# Create variables for each group specified in a data.table

I would like to use data.table to compute variables for each group specified. For the sake of simplicity, let's say the data is split according to groups in x1:

``````x1  x2
a   3
a   4
b   1
b   5
``````

And I want to create a variable for the mean of each group but I dont know how to index each group:

``````DT[,list(
mean_a=mean(x2) #for all rows containing "a"
mean_b=mean(x2) #for all rows containing "b"
by="x1")]
``````

How can I rewrite the lines with comments? (i.e. find the mean for all rows with "a", same for "b")

I need the output as a data.table in separate columns, as it will be processed further:

``````mean_a  mean_b
3.5     3
``````

EDIT: after playing around with it, here is the solution I wanted.

``````> DT2=DT[,list(
+     mean_a=mean(x[grep("a",x1),x2]),
+     mean_b=mean(x[grep("b",x1),x2])),
+     by=NULL]
>
> DT2
mean_a mean_b
1:    3.5      3
``````

It's not as efficient as Frank's but it's what I asked for originally, i.e. to rewrite the lines with comments.

-
`dt[, mean(x2), by = x1]`??? Can you update your question to clarify what you're actually trying to ask, and, if necessary, also show a sample of the output you expect. – Ananda Mahto May 31 '13 at 9:22
Ananda's comment works but shows the result in rows and not in columns like in your example. Do you need it in columns? – Dean MacGregor May 31 '13 at 11:03
In case that's the case, you can use `dt[,mean(x2),by=x1][,{names(V1) <- paste("mean_",x1,sep=""); V1}]`, just adding an extra step onto Ananda's answer/comment. – Frank May 31 '13 at 14:26
Yes, the goal is to get the output in a data.table with multiple columns. Frank's solution only provides the names of the variables. Furthermore, it would be good to have the flexibility of naming each variable separately as I did (has to do with the specifics of my data). – AlexR May 31 '13 at 15:35
Okay, I've offered an answer. By the way, neither your example input nor the output actually look like a data.table (you know, with the `1:` at the beginning of the first line and so on). – Frank May 31 '13 at 15:57

I don't think it's worth your while to set names separately for each value of `x1`, just choose an appropriate prefix:

``````dt[,mean(x2),by=x1][,{
names(V1) <- paste("mean_",x1,sep="")
do.call(data.table,as.list(V1))
}]
``````

However, if you really want custom names, you can put them into a vector beforehand:

``````mynames <- c(
a = "mean_a",
b = "mean_b"
)

dt[,mean(x2),by=x1][,{
names(V1) <- mynames[x1]
do.call(data.table,as.list(V1))
}]
``````

The result is

``````   mean_a mean_b
1:    3.5      3
``````

EDIT: As @eddi pointed out, this is a better way of doing the same thing:

``````setnames(dt[,mean(x2),keyby=x1][, as.list(V1)], sort(mynames))
``````

If you assign this somewhere, you will see that it is the desired `data.table`. You can also get it to print by appending `[]` at the end of the call or by putting the whole thing in parentheses.

-
this is better imo: `setnames(dt[,mean(x2),by=x1][, as.list(V1)], mynames)` – eddi May 31 '13 at 15:58
Ah, I didn't realize the value of `setnames` is a `data.table`. Your answer is much cleaner. I'll edit it in at the end. – Frank May 31 '13 at 16:00
@eddi Does that depend on `mynames` having the same order as the `x1` column generated by the `by=x1`? I guess `by=x1` is just ordered by first appearance...? – Frank May 31 '13 at 16:07
if you use `keyby` instead of `by`, the result you get will be sorted (as it will key and then do a `by`), otherwise it will be as is – eddi May 31 '13 at 16:29
@eddi: Okay, I've edited that in. – Frank May 31 '13 at 16:33

I'm fairly certain there's a more elegant solution, but this works:

``````x1 <- c('a','a','b','b')
x2 <- c(3,4,1,5)

df=data.frame(as.factor(x1),x2)
groupmeans = sapply(unique(x1), function(x) {mean(df[x1==x,]\$x2)})

#   a    b
# 3.5  3.0

groupmeans_table = data.table(t(groupmeans))

#       a  b
# 1:  3.5  3
``````
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