# R change order of column values in a data.table according to a permutation

I have a data.table with a class column and a number of value columns, e.g.

``````     class  v1  v2  v3
1:       1  10   3   8
2:       2   2  24   7
3:       1  70   3   9
``````

Now, for a subset of data.table (say class=1), I need to change the order of values in each row according to a permutation that I have. For instance, if the permutation is

``````3   1   2
``````

The result should look like

``````     class  v1  v2  v3
1:       1   8  10   3
2:       2   2  24   7
3:       1   9  70   3
``````

What's the best way to achieve this using data.table?

I can alternatively convert my data to matrix, if that's more efficient. Thanks!

-
I believe there is a typo. In the penultimate sentence, you mean `data.table` and not `data.frame`, right? – Maiasaura Oct 29 '12 at 22:15
Corrected! thanks – amir Oct 29 '12 at 22:24

Something like this should work

`````` DT <- data.table(class = sample(1:3, 10, TRUE), v1 =sample(10), v2 = sample(10), v3 = sample(10))
DT
class v1 v2 v3
1:     1  4  6  6
2:     1  7  1  5
3:     1  5  5 10
4:     1  3  8  7
5:     3  8  4  3
6:     3  9  7  9
7:     2  1  3  8
8:     2 10 10  2
9:     1  2  2  4
10:     2  6  9  1

# the neworder column contains the new permutations
swapcols <- data.table(class = 1:3, neworder = list(c(1,2,3), c(3,1,2),c(1,3,2)))

setkey(DT, class)
setkey(swapcols, class)

DT[swapcols, setNames(list(v1,v2,v3)[unlist(neworder)], c('v1','v2','v3'))]

class v1 v2 v3
1:     1  4  6  6
2:     1  7  1  5
3:     1  5  5 10
4:     1  3  8  7
5:     1  2  2  4
6:     2  8  1  3
7:     2  2 10 10
8:     2  1  6  9
9:     3  8  3  4
10:     3  9  9  7
``````

It would probably be even more efficient to do something like

``````  DT[swapcols, setcolorder(.SD, unlist(neworder))]
``````

or

``````  new <- DT[swapcols, list(v1,v2,v3)[unlist(neworder)]]
setnames(new, names(new), c('class', c('v1','v2','v3'))
``````

You could also use `:=`. something like

`````` DT[J(1), `:=`(v1= v2,v2=v3,v3=v1)]
``````

You could try some way of automating this within a function, but it would be a mess of eval / parse and do.call

From Matthew (tested in v1.8.3) :

``````DT = data.table(class=c(1,2,1),v1=c(10,2,70),v2=c(3,24,3),v3=c(8,7,9))
DT
class v1 v2 v3
1:     1 10  3  8
2:     2  2 24  7
3:     1 70  3  9

perm = c(3,1,2)
DT[class==1,names(DT)[-1]:=.SD[,perm+1,with=FALSE]]
DT
class v1 v2 v3
1:     1  8 10  3
2:     2  2 24  7
3:     1  9 70  3
``````
-
The last piece does the job perfectly. Thanks! – amir Oct 30 '12 at 4:07

I'm assuming the result was not meant to contain the `class 2` row.

A solution that's fairly simple:

``````df.new <- subset(df, class=1)
df.new <- df.new[,c(1,4,2,3)]
``````

Or you can do it all at once:

``````df.new <- df[df\$class==2,c("class","v3","v1","v2")]
``````
-
I actually prefer to edit in place. The table has 10^5 records, and I don't want to copy it every time. – amir Oct 29 '12 at 22:27
Then you can just use `df <- ...`. It will take considerably less than a tenth of a second. – Señor O Oct 29 '12 at 22:39
I assume it copies to a new data frame every time you create a subset/projection and assign it back to itself. I'm trying to get it done using data.table to avoid such inefficiencies in my code – amir Oct 29 '12 at 22:47