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my question is similar to two other questions on SO (one and two) but I couldn't apply those on my problem.

I have a data.table and I want to calculate mean values of several columns groupped by a value of anothe colum.

Here is an example:

library(data.table)
txt <- "condition,var1,var2,var3
one,100,1000,10000
one,101,1001,10001
one,102,1002,10002
two,103,1003,10003
two,104,1004,10004
two,105,1005,10005
three,106,1006,10006
three,107,1007,10007
three,108,1008,10008
four,109,1009,10009
four,110,1010,10010"
dtb <- data.table(read.delim(textConnection(txt), header=T, sep=','))

print(dtb)

Here is the output:

   condition var1 var2  var3
1:       one  100 1000 10000
2:       one  101 1001 10001
3:       one  102 1002 10002
4:       two  103 1003 10003
5:       two  104 1004 10004
6:       two  105 1005 10005
7:     three  106 1006 10006
8:     three  107 1007 10007
9:     three  108 1008 10008
10:      four  109 1009 10009
11:      four  110 1010 10010

I want mean values of var1, var2 and var3. Each one of them is pretty easy to obtain by dtb[, mean(var1), by=condition], but I would like to have something like this:

   condition  var1   var2    var3
1:       one 101.0 1001.0 10001.0
2:       two 104.0 1004.0 10004.0
3:     three 107.0 1007.0 10007.0
4:      four 109.5 1009.5 10009.5

and of course, I need the column names to be dynamnic, i.e dtb[, list(mean(var1), mean(var2), mean(var3)), by=condition] is undesirable.

Thank you

share|improve this question
up vote 30 down vote accepted

you should use .SDcols (especially if you've too many columns and you require a particular operation to be performed only on a subset of the columns (apart from the grouping variable columns).

dtb[, lapply(.SD, mean), by=condition, .SDcols=2:4]

#    condition  var1   var2    var3
# 1:       one 101.0 1001.0 10001.0
# 2:       two 104.0 1004.0 10004.0
# 3:     three 107.0 1007.0 10007.0
# 4:      four 109.5 1009.5 10009.5

You could also get all the column names you'd want to take mean of first in a variable and then pass it to .SDcols like this:

keys <- setdiff(names(dtb), "condition")
# keys = var1, var2, var3
dtb[, lapply(.SD, mean), by=condition, .SDcols=keys]

Edit: As Matthew Dowle rightly pointed out, since you require mean to be computed on every other column after grouping by condition, you could just do:

dtb[, lapply(.SD, mean), by=condition]

David's edit: (which got rejected): Read more about .SD from this post. I find this is relevant here. Thanks @David.

Edit 2: Suppose you have a data.table with 1000 rows and 301 columns (one column for grouping and 300 numeric columns):

require(data.table)
set.seed(45)
dt <- data.table(grp = sample(letters[1:15], 1000, replace=T))
m  <- matrix(rnorm(300*1000), ncol=300)
dt <- cbind(dt, m)
setkey(dt, "grp")

and you wanted to find the mean of the columns, say, 251:300 alone,

  • you can compute the mean of all the columns and then subset these columns (which is not very efficient as you'll compute on the whole data).

    dt.out <- dt[, lapply(.SD, mean), by=grp]
    dim(dt.out) # 15 * 301, not efficient.
    
  • you can filter the data.table first to just these columns and then compute the mean (which is again not necessarily the best solution as you have to create an extra subset'd data.table every time you want operations on certain columns.

    dt.sub <- dt[, c(1, 251:300), with=FALSE]
    setkey(dt.sub, "grp")
    dt.out <- dt.sub[, lapply(.SD, mean), by=grp]
    
  • you can specify each of the columns one by one as you'd normally do (but this is desirable for smaller data.tables)

    # if you just need one or few columns
    dt.out <- dt[, list(m.v251 = mean(V251)), by = grp]
    

So what's the best solution? The answer is .SDcols.

As the documentation states, for a data.table x, .SDcols specifies the columns that are included in .SD.

This basically implicitly filters the columns that will be passed to .SD instead of creating a subset (as we did before), only it is VERY efficient and FAST!

How can we do this?

  • By specifiying either the column numbers:

    dt.out <- dt[, lapply(.SD, mean), by=grp, .SDcols = 251:300]
    dim(dt.out) # 15 * 51 (what we expect)
    
  • Or alternatively by specifying the column id:

    ids <- paste0("V", 251:300) # get column ids
    dt.out <- dt[, lapply(.SD, mean), by=grp, .SDcols = ids]
    dim(dt.out) # 15 * 51 (what we expect)
    

It accepts both column names and numbers as arguments. In both these cases, .SD will be provided only with these columns we've specified.

Hope this helps.

share|improve this answer
1  
+1 Is the .SDcols=2:4 required in this case? .SD excludes grouping columns already. You only need .SDcols if a subset of the non grouping columns are needed. – Matt Dowle Feb 18 '13 at 13:24
    
@MatthewDowle, thank you. I've edited to reflect your comment. – Arun Feb 18 '13 at 13:32
    
@Arun can you please explain the .SDcols syntax, I can't find any relevant documentaiton – David D Feb 18 '13 at 18:48
    
@DavidD, hope the edit 2 helps. To others, please feel free to edit the edits if something is not just about right or could be improved for better understanding. – Arun Feb 18 '13 at 19:47
1  
+1 Amazing answer. Wasn't aware of the .SDcols option myself, this is definitely helpful! – Christoph_J Feb 18 '13 at 19:50

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