# How to identify multiple identical pairs in two vectors

In my graph-package (as in graph theory, nodes connected by edges) I have a vector indicating for each edge the node of origin `from`, a vector indicating for each edge the node of destination `to` and a vector indicating the curve of each edge `curve`.

By default I want edges to have a curve of 0 if there is only one edge between two nodes and curve of 0.2 if there are two edges between two nodes. The code that I use now is a for-loop, and it is kinda slow:

``````curve <- rep(0,5)
from<-c(1,2,3,3,2)
to<-c(2,3,4,2,1)

for (i in 1:length(from))
{
if (any(from==to[i] & to==from[i]))
{
curve[i]=0.2

}
}
``````

So basically I look for each edge (one index in `from` and one in `to`) if there is any other pair in `from` and `to` that use the same nodes (numbers).

What I am looking for are two things:

1. A way to identify if there is any pair of nodes that have two edges between them (so I can omit the loop if not)
2. A way to speed up this loop

## #

EDIT:

To make this abit clearer, another example:

``````from <- c(4L, 6L, 7L, 8L, 1L, 9L, 5L, 1L, 2L, 1L, 10L, 2L, 6L, 7L, 10L, 4L, 9L)
to <- c(1L, 1L, 1L, 2L, 3L, 3L, 4L, 5L, 6L, 7L, 7L, 8L, 8L, 8L, 8L, 10L, 10L)
cbind(from,to)
from to
[1,]    4  1
[2,]    6  1
[3,]    7  1
[4,]    8  2
[5,]    1  3
[6,]    9  3
[7,]    5  4
[8,]    1  5
[9,]    2  6
[10,]    1  7
[11,]   10  7
[12,]    2  8
[13,]    6  8
[14,]    7  8
[15,]   10  8
[16,]    4 10
[17,]    9 10
``````

In these two vectors, pair 3 is identical to pair 10 (both 1 and 7 in different orders) and pairs 4 and 12 are identical (both 2 and 8). So I would want `curve` to become:

`````` [1,]  0.0
[2,]  0.0
[3,]  0.2
[4,]  0.2
[5,]  0.0
[6,]  0.0
[7,]  0.0
[8,]  0.0
[9,]  0.0
[10,]  0.2
[11,]  0.0
[12,]  0.2
[13,]  0.0
[14,]  0.0
[15,]  0.0
[16,]  0.0
[17,]  0.0
``````

(as vector, I transposed twice to get row numbers).

## Solution

``````from <- c(4L, 6L, 7L, 8L, 1L, 9L, 5L, 1L, 2L, 1L, 10L, 2L, 6L, 7L, 10L, 4L, 9L)
to <- c(1L, 1L, 1L, 2L, 3L, 3L, 4L, 5L, 6L, 7L, 7L, 8L, 8L, 8L, 8L, 10L, 10L)

srt <- apply(cbind(from,to),1,sort)
dub <- duplicated(t(srt))|duplicated(t(srt),fromLast=T)
curve <- ifelse(dub,0.2,0)
``````

## Benchmarking solutions

Here is some benchmarking of different solutions

``````> # for-loop
> system.time(
+ {
+ curve <- rep(0,5)
+     for (i in 1:length(from))
+     {
+         if (any(from==to[i] & to==from[i]))
+         {
+             curve[i]=0.2
+
+         }
+     }
+ })
user  system elapsed
171.49    0.05  171.98

from <- sample(1:1000,100000,T)
> to <- sample(1:1000,100000,T)
>
> # My solution:
> system.time(
+ {
+ srt <- apply(cbind(from,to),1,sort)
+ dub <- duplicated(t(srt))|duplicated(t(srt),fromLast=T)
+ curve <- ifelse(dub,0.2,0)
+ })
user  system elapsed
16.92    0.00   16.94
>
>
> # Marek 1:
> system.time(
+ {
+ srt <- cbind(pmin(from,to), pmax(from,to) )
+ dub <- duplicated(srt)|duplicated(srt,fromLast=T)
+ curve <- ifelse(dub,0.2,0)
+ })
user  system elapsed
2.43    0.00    2.43
>
> # Marek 2:
> system.time(
+ {
+ srt <- cbind(ifelse(from>to,to,from),ifelse(from>to,from,to))
+ dub <- duplicated(srt)|duplicated(srt,fromLast=T)
+ curve <- ifelse(dub,0.2,0)
+ })
user  system elapsed
2.67    0.00    2.70
>
> # Maiasaura:
> library(plyr)
>
> system.time(
+ {
+ data=data.frame(cbind(id=1:length(from),from,to))
+ data=ddply(data, .(id), transform, f1=min(from,to),f2=max(from,to))
+ curved=data.frame(data[which(duplicated(data[,4:5])==TRUE),],value=0.2)
+ result=join(data[,4:5],curved[,4:6],by=intersect(names(data)[4:5],names(curved)[4:6]))
+ result\$value[which(is.na(result\$value))]=0
+ result=data.frame(from,to,curve=result\$value)
+ })
user  system elapsed
103.43    0.11  103.95

> # Marek 1 + Joshua
> > system.time(
> + {
> + srt <- cbind(pmin(from,to), pmax(from,to) )
> + curve <- ifelse(ave(srt[,1], srt[,1], srt[,2], FUN=length) > 1,
> 0.2, 0)
> + })    user  system elapsed
>    7.26    0.00    7.25
``````

which gives the fastest solution being:

``````srt <- cbind(pmin(from,to), pmax(from,to) )
dub <- duplicated(srt)|duplicated(srt,fromLast=T)
curve <- ifelse(dub,0.2,0)
``````
• This `apply` part is pretty slow, try `cbind(pmin(from,to), pmax(from,to) )` instead (it's already transponded). Or `cbind(ifelse(from>to,to,from),ifelse(from>to,from,to))`. – Marek Feb 16 '11 at 11:28

Here is a solution using `plyr`

I first combine `from` and `to` into a `data.frame`

``````library(plyr)
data=data.frame(cbind(id=1:length(from),from,to))
``````

data

``````  id from to
1   1    4  1
2   2    6  1
3   3    7  1
4   4    8  2
5   5    1  3
6   6    9  3
7   7    5  4
8   8    1  5
9   9    2  6
10 10    1  7
11 11   10  7
12 12    2  8
13 13    6  8
14 14    7  8
15 15   10  8
16 16    4 10
17 17    9 10
``````

then the following should produce the result you seek:

``````data=ddply(data, .(id), transform, f1=min(from,to),f2=max(from,to))
curved=data.frame(data[which(duplicated(data[,4:5])==TRUE),],value=0.2)
result=join(data[,4:5],curved[,4:6],by=intersect(names(data)[4:5],names(curved)[4:6]))
result\$value[which(is.na(result\$value))]=0
result=data.frame(from,to,curve=result\$value)
``````

should produce:

``````   from to curve
1     4  1   0.0
2     6  1   0.0
3     7  1   0.2
4     8  2   0.2
5     1  3   0.0
6     9  3   0.0
7     5  4   0.0
8     1  5   0.0
9     2  6   0.0
10    1  7   0.2
11   10  7   0.0
12    2  8   0.2
13    6  8   0.0
14    7  8   0.0
15   10  8   0.0
16    4 10   0.0
17    9 10   0.0
``````

You can turn the above code into a function

``````calculate_curve <- function (from,to)
{
data=data.frame(cbind(id=1:length(from),from,to))
data=ddply(data, .(id), transform, f1=min(from,to),f2=max(from,to))
curved=data.frame(data[which(duplicated(data[,4:5])==TRUE),],value=0.2)
result=join(data[,4:5],curved[,4:6],by=intersect(names(data)[4:5],names(curved)[4:6]))
result\$value[which(is.na(result\$value))]=0
return (result\$value)
}
``````

and just do

``````curve=calculate_curve(from,to)
``````
• Awesome, thanks. The `duplicated` function is the one I needed. I made a but more parsimonious version (see question) but Ill accept this as anwser – Sacha Epskamp Feb 16 '11 at 1:33

How about using `outer`?

``````from <- c(1,2,3,3,2)
to <- c(2,3,4,2,1)
out <- outer(from, to, `==`)
ifelse(rowSums(out) > 0 & colSums(out) > 0, 0.2, 0)
``````
• Thanks. The only problem with this is that it assigns a matrix. If I do this with e.g. 100k edges my loop works (5 mins or so though), but the 1e+10 element matrix is to big to be stored (out of memory, even with my 12gig RAM) – Sacha Epskamp Feb 15 '11 at 22:11

Changing

``````any(from==to[i] & to==from[i])
``````

to

``````any(from==to[i]) && any(to==from[i])
``````

can save quite a bit of time. In your example, if `from` and `to` are replicated 5000 times, computation time is reduced by 1/3.

When using `&&`, if the first condition is `FALSE` R doesn't bother to evaluate the second expression.

• Thanks, but this only says if the indexed value `to[i]` occurs somewhere in `from` and the indexed value `from[i]` occurs in `to`. This will almost always be the case, what I am interested in if the pair `c(from[i],to[i])` occurs another time, possibly in revered order. – Sacha Epskamp Feb 15 '11 at 23:30

If I understand correctly, you could use `%in%`:

``````curve[ to %in% from & from %in% to ] <- 0.2
``````

Another solution based on your update:

``````srt <- t(apply(cbind(from,to),1,sort))
curve <- ifelse(ave(srt[,1], srt[,1], srt[,2], FUN=length) > 1, 0.2, 0)
``````
• Thanks, but that is not what I meant. I have edited the OP so it is hopefully a little bit clearer. – Sacha Epskamp Feb 15 '11 at 23:23
• @Sacha: I've updated my answer with another alternative. Your solution would be a bit faster if you only use `t` once (when creating `srt`) rather than once in each `duplicated` call. – Joshua Ulrich Feb 16 '11 at 4:11