Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I have N vectors containing the cumulative frequencies of tweets, for clarification one of these vectors would like (0, 0, 1, 1, 2, 3, 4, 4, 5, 5, 6, 6, ...)

I wanted to visualize the differences in these frequencies by creating a heat map. For that I first wanted to create an NxN Matrix containing the euclidean distances between tweets. My first approach is rather Java like and looks like this:

create_dist <- function(x){
  n <- length(x)                             #number of tweets
  xy <- matrix(nrow=n, ncol=n)               #create NxN matrix
  colnames(xy) <- names(x)                   #set column
  rownames(xy) <- names(x)                   #and row names

  for(i in 1:n) {
    for(j in 1:n){
      xy[i,j] <- distance(x[[i]], x[[1]])    #calculate euclidean distance for now, but should be interchangeable 
    }
  }

  xy
}

I measured the time it takes to create this distance matrix, and for a small sample (around two thousand tweets) it already takes about 35 seconds.

> system.time(create_dist(cumFreqs))
user  system elapsed 
34.572   0.000  34.602 

Now I thought about how I could speed up the calculation a little bit and because my computer has 8 cores I thought maybe if I use parallelization it's going to be faster.

Like the R novice I am I changed the inner for loop to a foreach loop.

#libraries
library(foreach)
library(doMC)
registerDoMC(4)

create_dist <- function(x){
  n <- length(x)                                #number of tweets
  xy <- matrix(nrow=n, ncol=n)                  #create NxN matrix
  colnames(xy) <- names(x)                      #set column
  rownames(xy) <- names(x)                      #and row names

  for(i in 1:n) {
    xy[i,] <- unlist(foreach(j=1:n) %dopar% {   #set each row of the matrix
      distance(x[[i]], x[[j]])
    })
  }

  xy
}

Again I wanted to measure the time it takes to create a distance matrix for a sample of two thousand tweets using system.time(), but I cancelled the execution after 10 minutes because obviously there isn't a speed up at all.

I googled for solutions, but unfortunately I haven't found any. Now I wanted to ask you if there is a better way to create this distance matrix, maybe an apply function, which I have no shame admit still confuse me.

share|improve this question
2  
Why you don't use ?dist? Should be a lot of faster than your solution. –  sgibb Jun 16 '13 at 12:19
    
I believe you would get better performance, if you parallelized the outer loop and not the inner loop. To get a benefit, even though there is parallelization overhead, each iteration needs to be performance intensive. However, I believe you can get rid of all explicit R loops in your code (see comment by @sgibb). –  Roland Jun 16 '13 at 12:21
    
Or, you could write the distance calculation in C++, and incorporate it into R using the inline package. –  Paul Hiemstra Jun 16 '13 at 12:22
    
I thought about using dist too, but the distance function I use should be interchangeable later. –  Daniel Jun 16 '13 at 12:24
    
Maybe you want to have a look at the proxy package. It supports 48 different distance measurements. The calculation is based on matrices and mostly very fast. –  sgibb Jun 16 '13 at 13:07

2 Answers 2

up vote 2 down vote accepted

As mentioned you can use dist function. Here an example of how to use the result of dist to create a heatmap.

nn <- paste0('row',1:5)
x <- matrix(rnorm(25), nrow = 5,dimnames=list(nn))
distObj <- dist(x)
cols <- c("#D33F6A", "#D95260", "#DE6355", "#E27449", 
            "#E6833D", "#E89331", "#E9A229", "#EAB12A", "#E9C037", 
            "#E7CE4C", "#E4DC68", "#E2E6BD")
## mandatory coercion
distObj <- as.matrix(distObj)
## hetamap
image(distObj[order(nn), order(nn)], col = cols, 
      xaxt = "n", yaxt = "n")
## axes labels
axis(1, at = seq(0, 1, length.out = dim(distObj)[1]), labels = nn, 
     las = 2)
axis(2, at = seq(0, 1, length.out = dim(distObj)[1]), labels = nn, 
     las = 2)

enter image description here

share|improve this answer
1  
So, using your cumFreqs list of vectors, you could do: x <- do.call(rbind, cumFreqs), followed by distObj <- dist(x). With 2000 vectors of length 100, this takes just a couple of seconds. –  jbaums Jun 16 '13 at 14:59
    
@jbaums right! I wouldn't do better. –  agstudy Jun 16 '13 at 17:13

Like 'agstudy' suggests, use the builtin 'dist' function.

For future reference, nested for loops in R are pretty slow. As R is a functional language, try and use vectorised operations with functions such as the apply family (apply, lapply, sapply, tapply). It takes some time to think about programming tasks in a functional way when you're used to a C-like paradigm.

A useful discussion on benchmarks between for loops and apply flavours is here: Is R's apply family more than syntactic sugar?

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.