Awesome
Cubature
This is a simple C package for adaptive multidimensional integration (cubature) of vector-valued integrands over hypercubes, written by Steven G. Johnson. That is, it computes integrals of the form:
(Of course, it can handle scalar integrands as the special case where f is a one-dimensional vector: the dimensionalities of f and x are independent.) The integrand can be evaluated for an array of points at once to enable easy parallelization. The code, which is distributed as free software under the terms of the GNU General Public License (v2 or later), implements two algorithms for adaptive integration.
The first, h-adaptive integration (recursively partitioning the integration domain into smaller subdomains, applying the same integration rule to each, until convergence is achieved), is based on the algorithms described in:
- A. C. Genz and A. A. Malik, “An adaptive algorithm for numeric integration over an N-dimensional rectangular region,” J. Comput. Appl. Math. 6 (4), 295–302 (1980).
- J. Berntsen, T. O. Espelid, and A. Genz, “An adaptive algorithm for the approximate calculation of multiple integrals,” ACM Trans. Math. Soft. 17 (4), 437–451 (1991).
This algorithm is best suited for a moderate number of dimensions (say, < 7), and is superseded for high-dimensional integrals by other methods (e.g. Monte Carlo variants or sparse grids).
(Note that we do not use any of the original DCUHRE code by Genz, which is not under a free/open-source license.) Our code is based in part on code borrowed from the HIntLib numeric-integration library by Rudolf Schürer and from code for Gauss-Kronrod quadrature (for 1d integrals) from the GNU Scientific Library, both of which are free software under the GNU GPL. (Another free-software multi-dimensional integration library, unrelated to our code here but also implementing the Genz–Malik algorithm among other techniques, is Cuba.)
The second, p-adaptive integration (repeatedly doubling the degree of the quadrature rules until convergence is achieved), is based on a tensor product of Clenshaw–Curtis quadrature rules. This algorithm is often superior to h-adaptive integration for smooth integrands in a few (≤ 3) dimensions, but is a poor choice in higher dimensions or for non-smooth integrands.
For the most part, the p-adaptive routines below are drop-in replacements for the h-adaptive routines, with the same arguments etcetera, so you can experiment to see which one works best for your problem. One difference: the h-adaptive routines do not evaluate the integrand on the boundaries of the integration volume, whereas the p-adaptive routines do evaluate the integrand at the boundaries. This means that the p adaptive routines require more care in cases where there are singularities at the boundaries.
I am also grateful to Dmitry Turbiner (dturbiner ατ alum.mit.edu), who implemented an initial prototype of the “vectorized” functionality (see below) for evaluating an array of points in a single call, which facilitates parallelization of the integrand evaluation.
Download
The current version of the code can be downloaded from github repository, and the latest "official" version can be obtained from:
Either way, you get a directory containing stand-alone hcubature.c
and pcubature.c
files
(along with a couple of private header files) that you can compile and
link into your program for h-adaptive and p-adaptive integration,
respectively, and a header file cubature.h
that you #include
, as
described below.
The test.c
file contains a little test program which is produced if
you compile that file with -DHCUBATURE
or -DPCUBATURE
and link with
hcubature.c
or pcubature.c
, respectively, as described below.
B. Narasimhan wrote a GNU R interface, which can be downloaded here: http://cran.r-project.org/web/packages/cubature/index.html. Jonathan Schilling ported the code to Java: https://github.com/jonathanschilling/Cubature
A Julia interface can be obtained from Cubature.jl. A Python cubature.py interface written by Saullo Castro is also available.
Usage
You should compile hcubature.c
and/or pcubature.c
and link it with
your program, and #include
the header file cubature.h
.
The central subroutine you will be calling for h-adaptive cubature is:
int hcubature(unsigned fdim, integrand f, void *fdata,
unsigned dim, const double *xmin, const double *xmax,
size_t maxEval, double reqAbsError, double reqRelError,
error_norm norm,
double *val, double *err);
or pcubature
(same arguments) for p-adaptive cubature. (See also the
vectorized interface below.)
This integrates a function F(x), returning a vector of FDIM integrands, where x is a DIM-dimensional vector ranging from XMIN to XMAX (i.e. in a hypercube XMINᵢ ≤ xᵢ ≤ XMAXᵢ).
MAXEVAL specifies a maximum number of function evaluations (0 for no limit). (Note: the actual number of evaluations may somewhat exceed MAXEVAL: MAXEVAL is rounded up to an integer number of subregion evaluations.) Otherwise, the integration stops when the estimated |error| is less than REQABSERROR (the absolute error requested) or when the estimated |error| is less than REQRELERROR × |integral value| (the relative error requested). (Either of the error tolerances can be set to zero to ignore it.)
For vector-valued integrands (FDIM > 1), NORM specifies the norm that is used to measure the error and determine convergence properties. (The NORM argument is irrelevant for FDIM ≤ 1 and is ignored.) Given vectors v and e of estimated integrals and errors therein, respectively, the NORM argument takes on one of the following enumerated constant values:
-
ERROR_L1
,ERROR_L2
,ERROR_LINF
: the absolute error is measured as |e| and the relative error as |e|/|v|, where |...| is the L₁, L₂, or L∞ norm, respectively. (|x| in the L₁ norm is the sum of the absolute values of the components, in the L₂ norm is the root mean square of the components, and in the L∞ norm is the maximum absolute value of the components) -
ERROR_INDIVIDUAL
: Convergence is achieved only when each integrand (each component of v and e) individually satisfies the requested error tolerances. -
ERROR_PAIRED
: LikeERROR_INDIVIDUAL
, except that the integrands are grouped into consecutive pairs, with the error tolerance applied in an L₂ sense to each pair. This option is mainly useful for integrating vectors of complex numbers, where each consecutive pair of real integrands is the real and imaginary parts of a single complex integrand, and you only care about the error in the complex plane rather than the error in the real and imaginary parts separately.
VAL
and ERR
are arrays of length FDIM
, which upon return are the
computed integral values and estimated errors, respectively. (The
estimated errors are based on an embedded cubature rule of lower order;
for smooth functions, this estimate is usually conservative.)
The return value of hcubature
and pcubature
is 0 on success and
nonzero if there was an error (mainly only out-of-memory situations or
if the integrand signals an error). For a nonzero return value, the
contents of the VAL
and ERR
arrays are undefined.
The integrand function F
should be a function of the form:
int f(unsigned ndim, const double *x, void *fdata,
unsigned fdim, double *fval);
Here, the input is an array X
of length NDIM
(the point to be
evaluated), the output is an array FVAL
of length FDIM
(the vector
of function values at the point X
). he return value should be 0 on
success or a nonzero value if an error occurred and the integration is
to be terminated immediately (hcubature
will then return a nonzero
error code).
The FDATA
argument of F
is equal to the FDATA
argument passed to
hcubature
—this can be used by the caller to pass any additional
information through to F
as needed (rather than using global
variables, which are not re-entrant). If F
does not need any
additional data, you can just pass FDATA
= NULL
and ignore the
FDATA
argument to F
.
“Vectorized” interface
These integration algorithms actually evaluate the integrand in “batches” of several points at a time. It is often useful to have access to this information so that your integrand function is not called for one point at a time, but rather for a whole “vector” of many points at once. For example, you may want to evaluate the integrand in parallel at different points. This functionality is available by calling:
int hcubature_v(unsigned fdim, integrand_v f, void *fdata,
unsigned dim, const double *xmin, const double *xmax,
unsigned maxEval, double reqAbsError, double reqRelError,
error_norm norm, double *val, double *err);
(and similarly for pcubature_v
). All of the arguments and the return
value are identical to hcubature
, above, except that now the integrand
F
is of type integrand_v
, corresponding to a function of a different
form. The integrand function F
should now be a function of the form:
int f(unsigned ndim, size_t npts, const double *x, void *fdata,
unsigned fdim, double *fval);
Now, X
is not a single point, but an array of NPTS
points (length
NPTS
×NDIM
), and upon return the values of all FDIM
integrands at
all NPTS
points should be stored in FVAL
(length NPTS
×FDIM
). In
particular, x[i*ndim + j]
is the j
-th coordinate of the i
-th point
(i<npts
and j<ndim
), and the k
-th function evaluation
(k<fdim
) for the i
-th point is returned in fval[i*fdim + k]
.
(Note: the fval
indexing is changed compared to the
adapt_integrate_v
interface in previous versions.)
Again, the return value should be 0
on success or nonzero to terminate
the integration immediately (e.g. if an error occurred).
The size of NPTS
will vary with the dimensionality of the problem;
higher-dimensional problems will have (exponentially) larger NPTS,
allowing for the possibility of more parallelism. Currently, for
hcubature_v
, NPTS
starts at 15 in 1d, 17 in 2d, and 33 in 3d, but as
adapt_integrate_v
calls your integrand more and more times the value
of NPTS will grow. e.g. if you end up requiring several thousand points
in total, NPTS
may grow to several hundred. We utilize an algorithm
from:
- I. Gladwell, “Vectorization of one dimensional quadrature codes,” pp. 230–238 in Numerical Integration. Recent Developments, Software and Applications, G. Fairweather and P. M. Keast, eds., NATO ASI Series C203, Dordrecht (1987).
as described in the article “Parallel globally adaptive algorithms for multi-dimensional integration” by Bull and Freeman (1994).
Example
As a simple example, consider the Gaussian integral of the scalar function f(x) = exp(-sigma |x|²) over the hypercube [-2,2]³ in 3 dimensions. You could compute this integral via code that looks like:
#include <stdio.h>
#include <math.h>
#include "cubature.h"
int f(unsigned ndim, const double *x, void *fdata, unsigned fdim, double *fval) {
double sigma = *((double *) fdata); // we can pass σ via fdata argument
double sum = 0;
unsigned i;
for (i = 0; i < ndim; ++i) sum += x[i] * x[i];
// compute the output value: note that fdim should == 1 from below
fval[0] = exp(-sigma * sum);
return 0; // success*
}
then, later in the program where we call hcubature
:
double xmin[3] = {-2,-2,-2}, xmax[3] = {2,2,2}, sigma = 0.5, val, err;
hcubature(1, f, &sigma, 3, xmin, xmax, 0, 0, 1e-4, ERROR_INDIVIDUAL, &val, &err);
printf("Computed integral = %0.10g +/- %g\n", val, err);
Here, we have specified a relative error tolerance of $10^{-4}$ (and no
absolute error tolerance or maximum number of function evaluations).
Note also that, to demonstrate the fdata
parameter, we have used it to
pass the σ value through to our function (rather than hard-coding the
value of σ in f
or using a global variable).
The output should be:
Computed integral = 13.69609043 +/- 0.00136919
Note that the estimated relative error is 0.00136919/13.69609043 = 9.9969×10⁻⁵, within our requested tolerance of 10⁻⁴. The actual error in the integral value, as can be determined e.g. by running the integration with a much lower tolerance, is much smaller: the integral is too small by about 0.00002, for an actual relative error of about 1.4×10⁻⁶. As mentioned above, for smooth integrands the estimated error is almost always conservative (which means, unfortunately, that the integrator usually does more function evaluations than it needs to).
With the vectorized interface hcubature_v
, one would instead use:
int f(unsigned ndim, unsigned npts, const double *x, void *fdata, unsigned fdim, double *fval) {
double sigma = *((double *) fdata);
unsigned i, j;
for (j = 0; j < npts; ++j) { // evaluate the integrand for npts points
double sum = 0;
for (i = 0; i < ndim; ++i) sum += x[j*ndim+i] * x[j*ndim+i];
fval[j] = exp(-sigma * sum);
}
return 0; // success
}
Infinite intervals
Integrals over infinite or semi-infinite intervals is possible by a change of variables. This is best illustrated in one dimension.
To compute an integral over a semi-infinite interval, you can perform the change of variables x=a+t/(1-t):
For an infinite interval, you can perform the change of variables x=t/(1-t²):
Note the Jacobian factors multiplying f(⋅⋅⋅) in both integrals, and also that the limits of the t integrals are different in the two cases.
In multiple dimensions, one simply performs this change of variables on each dimension separately, as desired, multiplying the integrand by the corresponding Jacobian factor for each dimension being transformed.
The Jacobian factors diverge as the endpoints are approached. However,
if f(x) goes to zero at least as fast as 1/x², then the limit of
the integrand (including the Jacobian factor) is finite at the
endpoints. If your f(x) vanishes more slowly than 1/x² but still
faster than 1/x, then the integrand blows up at the endpoints but the
integral is still finite (it is an integrable singularity), so the code
will work (although it may take many function evaluations to converge).
If your f(x) vanishes only as 1/x, then it is not absolutely convergent and much more care is
required even to define what you are trying to compute. (In any case,
the h-adaptive quadrature/cubature rules currently employed in
cubature.c
do not evaluate the integrand at the endpoints, so you need
not implement special handling for |t|=1.)
Test program
To compile a test programs, just compile hcubature.c
and/or
pcubature.c
along with the test program test.c
, e.g. (on Unix or
GNU/Linux) via:
cc -o htest test.c hcubature.c -lm
cc -o ptest -DPCUBATURE test.c pcubature.c -lm
The usage is then:
./htest <dim> <tol> <integrand> <maxeval>
where <dim>
= #dimensions, <tol>
= relative tolerance, <integrand>
is
0–7 for one of eight possible test integrands (see below) and <maxeval>
is the maximum number of function evaluations (0 for none, the default).
Similarly for ptest
(which tests the pcubature
function).
The different test integrands are:
- 0: a product of cosine functions
- 1: a Gaussian integral of exp(-x²), remapped to [0,∞) limits
- 2: volume of a hypersphere (integrating a discontinuous function!)
- 3: a simple polynomial (product of coordinates)
- 4: a Gaussian centered in the middle of the integration volume
- 5: a sum of two Gaussians
- 6: an example function by Tsuda, a product of terms with near poles
- 7: a test integrand by Morokoff and Caflisch, a simple product of
dim
-th roots of the coordinates (weakly singular at the boundary)
For example:
./htest 3 1e-5 4
integrates the Gaussian function (4) to a desired relative error tolerance of 10^–5^ in 3 dimensions. The output is:
3-dim integral, tolerance = 1e-05
integrand 4: integral = 1, est err = 9.99952e-06, true err = 2.54397e-08
#evals = 82203
Notice that it finds the integral after 82203 function evaluations with an estimated error of about 10⁻⁵, but the true error (compared to the exact result) is much smaller (2.5×10⁻⁸): the error estimation is typically conservative when applied to smooth functions like this.