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This is a pretty simple and general question, but I haven't seen it already discussed. I hope I haven't missed anything.

I am starting to design big programs with several layers of functions, and while there is clear strategies in other programming languages, I can't find a canonical solution in R on how to treat "parameters" of a function that will also have "arguments". I make a conceptual difference between "parameters" and "arguments", even they are actually the same to the function: inputs. The former will be set on higher level, and not really often, while the latter is the real data that the function will process.

Let consider this simple example: simple schema

The subfunction of interest SF() is queried many times with different arguments by the "WORKER", but with the same parameters, that are set "above". Of course the same question applies to more complicated cases with several layers.

I see two ways of dealing with that: 1. Passing down everything, but : a. You'll end up with a myriad of arguments in your function call, or a structure enclosing all these arguments. b. Because R makes copies of arguments to call functions, it may not be very efficient. 2. Dynamically evaluating the functions each time you change the parameters, and "hardwire" them into the function definition. But I am not sure how to do that, especially in a clean way.

None of this seems really likable, so I was wondering if you guys had an opinion on that matter? Maybe we could use some environmental features of R? :-)


EDIT: Because for some, code is better than graphs, here is a dummy example in which I used the method "1.", passing all the arguments over. If I have many layers and subfunctions, passing all the parameters to the intermediate layers (here, WORKER()) seems not great. (from a code and a performance perspective)

F <- function(){
  param <- getParam()
  result <- WORKER(param)

getParam <- function(){

WORKER <- function(param) {
  X <- LETTERS[1:20]
  interm.result <- sapply(X,SF,param) # The use of sapply here negates maybe the performance issue?

SF <- function(x,param) {

EDIT 2 : The simplicity of the example above mislead some of the kind people looking at my problem, so here is a more concrete illustration, using a discrete gradient descent. Again, I kept it simple, so everything could be written in the same big function, but that's not what I wanna do for my real problem.

gradientDescent <- function(initialPoint= 0.5, type = 'sin', iter_max = 100){ 
  point <- initialPoint
  iter <- 1
  E <- 3
  deltaError <- 1
  eprev <- 0
  while (abs(deltaError) > 10^(-2) | iter < iter_max) {
    v_points <- point + -100:100 / 1000
    E <- sapply(v_points, computeError, type)
    point <- v_points[which.min(E)]
    ef <- min(E)
    deltaError <- ef - eprev
    eprev <- ef
    iter <- iter+1

computeError <- function(point, type) {
  if (type == 'sin') {
    e <- sin(point)
  } else if (type == 'cos') {
    e <- cos(point)    

I find it non-optimal to pass the "type" parameter of the subfunction each time it is evaluated. It seem that the reference brought by @hadley to Closures and explanation of @Greg are good tracks to the solution I need.

share|improve this question
Something like functional::Curry might help? –  baptiste Aug 30 '13 at 22:17
alternatively, a combination of do.call and modifyList allows you to evaluate a function with a specific list of arguments. –  baptiste Aug 30 '13 at 22:19
Not sure exactly what you're wanting (a more concrete example, with code, would help me), but wanted to note that R does not necessarily make copies of arguments to call functions. Avoiding that inefficiency is one of the main reasons for its use of promise objects... –  Josh O'Brien Aug 30 '13 at 23:01
I've read this question a couple of times and I still don't understand why you want to have F() and getParam() without any arguments. Can you offer a less abstract example to illustrate what the issue is? –  baptiste Aug 31 '13 at 16:12
Maybe you're just looking for closures ? –  hadley Sep 3 '13 at 14:08

2 Answers 2

I think you may be looking for lexical scoping. R uses lexical scoping which means that if you define the functions WORKER and SF inside of F, then they will be able to access the current value of param without it being passed down.

If you cannot take advantage of lexical scoping (SF must be defined outside of F), then another option is to create a new environment to store your parameters in, then if all the needed functions have access to this environment (either by passing explicitly, or by inheritance (making this environment the enclosing environment of the functions)) then F can assign param into this environment and the other functions can access the value.

share|improve this answer

At the risk of speaking for others, I think the reason your question is getting both interest and a dearth of answers is that you seem to be making this overcomplicated.

Certainly given the task shown in your example, I'd do something more like this:

SF <- function(x, par) {
    paste0(x, par)

F <- function(param) {
    which(sapply(LETTERS[1:20], FUN = SF, par = param) == "SO")

#  S 
# 19 

Or, using the lexical scoping that Greg Snow referred to:

F <- function(param) {
    SF <- function(x) {
         paste0(x, param)
    which(sapply(LETTERS[1:20], FUN = SF) == "SO")

Or, in reality and taking advantage of the fact that paste0() is vectorized:

F <- function(param) {
    which(paste0(LETTERS[1:20], param) == "SO")
# [1] 19

I understand my answer may appear overly simplistic: you clearly have something more complicated in mind, but I think you need to better show us what that is. To get more help I suggest you follow the suggestions in @baptiste's second comment, giving us a less abstract example and explaining why you call F() and getParam() without any arguments (and also perhaps demonstrating why you need a getParam() function at all).

share|improve this answer
Thanks for your answer. I indeed have in mind something way more complicated (and useful!) than the trivial lookout I put in my example, and simplifying the structure of this example is not what I am looking for, since this structure is legitimate in my work :-). It's just a dumb example to illustrate my problem. The difficulty is that my question is pretty general! I'll try to give a more concrete example, but the problem is I don't want you to tackle this example particularly but more the problem that arises when creating layers of functions in R. –  Antoine Lizée Sep 3 '13 at 19:27
@AntoineLizée -- That's just as I thought, and is why I think your question has been intriguing to people. Wish there was a way to see your actual use case. Many R packages involve layer upon layer of functions, and it seems likely that some of them use strategies that would fit your situation well. –  Josh O'Brien Sep 3 '13 at 20:46

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