NAG Library Routine Document

e02baf  (dim1_spline_knots)

 Contents

    1  Purpose
    7  Accuracy

1
Purpose

e02baf computes a weighted least squares approximation to an arbitrary set of data points by a cubic spline with knots prescribed by you. Cubic spline interpolation can also be carried out.

2
Specification

Fortran Interface
Subroutine e02baf ( m, ncap7, x, y, w, lamda, work1, work2, c, ss, ifail)
Integer, Intent (In):: m, ncap7
Integer, Intent (Inout):: ifail
Real (Kind=nag_wp), Intent (In):: x(m), y(m), w(m)
Real (Kind=nag_wp), Intent (Inout):: lamda(ncap7)
Real (Kind=nag_wp), Intent (Out):: work1(m), work2(4*ncap7), c(ncap7), ss
C Header Interface
#include nagmk26.h
void  e02baf_ ( const Integer *m, const Integer *ncap7, const double x[], const double y[], const double w[], double lamda[], double work1[], double work2[], double c[], double *ss, Integer *ifail)

3
Description

e02baf determines a least squares cubic spline approximation sx to the set of data points xr,yr with weights wr, for r=1,2,,m. The value of ncap7=n-+7, where n- is the number of intervals of the spline (one greater than the number of interior knots), and the values of the knots λ5,λ6,,λn-+3, interior to the data interval, are prescribed by you.
sx has the property that it minimizes θ, the sum of squares of the weighted residuals εr, for r=1,2,,m, where
εr=wryr-sxr.  
The routine produces this minimizing value of θ and the coefficients c1,c2,,cq, where q=n-+3, in the B-spline representation
sx=i=1qciNix.  
Here Nix denotes the normalized B-spline of degree 3 defined upon the knots λi,λi+1,,λi+4.
In order to define the full set of B-splines required, eight additional knots λ1,λ2,λ3,λ4 and λn-+4,λn-+5,λn-+6,λn-+7 are inserted automatically by the routine. The first four of these are set equal to the smallest xr and the last four to the largest xr.
The representation of sx in terms of B-splines is the most compact form possible in that only n-+3 coefficients, in addition to the n-+7 knots, fully define sx.
The method employed involves forming and then computing the least squares solution of a set of m linear equations in the coefficients ci, for i=1,2,,n-+3. The equations are formed using a recurrence relation for B-splines that is unconditionally stable (see Cox (1972) and de Boor (1972)), even for multiple (coincident) knots. The least squares solution is also obtained in a stable manner by using orthogonal transformations, viz. a variant of Givens rotations (see Gentleman (1974) and Gentleman (1973)). This requires only one equation to be stored at a time. Full advantage is taken of the structure of the equations, there being at most four nonzero values of Nix for any value of x and hence at most four coefficients in each equation.
For further details of the algorithm and its use see Cox (1974), Cox (1975) and Cox and Hayes (1973).
Subsequent evaluation of sx from its B-spline representation may be carried out using e02bbf. If derivatives of sx are also required, e02bcf may be used. e02bdf can be used to compute the definite integral of sx.

4
References

Cox M G (1972) The numerical evaluation of B-splines J. Inst. Math. Appl. 10 134–149
Cox M G (1974) A data-fitting package for the non-specialist user Software for Numerical Mathematics (ed D J Evans) Academic Press
Cox M G (1975) Numerical methods for the interpolation and approximation of data by spline functions PhD Thesis City University, London
Cox M G and Hayes J G (1973) Curve fitting: a guide and suite of algorithms for the non-specialist user NPL Report NAC26 National Physical Laboratory
de Boor C (1972) On calculating with B-splines J. Approx. Theory 6 50–62
Gentleman W M (1973) Least squares computations by Givens transformations without square roots J. Inst. Math. Applic. 12 329–336
Gentleman W M (1974) Algorithm AS 75. Basic procedures for large sparse or weighted linear least squares problems Appl. Statist. 23 448–454
Schoenberg I J and Whitney A (1953) On Polya frequency functions III Trans. Amer. Math. Soc. 74 246–259

5
Arguments

1:     m – IntegerInput
On entry: the number m of data points.
Constraint: mmdist4, where mdist is the number of distinct x values in the data.
2:     ncap7 – IntegerInput
On entry: n-+7, where n- is the number of intervals of the spline (which is one greater than the number of interior knots, i.e., the knots strictly within the range x1 to xm) over which the spline is defined.
Constraint: 8ncap7mdist+4, where mdist is the number of distinct x values in the data.
3:     xm – Real (Kind=nag_wp) arrayInput
On entry: the values xr of the independent variable (abscissa), for r=1,2,,m.
Constraint: x1x2xm.
4:     ym – Real (Kind=nag_wp) arrayInput
On entry: the values yr of the dependent variable (ordinate), for r=1,2,,m.
5:     wm – Real (Kind=nag_wp) arrayInput
On entry: the values wr of the weights, for r=1,2,,m. For advice on the choice of weights, see the E02 Chapter Introduction.
Constraint: wr>0.0, for r=1,2,,m.
6:     lamdancap7 – Real (Kind=nag_wp) arrayInput/Output
On entry: lamdai must be set to the i-4th (interior) knot, λi, for i=5,6,,n-+3.
Constraint: x1<lamda5lamda6lamdancap7-4<xm.
On exit: the input values are unchanged, and lamdai, for i=1,2,3,4, ncap7-3, ncap7-2, ncap7-1, ncap7 contains the additional (exterior) knots introduced by the routine. For advice on the choice of knots, see Section 3.3 in the E02 Chapter Introduction.
7:     work1m – Real (Kind=nag_wp) arrayWorkspace
8:     work24×ncap7 – Real (Kind=nag_wp) arrayWorkspace
9:     cncap7 – Real (Kind=nag_wp) arrayOutput
On exit: the coefficient ci of the B-spline Nix, for i=1,2,,n-+3. The remaining elements of the array are not used.
10:   ss – Real (Kind=nag_wp)Output
On exit: the residual sum of squares, θ.
11:   ifail – IntegerInput/Output
On entry: ifail must be set to 0, -1​ or ​1. If you are unfamiliar with this argument you should refer to Section 3.4 in How to Use the NAG Library and its Documentation for details.
For environments where it might be inappropriate to halt program execution when an error is detected, the value -1​ or ​1 is recommended. If the output of error messages is undesirable, then the value 1 is recommended. Otherwise, if you are not familiar with this argument, the recommended value is 0. When the value -1​ or ​1 is used it is essential to test the value of ifail on exit.
On exit: ifail=0 unless the routine detects an error or a warning has been flagged (see Section 6).

6
Error Indicators and Warnings

If on entry ifail=0 or -1, explanatory error messages are output on the current error message unit (as defined by x04aaf).
Errors or warnings detected by the routine:
ifail=1
The knots fail to satisfy the condition
x1<lamda5lamda6lamdancap7-4<xm.
Thus the knots are not in correct order or are not interior to the data interval.
ifail=2
The weights are not all strictly positive.
ifail=3
The values of xr, for r=1,2,,m, are not in nondecreasing order.
ifail=4
ncap7<8 (so the number of interior knots is negative) or ncap7>mdist+4, where mdist is the number of distinct x values in the data (so there cannot be a unique solution).
ifail=5
The conditions specified by Schoenberg and Whitney (1953) fail to hold for at least one subset of the distinct data abscissae. That is, there is no subset of ncap7-4 strictly increasing values, xR1, xR2, , xRncap7-4, among the abscissae such that
  • xR1<lamda1< xR5,
  • xR2<lamda2< xR6,
  • xRncap7-8<lamdancap7-8< xRncap7-4.
This means that there is no unique solution: there are regions containing too many knots compared with the number of data points.
ifail=-99
An unexpected error has been triggered by this routine. Please contact NAG.
See Section 3.9 in How to Use the NAG Library and its Documentation for further information.
ifail=-399
Your licence key may have expired or may not have been installed correctly.
See Section 3.8 in How to Use the NAG Library and its Documentation for further information.
ifail=-999
Dynamic memory allocation failed.
See Section 3.7 in How to Use the NAG Library and its Documentation for further information.

7
Accuracy

The rounding errors committed are such that the computed coefficients are exact for a slightly perturbed set of ordinates yr+δyr. The ratio of the root-mean-square value for the δyr to the root-mean-square value of the yr can be expected to be less than a small multiple of κ×m×machine precision, where κ is a condition number for the problem. Values of κ for 2030 practical datasets all proved to lie between 4.5 and 7.8 (see Cox (1975)). (Note that for these datasets, replacing the coincident end knots at the end points x1 and xm used in the routine by various choices of non-coincident exterior knots gave values of κ between 16 and 180. Again see Cox (1975) for further details.) In general we would not expect κ to be large unless the choice of knots results in near-violation of the Schoenberg–Whitney conditions.
A cubic spline which adequately fits the data and is free from spurious oscillations is more likely to be obtained if the knots are chosen to be grouped more closely in regions where the function (underlying the data) or its derivatives change more rapidly than elsewhere.

8
Parallelism and Performance

e02baf is not threaded in any implementation.

9
Further Comments

The time taken is approximately C×2m+n-+7 seconds, where C is a machine-dependent constant.
Multiple knots are permitted as long as their multiplicity does not exceed 4, i.e., the complete set of knots must satisfy λi<λi+4, for i=1,2,,n-+3, (see Section 6). At a knot of multiplicity one (the usual case), sx and its first two derivatives are continuous. At a knot of multiplicity two, sx and its first derivative are continuous. At a knot of multiplicity three, sx is continuous, and at a knot of multiplicity four, sx is generally discontinuous.
The routine can be used efficiently for cubic spline interpolation, i.e., if m=n-+3. The abscissae must then of course satisfy x1<x2<<xm. Recommended values for the knots in this case are λi=xi-2, for i=5,6,,n-+3.

10
Example

Determine a weighted least squares cubic spline approximation with five intervals (four interior knots) to a set of 14 given data points. Tabulate the data and the corresponding values of the approximating spline, together with the residual errors, and also the values of the approximating spline at points half-way between each pair of adjacent data points.
The example program is written in a general form that will enable a cubic spline approximation with n- intervals (n--1 interior knots) to be obtained to m data points, with arbitrary positive weights, and the approximation to be tabulated. Note that e02bbf is used to evaluate the approximating spline. The program is self-starting in that any number of datasets can be supplied.

10.1
Program Text

Program Text (e02bafe.f90)

10.2
Program Data

Program Data (e02bafe.d)

10.3
Program Results

Program Results (e02bafe.r)

GnuplotProduced by GNUPLOT 4.6 patchlevel 3 −4 −2 0 2 4 6 8 10 0 2 4 6 8 10 12 −0.06 −0.04 −0.02 0 0.02 0.04 0.06 0.08 0.1 0.12 Cubic Spline Approximation Residual at Data Points x Example Program Weighted Least-squares Cubic Spline Approximation to a Set of 14 Data Points cubic spline fit residual gnuplot_plot_1 data points gnuplot_plot_2 gnuplot_plot_3
© The Numerical Algorithms Group Ltd, Oxford, UK. 2017