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I have a list of length 130,000 where each element is a character vector of length 110. I would like to convert this list to a matrix with dimension 1,430,000*10. How can I do it more efficiently? My code is :

output=NULL
for(i in 1:length(z)) output=rbind(output,matrix(z[[i]],ncol=10,byrow=T))
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2  
If you want the dimensions to be 1430000*11 why do you set ncol to be 10? –  Dason Nov 5 '12 at 0:46
1  
Wait- when you say that each entry has 11 characters, you mean that it is a vector with 11 items? I originally thought that each was a string with 11 characters in it. Can you show z[1:2] as an example? –  David Robinson Nov 5 '12 at 0:51
    
Thank Dason and David! That's a typo. I have corrected it. –  user1787675 Nov 5 '12 at 0:54
    
@user1787675: I still don't understand. What is an "entry"? Is it a vector? Can you show z[1:2]? –  David Robinson Nov 5 '12 at 1:07
    
Hi David, I looked up an dictionary and found that I mean the components in the list. I am sorry for the confusion I caused. I am not good at English :) –  user1787675 Nov 5 '12 at 1:28

3 Answers 3

up vote 26 down vote accepted

This should be equivalent to your current code, only a lot faster:

output <- matrix(unlist(z), ncol = 10, byrow = TRUE)
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Bingo. This should be much faster than my solution too, but I couldn't think of it fast enough. –  Ben Bolker Nov 5 '12 at 1:10
3  
+1, but I'd recommend setting USE.NAMES=FALSE in unlist in order to save time and memory. –  Joshua Ulrich Nov 5 '12 at 3:45

I think you want

output <- do.call(rbind,lapply(z,matrix,ncol=10,byrow=TRUE))

i.e. combining @BlueMagister's use of do.call(rbind,...) with an lapply statement to convert the individual list elements into 11*10 matrices ...

Benchmarks (showing @flodel's unlist solution is 5x faster than mine, and 230x faster than the original approach ...)

n <- 1000
z <- replicate(n,matrix(1:110,ncol=10,byrow=TRUE),simplify=FALSE)
library(rbenchmark)
origfn <- function(z) {
    output <- NULL 
    for(i in 1:length(z))
        output<- rbind(output,matrix(z[[i]],ncol=10,byrow=TRUE))
}
rbindfn <- function(z) do.call(rbind,lapply(z,matrix,ncol=10,byrow=TRUE))
unlistfn <- function(z) matrix(unlist(z), ncol = 10, byrow = TRUE)

##          test replications elapsed relative user.self sys.self 
## 1   origfn(z)          100  36.467  230.804    34.834    1.540  
## 2  rbindfn(z)          100   0.713    4.513     0.708    0.012 
## 3 unlistfn(z)          100   0.158    1.000     0.144    0.008 

If this scales appropriately (i.e. you don't run into memory problems), the full problem would take about 130*0.2 seconds = 26 seconds on a comparable machine (I did this on a 2-year-old MacBook Pro).

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That's magical! It takes about 20 seconds to do this on my one-year-old toshiba machine, which saves me a lot of time. And your function to show the run time is very interesting too. –  user1787675 Nov 5 '12 at 1:44

It would help to have sample information about your output. Recursively using rbind on bigger and bigger things is not recommended. My first guess at something that would help you:

z <- list(1:3,4:6,7:9)
do.call(rbind,z)

See a related question for more efficiency, if needed.

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