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I have ten huge lists(each list has seven element but elements are huge) and I need to calculate the element wise mean of these lists. So if there are A1, A2, A3,..., A10 lists. I need to calculate :

mean1 = mean(A1[[1]], A2[[1]], A3[[1]], ...,A10[[1]])
.
.
.
mean7 = mean(A1[[7]], A2[[7]], A3[[7]], ....A10[[7]])

I have done it with for loop but I wanted to know if there is a better solution provided by R. Thank you in advance.

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Can you provide a sample of your list?? what's A1[[1]] a vector? a matrix? –  Jilber Jul 23 '13 at 16:22
    
I thought each element is not a vector but rather a list of seven elements, each of which is a vector ?! –  George Steblovsky Jul 23 '13 at 16:28
    
Actually the real data is too huge. But each Ax[[x]] is a data frame that I need to calculate the "mean" of "nrow" of these data frames. –  hora Jul 23 '13 at 16:33
1  
@hora: Please, provide a very small, not huge, example and what you expect to get. Sorry, but I just can't understand what "mean" of "nrow" stands for –  George Steblovsky Jul 23 '13 at 16:39
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2 Answers 2

up vote 2 down vote accepted

Assuming your As are lists of vectors:

Anames <- paste0("A", 1:10)

# for completeness
for(A in Anames)
    assign(A, lapply(1:7, function(x) rnorm(1000)))

sapply(1:7, function(i)
{
    m <- sapply(Anames, function(A) get(A)[[i]])
    mean(m)
})

This avoids building a copy of all your As in memory, instead retrieving them one at a time and extracting the desired vector. But if you have enough memory to store all that data, you could probably afford to store a copy as well.

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Kudos to you for understanding the "problem"!!! –  George Steblovsky Jul 23 '13 at 16:41
    
:D Did I ask in a weird way? yes I have enough memory on the cluster, I am checking if the solution works or not but it takes time. –  hora Jul 23 '13 at 16:45
    
Many thanks for helping and understanding the problem :) –  hora Jul 23 '13 at 17:26
2  
@hora I think it would have saved some confusion if you'd just said "10 huge dataframes" as opposed to "10 huge lists". –  Hong Ooi Jul 23 '13 at 17:28
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If your A[[·]] are vectors as the following list,

> ( List <- list(A=1:4, B=5:8, C=9:12) )
$A
[1] 1 2 3 4

$B
[1] 5 6 7 8

$C
[1]  9 10 11 12

then you can use this approach to obtain the mean:

> rowMeans(simplify2array(List))
[1] 5 6 7 8

rowMeans(as.data.frame(List)) will give you the same result.

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Yes, and similar to what I was just about to try: A1 <- 1:10; A2 <- 21:20; A3 <- 21:30; rowMeans(do.call(cbind,list(A1,A2,A3))) ... :) –  texb Jul 23 '13 at 16:27
    
nice use of simplify2array function. it seems to be matrix(unlist(.., use.names=FALSE), nrow=..) under the hood. –  Arun Jul 23 '13 at 17:17
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