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Research Inventy: International Journal Of Engineering And Science
Vol.2, Issue 9 (April 2013), Pp 24-30
Issn(e): 2278-4721, Issn(p):2319-6483, Www.Researchinventy.Com
24
The Deficient C1
Quartic Spline Interpolation
1,
Y.P.Dubey , 2,
Anil Shukla
1,
Department Of Mathematics, L.N.C.T. Jabalpur 482 003
2,
Department Of Mathematics, Gyan Ganga College Of Technogy, Jabalpur.
ABSTRACT: In this paper we have obtained the best error bounds for deficient Quartic Spline interpolation
matching the given functional value at mid points and its derivative with two interior points with boundary
condition.
Key Words : Error Bounds, Deficient, Quartic Spline, Interpolation, best error.
1. INTRODUCTION
The most popular choice of reasonably efficient approximating functions still continues to be in favour
of Quartic and higher degree (See deBoor [1]). In the study of Piecewise linear functions it is a disadvantage
that we get corner's at joints of two linear pieces and therefore to achieve prescribed accuracy more data than
higher order method are needed. Various aspects of cubic interpolatory splines have been extended number of
authors, Dubean [3], Rana and Dubey [10]. Morken and Reimers [6]. Kopotum [5] has shown the equivalence
of moduli of smoothness and application of univariate splines.Rana and Dubey [8] generalized result of Garry
and Howell [4] for quartic spline interpolation. Rana, Dubey and Gupta [9] have obtained a precise error
estimate concerning quartic spline interpolation matching the given functional value at intermediate points
between successive mesh points and some boundary conditions.
II. EXISTENCE AND UNIQUENESS.
Let a mesh on [0, 1] be given by }10{ 10  nxxxP with 1 iii xxh for i=1, 2,.....n.
Let Lk denote the set of all algebraic polynomials of degree not greater than K and si is the restrictions of s on
],[ 1 ii xx  the class S (4,2, P) of deficient quartic spline of deficiency 2 is defined by
 }.,...,2,1],1,0[:),2,4( 1
niforLsCssPS ki 
where in S* (4,2, P) denotes the class of all deficient quartic spline S (4,2, P) which satisfies the boundary
conditions.
)()(),()( 00 nn xfxsxfxs  .........(2.1)
We introduced following problem.
2.1 PROBLEM
Suppose f ' exist over p, there under what restriction on ih there exist a unique spline interpolation
),2,4(* PSs , of f which satisfies the interpolating condition.
ni
fs
fs
fs
ii
ii
ii
......2,1
)(')('
)(')('
)()(












Where iiiiiiiii hxhxhx
3
2
,
2
1
,
3
1
 
In order to investigate Problem 2.1 we consider a quartic Polynomial q(z) on [0, 1] given by
)7()3/2(')(
3
1
')(
2
1
)( 321 PqzPqzPqzq 











 )()1()()0( 54 zPqzPq  (2.5)
(2.2),
(2.3)
(2.4)
The Deficient C1
Quartic Spline…
25
Where
 32
1 14428820864
7
)( zzz
z
zP 
 32
2 541299924
7
)( zzz
z
zP 
 32
3 5487363
7
)( zzz
z
zP 







7
72
7
186
7
419
7
168
1)(
432
4
zzzz
zP
 32
5 72102414
7
)( zzz
z
zP 
We are now set to answer problem (2.1) in following theorem.
THEOREM 2.1 :
If 1ih  ih there exists unique deficient quartic spline S in S*(4,2,P) which satisfies the
interpolatory conditions (2.2) - (2.4) and boundary condition (2.1).
2.2 PROOF OF THE THEOREM
Let 10,1


 
t
h
xx
t
i
i
then in view of condition (2.1) - (2.4).
We now express (2.5) in terms of restriction si of s to ],[ 1 ii xx  as follows :-
)()(')()(')()()( 321 tPfhtPfhtPfxs iiiiii   )()()()( 541 tPxstPxs ii   (2.6)
which clearly satisfies (2.1) - (2.4) and si(x) is a quartic in ],[ 1 ii xx  for i=1.....n
Since S is first time continuously differentiable on [0, 1]. Therefore applying continuity condition of first
derivative, we get
-176 1111 4)16860(   iiiiiii hsshhhs iF say) (2.7)
Where  ))()((64 11   iiiii fhfhF  ])('3)('24[ 11   iiii ffhh 
)('24)('3[ 11   iiii ffhh 
In order to prove theorem 2.1 we shall show that system of equation (2.7) has unique set of solution.
Since   0116172 1  ii hh if ii hh 1 .
Therefore, the coefficient matrix of the system of equations (2.7) is diagonally dominant and hence invertible,
this complete the proof of theorem 2.1.
III. ERROR BOUNDS
Following method of Hall and Meyer [2], in this sections, we shall estimate the bounds of error
function )()()( xsxfxe  for the spline interpolant of theorem 2.1 which are best possible. Let s(x) be the
first time continuous differentiable quartic spline function satisfying the conditions of theorem 2.1. Non
considering ]1,0[5
Cf  and writing Mi [f, x] for the unique quartic which agree with
)(),('),('),( 1iiii xffff  and )( 1ixf , we see that for  ii xxx ,1 and we have
)(],[],[)()()()( xsxfMxfMxfxsxfxe ii  (3.1)
The Deficient C1
Quartic Spline…
26
In order to obtain the bounds of e(x), are proceed to get pointwise bounds of the both the terms on the right
hand side of (3.1). The estimate of the first term can be obtained by following a well known theorem of Cauchy
[ 7 ] i.e.
  Fttttt
h
xfxfM i
i )
3
2
)(
3
1
)(
2
1
)(1(
!5
)(,
5

Where
1
1



i
i
h
xx
t , and )(max )5(
10
xfU
x
 (3.2)
To get the bounds of ],[)( xfMxs il  , we have from (2.6).
)]()()()([],[)( 541 tPxetPxexfMxS iiil   (3.3)
Thus )()()()(],[)( 541 tPxetPxexfMxs iiii   (3.4)
Let the )(max
0
i
ni
xe

exist for i=j
Then (3.4) may be written as
 |)(||)(||)(|],[)( 54 tPtPxexfMxs jii  (3.5)
Now  2
54 361477)1(21)()( tttttPtP  2
36334 ttt  =
k(t) Say (3.6)
)()(],[)( tkxexfMxs jii  (3.7)
Now we proceed to obtain bound of )( jxe
Replacing )()( ii xebyxS in (2.7),
We have
1111 4)16860(176   iiiiiii heehheh iiiiii fhhfhF )16860(176 11  
)(4 11 fEhf ii   Say where iF define in (2.7)
(3.8)
In view of that E(f) is a linear functional which is zero for Polynomial of degree 4 or less, we can apply Peano
theorem [7] to obtain
 



1
1
4
5
)(
!4
)(
)(
j
j
x
x
t dyyxE
yf
fE (3.9)
Thus from (3.9) we have




1
1
])(|
!4
1
)( 4j
j
x
x
t dyyxEFfE (3.10)
Further it can be observed from (3.9) that for 11   ii xyx
4
)[( tyxE 
The Deficient C1
Quartic Spline…
27
])(12)(96[)()([64
33
1
4
1
4
1   yyhhyhyh iiiiiiii 
4
1
3
1
3
1 )()16860(])(48)(12[   yxhhyyhh iiiiiii 
4
11 )(4 yxh ii   (3.11)
Rewriting the above expression in the following symmetric form about jx , we get
4
1 ][4 yhxh iii  
1 ii xy




 
434
1
3
5
)()(4 iiiii hyxhyxh
ii y  
34
1 )(26)(15[4 yxhyxh iiii  
]
3
8
)(8)(24 4322
iiiii hhyxhyx 
ii y  
])(7)(15[4 34
1 yxhyxh iiii  
ii yx 
3
1
4
)(7)(15[4 yxhyxh iiii  
ii xy1
2
1
23
1
4
)(24)(26)(15[4   iiiiii hyxyxhyxh
]
3
8
)(8 4
1
3
1   iii hhyx
11   ii y 
]
3
5
)()[(4 4
1
3
1
4
  iiiii hyxhyxh
11   ii y 
4
1][(4  iii hyxh
11   ii yx  (3.12)
Thus it is clear from above expression that ])( 4
 yxE is non-negative for
11   ii xyx
Therefore it follows that
The Deficient C1
Quartic Spline…
28
 


 
1
1
44
11
4
5
87.18
)(
i
i
x
x
iiii hhhhdyyxE (3.13)
 
)!5(
87.18
)(
44
11 iiii hhhh
fE

 
(3.14)
Thus from (3.8) and (3.14), it follow that -
  F
hh
hhhh
xe
ii
iiii
i
)116172(!5
87.18
)(
1
44
11





(3.15)
Now using (3.2), (3.7) along with (3.15) in (3.1), we have
  Ftk
h
Fttttt
h
xe )(
)!5(56
87.18
)32()31()21()1(
)!5(18
)(
55
 (3.16)
)(
!5
)(
5
tcF
h
xe  (3.17)
Where
18
|32||31|)1(
[21)(
tttt
ttc


 )36334()361477()1(
56
87.18 22
tttttt  ]
= k*(t) (say)
Thus we prove the following theorem.
3.1 THEOREM : Let s(x) be the quartic spline interpolation of theorem 2.1 interpolating
a given function and ]1,0[)5(
Cf  then
!5
)(*)(|
5
h
tkxe 
10
max
n
|)(| 5
xf (3.18)
Also, we have
)(max
!5
|)(| 5
10
5
1
1
xf
h
Kxe
n
i

 (3.19)
Where
56
87.18
1 K
Further more, it can be seen easily that k* (t) in (3.18 ) can not be improved for an equally spaced
partition. In equality (3.19) is also best possible. Also equation (3.16) proves (3.18) whereas (3.19) is direct
consequence of (3.15).
Now, we turn to see that inequality (3.19) is best possible in limit case.
Considering
!5
)(
5
x
xf  and using Cauchy formula [7], we have
)
2
1
()
3
2
()
3
1
()1(
!5!5
,
!5
555






ttttt
hh
x
t
Mi (3.20)
The Deficient C1
Quartic Spline…
29
Moreover, for the function under consideration (3.8) the following relations holds for equally spaced knots.
11
5
5
4228176
!5
87.18
)
!5
(   iii eeeh
x
E (3.21)
Consider for a moment
iii e
h
ee   1
5
1
)!5(56
87.18
(3.22)
we have from (3.5).
],[)( xfMxs i (3.23)
))()((
!556
87.18
54
5
tQtQ
h

)1441587()21(
!556
87.18 2
5
ttt
h

 )1441587)(21(
!556
87.18
)()( 2
5
ttt
h
xfxs  )}
3
1
)(
3
2
)(
2
1
)(1(
!5
5
 ttttt
h
)1441587)(21)(
56
87.18
[(
!5
2
5
ttt
hi
 )]
3
1
()
3
2
()
2
1
()1(  ttttt (3.24)
from (3.24 ), it is clear that (3.16) is best possible. Provided we could prove that
)!5(56
87.18 5
11
h
eee iii   (3.25)
In fact (3.25) is attained only in the limit. The difficulty will appear in case of boundary condition i.e.
)()( 0 nxexe  = 0. However it can be shown that as we move many subinterval away from the boundaries.
!556
87.18
)(
5
1
h
xe 
For that we shall apply (3.21) inductively to move away from the end conditions 0)()( 0  nxexe .
The first step in this direction is to establish that 0)( ixe for some i, 1=1, 2,....n which can be shown by
contradictory result. Let 0)( ixe for some i=1,2,.....n-1.
Now we rewrite equation (3.8)
!5
87.184228176
5
11
h
eee iii   (3.26 )
 11
5
4228176
2
1
)(max
!556
87.18
  iiii eeexe
h
Since R.H.S is negative
!5
87.18
5
h

561 (3.27)
This is a contradiction.
The Deficient C1
Quartic Spline…
30
Hence 1,....,2,1,0)(  niforxe i
Now from (3.26), we can write
11
5
4176
!5
87.18228   iii ee
h
e
!5228
87.18 5
h
ei 
Again using (3.27) in (3.21), we get





228
172
1
!5
87.18
228 5
hei
Repeated use of (3.21), we get














 .......
228
172
228
172
1
)!5(228
87.18
2
5
hei (3.28)
Now it can easily see that the right hand side of (3.28) tending to
5
)!5(56
87.18
h
!556
87.18
)(
5
h
xe i  (3.29 )
which verifies the proof of (3.19).
Thus, corresponding to the function
!5
)(
5
x
xf  , (3.28) and (3.29) imply
!556
87.18
)(
5
h
xe i  in the limit for
equally spaced knots this completes the proof of theorem 3.1.
REFERENCES
[1] Carl Deborr, A Practical Guide to Springer Applied Mathematical Sciences, Vol. 27, Spoinger - Verlag, New York, 1979.
[2] C.A. Hall and W.W. Meyer, J. Approx.theory 16(1976), 105-22.
[3] Dubean and J. Savoier. Explicit Error bounds for spline interpolation on a uniform partition, J. approx. theorem 82 (1995), 1-14.
[4] Gary Howell and A.K. Verma, Best error bounds for quartic spline interpolation, J. Approx. theory 58 (1989), 58-67.
[5] K.A. Kopotun, Univairate Splines equivalence of moduli of smoothness and application, Mathematics of Computation, 76
(2007), 930-946.
[6] K. Marken and M. Raimer's. An unconditionally convergents method for compecting zero's of splines and polynomials,
Mathematics of Computation 76 (2007), 845-866.
[7] P.J. Davis, Interpolation and Approximation Blaisedell New York, 1961.
[8] 8 S.S. Rana and Y.P. Dubey, Best error bounds of deficient quartic spline interpolation. Indian, J. Pur.Appl.Maths; 30
(1999), 385-393.
[9] S.S. Rana, Y.P. Dubey and P. Gupta. Best error bounds of Deficient c' quartic spline interpolation International Journal of App.
Mathematical Analysis and Application Jan.-Jun 2011 Vol. No. 1, pp. 169-177.
[10] S.S. Rana and Y.P. Dubey, Local Behaviour of the deficient discrete cubic spline Interpolation, J. Approx. theory 86(1996), 120-
127.

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E029024030

  • 1. Research Inventy: International Journal Of Engineering And Science Vol.2, Issue 9 (April 2013), Pp 24-30 Issn(e): 2278-4721, Issn(p):2319-6483, Www.Researchinventy.Com 24 The Deficient C1 Quartic Spline Interpolation 1, Y.P.Dubey , 2, Anil Shukla 1, Department Of Mathematics, L.N.C.T. Jabalpur 482 003 2, Department Of Mathematics, Gyan Ganga College Of Technogy, Jabalpur. ABSTRACT: In this paper we have obtained the best error bounds for deficient Quartic Spline interpolation matching the given functional value at mid points and its derivative with two interior points with boundary condition. Key Words : Error Bounds, Deficient, Quartic Spline, Interpolation, best error. 1. INTRODUCTION The most popular choice of reasonably efficient approximating functions still continues to be in favour of Quartic and higher degree (See deBoor [1]). In the study of Piecewise linear functions it is a disadvantage that we get corner's at joints of two linear pieces and therefore to achieve prescribed accuracy more data than higher order method are needed. Various aspects of cubic interpolatory splines have been extended number of authors, Dubean [3], Rana and Dubey [10]. Morken and Reimers [6]. Kopotum [5] has shown the equivalence of moduli of smoothness and application of univariate splines.Rana and Dubey [8] generalized result of Garry and Howell [4] for quartic spline interpolation. Rana, Dubey and Gupta [9] have obtained a precise error estimate concerning quartic spline interpolation matching the given functional value at intermediate points between successive mesh points and some boundary conditions. II. EXISTENCE AND UNIQUENESS. Let a mesh on [0, 1] be given by }10{ 10  nxxxP with 1 iii xxh for i=1, 2,.....n. Let Lk denote the set of all algebraic polynomials of degree not greater than K and si is the restrictions of s on ],[ 1 ii xx  the class S (4,2, P) of deficient quartic spline of deficiency 2 is defined by  }.,...,2,1],1,0[:),2,4( 1 niforLsCssPS ki  where in S* (4,2, P) denotes the class of all deficient quartic spline S (4,2, P) which satisfies the boundary conditions. )()(),()( 00 nn xfxsxfxs  .........(2.1) We introduced following problem. 2.1 PROBLEM Suppose f ' exist over p, there under what restriction on ih there exist a unique spline interpolation ),2,4(* PSs , of f which satisfies the interpolating condition. ni fs fs fs ii ii ii ......2,1 )(')(' )(')(' )()(             Where iiiiiiiii hxhxhx 3 2 , 2 1 , 3 1   In order to investigate Problem 2.1 we consider a quartic Polynomial q(z) on [0, 1] given by )7()3/2(')( 3 1 ')( 2 1 )( 321 PqzPqzPqzq              )()1()()0( 54 zPqzPq  (2.5) (2.2), (2.3) (2.4)
  • 2. The Deficient C1 Quartic Spline… 25 Where  32 1 14428820864 7 )( zzz z zP   32 2 541299924 7 )( zzz z zP   32 3 5487363 7 )( zzz z zP         7 72 7 186 7 419 7 168 1)( 432 4 zzzz zP  32 5 72102414 7 )( zzz z zP  We are now set to answer problem (2.1) in following theorem. THEOREM 2.1 : If 1ih  ih there exists unique deficient quartic spline S in S*(4,2,P) which satisfies the interpolatory conditions (2.2) - (2.4) and boundary condition (2.1). 2.2 PROOF OF THE THEOREM Let 10,1     t h xx t i i then in view of condition (2.1) - (2.4). We now express (2.5) in terms of restriction si of s to ],[ 1 ii xx  as follows :- )()(')()(')()()( 321 tPfhtPfhtPfxs iiiiii   )()()()( 541 tPxstPxs ii   (2.6) which clearly satisfies (2.1) - (2.4) and si(x) is a quartic in ],[ 1 ii xx  for i=1.....n Since S is first time continuously differentiable on [0, 1]. Therefore applying continuity condition of first derivative, we get -176 1111 4)16860(   iiiiiii hsshhhs iF say) (2.7) Where  ))()((64 11   iiiii fhfhF  ])('3)('24[ 11   iiii ffhh  )('24)('3[ 11   iiii ffhh  In order to prove theorem 2.1 we shall show that system of equation (2.7) has unique set of solution. Since   0116172 1  ii hh if ii hh 1 . Therefore, the coefficient matrix of the system of equations (2.7) is diagonally dominant and hence invertible, this complete the proof of theorem 2.1. III. ERROR BOUNDS Following method of Hall and Meyer [2], in this sections, we shall estimate the bounds of error function )()()( xsxfxe  for the spline interpolant of theorem 2.1 which are best possible. Let s(x) be the first time continuous differentiable quartic spline function satisfying the conditions of theorem 2.1. Non considering ]1,0[5 Cf  and writing Mi [f, x] for the unique quartic which agree with )(),('),('),( 1iiii xffff  and )( 1ixf , we see that for  ii xxx ,1 and we have )(],[],[)()()()( xsxfMxfMxfxsxfxe ii  (3.1)
  • 3. The Deficient C1 Quartic Spline… 26 In order to obtain the bounds of e(x), are proceed to get pointwise bounds of the both the terms on the right hand side of (3.1). The estimate of the first term can be obtained by following a well known theorem of Cauchy [ 7 ] i.e.   Fttttt h xfxfM i i ) 3 2 )( 3 1 )( 2 1 )(1( !5 )(, 5  Where 1 1    i i h xx t , and )(max )5( 10 xfU x  (3.2) To get the bounds of ],[)( xfMxs il  , we have from (2.6). )]()()()([],[)( 541 tPxetPxexfMxS iiil   (3.3) Thus )()()()(],[)( 541 tPxetPxexfMxs iiii   (3.4) Let the )(max 0 i ni xe  exist for i=j Then (3.4) may be written as  |)(||)(||)(|],[)( 54 tPtPxexfMxs jii  (3.5) Now  2 54 361477)1(21)()( tttttPtP  2 36334 ttt  = k(t) Say (3.6) )()(],[)( tkxexfMxs jii  (3.7) Now we proceed to obtain bound of )( jxe Replacing )()( ii xebyxS in (2.7), We have 1111 4)16860(176   iiiiiii heehheh iiiiii fhhfhF )16860(176 11   )(4 11 fEhf ii   Say where iF define in (2.7) (3.8) In view of that E(f) is a linear functional which is zero for Polynomial of degree 4 or less, we can apply Peano theorem [7] to obtain      1 1 4 5 )( !4 )( )( j j x x t dyyxE yf fE (3.9) Thus from (3.9) we have     1 1 ])(| !4 1 )( 4j j x x t dyyxEFfE (3.10) Further it can be observed from (3.9) that for 11   ii xyx 4 )[( tyxE 
  • 4. The Deficient C1 Quartic Spline… 27 ])(12)(96[)()([64 33 1 4 1 4 1   yyhhyhyh iiiiiiii  4 1 3 1 3 1 )()16860(])(48)(12[   yxhhyyhh iiiiiii  4 11 )(4 yxh ii   (3.11) Rewriting the above expression in the following symmetric form about jx , we get 4 1 ][4 yhxh iii   1 ii xy       434 1 3 5 )()(4 iiiii hyxhyxh ii y   34 1 )(26)(15[4 yxhyxh iiii   ] 3 8 )(8)(24 4322 iiiii hhyxhyx  ii y   ])(7)(15[4 34 1 yxhyxh iiii   ii yx  3 1 4 )(7)(15[4 yxhyxh iiii   ii xy1 2 1 23 1 4 )(24)(26)(15[4   iiiiii hyxyxhyxh ] 3 8 )(8 4 1 3 1   iii hhyx 11   ii y  ] 3 5 )()[(4 4 1 3 1 4   iiiii hyxhyxh 11   ii y  4 1][(4  iii hyxh 11   ii yx  (3.12) Thus it is clear from above expression that ])( 4  yxE is non-negative for 11   ii xyx Therefore it follows that
  • 5. The Deficient C1 Quartic Spline… 28       1 1 44 11 4 5 87.18 )( i i x x iiii hhhhdyyxE (3.13)   )!5( 87.18 )( 44 11 iiii hhhh fE    (3.14) Thus from (3.8) and (3.14), it follow that -   F hh hhhh xe ii iiii i )116172(!5 87.18 )( 1 44 11      (3.15) Now using (3.2), (3.7) along with (3.15) in (3.1), we have   Ftk h Fttttt h xe )( )!5(56 87.18 )32()31()21()1( )!5(18 )( 55  (3.16) )( !5 )( 5 tcF h xe  (3.17) Where 18 |32||31|)1( [21)( tttt ttc    )36334()361477()1( 56 87.18 22 tttttt  ] = k*(t) (say) Thus we prove the following theorem. 3.1 THEOREM : Let s(x) be the quartic spline interpolation of theorem 2.1 interpolating a given function and ]1,0[)5( Cf  then !5 )(*)(| 5 h tkxe  10 max n |)(| 5 xf (3.18) Also, we have )(max !5 |)(| 5 10 5 1 1 xf h Kxe n i   (3.19) Where 56 87.18 1 K Further more, it can be seen easily that k* (t) in (3.18 ) can not be improved for an equally spaced partition. In equality (3.19) is also best possible. Also equation (3.16) proves (3.18) whereas (3.19) is direct consequence of (3.15). Now, we turn to see that inequality (3.19) is best possible in limit case. Considering !5 )( 5 x xf  and using Cauchy formula [7], we have ) 2 1 () 3 2 () 3 1 ()1( !5!5 , !5 555       ttttt hh x t Mi (3.20)
  • 6. The Deficient C1 Quartic Spline… 29 Moreover, for the function under consideration (3.8) the following relations holds for equally spaced knots. 11 5 5 4228176 !5 87.18 ) !5 (   iii eeeh x E (3.21) Consider for a moment iii e h ee   1 5 1 )!5(56 87.18 (3.22) we have from (3.5). ],[)( xfMxs i (3.23) ))()(( !556 87.18 54 5 tQtQ h  )1441587()21( !556 87.18 2 5 ttt h   )1441587)(21( !556 87.18 )()( 2 5 ttt h xfxs  )} 3 1 )( 3 2 )( 2 1 )(1( !5 5  ttttt h )1441587)(21)( 56 87.18 [( !5 2 5 ttt hi  )] 3 1 () 3 2 () 2 1 ()1(  ttttt (3.24) from (3.24 ), it is clear that (3.16) is best possible. Provided we could prove that )!5(56 87.18 5 11 h eee iii   (3.25) In fact (3.25) is attained only in the limit. The difficulty will appear in case of boundary condition i.e. )()( 0 nxexe  = 0. However it can be shown that as we move many subinterval away from the boundaries. !556 87.18 )( 5 1 h xe  For that we shall apply (3.21) inductively to move away from the end conditions 0)()( 0  nxexe . The first step in this direction is to establish that 0)( ixe for some i, 1=1, 2,....n which can be shown by contradictory result. Let 0)( ixe for some i=1,2,.....n-1. Now we rewrite equation (3.8) !5 87.184228176 5 11 h eee iii   (3.26 )  11 5 4228176 2 1 )(max !556 87.18   iiii eeexe h Since R.H.S is negative !5 87.18 5 h  561 (3.27) This is a contradiction.
  • 7. The Deficient C1 Quartic Spline… 30 Hence 1,....,2,1,0)(  niforxe i Now from (3.26), we can write 11 5 4176 !5 87.18228   iii ee h e !5228 87.18 5 h ei  Again using (3.27) in (3.21), we get      228 172 1 !5 87.18 228 5 hei Repeated use of (3.21), we get                ....... 228 172 228 172 1 )!5(228 87.18 2 5 hei (3.28) Now it can easily see that the right hand side of (3.28) tending to 5 )!5(56 87.18 h !556 87.18 )( 5 h xe i  (3.29 ) which verifies the proof of (3.19). Thus, corresponding to the function !5 )( 5 x xf  , (3.28) and (3.29) imply !556 87.18 )( 5 h xe i  in the limit for equally spaced knots this completes the proof of theorem 3.1. REFERENCES [1] Carl Deborr, A Practical Guide to Springer Applied Mathematical Sciences, Vol. 27, Spoinger - Verlag, New York, 1979. [2] C.A. Hall and W.W. Meyer, J. Approx.theory 16(1976), 105-22. [3] Dubean and J. Savoier. Explicit Error bounds for spline interpolation on a uniform partition, J. approx. theorem 82 (1995), 1-14. [4] Gary Howell and A.K. Verma, Best error bounds for quartic spline interpolation, J. Approx. theory 58 (1989), 58-67. [5] K.A. Kopotun, Univairate Splines equivalence of moduli of smoothness and application, Mathematics of Computation, 76 (2007), 930-946. [6] K. Marken and M. Raimer's. An unconditionally convergents method for compecting zero's of splines and polynomials, Mathematics of Computation 76 (2007), 845-866. [7] P.J. Davis, Interpolation and Approximation Blaisedell New York, 1961. [8] 8 S.S. Rana and Y.P. Dubey, Best error bounds of deficient quartic spline interpolation. Indian, J. Pur.Appl.Maths; 30 (1999), 385-393. [9] S.S. Rana, Y.P. Dubey and P. Gupta. Best error bounds of Deficient c' quartic spline interpolation International Journal of App. Mathematical Analysis and Application Jan.-Jun 2011 Vol. No. 1, pp. 169-177. [10] S.S. Rana and Y.P. Dubey, Local Behaviour of the deficient discrete cubic spline Interpolation, J. Approx. theory 86(1996), 120- 127.