133 1 90
S
770
™ m
201894
P5(a)
P,(S) 570 228 -24 -196 -298 -340 -332 -284 -206 -1 08 0 108 206 284 332 340 298 1 96 24 -228 "570 1730520
969 0 -51 0 -6 80 -61 5 -406 -1 30 150 385 540 594 540 385 1 50 -130 -406 -61 5 -680 -510 0 969 5720330
3876 -1938 -3468 -261 8 -788 1 063 2354 2819 2444 1 404 0 -1 404 -2444 -281 9 -2354 -1 063 788 2618 3468 1938 -3876 121687020
Table VII IHTEORAIB OP BINOMIAL COEFFICIEHTS, ^
X
0
1
2
-1
-1
1 2
12
1 8
720
1
1
1 2
-1
12
1 55
2
2
2
1
0
3
3
3
2 2
i
1
It
4
8
20
8 3
5
5
sa 2
III
^
6
6
18
27
2 It
7
7
42 2
8
8
32
3
12
12
1223 24
208
96
522.
3
dt
6
7
iff
-19087 6o4eo
17280
720
tIo
60480
-1
1 90
37^0
4
3
^
90
5
-863
;29_ 2240 14 55
425
0
-8
945
-273
8
-1070017 3628800
2571 J 89600
241 92
362^00
1036800
955
8_
"112 16200
T?oo
sfs
-369 44800
35^
8 955
14175
-107
,94 14175
35^5
5257
275
T5t
2§f
1 2096
241 92
27?
20736
121
21
41 i"5o
0
1 400
10
26117
720
10 1 60
2336 45
382
30919
?257
8640
17280
18128
736 189
9h
9
-8183 518400 3953 14175
8183
1^00 8183 1036800 0
Table V I I I GAMMA AND DIGAMMA FUNCTIONS 0 .02 .01+ .06 .08
1.00000 .98884 .97844 .96874 •95973
-.57722 -.54480 -.51327 -.48263 -.45280
• 50 • 52 • 54 • 56 .58
.88623 .88704 .88818 .88964 .89142
.03649 .05502 .07323 .09114 .10874
.10 .12 .14 .16 .18
.95135 .94359 .93642 .92980 .92373
.60 .62 .64 .66 .68
•89352 .89592 .89864 .90167 .90500
.12605 .14308 .15983 .17633 .19256
.20 .22 .24 .26 .28
.91817 .91311 .90852 •90440 .90072
-.42375 -.39546 -.36787 -.34095 -.31469 -.28904 -.26398 -.23949 -.21555 -.19212
.70 • 72 • 74 .76 .78
•90864 .91258 .91683 .92137 .92623
.20855 .22429 .23980 .25509 .27015
.30 • 32 .34 • 36 • 38
.89747 .89464 .89222 .89018 .88854
-.16919 -.14674 -.12475 -.10321 -.08209
.80 .82 .84 .86 .88
.93138 .93685 .94261 .94869 •95507
.40 .42 .44 .46 .48
.88726 .88636 .88581 .88560 .88575
-.06138 -.04107 -.02114 -.00158 +.01763
• 90 • 92 • 94 • 96 • 98
.50
.88623
.03649
1 .00
.96177 .96877 .97610 .98374 .99171 1.00000
.28499 .29963 .31406 .32829 •34233 .35618 .36985 .38334 .39666 .40980 .42278
For values beyond the range of the tables use the formulas
383
INDEX Page 24
Accuracy of solution of linear equations Aitken's method of interpolation
69
Algebraic equations complex roots of -
53
linear -
3,7,11,15,17,24,29
Approximat ion - by exponential formula
248
- by Gram-Charlier series
309
- by least squares
242,255,292
- by polynomials
66,69,72,78,83,160,161 163,172,178,181,207
- by power formula
247
- by rational fractions
219
- to frequency function at discrete points
317
successive -
36,41,44,47,53,57
trigonometric -
294
Augmented matrix
. . .
Beasel's interpolation formula Binomial coefficients
9 1 81
150,365
Binomial coefficient functions Calculus of differences
150,366,369 328
Central derivatives, formulas for Central difference interpolation Central difference notation
99 172,178,181 172
Coefficients binomial -
150
effect of errors in - of linea,r equations
29
- in central differentiation formulas
99
- in closed quadrature formulas
385
122
386 Coefficients,
INDEX (continued; 97,98,99
- in differentiation formulas - in fifth degree smoothing formulas
279
- in Gauss method of numerical integration. - in open quadrature formulas
288 126
- in orthogonal polynomials
259,260^.267,375
- in third degree smoothing formulas - in trigonometric approximation Lagrangian Stirling's -
. . . .
278 296,301 83,371
•
tables of Lagrangian undetermined Cofactor £>f a determinant Cofactors, calculation of Complex roots of algebraic equations
146 90 104 4 27 53
Conditions for solution of linear equations
8,9
Continued fraction, interpolation by -
229
Continuous solution of difference equations
326
Convergents of continued fraction
230
Corrector formula
135
Definite operator
115
Degenerate set of points
240
Derivatives formulas for formulas for central - in terms of differences Detection of errors Determinants evaluation of solution of equations by Difference equations
97,98 99 191 158 3 26 7 324
Differences finite -
154
calculus of -
328
central -
172
divided -
201
INDEX Differences
38?
(continued)
reciprocal -
219,226
Differential equations
five-term formulas for -
1 42
second order -
138
simultaneous -
141
solution of -
131
special formulas for second order -
1 4o
three-term formulas for -
135
Differentiation, numerical
93,191
Digamma function
330,383
Discrete solution of difference equation
326
Divided differences definition of -
201
interpolation by -
207
Elimination
15
Elimination, rule for -
19
Equally spaced points, orthogonal polynomials for
.
265
Equations homogeneous linear linear non-linear -
11 3,7,11,15,17,24 36,41,44,47,49,53,57
symmetrical linear -
24
Error detection of -
1 58
inherent - in numerical differentiation - in polynomial interpolation - in solution of linear equations - of linear formulas in general Evaluation of determinants Everett's central difference formula
29 .
94 78 29 108 26 178
Everett's formula, integral of -
197
Exponential formula, approximation by -
248
Factorial polynomials Finite differences
145 1^5,154
*NDEX
388 Finite differences
(continued)
formulas for -
328
notation for -
154,172
Five-term formulas for differential equations
142
Formula Bessel's interpolation -
181
Everett's central difference . . . . . . . . . . . . .
178
exponential -
248
- for central derivatives
97
- for central difference interpolation . . .
172,178,181
- for differential equations
135,140,143
- for error in differentiation
94
- for error i n interpolation
78
- for error in linear formulas
111
- for interpolation with reciprocal differences. - for interpolation by divided differences - for numerical differentiation
225,229
. . . . . .
207
97,98,99
Gauss'3 interpolation -
163
Gregory' s
196
Lagrange's interpolation -
83
Newton-Cotes integration -
122,126
Newton's interpolation -
160,161
power -
.
247
predictor -
135
smoothing -
278,279
S t i r l i n g ' s interpolation-
176
Fourier coefficients Frequency function, approximation at discrete points Functions, interpolating, defined Fundamental theorem for least squares Gamma function Gauss'3 interpolation formula
296 .
317 63 292
330,383 163
Gauss's method of numerical integration
285
General Solution of difference equation
327
Graduation of data
275
Gram-Charlier approximation
309
Gregory's formula
196
INDEX
389
Harmonic analysis
300
Hermitian polynomial
310
Homogeneous equations
11
Indefinite operator
115 29
Inherent errors Integrals,
(See Numerical integration) 100
Integration, numerical (See also Numerical integration)
63
Interpolating function polynomial -
6k
rational -
6k 65
trigonometric Interpolation
63 69
Aitken's method of Bessel'a formula for -
181
- by continued fractions.
225
- by convergents
230
- by divided differences
207,215
- by reciprocal differences
225,230 78
error of Everett's formula for -
178
Gauss's formula for -
163
inverse -
73
,
Lagrange's formula for -
83
linear -
68
Neville's method of -
72
Newton's binomial formula for -
160
Stirling's formula for -
176
Inverse interpolation
.
73
Iteration Aitken'a process of -
69
Neville's method of -
72
Lagrange's interpolation formula
83
Lagrangian coefficients
83
Lambda determinant
13
390
INDEX 57
Lambda determinants, solution of Least square approximation, fundamental theorem of-.
292
Least squares
242
- for integrals
255
Legendre polynomials Linear equations
261 3>7,11,15,17,24,29
accuracy of solution of -
24
elimination in
15
numerical solution of - . . . . ,
17
solution of - by determinants
7
Linear interpolation
68
Linear operator
108 9
Matrix . . - of coefficients. Minor of a determinant Moments Neville's method of interpolation
. .
9 4 313 72
Newton-Cotes quadrature formulas - closed type
122
- open type
126
Newton's binomial interpolation formula - forward differences
160
- backward differences
1 61
Notation - for divided differences
201
- for finite differences
154
- for reciprocal differences
226
- for factorial polynomials
1 45
- for binomial coefficient functions
150
Numerical differentiation
93
Numerical differentiation, error of -
94
Numerical integration
1 00
error in -
1 08
Gauss's method of -
285
Gregory's formula for -
196
Numerical integration (continued)
Page
modified trapezoidal rule for -
118
Newton-Cotsa closed formulas for -
122
Newton-Cotes open formulas for -
126
Simpson's rule for -
120
• trapezoidal rule for using differences Weddle's rule for -
116 193,196,197 125
Numerical solution - of difference equations
325
- of differential equations
131
- of linear equations - of non linear equations
17 36-62
Operator definite -
115
indefinite -
115
linear -
1 08
Order of a rational fraction
234
Orthogonal polynomials
257
Orthogonal polynomials, equally spaced points
265
Orthogonality, roots of A-equations
58
Pentagamma function
330
Polynomial approximation by least squares
242
Polynomial interpolating function
64
Polynomials factorial -
145
Hermit ian -
31 0
orthogonal -
257
properties of -
66
summation of -
332
tabulation of -
183
Power formula, approximation by -
247
Predictor formula
135
Rank - of a determinant
6
- of a matrix
9
INDEX
392 Rational fractions approximation by -
219
order of -
23U
summation of -
332
Rational interpolating function
64,227
Reciprocal differences
219,226
Rule - for elimination
19
modified trapezoidal -
118,119
Sheppard's -
164,215
Simpson'3 -
120
trapezoidal -
116
Weddle's -
125
SensitLvity, measure of -
33
Sheppard's central difference notation Sheppard's rules
172 164,215
Short method of solving differential equations . . .
132
Simpson's Rule
120
Simultaneous differential equations Simultaneous non linear equations,
141 successive
approximations
44
Smoothing
275
Solution of a difference equation
324
discrete -
325
continuous -
326
general -
327
Solution of equations - by determinants - by elimination - numerical
17
- by successive approximations - using
7 15
determinants
36-57 57
Starter formulas
135
Stirling's central difference formula
176
integral of -
196
INDEX
393
Stirling's numbers
146
Substitutions, successive -
47
Subtabulation
185
Successive approximations
56
Successive substitutions
47
Summation
332
Symmetric integrals of Stirling's formula
196
Symmetrical equations
24
Tabulation of polynomials
183
Tetragamma function
330
Three-term formulas, for differential equations.
. .
Trapezoidal rule
135 116
Trigamma function
330
Trigonometric approximation
294
Trigonometric interpolation
. . .
65
Undetermined coefficients
104
Weddle's Rule
125
Weight function
291>