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As per Row wise matrix operations in R I would like to apply a row-wise function on a data.table I have. I wish to calculate, per row, the mean of a number of columns in that row. My current attempt is:

columns <- c(1,5,10,15,20) # Actually obtained via grep
my.data.table[,"average" := mean(columns),with=FALSE] # Or...
my.data.table[,average := mean(columns)]

This, unfortunately, simply returns the mean of the 'columns' vector rather than mean of the columns to which they refer. Is there a way to refer to these columns by number?

Here's the average I'm trying to achieve:

key  a b c average
A    5 5 5 5
B    1 2 3 2
C    2 4 9 5
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No problem, I appreciate the effort! Let's see if someone else can find a solution. –  Ina May 25 '12 at 14:17

3 Answers 3

up vote 3 down vote accepted

Here are two possible solutions. They are basically both from the link that you've already provided, so maybe I missed something with this question. Here we go:

Solution 1 (using rowMeans):

N <- 1000000
my.data.table <- data.table(ID = 1:N,
                            Year1 = rnorm(N),
                            Year2 = rnorm(N),
                            Year3 = rnorm(N),
                            Year4 = rnorm(N))

x <- c(2, 3, 4, 5)
system.time(x1 <- rowMeans(my.data.table[, x, with=FALSE]))
   user  system elapsed 
   0.08    0.00    0.08

Solution 2: Get it into long format first. I thought this was faster, mainly because of Matthew's comment in the other question that says that data.table is meant for the DT[,mad(variable),by=group] syntax. I think I'm missing something, but don't see what:

DT <- as.data.table(melt(as.data.frame(my.data.table), id.var="ID"))
setkey(DT, ID)
system.time(x2 <- DT[, mean(value), by="ID"][[2]])
   user  system elapsed 
  11.28    0.00   11.33 
all.equal(x1, x2)
[1] TRUE
share|improve this answer
+1 I can't beat 0.08. In this case there isn't any grouping. Grouping where every row is a group isn't grouping really. I agreed rowMeans was best (afaik) in the comments in that other question, and also mentioned "bare-bones" .colSums(),.rowSums(),.colMeans() and .rowMeans() where ultimate speed is required, added in R 2.15.0. –  Matt Dowle May 25 '12 at 15:12
OK, good to know I'm not missing anything here. Thanks for the clarification. –  Christoph_J May 25 '12 at 15:16
@MatthewDowle and Christoph_J -- It looks like I found something that's 3-5 times faster. Will be interested if either of you have insight about why it is so much quicker. –  Josh O'Brien May 25 '12 at 16:22

Another alternative is to construct the call you'd really like to carry out, and then eval() it within DT[]. This is the strategy described in sections 1.5 and 1.6 of the data.table FAQ (viewed by typing vignette("datatable-faq")).

This approach runs 3-5 times faster than does that involving rowMeans(). (The disparity is due to rowMeans()' initial time-consuming conversion of data.frames to matrices, as Matthew Dowle points out in comments below.)

## Prepare data
N <- 1000000
DT <- data.table(ID = 1:N,
                 Year1 = rnorm(N),
                 Year2 = rnorm(N),
                 Year3 = rnorm(N),
                 Year4 = rnorm(N))    
x <- c(2, 3, 4, 5)

## Construct the desired expression:   (Year1 + Year2 + Year3 + Year4)/4
addCols <- paste(names(DT)[x], collapse = " + ")
e <- paste("(", addCols, ")/", length(x), sep="")
e <- parse(text=e)[[1]]

## Compare timings
system.time(x2 <- DT[,eval(e)])
#    user  system elapsed 
#    0.11    0.00    0.11 
system.time(x1 <- rowMeans(DT[, x, with=FALSE]))
#    user  system elapsed 
#    0.53    0.14    0.77 

## Check results
# all.equal(x1,x2)
# [1] TRUE
share|improve this answer
+10 Nice! See first line of rowMeans: if (is.data.frame(x)) x=as.matrix(x). So that's copying into the matrix structure first. That tallies with there being a difference between user and elapsed for rowMeans, which you avoid with the direct eval. Mult N by 10 and then 10 again and difference should expand. –  Matt Dowle May 25 '12 at 16:38
@MatthewDowle - Yep, that's it. Thanks for tracking that down! –  Josh O'Brien May 25 '12 at 16:48
NP. Could you review my answer to the very top voted data.frame question, and give it a start off 0 if it's ok? –  Matt Dowle May 25 '12 at 16:54

ok another go...

would this be ok

newxy<-rowMeans(xy[, id, with=FALSE])
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That syntax wouldn't work with data.table and colMeans isn't really applicable here. –  Ina May 25 '12 at 14:07
beaten by time....alas –  user1317221_G May 25 '12 at 14:48
Only trouble with editing is that the comments now don't match up. So just to clarify, rowMeans does work fine with data.table, Ina's comment was about the original answer which did something else. –  Matt Dowle May 25 '12 at 15:01

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