# How do you make a function using the if command for a range of values on R

``````normal.con = function (x){

if (x<601){
a = x * 0.01
}

else if (x>4000){
a = 318 + ((x-4000)*0.12)
}

return (a)
}
``````

I would like to add another command to calculate 'a' if 600 < x < 4001. I attempted the following:

``````normal.con = function (x){
z = c (601,4000);

if (x<601){
a = x * 0.01
}

else if (x == range (z)){
a = 118 + (x*0.1)
}

else if (x>4000){
a = 318 + ((x-4000)*0.12)
}

return (a)
}
``````

But it gives a warning and a wrong answer

``````Warning message:
In if (x == range(z)) { :
the condition has length > 1 and only the first element will be used
``````
-
How do you want the code to behave when `x=601` or `x=4000`? So far, your inequalities are strict. – Nicholas Flees May 16 '14 at 16:02
Sorry, I've edited the question, @NicholasFlees. I want it to calculate a = 118 + (x*0.1). Thanks. – Meed May 16 '14 at 16:06
OK. Thought so. The solution below takes that into consideration. – Nicholas Flees May 16 '14 at 16:07
What do you expect `x == range(x)` to do??? – Señor O May 16 '14 at 16:11

I replaced the conditional statements so that they're a bit more reader-friendly. You can implement the third condition as a double-conditional.

If `x` is less than or equal to 600 calculate ...
If `x` is greater than or equal to 4000 calculate ...
If `x` is greater than 600 AND `x` is less than 4000, calculate ...

``````normal.con <- function(x)
{
y <- numeric(length(x))

for(i in 1:length(x)){
if(x[i] <= 600){
y[i] <- x[i] * 0.01
} else if(x[i] >= 4000){
y[i] <- 318 + ((x[i]-4000)*0.12)
} else if(x[i] > 600 & x[i] < 4000){
y[i] <- 118 + (x[i]*0.1)
}
}
return(y)
}

> normal.con(c(100, 2000, 5000))
## [1]   1 318 438
``````

ADDED: Just for fun, here are two other versions of the same function. One, `normal.con2` uses `sapply`, and the other, `normal.con3` uses `lapply`.

``````normal.con2 <- function(x)
{
ss <- sapply(x, function(y){
if(y <= 600){ y * 0.01 }
else if(y >= 4000){ 318 + ((y - 4000) * 0.12) }
else if(y > 600 & y < 4000){ 118 + (y * 0.1) }
})
unlist(ss)
}
# ---
normal.con3 <- function(x)
{
ll <- lapply(x, function(y){
if(y <= 600){ y * 0.01 }
else if(y >= 4000){ 318 + ((y - 4000) * 0.12) }
else if(y > 600 & y < 4000){ 118 + (y * 0.1) }
})
unlist(ll)
}
# ---
> x <- c(100, 2000, 5000)
> normal.con(x)
# [1]   1 318 438
> normal.con2(x)
# [1]   1 318 438
> normal.con3(x)
# [1]   1 318 438
``````

The speed test results are interesting. It seems `lapply` (`normal.con3`) is fastest in this situation, and `sapply` us quite a bit slower than the other two.

``````> list(for.loop = system.time({ replicate(1e5, normal.con(x)) }),
sapply = system.time({ replicate(1e5, normal.con2(x)) }),
lapply = system.time({ replicate(1e5, normal.con3(x)) }))
# \$for.loop
# user  system elapsed
# 1.985   0.000   1.524
#
# \$sapply
# user  system elapsed
# 4.393   0.000   4.307
#
# \$lapply
# user  system elapsed
# 1.480   0.000   1.404
``````
-
Unfortunately it wont work with `normal.con(c(100,2000,5000))` like most functions in R, but the OP didn't explicitly ask for that explicitly. – MrFlick May 16 '14 at 16:35
I strongly disagree with this. `sapply` is great, and has a place, but the performance differences between using a scalar function and a vector function can be huge. Below a quick example: > fs<-function(pred,x) if(pred(x)) x else NA; fv<-function(pred,x) ifelse(pred(x),x,NA); system.time(fv(function(x) x%%2 == 0,v)) user system elapsed 0.762 0.014 0.778 system.time(sapply(v, fs, pred=function(x) x%%2 ==0)) user system elapsed 10.563 0.519 11.092 identical(fv(function(x) x%%2 == 0, v), sapply(v, fs, pred=function(x) x%%2 ==0)) [1] TRUE – JPC May 16 '14 at 17:44
Sorry, what are you disagreeing with? – Richard Scriven May 16 '14 at 17:54
the comment you deleted, that said that was what `sapply` was for. – JPC May 16 '14 at 17:59
together with the example you had a bit ago using `sapply` and is no longer here – JPC May 16 '14 at 18:00

You can use `cut()` to evaluate which case applies, then use `switch()` conditional on the result.

``````switch(cut(x,breaks=c(-Inf,600.999999,4000,Inf),labels=FALSE),
x * 0.01,
118 + (x * 0.1),
318 + ((x - 4000) * 0.12))
``````

See `?cut` for the definition of the break intervals - by default, these are `(a,b]`.

-

A nested `ifelse` would be possible

``````normal.con <- function (x){
ifelse(x < 601, x * 0.01,
ifelse(x > 4000, 318 + ((x-4000)*0.12), 118 + (x*0.1)))}

> normal.con(74)          #single value input
#[1] 0.74

> normal.con(c(1000,100,5000))         #multiple value input
#[1] 218   1 438
``````

As @JPC noted in his comment, `ifelse` is vectorized while the normal `if ... else` statement is not. So you'll have performance advantage by using `ifelse`.

Update:

By the way, if you need more variability on the ranges (I think that was what @MrFlick assumed in his answer) you can easily achieve this by giving two more inputs to the `normal.con` function.

``````normal.con <- function(x, lower = 601, upper = 4000){
ifelse(x < lower, x * 0.01,
ifelse(x > upper, 318 + ((x-4000)*0.12), 118 + (x*0.1)))}
``````

This way, you have default values for a lower (601) and upper (4000) bound and you dont need to input them in the function:

``````> normal.con(c(100, 1000, 5000))      #uses the default ranges of 601 and 4000
#[1]   1 218 438
``````

If you need to change the bounds, just pass the new values to `normal.con`:

``````> normal.con(c(100, 1000, 5000), 500, 7000)     #lower bound = 500, upper = 7000
#[1]   1 218 618
``````
-
no need to use `return` in R for the most part. It returns your last evaluated statement, ala functional programming, so just don't assing it to `a` and that will do. +1 for using vector operations – JPC May 16 '14 at 16:34
@JPC i realized that after i posted the answer but was somehow reluctant to adjust it (will do so now) – docendo discimus May 16 '14 at 16:37

Assuming that you don't actually want to exclude cases where `x=601` or `x=4000` in this block of conditionals, you could do the following:

``````if (x < 601) {
a = x * 0.01
} else if (x > 4000) {
a = 318 + ((x - 4000) * 0.12)
} else {
a = 118 * (x * 0.1)
}
``````

The last `else` block will execute whenever the first two conditions are not met.

-
Unfortunately it wont work when `x` is a vector like most functions in R, but the OP didn't explicitly ask for that explicitly so perhaps it's not a problem. – MrFlick May 16 '14 at 16:41
Just to be clear, I was not the down voter. – MrFlick May 16 '14 at 16:41
@MrFlick Thanks. Good point. I was curious about the rationale for the downvote. Perhaps somebody else had the same thought as you but considered it more critical to the solution. – Nicholas Flees May 16 '14 at 16:42
There are plenty of R functions that accept length-one vectors. No big deal, and can easily be adjusted to accept longer vectors. – Richard Scriven May 16 '14 at 16:45
... through the magic of the aptly-named `Vectorize()`. – Stephan Kolassa May 16 '14 at 16:50

I've created an overly complex solution that allows you to create a helper function to do an inline type of rang value finder. The ranger function takes the cut points you want to split on and then returns a function that will choose the value of the parameter based on which interval it falls. It primarily uses `findInterval` but unfortunately you inequalities don't exactly line up with how `findInterval` likes to do them so I had to do some fiddling.

``````#meta-helper function
ranger<-function(rng) {
function(x, ...) {
dots<-list(...)
stopifnot(ncol(dots)==length(rng)+1)
m<-findInterval(x, rng)+1
ex<-match(x, rng);
if (any(!is.na(ex))) {
m[which(ex>1)]<-ex[which(ex>1)]
}
out<-rep(NA, length(x))
for(i in seq_along(dots)) {
out[m==i]<-rep(dots[[i]], length.out=length(x))[m==i]
}
out;
}
}

#helper function
abc<-ranger(c(600,4000))

#implementation 1
x<-c(100,2000,5000)
a<-abc(x, 0.01, 0.1, 0.12)*x + abc(x, 0, 118, -162);
a;

#implementation 2
a<-abc(x, x * 0.01, 118 + (x*0.1), 318 + ((x-4000)*0.12));
a;
``````

So while it may not be the best choice in this case, i might be useful if you have a bunch of different ranges or something like that.

-
Now i'm confused about the down votes. Which part of my answer is incorrect? – MrFlick May 16 '14 at 17:03
Downvotes do not necessarily indicate that the answer is incorrect, but that the answer is not useful. (I was not one of the downvoters.) – Stephan Kolassa May 16 '14 at 17:10