I've got a list of lists, each of which has identical structure. One of the elements in each sub-list is a key value. I'd like to add to each sub-list a new element, which is the row of a data frame containing the matching key value. I think this is basically like 'merge', except with one list.

So my list and data frame look like this

```
#Define the list of lists and the data frame
l <- list()
l[[1]] <- list(i=1, data=1:5)
l[[2]] <- list(i=2, data=runif(5))
l[[3]] <- list(i=1, data=rnorm(5))
d <- data.frame(i=c(1, 2), val1=c(TRUE, FALSE), val2 = c("a", "b"))
```

And I'd like to end up with

```
> l_mod[[1]]
$i
[1] 1
$data
[1] 1 2 3 4 5
$newData
val1 val2
TRUE a
```

And so on for each element of `l_mod`

, with `$newData`

being the appropriate row of `d`

. Note that we can assume that each row of `d`

has a unique value for `d$i`

.

My current approach is to write a matching function and call it from `lapply`

```
matchingRow <- function(indexValue, df) {
return(df[df$i==indexValue, -1])
}
l_mod <- lapply(l, function(x) c(x, newData=matchingRow(x$i, d)))
```

This basically works, but seems overcomplicated. (Also it splits each column of `d`

into a separate element of the new list; I'd rather it place the whole 1-row data frame as a single list element).

Is there a simpler way of doing this?

`newData=matchingRow(x$i, d)`

in a`list()`

to prevent the columns of`d`

being returned as separate list elements. Why define matchingRow though? You can do:`lapply(l, function(x) c(x, list(newData=d[d$i==x$i, -1])))`

– jbaums Nov 18 '12 at 0:01