How to partition a vector into groups of neighbors in R?

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I have a vector, such as `c(1,3,4,5,9,10,17,29,30)` and I would like to group together the elements that form a series in a ragged vector resulting in:

L1: 1
L2: 3,4,5
L3: 9,10
L4: 17
L5: 29,30

Naive code (of an ex-C programmer):

``````partition.neighbors <- function(v)
{
result <<- list() #jagged array
currentList <<- v[1] #current series

for(i in 2:length(v))
{
if(v[i] - v [i-1] == 1)
{
currentList <<- c(currentList, v[i])
}
else
{
result <<- c(result, list(currentList))
currentList <<- v[i] #next series
}
}

return(result)
}
``````

Now I understand that

a) R is not C (despite the curly brackets)
b) global variables are pure evil
c) that is a horribly inefficient way of achieving the result

, so any better solutions are welcome.

-

Making heavy use of some R idioms:

``````> split(v,cumsum(c(1,diff(v)!=1)))
\$`1`
[1] 1

\$`2`
[1] 3 4 5

\$`3`
[1]  9 10

\$`4`
[1] 17

\$`5`
[1] 29 30
``````
-

daroczig writes "you could write a lot neater code based on `diff`"...

Here's one way:

``````split(v,cumsum(diff(c(-Inf,v))!=1))
``````

Tommy discovered this could be faster by being careful with types; the reason it got faster is that `split` is faster on integers, and is actually faster still on factors.

Here's Joshua's solution; the result from the `cumsum` is a numeric because it's being `c`'d with `1`, so it's the slowest.

``````> system.time({
+ a <- cumsum(c(1,diff(v)!=1))
+ split(v,a)
+ })
user  system elapsed
1.839   0.004   1.848
``````

Just `c`ing with `1L` so the result is an integer speeds it up considerably.

``````> system.time({
+ a <- cumsum(c(1L,diff(v)!=1))
+ split(v,a)
+ })
user  system elapsed
0.744   0.000   0.746
``````

This is Tommy's solution, for reference; it's also splitting on an integer.

``````> system.time({
+ a <- cumsum(c(TRUE,diff(v)!=1L))
+ split(v,a)
+ })
user  system elapsed
0.742   0.000   0.746
``````

Here's my original solution; it also is splitting on an integer.

``````> system.time({
+ a <- cumsum(diff(c(-Inf,v))!=1)
+ split(v,a)
+ })
user  system elapsed
0.750   0.000   0.754
``````

Here's Joshua's, with the result converted to an integer before the `split`.

``````> system.time({
+ a <- cumsum(c(1,diff(v)!=1))
+ a <- as.integer(a)
+ split(v,a)
+ })
user  system elapsed
0.736   0.002   0.740
``````

All the versions that `split` on an integer vector are about the same; it could be even faster if that integer vector was already a factor, as the conversion from integer to factor actually takes about half the time. Here I make it into a factor directly; this is not recommended in general because it depends on the structure of the factor class. It'ss done here for comparison purposes only.

``````> system.time({
+ a <- cumsum(c(1L,diff(v)!=1))
+ a <- structure(a, class="factor", levels=1L:a[length(a)])
+ split(v,a)
+ })
user  system elapsed
0.356   0.000   0.357
``````
-
 yes, this is a lot neater way! :) I did not know about `split`, thank you for pointing my attention to this useful function. – daroczig Mar 7 '11 at 16:46 I should note that one should be careful when using `as.integer` as it returns the truncated value, which may not be what you want when the numeric was created with floating point arithmetic, for example, `as.integer(0.3*3+0.1)` returns `0`. – Aaron May 13 '11 at 16:28

You can create a `data.frame` and assign the elements to groups using `diff`, `ifelse` and `cumsum`, then aggregate using `tapply`:

``````v.df <- data.frame(v=v)
v.df\$group <- cumsum(ifelse(c(1,diff(v)-1),1,0))
tapply(v.df\$v,v.df\$group,function(x) x)

\$`1`
[1] 1

\$`2`
[1] 3 4 5

\$`3`
[1]  9 10

\$`4`
[1] 17

\$`5`
[1] 29 30
``````
-

You could define the cut-points easily:

``````which(diff(v) != 1)
``````

Based on that try:

``````v <- c(1,3,4,5,9,10,17,29,30)
cutpoints <- c(0, which(diff(v) != 1), length(v))
ragged.vector <- vector("list", length(cutpoints)-1)
for (i in 2:length(cutpoints)) ragged.vector[[i-1]] <- v[(cutpoints[i-1]+1):cutpoints[i]]
``````

Which results in:

``````> ragged.vector
[[1]]
[1] 1

[[2]]
[1] 3 4 5

[[3]]
[1]  9 10

[[4]]
[1] 17

[[5]]
[1] 29 30
``````

This algorithm is not a nice one but you could write a lot neater code based on `diff` :) Good luck!

-

Joshua and Aaron were spot on. However, their code can still be made more than twice as fast by careful use of the correct types, integers and logicals:

split(v, cumsum(c(TRUE, diff(v)!=1L)))

``````> v=rep(c(1:5,19), len=1e6) # Huge vector...
> system.time( split(v,cumsum(c(1,diff(v)!=1))) ) # Joshua's code
user  system elapsed
2.64    0.00    2.64
> system.time( split(v, cumsum(c(TRUE, diff(v)!=1L))) ) # Modified code
user  system elapsed
1.09    0.00    1.12
``````
-
 Wow! I wouldn't have guessed it would make such a difference. – Aaron May 5 '11 at 4:37 Tommy, I figured out why it was faster and edited your post to add it. I'm not sure if that's the proper etiquette; hopefully you don't mind. (Also, it has to be peer-reviewed, so if you don't see it right away, that's why.) – Aaron May 5 '11 at 21:04 Apparently my edit was rejected; I've added the timings to my answer. – Aaron May 13 '11 at 16:16