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Recoding is a common practice for survey data, but the most obvious routes take more time than they should.

The fastest code that accomplishes the same task with the provided sample data by system.time() on my machine wins.

## Sample data
dat <- cbind(rep(1:5,50000),rep(5:1,50000),rep(c(1,2,4,5,3),50000))
dat <- cbind(dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat)
dat <- as.data.frame(dat)
re.codes <- c("This","That","And","The","Other")

Code to optimize.

for(x in 1:ncol(dat)) { 
    dat[,x] <- factor(dat[,x], labels=re.codes)
    }

Current system.time():

   user  system elapsed 
   4.40    0.10    4.49 

Hint: dat <- lapply(1:ncol(dat), function(x) dat[,x] <- factor(dat[,x],labels=rc))) is not any faster.

share|improve this question
3  
+1 Brandon, this is a brilliant question. I have observed the same problem with my survey data, with some tasks taking 11 seconds, on occasion. Thank you. –  Andrie May 27 '11 at 5:42
    
I'm not going to lie, it's a bit of a self-serving challenge but a fun game nevertheless! –  Brandon Bertelsen May 27 '11 at 5:45
    
@Andrie, ps: your website is broken :) –  Brandon Bertelsen May 27 '11 at 5:50
1  
@hadley: Although speed isn't a concern for you, it's likely a concern for @Brandon, else he wouldn't have asked the question. It's his decision whether to trade readability / maintainability for speed. Perhaps speed is a close second to correctness for him. –  Joshua Ulrich May 27 '11 at 19:12
2  
@hadley I understand your point. Personally, I like these questions because they tease out the collective wisdom of the community. I never fail to learn something from the answers. In any case, there's a bunch more planned - so you can feel free to downvote those too :) –  Brandon Bertelsen May 27 '11 at 20:26

6 Answers 6

up vote 10 down vote accepted

Combining @DWin's answer, and my answer from Most efficient list to data.frame method?:

system.time({
  dat3 <- list()
  # define attributes once outside of loop
  attrib <- list(class="factor", levels=re.codes)
  for (i in names(dat)) {              # loop over each column in 'dat'
    dat3[[i]] <- as.integer(dat[[i]])  # convert column to integer
    attributes(dat3[[i]]) <- attrib    # assign factor attributes
  }
  # convert 'dat3' into a data.frame. We can do it like this because:
  # 1) we know 'dat' and 'dat3' have the same number of rows and columns
  # 2) we want 'dat3' to have the same colnames as 'dat'
  # 3) we don't care if 'dat3' has different rownames than 'dat'
  attributes(dat3) <- list(row.names=c(NA_integer_,nrow(dat)),
    class="data.frame", names=names(dat))
})
identical(dat2, dat3)  # 'dat2' is from @Dwin's answer
share|improve this answer
    
+1 system.time() = 0.08. What just happened? I'd really appreciate a detailed explanation of this one Josh. –  Brandon Bertelsen May 27 '11 at 14:34
1  
The only work is does is to convert the data to integers; beyond that all it does is add attributes for each column and to the whole to make the columns into factors and the whole into a data.frame. It's faster because it doesn't do any of the usual checks to make sure that the resulting factors and data.frame are sensible. –  Aaron May 27 '11 at 15:03
    
@Brandon: @Aaron is spot-on. The as.integer call is slightly faster than @DWin's storage.mode approach. The rest of the gains come from skipping all the checks, which assumes the original dat is a sensible data.frame. –  Joshua Ulrich May 27 '11 at 15:09
    
Could you be more explicit in what you mean by "sensible"? –  Brandon Bertelsen May 27 '11 at 15:14
1  
Rather than take my word for it, see the first two paragraphs in the Details section of ?data.frame (basically, columns have the same number of rows, row names are unique, column names exist and are unique. I assume unique column names even though data.frames are not required to have them). –  Joshua Ulrich May 27 '11 at 15:19

A data.table answer for your consideration. We're just using setattr() from it, which works on data.frame, and columns of data.frame. No need to convert to data.table.

The test data again :

dat <- cbind(rep(1:5,50000),rep(5:1,50000),rep(c(1L,2L,4L,5L,3L),50000)) 
dat <- cbind(dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat) 
dat <- as.data.frame(dat) 
re.codes <- c("This","That","And","The","Other") 

Now change the class and set the levels of each column directly, by reference :

require(data.table)
system.time(for (i in 1:ncol(dat)) {
  setattr(dat[[i]],"levels",re.codes)
  setattr(dat[[i]],"class","factor")
}
# user  system elapsed 
#   0       0       0 

identical(dat, <result in question>)
# [1] TRUE

Does 0.00 win? As you increase the size of the data, this method stays at 0.00.

Ok, I admit, I changed the input data slightly to be integer for all columns (the question has double input data in a third of the columns). Those double columns have to be converted to integer because factor is only valid for integer vectors. As mentioned in the other answers.

So, strictly with the input data in the question, and including the double to integer conversion :

dat <- cbind(rep(1:5,50000),rep(5:1,50000),rep(c(1,2,4,5,3),50000))             
dat <- cbind(dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat,dat)               
dat <- as.data.frame(dat)               
re.codes <- c("This","That","And","The","Other")           

system.time(for (i in 1:ncol(dat)) {
  if (!is.integer(dat[[i]]))
      set(dat,j=i,value=as.integer(dat[[i]]))
  setattr(dat[[i]],"levels",re.codes)
  setattr(dat[[i]],"class","factor")
})
#  user  system elapsed
#  0.06    0.01    0.08      # on my slow netbook

identical(dat, <result in question>)
# [1] TRUE

Note that set also works on data.frame, too. You don't have to convert to data.table to use it.

These are very small times, clearly. Since it's only a small input dataset :

dim(dat)
# [1] 250000     36 
object.size(dat)
# 68.7 Mb

Scaling up from this should reveal larger differences. But even so I think it should be (just about) measurably fastest. Not a significant difference that anyone minds about, at this size, though.

The setattr function is also in the bit package, btw. So the 0.00 method can be done with either data.table or bit. To do the type conversion by reference (if required) either set or := (both in data.table) is needed, afaik.

share|improve this answer
    
+1 very cool. I guess technically, all that's really happening here is that you're storing a few values of text for each column. Hence the speed. I wonder if this could be done without the use of data.table or bit packages, just by setting attributes. –  Brandon Bertelsen Sep 25 '12 at 15:49
1  
@BrandonBertelsen Exactly. It's just changing the attributes by reference. Afaik, no, not possible without either data.table or bit. The reason, I think, is that it breaks standard R practice. Say you have dat2<-dat beforehand. setattr will change both dat2 and dat. Base R methods all copy at least some of the memory, at least once, and sometimes all of it many times, to uphold copy-on-write. Even when there is only one dat and there is no need to copy it at all. setattr and set, when used on a data.frame, could be considered dangerous by some, for this reason. –  Matt Dowle Sep 25 '12 at 16:10
    
@BrandonBertelsen setattr is nothing other than a wrapper to R's setAttrib function at C level. So you can .Call (or similar) to that, too, directly yourself, but not possible in base R (afaik) is what I meant. Copies were reduced in recent versions of R, but not down to zero. –  Matt Dowle Sep 25 '12 at 16:23

Making factors is expensive; only doing it once is comparable with the commands using structure, and in my opinion, preferable as you don't have to depend on how factors happen to be constructed.

rc <- factor(re.codes, levels=re.codes)
dat5 <- as.data.frame(lapply(dat, function(d) rc[d]))

EDIT 2: Interestingly, this seems to be a case where lapply does speed things up. This for loop is substantially slower.

for(i in seq_along(dat)) {
  dat[[i]] <- rc[dat[[i]]]
}

EDIT 1: You can also speed things up by being more precise with your types. Try any of the solutions (but especially your original one) creating your data as integers, as follows. For details, see a previous answer of mine here.

dat <- cbind(rep(1:5,50000),rep(5:1,50000),rep(c(1L,2L,4L,5L,3L),50000))

This is also a good idea as converting to integers from floating points, as is being done in all of the faster solutions here, can give unexpected behavior, see this question.

share|improve this answer
    
+1 system.time = 0.33. Very simple, very clean. I like it. –  Brandon Bertelsen May 27 '11 at 14:37
    
Type modification in original loop to for(x in 1:ncol(dat)) dat[,x] <- factor(as.integer(dat[,x]), labels=re.codes) speed up execution significantly. –  Marek May 27 '11 at 15:49
    
Nice suggestion, Marek, and good clarification that the speedup comes much more from running factor on an integer rather than from starting with integers. –  Aaron May 27 '11 at 15:57

The help page for class() says that class<- is deprecated and to use as. methods. I haven't quite figured out why the earlier effort was reporting 0 observations when the data was obviously in the object, but this method results in a complete object:

    system.time({ dat2 <- vector(mode="list", length(dat))
      for (i in 1:length(dat) ){ dat2[[i]] <- dat[[i]]
        storage.mode(dat2[[i]]) <- "integer"
               attributes(dat2[[i]]) <- list(class="factor", levels=re.codes)}
  names(dat2) <- names(dat)
  dat2 <- as.data.frame(dat2)})
#--------------------------  
  user  system elapsed 
  0.266   0.290   0.560 
> str(dat2)
'data.frame':   250000 obs. of  36 variables:
 $ V1 : Factor w/ 5 levels "This","That",..: 1 2 3 4 5 1 2 3 4 5 ...
 $ V2 : Factor w/ 5 levels "This","That",..: 5 4 3 2 1 5 4 3 2 1 ...
 $ V3 : Factor w/ 5 levels "This","That",..: 1 2 4 5 3 1 2 4 5 3 ...
 $ V4 : Factor w/ 5 levels "This","That",..: 1 2 3 4 5 1 2 3 4 5 ...
 $ V5 : Factor w/ 5 levels "This","That",..: 5 4 3 2 1 5 4 3 2 1 ...
 $ V6 : Factor w/ 5 levels "This","That",..: 1 2 4 5 3 1 2 4 5 3 ...
 $ V7 : Factor w/ 5 levels "This","That",..: 1 2 3 4 5 1 2 3 4 5 ...
 $ V8 : Factor w/ 5 levels "This","That",..: 5 4 3 2 1 5 4 3 2 1 ...
 snipped

All 36 columns are there.

share|improve this answer
    
I'd love to know why this is so much faster than Charles's solution (lapply + structure), at least on my machine (1.055sec vs 0.34sec). –  joran May 27 '11 at 5:11
1  
This returns an empty data frame for me. It does do it quickly though! –  Brandon Bertelsen May 27 '11 at 5:21
    
@Brandon Please check your results. I just reran it and posted results. –  BondedDust May 27 '11 at 11:50
    
@DWin From your answer: 'data.frame': 0 obs. of 36 variables. It's empty. class(dat2) <- "data.frame" is causing this. With dat2<-as.data.frame(dat2) it works (slower but still faster then Charles` –  Marek May 27 '11 at 12:36
1  
@Dwin, @joran As I see there is no difference in timings when use: system.time(as.data.frame(lapply(dat, structure, class='factor', levels=re.codes))) –  Marek May 27 '11 at 13:31

My computer is obviously much slower, but structure is a pretty fast way to do this:

> system.time({
+ dat1 <- dat
+ for(x in 1:ncol(dat)) {
+   dat1[,x] <- factor(dat1[,x], labels=re.codes)
+   }
+ })
   user  system elapsed 
 11.965   3.172  15.164 
> 
> system.time({
+ m <- as.matrix(dat)
+ dat2 <- data.frame( matrix( re.codes[m], nrow = nrow(m)))
+ })
   user  system elapsed 
  2.100   0.516   2.621 
> 
> system.time(dat3 <- data.frame(lapply(dat, structure, class='factor', levels=re.codes)))
   user  system elapsed 
  0.484   0.332   0.820 

# this isn't because the levels get re-ordered
> all.equal(dat1, dat2)

> all.equal(dat1, dat3)
[1] TRUE
share|improve this answer
    
+1 system.time() = 0.56 seconds, interesting use of structure and lapply. Also saves time converting to and from as.matrix() –  Brandon Bertelsen May 27 '11 at 3:46
    
+1 neat! I did not know about structure() –  Prasad Chalasani May 27 '11 at 10:55
6  
Changing from data.frame to as.data.frame should give you speed-up. –  Marek May 27 '11 at 13:11
    
w/ as.data.frame system.time = 0.25 seconds, great pointer Marek! –  Brandon Bertelsen May 27 '11 at 18:15

Try this:

m <- as.matrix(dat)

dat <- data.frame( matrix( re.codes[m], nrow = nrow(m)))
share|improve this answer
    
+1 system.time() = 1.04 seconds, clever solution using matrix and re.codes[m] –  Brandon Bertelsen May 27 '11 at 2:58

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