R2Cuba (version 1.1-0)

divonne: Integration by Stratified Sampling for Variance Reduction

Description

Divonne works by stratified sampling, where the partioning of the integration region is aided by methods from numerical optimization.

Usage

divonne(ndim, ncomp, integrand, ..., lower=rep(0,ndim), upper=rep(1,ndim), rel.tol= 0.001, abs.tol = 0, flags=list(verbose=1, final=1, pseudo.random=0, mersenne.seed=NULL), min.eval=0, max.eval=50000, key1=47, key2=1, key3=1, max.pass=5, border=0, max.chisq=10, min.deviation=0.25, xgiven=NULL, nextra=0, peakfinder=NULL)

Arguments

ndim
same as cuhre
ncomp
same as cuhre
integrand
same as cuhre. But, here, the input argument phw indicates the integration phase: 0: sampling of the points in xgiven, 1: partitioning phase, 2: final integration phase, 3: refinement phase. This information might be useful if the integrand takes long to compute and a sufficiently accurate approximation of the integrand is available. The actual value of the integrand is only of minor importance in the partitioning phase, which is instead much more dependent on the peak structure of the integrand to find an appropriate tessellation. An approximation which reproduces the peak structure while leaving out the fine details might hence be a perfectly viable and much faster substitute when phw < 2.

In all other instances, phw can be ignored.

...
same as cuhre
lower
same as cuhre
upper
same as cuhre
rel.tol
same as cuhre
abs.tol
same as cuhre
flags
same as cuhre pseudo.random and mersenne.seed are only taken into account when the argument key1 is negative.
min.eval
same as cuhre
max.eval
same as cuhre
key1
integer that determines sampling in the partitioning phase: key1 = 7, 9, 11, 13 selects the cubature rule of degree key1. Note that the degree-11 rule is available only in 3 dimensions, the degree-13 rule only in 2 dimensions. For other values of key1, a quasi-random sample of $\code{n=|key1|}$ points is used, where the sign of key1 determines the type of sample,

key1 = 0, use the default rule.

key1 > 0, use a Korobov quasi-random sample,

key1 < 0, use a “standard” sample (a Mersenne Twister pseudo-random sample if flags$pseudo.random=1, otherwise a Sobol quasi-random sample).

key2
integer that determines sampling in the final integration phase: same as key1, but here $\code{n = |key2|}$ determines the number of points, $\code{n > 39}$, sample $n$ points, $\code{n < 40}$, sample $\code{n}$ nneed points, where nneed is the number of points needed to reach the prescribed accuracy, as estimated by Divonne from the results of the partitioning phase.
key3
integer that sets the strategy for the refinement phase: key3 = 0, do not treat the subregion any further. key3 = 1, split the subregion up once more. Otherwise, the subregion is sampled a third time with key3 specifying the sampling parameters exactly as key2 above.
max.pass
integer that controls the thoroughness of the partitioning phase: The partitioning phase terminates when the estimated total number of integrand evaluations (partitioning plus final integration) does not decrease for max.pass successive iterations.

A decrease in points generally indicates that Divonne discovered new structures of the integrand and was able to find a more effective partitioning. max.pass can be understood as the number of “safety” iterations that are performed before the partition is accepted as final and counting consequently restarts at zero whenever new structures are found.

border
the relative width of the border of the integration region. Points falling into the border region will not be sampled directly, but will be extrapolated from two samples from the interior. Use a non-zero border if the integrand subroutine cannot produce values directly on the integration boundary. The relative width of the border is identical in all the dimensions. For example, set border=0.1 for a border of width equal to 10% of the width of the integration region.
max.chisq
the maximum $Chi2$ value a single subregion is allowed to have in the final integration phase. Regions which fail this $Chi2$ test and whose sample averages differ by more than min.deviation move on to the refinement phase.
min.deviation
a bound, given as the fraction of the requested error of the entire integral, which determines whether it is worthwhile further examining a region that failed the $Chi2$ test. Only if the two sampling averages obtained for the region differ by more than this bound is the region further treated.
xgiven
a matrix ( ndim, ngiven). A list of ngiven points where the integrand might have peaks.

Divonne will consider these points when partitioning the integration region. The idea here is to help the integrator find the extrema of the integrand in the presence of very narrow peaks. Even if only the approximate location of such peaks is known, this can considerably speed up convergence.

nextra
the maximum number of extra points the peak-finder subroutine will return. If nextra is zero, peakfinder is not called and an arbitrary object may be passed in its place, e.g. just 0.
peakfinder
the peak-finder subroutine. This R function is called whenever a region is up for subdivision and is supposed to point out possible peaks lying in the region, thus acting as the dynamic counterpart of the static list of points supplied in xgiven. It is expected to be declared as

peakfinder <- function(bounds)

where bounds is a matrix of dimension (ndim, 2) which contains the upper and lower bounds of the subregion. The names of the columns are c("lower", "upper"). The returned value should be a matrix (ndim, nx) where nx is the actual number of points (should be less or equal to nextra).

Value

Idem as cuhre. Here ifail may be >1 when the accuracy goal was not met within the allowed maximum number of integrand evaluations. Divonne can estimate the number of points by which maxeval needs to be increased to reach the desired accuracy and returns this value.

Details

Divonne uses stratified sampling for variance reduction, that is, it partitions the integration region such that all subregions have an approximately equal value of a quantity called the spread (volume times half-range).

See details in the documentation.

References

J. H. Friedman, M. H. Wright (1981) A nested partitioning procedure for numerical multiple integration. ACM Trans. Math. Software, 7(1), 76-92.

J. H. Friedman, M. H. Wright (1981) User's guide for DIVONNE. SLAC Report CGTM-193-REV, CGTM-193, Stanford University.

T. Hahn (2005) CUBA-a library for multidimensional numerical integration. Computer Physics Communications, 168, 78-95.

See Also

cuhre, suave, vegas

Examples

Run this code
NDIM <- 3
NCOMP <- 1
integrand <- function(arg, phase) {
  x <- arg[1]
  y <- arg[2]
  z <- arg[3]
  ff <- sin(x)*cos(y)*exp(z);
return(ff)
}
divonne(NDIM, NCOMP, integrand, rel.tol=1e-3,  abs.tol=1e-12,
        flags=list(verbose=2),  key1= 47)

# Example with a peak-finder function
NMAX <- 4

peakf <- function(bounds) {
#  print(bounds) # matrix (ndim,2)
  x <- matrix(0, ncol=NMAX, nrow=NDIM)
   pas <- 1/(NMAX-1)
   # 1ier point
   x[,1] <- rep(0, NDIM)
   # Les autres points
   for (i in 2:NMAX) {
      x[,i] <- x[,(i-1)] + pas
    }
  return(x)
} #end peakf

divonne(NDIM, NCOMP, integrand,
               flags=list(verbose=0) ,
                peakfinder=peakf, nextra=NMAX)

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