I have a data set that looks something like this:

```
id1 id2 size
1 5400 5505 7
2 5033 5458 1
3 5452 2873 24
4 5452 5213 2
5 5452 4242 26
6 4823 4823 4
7 5505 5400 11
```

Where `id1`

and `id2`

are unique nodes in a graph, and `size`

is a value assigned to the **directed** edge connecting them *from* `id1`

*to* `id2`

. This data set is fairly large (a little over 2 million rows). What I would like to do is sum the size column, grouped by **unordered node pairs** of `id1`

and `id2`

. For example, in the first row, we have `id1=5400`

and `id2=5505`

. There exists another row in the data frame where `id1=5505`

and `id2=5400`

. In the grouped data, the sum of the size columns for these two rows would be added to a single row. So in other words I want to summarize the data where I'm grouping on an (unordered) set of (id1,id2). I've found a way to do this using `apply`

with a custom function that checks for the reversed column pair in the full data set, but this works excruciatingly slow. Does anyone know of a way to do this another way, perhaps with `plyr`

or with something in the base packages that would be more efficient?