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I've the following vector. It is a large vector but for the purpose of illustration I'll keep it short.

x = c(1,1,1,1,0,0,0,0,1,1,0,0,0,1,1)

Notice that the 1's come in chunks within the vector. In this case there is a chunk of four 1s two chunks of two 1's. How do I find this distribution in an easy and efficient manner? Expected output is

chunk.length freq
4 1
2 2

Thanks much in advance.

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3 Answers 3

up vote 1 down vote accepted

Use rle

rle_results <- rle(x)
table(rle_results$length)

## 2 3 4 
## 2 1 2

Or to get those for only x == 1

table(rle_results$length[rle_results$values == 1])

## 2 4 
## 2 1

You could wrap it in a function to get the data.frame

rle_function <- function(x, what = NULL){
  rle_results <- rle(x)
  if(is.null(what)){
    what <- unique(x)
  }
  .table <- table(rle_results$length[rle_results$values %in% what])
  data.frame(chunk.length = rownames(.table), freq = as.numeric(.table)) 
}

rle_function(x)
##   chunk.length freq
## 1            2    2
## 2            3    1
## 3            4    2
rle_function(x, what = 1)
##   chunk.length freq
## 1            2    2
## 2            4    1
rle_function(x, what = 0)
##   chunk.length freq
## 1            3    1
## 2            4    1
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I like this solution as it gives it in the data frame format. The others work too. Thanks much. Very useful indeed. –  broccoli Jul 18 '12 at 4:06
> ans<-rle(x)
> table(ans)
       values
lengths 0 1
      2 0 2
      3 1 0
      4 1 1
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You're looking for rle.

rle(x)
#Run Length Encoding
#  lengths: int [1:5] 4 4 2 3 2
#  values : num [1:5] 1 0 1 0 1


table(rle(x)$length[rle(x)$values == 1])

#2 4 
#2 1 
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