Title: | Interpolation From C |
---|---|
Description: | Simple interpolation methods designed to be used from C code. Supports constant, linear and spline interpolation. An R wrapper is included but this package is primarily designed to be used from C code using 'LinkingTo'. The spline calculations are classical cubic interpolation, e.g., Forsythe, Malcolm and Moler (1977) <ISBN: 9780131653320>. |
Authors: | Rich FitzJohn [aut, cre], Imperial College of Science, Technology and Medicine [cph] |
Maintainer: | Rich FitzJohn <[email protected]> |
License: | MIT + file LICENSE |
Version: | 1.0.2 |
Built: | 2024-11-14 06:18:20 UTC |
Source: | CRAN |
Create an interpolation function, using the same implementation as
would be available from C code. This will give very similar
answers to R's splinefun
function. This is not the
primary intended use of the package, which is mostly designed for
use from C/C++. This function primarily exists for testing this
package, and for exploring the interface without writing C code.
interpolation_function(x, y, type, scalar = FALSE, fail_on_extrapolate = FALSE)
interpolation_function(x, y, type, scalar = FALSE, fail_on_extrapolate = FALSE)
x |
Independent variable |
y |
Dependent variable |
type |
Character string indicating the interpolation type ("constant", "linear" or "spline"). |
scalar |
Return a function that will compute only a single
|
fail_on_extrapolate |
Logical, indicating if extrapolation should cause an failure (rather than an NA value) |
A function that can be used to interpolate the function(s)
defined by x
and y
to new values of x
.
# Some data to interpolate x <- seq(0, 8, length.out = 20) y <- sin(x) xx <- seq(min(x), max(x), length.out = 500) # Spline interpolation f <- cinterpolate::interpolation_function(x, y, "spline") plot(f(xx) ~ xx, type = "l") lines(sin(xx) ~ xx, col = "grey", lty = 2) points(y ~ x, col = "red", pch = 19, cex = 0.5) # Linear interpolation f <- cinterpolate::interpolation_function(x, y, "linear") plot(f(xx) ~ xx, type = "l") lines(sin(xx) ~ xx, col = "grey", lty = 2) points(y ~ x, col = "red", pch = 19, cex = 0.5) # Piecewise constant interpolation f <- cinterpolate::interpolation_function(x, y, "constant") plot(f(xx) ~ xx, type = "s") lines(sin(xx) ~ xx, col = "grey", lty = 2) points(y ~ x, col = "red", pch = 19, cex = 0.5) # Multiple series can be interpolated at once by providing a # matrix for 'y'. Each series is interpolated independently but # simultaneously. y <- cbind(sin(x), cos(x)) f <- cinterpolate::interpolation_function(x, y, "spline") matplot(xx, f(xx), type = "l", lty = 1)
# Some data to interpolate x <- seq(0, 8, length.out = 20) y <- sin(x) xx <- seq(min(x), max(x), length.out = 500) # Spline interpolation f <- cinterpolate::interpolation_function(x, y, "spline") plot(f(xx) ~ xx, type = "l") lines(sin(xx) ~ xx, col = "grey", lty = 2) points(y ~ x, col = "red", pch = 19, cex = 0.5) # Linear interpolation f <- cinterpolate::interpolation_function(x, y, "linear") plot(f(xx) ~ xx, type = "l") lines(sin(xx) ~ xx, col = "grey", lty = 2) points(y ~ x, col = "red", pch = 19, cex = 0.5) # Piecewise constant interpolation f <- cinterpolate::interpolation_function(x, y, "constant") plot(f(xx) ~ xx, type = "s") lines(sin(xx) ~ xx, col = "grey", lty = 2) points(y ~ x, col = "red", pch = 19, cex = 0.5) # Multiple series can be interpolated at once by providing a # matrix for 'y'. Each series is interpolated independently but # simultaneously. y <- cbind(sin(x), cos(x)) f <- cinterpolate::interpolation_function(x, y, "spline") matplot(xx, f(xx), type = "l", lty = 1)