The itp package implements the Interpolate, Truncate, Project (ITP) root-finding algorithm of Oliveira and Takahashi (2021). Each iteration of the algorithm results in a bracketing interval for the root that is narrower than the previous interval. It’s performance compares favourably with existing methods on both well-behaved functions and ill-behaved functions while retaining the worst-case reliability of the bisection method. For details see the authors’ Kudos summary and the Wikipedia article ITP method.
We use three examples from Section 3 of Oliveira and Takahashi (2021)
to illustrate the use of the itp
function. Each of these
functions has a root in the interval . The function can be supplied either as
an R function or as an external pointer to a C++ function.
library(itp)
The Lambert function is continuous.
The itp
function finds an estimate of the root, that is,
for which is (approximately) equal to 0. The
algorithm continues until the length of the interval that brackets the
root is smaller than , where is a user-supplied tolerance. The
default is .
First, we supply an R function that evaluates the Lambert function.
# Lambert, using an R function
<- function(x) x * exp(x) - 1
lambert itp(lambert, c(-1, 1))
#> function: lambert
#> root f(root) iterations
#> 0.5671 2.048e-12 8
Now, we create an external pointer to a C++ function that has been
provided in the itp
package and pass this pointer to the
function itp()
. For more information see the Overview
of the itp package vignette.
# Lambert, using an external pointer to a C++ function
<- xptr_create("lambert")
lambert_ptr itp(lambert_ptr, c(-1, 1))
#> function: lambert_ptr
#> root f(root) iterations
#> 0.5671 2.048e-12 8
itp_c
Also provided is the function itp_c
, which is equivalent
to itp
, but the calculations are performed entirely using
C++, and the arguments differ slightly: itp_c
has a named
required argument pars
rather than ...
and it
does not have the arguments interval
, f.a
or
f.b
.
# Calling itp_c()
<- itp_c(lambert_ptr, pars = list(), a = -1, b = 1)
res
res#> function:
#> root f(root) iterations
#> 0.5671 2.048e-12 8
The staircase function is discontinuous.
The itp
function finds the discontinuity at at which the sign of the function changes.
The value of 0.5 returned for the root res$root
is the
midpoint of the bracketing interval [res$a, res$b]
at
convergence.
# Staircase
<- function(x) ceiling(10 * x - 1) + 1 / 2
staircase <- itp(staircase, c(-1, 1))
res print(res, all = TRUE)
#> function: staircase
#> root f(root) iterations a b f.a
#> 7.404e-11 0.5 31 0 1.481e-10 -0.5
#> f.b precision
#> 0.5 7.404e-11
The Warsaw function has multiple roots.
When the initial interval is the itp
function finds the
root . There are other
roots that could be found from a different initial interval.
# Warsaw
<- function(x) ifelse(x > -1, sin(1 / (x + 1)), -1)
warsaw itp(warsaw, c(-1, 1))
#> function: warsaw
#> root f(root) iterations
#> -0.6817 -5.472e-11 11
To get the current released version from CRAN:
install.packages("itp")
See the Overview
of the itp package vignette, which can also be accessed using
vignette("itp-vignette", package = "itp")
.