# Using lapply with changing arguments

R textbooks continue to promote the use of lapply instead of loops. This is easy even for functions with arguments like

``````lapply(somelist, f, a=1, b=2)
``````

but what if the arguments change depending on the list element? Assume my somelist consists of:

``````somelist\$USA
somelist\$Europe
somelist\$Switzerland
``````

plus there is `anotherlist` with the same regions and I want use lapply with these changing arguments? This could be useful when f was a ratio calculation for example.

``````lapply(somelist, f, a= somelist\$USA, b=anotherlist\$USA)
``````

Is there are way except for a loop to run through these regions efficiently?

EDIT: my problem seems to be that I tried to use a previously written function without indexes...

``````ratio <-function(a,b){
z<-(b-a)/a
return(z)
}
``````

which led to

``````lapply(data,ratio,names(data))
``````

which does not work. Maybe others can also learn from this mistake.

-

Apply over list names rather than list elements. E.g.:

``````somelist <- list('USA'=rnorm(10), 'Europe'=rnorm(10), 'Switzerland'=rnorm(10))
anotherlist <- list('USA'=5, 'Europe'=10, 'Switzerland'=4)
lapply(names(somelist), function(i) somelist[[i]] / anotherlist[[i]])
``````

EDIT:

You also ask if there is a way "except for a loop" to do this "efficiently". You should note that the apply will not necessarily be more efficient. Efficiency will probably be determined by how quick your inner function is. If you want to operate on each elements of a list, you will need a loop, whether it is hidden in an apply() call or not. Check this question: Is R's apply family more than syntactic sugar

The example I gave above can be re-written as a for loop, and you can make some naive benchmarks:

``````fun1 <- function(){
lapply(names(somelist), function(i) somelist[[i]] / anotherlist[[i]])
}
fun2 <- function(){
for (i in names(somelist)){
somelist[[i]] <- somelist[[i]] / anotherlist[[i]]
}
return(somelist)
}
library(rbenchmark)

benchmark(fun1(), fun2(),
columns=c("test", "replications",
"elapsed", "relative"),
order="relative", replications=10000)
``````

``````    test replications elapsed relative
1 fun1()        10000   0.145 1.000000
2 fun2()        10000   0.148 1.020690
``````

Although this is not a real work application and the functions are not realistic tasks, you can see that the difference in computation time is quite negligible.

-
+1 I see you beat me to to names idea –  Gavin Simpson Jun 6 '11 at 14:32
Yeah, it seemed like the most straightforward way to fix the problem. I added some discussion of for vs apply because he asked for that too... –  Vincent Jun 6 '11 at 14:36

You just need to work out what to `lapply()` over. Here the `names()` of the lists suffices, after we rewrite `f()` to take different arguments:

``````somelist <- list(USA = 1:10, Europe = 21:30,
Switzerland = seq(1, 5, length = 10))
anotherlist <- list(USA = list(a = 1, b = 2), Europe = list(a = 2, b = 4),
Switzerland = list(a = 0.5, b = 1))

f <- function(x, some, other) {
(some[[x]] + other[[x]][["a"]]) * other[[x]][["b"]]
}

lapply(names(somelist), f, some = somelist, other = anotherlist)
``````

Giving:

``````R> lapply(names(somelist), f, some = somelist, other = anotherlist)
[[1]]
[1]  4  6  8 10 12 14 16 18 20 22

[[2]]
[1]  92  96 100 104 108 112 116 120 124 128

[[3]]
[1] 1.500000 1.944444 2.388889 2.833333 3.277778 3.722222 4.166667 4.611111
[9] 5.055556 5.500000
``````
-
Too bad, I can't hand out another +1 here. Had another problem, tried to ask on SO but didn't cause the suggestion pointed my to this. Your answers helped again! great. –  Matt Bannert Sep 22 '11 at 16:37