# Group integer vector into consecutive runs

I have two vectors of integer. I would like to identify the intervals of consecutive integer sequences presented in the second vector conditioned by the first vector (this vector can be seen as a factor, by which the second vector can be classified into several groups).

Here I present a dummy for my problem.

The data, in one group (defined by the first vector) of the second vector, the integers monotonically increase.

``````my.data <- data.frame(
V1=c(rep(1, 10), rep(2, 9), rep(3,11)),
V2=c(seq(2,5), seq(7,11), 13, seq(4, 9), seq(11,13), seq(1, 6), seq(101, 105))
)
``````

What I want:

• output the begin and end of the interval
• here, group in the first column, the beginning integer in the second, the end integer in the third.

Expected results:

``````1, 2, 5 \n
1, 7, 11 \n
1, 13, 13 \n
2, 4, 9 \n
2, 11, 13 \n
3, 1, 6 \n
3, 101, 105 \n
``````

Here's a brief answer using aggregate....

``````runs <- cumsum( c(0, diff(my.data\$V2) > 1) )
aggregate(V2 ~ runs + V1, my.data, range)[,-1]

V1 V2.1 V2.2
1  1    2    5
2  1    7   11
3  1   13   13
4  2    4    9
5  2   11   13
6  3    1    6
7  3  101  105
``````

A while back, I wrote a variant of `rle()` which I named `seqle()` because it allows one to look for integer sequences rather than repetitions. Then, you can do:

``````Rgames: seqle(my.data[my.data\$V1==1,2]) #repeat for my.data\$V1 equal to 2 and 3
\$lengths
 4 5 1

\$values
  2  7 13
``````

(for example). It would take a little fiddling to get these results into the tabular form you want, but just thought I'd mention it. BTW, here's the code for `seqle`. If you set `incr=0` you get the base rle result.

``````function(x,incr=1){

if(!is.numeric(x)) x <- as.numeric(x)
n <- length(x)
y <- x[-1L] != x[-n] + incr
i <- c(which(y|is.na(y)),n)
list( lengths = diff(c(0L,i)),  values = x[head(c(0L,i)+1L,-1L)])
}
``````

EDIT: There's an excellent upgrade to this, provided by flodel, at How to check if a vector contains n consecutive numbers . He pointed out that this version has the usual floating-point error problems when working with doubles, and provided a fix as well.

• I've used your nice function in this answer. Apr 20, 2013 at 9:33
• (+1) very handy and useful function!
– Arun
Apr 20, 2013 at 9:39

here is an example:

``````library(plyr)

ddply(my.data, .(V1),
function(x) data.frame(do.call("rbind", tapply(x\$V2, cumsum(c(T, diff(x\$V2)!=1)),
function(y) c(min(y), max(y))))))
``````

maybe, too complicated, but what is important is the `cumsum(c(T, diff(x\$V2)!=1))`.

``````> ddply(my.data, .(V1),
+  function(x) data.frame(do.call("rbind", tapply(x\$V2, cumsum(c(T, diff(x\$V2)!=1)),
+    function(y) c(min(y), max(y))))))
V1  X1  X2
1  1   2   5
2  1   7  11
3  1  13  13
4  2   4   9
5  2  11  13
6  3   1   6
7  3 101 105
``````
• Good to see we're thinking along similar lines. Dec 6, 2011 at 14:26

Here's a solution using `ddply` from the `plyr` package. The basic idea is to see when `diff(x)` isn't 1, in order to find the changeover points.

``````ddply(
my.data,
.(V1),
summarise,
lower =
{
cut_points <- which(diff(V2) != 1)
V2[c(1, cut_points + 1)]
},
upper =
{
cut_points <- which(diff(V2) != 1)
V2[c(cut_points, length(V2))]
}
)
``````
``````my.data\$run <- ave(my.data\$V2, my.data\$V1, FUN=function(x) c(1, diff(x)))
strstp <- by(my.data, list(my.data\$V1),
FUN=function(x) list(
stops=c(x\$V2[which(x\$run != 1)-1], tail(x\$V2, 1))))
> strstp
: 1
\$starts
  2  7 13

\$stops
  5 11 13

-------------------------------------------------------------
: 2
\$starts
  4 11

\$stops
  9 13

-------------------------------------------------------------
: 3
\$starts
   1 101

\$stops
   6 105
``````