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I have a data table with a number of columns containing values. I have another column which defines which one of those columns whose value I need to select. I am having trouble finding a way to do this.

Here is a simple example.

> d <- data.table(
     value.1 = c("one", "uno", "1"),
     value.2 = c("two", "dos", "2"),
     name.of.col = c("value.1","value.2","value.1"))

> d
   value.1 value.2 name.of.col
1:     one     two     value.1
2:     uno     dos     value.2
3:       1       2     value.1

I would like to add a column 'value.of.col' which contains the value of the column specified by 'name.of.col'.

> d
   value.1 value.2 name.of.col  value.of.col
1:     one     two     value.1  one
2:     uno     dos     value.2  dos
3:       1       2     value.1  1
share|improve this question
    
Thanks for the replies so far. The answers definitely work, but are very memory intensive. Can anyone think of a good way to do this on a rather large data table? The table I am working with is 700k rows, 132 columns and about 700MB. –  Nick Allen Jan 30 at 20:33
    
does the second solution faster? –  agstudy Jan 31 at 1:22

3 Answers 3

up vote 3 down vote accepted

Another option:

d[,value.of.col:=diag(as.matrix(d[,d[,name.of.col],with=F]))]
> d
   value.1 value.2 name.of.col value.of.col
1:     one     two     value.1          one
2:     uno     dos     value.2          dos
3:       1       2     value.1            1

EDIT add a faster solution:

d[,value.of.col:=
      melt(d,id.vars='name.of.col')[name.of.col==variable,value]]
share|improve this answer
1  
+1 interesting use of column recycling and diag; you have a remarkable way of thinking about data; it would have never occurred to me to do it this way. –  BrodieG Jan 30 at 20:15
    
@BrodieG thanks. I add a new solution since the Op find the 2 solutions a little bit slow. –  agstudy Jan 30 at 20:52

You can use matrix indexing to pull values from the first and second columns:

mx.idx <- d[, cbind(1:nrow(d), match(name.of.col, names(d)))]
d[, 
  value.of.col:=
    as.matrix(d[, 1:2, with=F])[mx.idx]
 ]
d
#    value.1 value.2 name.of.col value.of.col
# 1:     one     two     value.1          one
# 2:     uno     dos     value.2          dos
# 3:       1       2     value.1            1
share|improve this answer

The following should be memory efficient and a little easier to read/follow.

for (i in unique(d[["name.of.col"]]))
    d[ name.of.col==i, value.of.col:=get(i) ]

d
   value.1 value.2 name.of.col value.of.col
1:     one     two     value.1          one
2:     uno     dos     value.2          dos
3:       1       2     value.1            1
share|improve this answer

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