It is often said that one should prefer lapply over for loops. There are some exception as for example Hadley Wickham points out in his Advance R book.

(http://adv-r.had.co.nz/Functionals.html) (Modifying in place, Recursion etc). The following is one of this case.

Just for sake of learning, I tried to rewrite a perceptron algorithm in a functional form in order to benchmark relative performance. source (https://rpubs.com/FaiHas/197581).

Here is the code.

# prepare input
irissubdf <- iris[1:100, c(1, 3, 5)]
names(irissubdf) <- c("sepal", "petal", "species")
irissubdf$y <- 1
irissubdf[irissubdf[, 3] == "setosa", 4] <- -1
x <- irissubdf[, c(1, 2)]
y <- irissubdf[, 4]

# perceptron function with for
perceptron <- function(x, y, eta, niter) {

  # initialize weight vector
  weight <- rep(0, dim(x)[2] + 1)
  errors <- rep(0, niter)

  # loop over number of epochs niter
  for (jj in 1:niter) {

    # loop through training data set
    for (ii in 1:length(y)) {

      # Predict binary label using Heaviside activation
      # function
      z <- sum(weight[2:length(weight)] * as.numeric(x[ii, 
        ])) + weight[1]
      if (z < 0) {
        ypred <- -1
      } else {
        ypred <- 1

      # Change weight - the formula doesn't do anything
      # if the predicted value is correct
      weightdiff <- eta * (y[ii] - ypred) * c(1, 
        as.numeric(x[ii, ]))
      weight <- weight + weightdiff

      # Update error function
      if ((y[ii] - ypred) != 0) {
        errors[jj] <- errors[jj] + 1


  # weight to decide between the two species


err <- perceptron(x, y, 1, 10)

### my rewriting in functional form auxiliary
### function
faux <- function(x, weight, y, eta) {
  err <- 0
  z <- sum(weight[2:length(weight)] * as.numeric(x)) + 
  if (z < 0) {
    ypred <- -1
  } else {
    ypred <- 1

  # Change weight - the formula doesn't do anything
  # if the predicted value is correct
  weightdiff <- eta * (y - ypred) * c(1, as.numeric(x))
  weight <<- weight + weightdiff

  # Update error function
  if ((y - ypred) != 0) {
    err <- 1

weight <- rep(0, 3)
weightdiff <- rep(0, 3)

f <- function() {
  t <- replicate(10, sum(unlist(lapply(seq_along(irissubdf$y), 
    function(i) {
      faux(irissubdf[i, 1:2], weight, irissubdf$y[i], 
  weight <<- rep(0, 3)

I did not expected any consistent improvement due to the aforementioned issues. But nevertheless I was really surprised when I saw the sharp worsening using lapply and replicate.

I obtained this results using microbenchmark function from microbenchmark library

What could possibly be the reasons? Could it be some memory leak?

                                                      expr       min         lq       mean     median         uq
                                                        f() 48670.878 50600.7200 52767.6871 51746.2530 53541.2440
  perceptron(as.matrix(irissubdf[1:2]), irissubdf$y, 1, 10)  4184.131  4437.2990  4686.7506  4532.6655  4751.4795
 perceptronC(as.matrix(irissubdf[1:2]), irissubdf$y, 1, 10)    95.793   104.2045   123.7735   116.6065   140.5545
        max neval
 109715.673   100
   6513.684   100
    264.858   100

The first function is the lapply/replicate function

The second is the function with for loops

The third is the same function in C++ using Rcpp

Here According to Roland the profiling of the function. I am not sure I can interpret it in the right way. It looks like to me most of the time is spent in subsetting Function profiling

  • 2
    Please be precise. I don't see any call to apply in your function f. – Roland Feb 22 '17 at 14:09
  • 1
    I'd suggest that you learn how to profile functions: adv-r.had.co.nz/Profiling.html – Roland Feb 22 '17 at 14:10
  • There's a couple errors in your code; first, irissubdf[, 4] <- 1 should be irissubdf$y <- 1, so you can use that name later, and second, weight is not defined before you use it in f. It's also not clear to me that the <<- is doing the right thing in your lapply and replicate command, but it's not clear to me what it's supposed to be doing. This also may be a major difference between the two; the <<- has to deal with environments while the other does not, and while I don't know exactly what effect that might have, it's not quite an apples to apples comparison anymore. – Aaron Feb 22 '17 at 14:45
  • Thanks to point out, I just forgot the copy the code to initialize weight( and weightdiff). I used <<- because the algorithm change the weight vector at each iteration, so the only solution I found was to update data in a vector in the caller environment – Federico Manigrasso Feb 22 '17 at 18:01
  • Hi, I tried out of curiosity to delete <<-. of course the code is now wrong but there is no performance improvement. So the scope assignement is not the cause – Federico Manigrasso Feb 23 '17 at 9:38

First of all, it is an already long debunked myth that for loops are any slower than lapply. The for loops in R have been made a lot more performant and are currently at least as fast as lapply.

That said, you have to rethink your use of lapply here. Your implementation demands assigning to the global environment, because your code requires you to update the weight during the loop. And that is a valid reason to not consider lapply.

lapply is a function you should use for its side effects (or lack of side effects). The function lapply combines the results in a list automatically and doesn't mess with the environment you work in, contrary to a for loop. The same goes for replicate. See also this question:

Is R's apply family more than syntactic sugar?

The reason your lapply solution is far slower, is because your way of using it creates a lot more overhead.

  • replicate is nothing else but sapply internally, so you actually combine sapply and lapply to implement your double loop. sapply creates extra overhead because it has to test whether or not the result can be simplified. So a for loop will be actually faster than using replicate.
  • inside your lapply anonymous function, you have to access the dataframe for both x and y for every observation. This means that -contrary to in your for-loop- eg the function $ has to be called every time.
  • Because you use these high-end functions, your 'lapply' solution calls 49 functions, compared to your for solution that only calls 26. These extra functions for the lapply solution include calls to functions like match, structure, [[, names, %in%, sys.call, duplicated, ... All functions not needed by your for loop as that one doesn't do any of these checks.

If you want to see where this extra overhead comes from, look at the internal code of replicate, unlist, sapply and simplify2array.

You can use the following code to get a better idea of where you lose your performance with the lapply. Run this line by line!

Rprof(interval = 0.0001)
fprof <- summaryRprof()$by.self

Rprof(interval = 0.0001)
perceptron(as.matrix(irissubdf[1:2]), irissubdf$y, 1, 10) 
perprof <- summaryRprof()$by.self

fprof$Fun <- rownames(fprof)
perprof$Fun <- rownames(perprof)

Selftime <- merge(fprof, perprof,
                  all = TRUE,
                  by = 'Fun',
                  suffixes = c(".lapply",".for"))

Selftime[order(Selftime$self.time.lapply, decreasing = TRUE),



I did test the difference with a a problem that a solve recently.

Just try yourself.

In my conclusion, have no difference but for loop to my case were insignificantly more faster than lapply.

Ps: I try mostly keep the same logic in use.

ds <- data.frame(matrix(rnorm(1000000), ncol = 8))  
n <- c('a','b','c','d','e','f','g','h')  
func <- function(ds, target_col, query_col, value){
  return (unique(as.vector(ds[ds[query_col] == value, target_col])))  

f1 <- function(x, y){
  named_list <- list()
  for (i in y){
    named_list[[i]] <- func(x, 'a', 'b', i)
  return (named_list)

f2 <- function(x, y){
  list2 <- lapply(setNames(nm = y), func, ds = x, target_col = "a", query_col = "b")

benchmark(f1(ds2, n ))
benchmark(f2(ds2, n ))

As you could see, I did a simple routine to build a named_list based in a dataframe, the func function does the column values extracted, the f1 uses a for loop to iterate through the dataframe and the f2 uses a lapply function.

In my computer I get this results:

test replications elapsed relative user.self sys.self user.child
1 f1(ds2, n)          100  110.24        1   110.112        0          0
1         0


        test replications elapsed relative user.self sys.self user.child
1 f1(ds2, n)          100  110.24        1   110.112        0          0
1         0
  • Your script is not self-contained. Can you specify the library() for the benchmark() function and also define ds2? – coip Dec 17 '18 at 16:36

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