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For a given dataframe, I'd like to split it based on some boolean value, and then apply a label to that row and the previous rows up until that point.

Assuming the following dataframe:

test <- data.frame(x = 1:10, y = c(F, F, F, T, F, F, T, F, F, F))

I'd ultimately like to create a new column that would contain a label for that specific portion of the dataframe. Ideally, something like the following:

x   y   z
1   F   1
2   F   1
3   F   1
4   T   1
5   F   2
6   F   2
7   T   2
8   F   3
9   F   3
10  F   3

My current thought is that I need to loop through the dataframe with a function similar to the following (but not exactly):

label.portion <- function(test) {
  for (i in 1:nrow(test)) {
    z <- 1
    if(test$y[i]) { z <- z + 1 }
    return(z)
  }
}

What is the best/easiest way of doing this? Any help is much appreciated.

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4 Answers 4

up vote 4 down vote accepted

Your z column can be built as

z <- with(test, sum(y)-rev(cumsum(rev(y)))+1)

in order to make every new z value start at a FALSE y after a TRUE y, as per your example.

Then you can do cbind(test, z) to get what you want.

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This is awesome. Thank you. –  gjreda Mar 26 '13 at 2:45

One liner solution using transform

transform(test,z= cumsum(c(0,diff(y)) == -1)+1)

    x     y z
1   1 FALSE 1
2   2 FALSE 1
3   3 FALSE 1
4   4  TRUE 1
5   5 FALSE 2
6   6 FALSE 2
7   7  TRUE 2
8   8 FALSE 3
9   9 FALSE 3
10 10 FALSE 3
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Another one liner solution which will be slightly faster than other solutions (except data.table)

test <- data.frame(x = 1:10, y = c(F, F, F, T, F, F, T, F, F, F))
test$z <- c(1, head(cumsum(test$y), -1) + 1)
test
##     x     y z
## 1   1 FALSE 1
## 2   2 FALSE 1
## 3   3 FALSE 1
## 4   4  TRUE 1
## 5   5 FALSE 2
## 6   6 FALSE 2
## 7   7  TRUE 2
## 8   8 FALSE 3
## 9   9 FALSE 3
## 10 10 FALSE 3

Benchmarks with other solutions provided (excluding data.table)

test <- data.frame(x = 1:1e+05, y = sample(c(T, F), size = 1e+05, replace = TRUE))
microbenchmark(c(1, head(cumsum(test$y), -1) + 1), cumsum(c(0, diff(test$y)) == -1) + 1, with(test, sum(y) - rev(cumsum(rev(y))) + 
    1), times = 100)
## Unit: milliseconds
##                                          expr      min       lq   median       uq       max neval
##            c(1, head(cumsum(test$y), -1) + 1) 1.685473 1.758474 1.865409 4.647218  5.091512   100
##          cumsum(c(0, diff(test$y)) == -1) + 1 4.064867 4.379714 6.936561 7.338810  7.657961   100
##  with(test, sum(y) - rev(cumsum(rev(y))) + 1) 2.568766 2.720395 5.396096 5.701176 30.642436   100
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Here is an approach using na.locf from xts and data.table for coding elegance (and efficiency)

library(data.table)
library(xts) # for na.locf
test <- data.table(test)


test[(y), grp := seq_along(y)][, grp := na.locf(grp, fromLast = TRUE)]
test[is.na(grp), grp := max(test[, grp], na.rm =TRUE) + 1L]

And a far clearer and faster approach

test[, grp := {xx <- diff(c(0,.I[y], length(.I))); rep.int(seq_along(xx),xx)}]

Note that diff uses a for loop implemented in R, so an Rcpp sugar implementation) would be faster (I'm sure that a cpp function would blow most of these out of the water)

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I don't think this is working correctly if first value of y is TRUE –  Chinmay Patil Mar 26 '13 at 3:14
    
@geektrader -- great spotting, should be fixed now (a completely different approach) –  mnel Mar 26 '13 at 3:35

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