# Clip values between a minimum and maximum allowed value in R

In Mathematica there is the command `Clip[x, {min, max}]` which gives `x` for `min<=x<=max`, `min` for `x<min` and and `max` for `x>max`, see

http://reference.wolfram.com/mathematica/ref/Clip.html

What would be the equivalent command for this in R? Ideally it should be a function that is listable, and that would either take a single value, or vector or a matrix as an argument? I'm sure it must be easy, but I just couldn't find it anywhere... (and my own function I wrote to do this is a bit slow)

cheers, Tom

-

`Rcpp` has `clamp` for this:

``````cppFunction('NumericVector rcpp_clip( NumericVector x, double a, double b){
return clamp( a, x, b ) ;
}')
``````

Here is a quick benchmark showing how it performs against other methods discussed :

``````pmin_pmax_clip <- function(x, a, b) pmax(a, pmin(x, b) )
ifelse_clip <- function(x, a, b) {
ifelse(x <= a,  a, ifelse(x >= b, b, x))
}
operations_clip <- function(x, a, b) {
a + (x-a > 0)*(x-a) - (x-b > 0)*(x-b)
}
x <- rnorm( 10000 )
require(microbenchmark)

microbenchmark(
pmin_pmax_clip( x, -2, 2 ),
rcpp_clip( x, -2, 2 ),
ifelse_clip( x, -2, 2 ),
operations_clip( x, -2, 2 )
)
# Unit: microseconds
#                        expr      min        lq   median        uq       max
# 1     ifelse_clip(x, -2, 2) 2809.211 3812.7350 3911.461 4481.0790 43244.543
# 2 operations_clip(x, -2, 2)  228.282  248.2500  266.605 1120.8855 40703.937
# 3  pmin_pmax_clip(x, -2, 2)  260.630  284.0985  308.426  336.9280  1353.721
# 4       rcpp_clip(x, -2, 2)   65.413   70.7120   84.568   92.2875  1097.039
``````
-
Those times are pretty rockin'. –  Dirk Eddelbuettel Dec 13 '12 at 23:52
Just pasting the lines for the clamp code in a console session is obviously not what you intended us Rcpp virgins to be doing. –  BondedDust Dec 13 '12 at 23:53
Almost. See my use of `cppFunction` in my edit. (but you need the current devel version of `Rcpp` because `clamp` has been fixed since the last release). –  Romain Francois Dec 13 '12 at 23:56
Very cool. I'm shocked and baffled at how bad the `operations_clip()` times are .... sometimes. Any ideas why the max values are quite so much larger than the min values for all of these functions? –  Josh O'Brien Dec 14 '12 at 3:42
I'm pretty sure this is about memory allocation. `operations_clip` performs a lot of them, so my guess is that sometimes it takes longer. –  Romain Francois Dec 14 '12 at 7:39

Here's a method with nested `pmin` and `pmax` setting the bounds:

`````` fenced.var <- pmax( LB, pmin( var, UB))
``````

It will be difficult to find a method that is faster. Wrapped in a function that defaults to a range of 3 and 7:

``````fence <- function(vec, UB=7, LB=3) pmax( LB, pmin( vec, UB))

> fence(1:10)
[1] 3 3 3 4 5 6 7 7 7 7
``````
-
sweet.......... –  Joris Meys Dec 13 '12 at 22:49
Very elegant - that's great! –  Tom Wenseleers Dec 13 '12 at 22:51
I use this one a lot. I have a large dataset that has several variables that are not plausibly real below 0 and that should be sensible constrained at the high end as well. The real trick is remembering to set the max with `pmin` and set the min with `pmax`. –  BondedDust Dec 13 '12 at 22:52
Your 'It will be difficult to find a method that is faster' obviously motivated me to have a look. –  Romain Francois Dec 13 '12 at 23:22
Yeah. It still wins the compactness prize ... so far. –  BondedDust Dec 13 '12 at 23:57

Here's one function that will work for both vectors and matrices.

``````myClip <- function(x, a, b) {
ifelse(x <= a,  a, ifelse(x >= b, b, x))
}

myClip(x = 0:10, a = 3,b = 7)
#  [1] 3 3 3 3 4 5 6 7 7 7 7

myClip(x = matrix(1:12/10, ncol=4), a=.2, b=0.7)
# myClip(x = matrix(1:12/10, ncol=4), a=.2, b=0.7)
#      [,1] [,2] [,3] [,4]
# [1,]  0.2  0.4  0.7  0.7
# [2,]  0.2  0.5  0.7  0.7
# [3,]  0.3  0.6  0.7  0.7
``````

And here's another:

``````myClip2 <- function(x, a, b) {
a + (x-a > 0)*(x-a) - (x-b > 0)*(x-b)
}

myClip2(-10:10, 0, 4)
# [1] 0 0 0 0 0 0 0 0 0 0 0 1 2 3 4 4 4 4 4 4 4
``````
-
Great!! Thanks so much!! My function for this was waaayy slower, but this works quite fast! –  Tom Wenseleers Dec 13 '12 at 21:54
This should be in R's base library! –  smci Apr 27 '14 at 3:47