lapply vs for loop - Performance R

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
data(iris)
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) + 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
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

return(errors)
}

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)) +
weight
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
}
err
}

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],
1)
}))))
weight <<- rep(0, 3)
t
}
``````

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

• Please be precise. I don't see any call to `apply` in your function `f`. – Roland Feb 22 '17 at 14:09
• 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)
f()
Rprof(NULL)
fprof <- summaryRprof()\$by.self

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

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

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

sum(!is.na(Selftime\$self.time.lapply))
sum(!is.na(Selftime\$self.time.for))
Selftime[order(Selftime\$self.time.lapply, decreasing = TRUE),
c("Fun","self.time.lapply","self.time.for")]

Selftime[is.na(Selftime\$self.time.for),]
``````

Actually,

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")
return(list2)
}

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
sys.child
1         0
``````

&&

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