# R How to get the difference between current and next row that matches certain condition?

I understand that the question seems bit confusing. One example could be,

Time        x
2017-07-24 12:33:13.000000      0.0
2017-07-24 12:33:14.000000      0.0
2017-07-24 12:33:15.000000      0.0
2017-07-24 12:33:16.000000      0.0
2017-07-24 12:33:16.500000      1.0
2017-07-24 12:33:17.000000      0.0
2017-07-24 12:33:17.500000      0.0
2017-07-24 12:33:18.500000      1.0

In R, I want to have another column that, for each row, compute difference between the time for the current row and the time for the next row where x is not 0. So the results look like this:

Time        x     diff
2017-07-24 12:33:13.000000      0.0      3.5
2017-07-24 12:33:14.000000      0.0      2.5
2017-07-24 12:33:15.000000      0.0      1.5
2017-07-24 12:33:16.000000      0.0      0.5
2017-07-24 12:33:16.500000      1.0      0.0
2017-07-24 12:33:17.000000      0.0      1.5
2017-07-24 12:33:17.500000      0.0      1.0
2017-07-24 12:33:18.500000      1.0      0.0

Finding the rows where "x == 1":

wh = which(dat\$x == 1)

we can build a vector of indices of the nearest (forward) "1":

i = rep(wh, c(wh[1], diff(wh)))

And then subtract the respective "Time"s:

dat\$Time[i] - dat\$Time
#Time differences in secs
#[1] 3.5 2.5 1.5 0.5 0.0 1.5 1.0 0.0

"dat" is:

dat = structure(list(Time = structure(c(1500888793, 1500888794, 1500888795,
1500888796, 1500888796.5, 1500888797, 1500888797.5, 1500888798.5
), class = c("POSIXct", "POSIXt"), tzone = ""), x = c(0, 0, 0,
0, 1, 0, 0, 1)), .Names = c("Time", "x"), row.names = c(NA, 8L
), class = "data.frame")

I think a Rolling join from the data.table() library can help.

Here's my solution:

First, let's set up your example data

library('data.table')

time <- as.POSIXct(c('2017-07-24 12:33:13.000000', '2017-07-24 12:33:14.000000', '2017-07-24 12:33:15.000000', '2017-07-24 12:33:16.000000', '2017-07-24 12:33:16.500000', '2017-07-24 12:33:17.000000', '2017-07-24 12:33:17.500000', '2017-07-24 12:33:18.500000'))

x <- c(0.0, 0.0, 0.0, 0.0, 1.0, 0.0, 0.0, 1.0)

dat <- data.table(time, x)

Now, let's add a dummy column for the sake of the join:

dat[, key := 1]

Subset the data to just the x = 1 columns into a new table

ones <- dat[x==1, list(time, key, ref.time = time)]

Notice that I also create a ref.time column. That's for performing the subtraction.

Set keys for the rolling join

setkey(dat, key, time)
setkey(ones, key, time)

Now do the join. This answers the question "what is the nearest x==1 row to any given row in the original data"

joined.dat <- ones[dat, roll = -Inf]

Compute the difference you seek

joined.dat[, diff := ref.time - time]

Final output:

time key            ref.time x     diff
1: 2017-07-24 12:33:13   1 2017-07-24 12:33:16 0 3.5 secs
2: 2017-07-24 12:33:14   1 2017-07-24 12:33:16 0 2.5 secs
3: 2017-07-24 12:33:15   1 2017-07-24 12:33:16 0 1.5 secs
4: 2017-07-24 12:33:16   1 2017-07-24 12:33:16 0 0.5 secs
5: 2017-07-24 12:33:16   1 2017-07-24 12:33:16 1 0.0 secs
6: 2017-07-24 12:33:17   1 2017-07-24 12:33:18 0 1.5 secs
7: 2017-07-24 12:33:17   1 2017-07-24 12:33:18 0 1.0 secs
8: 2017-07-24 12:33:18   1 2017-07-24 12:33:18 1 0.0 secs
• Your answer can be a bit cleaner if you use dplyr or tidyverse or use data.table more efficiently. But I like the idea. Cheers. +1 – M-- Jul 28 '17 at 18:59
• Thanks for the upvote and feedback! Does anything specific jump out about how the data.table usage could be more efficient? This did feel a bit cumbersome as I was putting it together, but I wasn't sure how to streamline it. – HarlandMason Jul 28 '17 at 19:03

Using Base R and vectorization:

a <- c(1, 3, 6, 10, 15, 17, 20, 23, 34)
b <- c(0, 0, 0, 1,  0,  1,  0,  0,  1)

By hand, the answer should be this:

c <- c(9, 7, 4, 0, 2, 0, 14, 11, 0)

Create a vector of which values in b are the 'pivots'. We also attach 0 as a starting point:

pivots <- c(0, which(b != 0))

Finally, repeat those pivots as many times are there are between a value of 0 and the next 1.

vec <- rep(a[pivots], times = diff(pivots)
identical(c, vec - a)

If you wanted to turn this into a function that takes a values vector/column and a pivots vector/column you can do something like this:

diffToNextPivot <- function(values, pivots) {
pivots <- c(0, which(pivots != 0))
vec <- rep(values[pivots], times = diff(pivots))
vec - values
}

myDataFrame\$diff <- diffToNextPivot(myDataFrame\$Time, myDataFrame\$x)