# How to efficiently sum over levels defined in another variable?

I am new to R. Now I have a function as follow:

``````funItemAverRating = function()
{
itemRatingNum = array(0, itemNum);
print("begin");
apply(input, 1, function(x)
{
itemId = x[2]+1;
itemAverRating[itemId] <<- itemAverRating[itemId] + x[3];
itemRatingNum[itemId] <<- itemRatingNum[itemId] + 1;
}
);
}
``````

In this function input is a `n*3` data frame, `n` is `~6*(10e+7)`, `itemRatingNum` is a vector of size `~3*(10e+5)`.
My question is why the `apply` function is so slow (it would take nearly an hour to finish)? Also, as the function runs, it uses more and more memory. But as you can see, the variables are all defined outside the `apply` function. Can anybody help me?

cheng

-
Hard to say without seeing what data looks like (what is `itemAverRating`, what are columns of `input`) but I suppose you could to it without `apply` using vectorization. E.g.: `itemRatingNum[input[[2]]+1] <- itemRatingNum[input[[2]]+1] + 1` – Marek May 17 '11 at 10:17
Thanks for you answer. Is there any efficiency difference between this and the apply function? – user572138 May 17 '11 at 10:19
Yes. Operating on vectors if much, much faster (could take you from 1h to <1m) – Marek May 17 '11 at 10:28
@user572138, please change the title of your question. Apply is not slow in general, only in your particular reason, mainly because you are not using it right. – mpiktas May 17 '11 at 10:34
@mpiktas Ok. Can you provide an scenario where apply process large scale data (such as in my case) efficiently? Thanks. – user572138 May 17 '11 at 11:03

It's slow because you call high-level R functions many times.

You have to vectorize your function, meaning that most operations (like `<-` or `+1`) should be computed over all data vectors.

For example it looks to me that `itemRatingNum` holds frequencies of `input[[2]]` (second column of `input` `data.frame`) which could be replaced by:

``````tb <- table(input[[2]]+1)
itemRatingNum[as.integer(names(tb))] <- tb
``````
-
T will try, thanks a lot for your help. – user572138 May 17 '11 at 10:32
Thanks for your answer. But if I want to do things like: itemPopu = tapply(input[,3], input[,2], sum); Is there any efficient solutions. I find that tapply is very slow. – user572138 May 17 '11 at 11:37
Try `rowsum(input[[3]],input[[2]])` – Marek May 17 '11 at 12:13

Don't do that. You're following a logic that is completely not R-like. If I understand it right, you want to add to a certain `itemAverRating` vector a value from a third column in some input dataframe.

What `itemRatingNum` is doing, is rather obscure. It does not end up in the global environment, and it just becomes a vector filled with frequencies at the end of the loop. As you define itemRatingNum within the function, the `<<-` assignment will also assign it within the local environment of the function, and it will get destroyed when the function ends.

Next, you should give your function input, and get some output. Never assign to the global environment if it's not necessary. Your function is equivalent to the - rather a whole lot faster - following function, which takes input and gives output :

``````funItemAverRating = function(x,input){
sums <- rowsum(input[,3],input[,2])
sumid <- as.numeric(rownames(sums))+1
x[sumid]+c(sums)
}
``````

FUNCTION EDITED PER MAREKS COMMENT

Which works like :

``````# make data
itemNum <- 10
set.seed(12)
input <- data.frame(
a1 = rep(1:10,itemNum),
a2 = sample(9:0,itemNum*10,TRUE),
a3 = rep(10:1,itemNum)
)
itemAverRating <- array(0, itemNum)
itemAverRating <- funItemAverRating(itemAverRating,input)
itemAverRating
0  1  2  3  4  5  6  7  8  9
39 65 57 36 62 33 98 62 60 38
``````

If I try your code, I get :

``````> funItemAverRating()
[1] "begin"
...
> itemAverRating
[1] 39 65 57 36 62 33 98 62 60 38
``````

Which is the same. If you want itemRatingNum, then just do :

``````> itemRatingNum <- table(input[,2])
0  1  2  3  4  5  6  7  8  9
6 11 11  8 10  6 18  9 13  8
``````
-
I tried tapply, but I found that the this function is very slow, itemPopu = tapply(input[,3], input[,2], sum); this code would cost a lot of time. Is there any better solutions? – user572138 May 17 '11 at 11:34
@user572138 : It's about 13 times faster than your code on my computer and it does exactly the same thing. What do you mean by "slow"? – Joris Meys May 17 '11 at 11:39
In my data, length(input) is very large(~6*10e+7), but there are many repeated items in input[,2]. The unique number of input[,2] is ~3*10e5. When i run tapply(input[,3], input[,2], sum) i need to wait a long time(at least 5 mins). In C, this of course will not cost so long. – user572138 May 17 '11 at 11:46
By "at least 5 mins" I mean that after 5 mins, the code still runs. – user572138 May 17 '11 at 11:48
The row number of input is about (~6*10e+7). – user572138 May 17 '11 at 11:50