# How to replace a specific sequence of numbers (per row) with another sequence in a big data frame in R?

I have a data.frame with absence/presence data (0/1) for a group of animals, with columns as years and rows as individuals.

My data:

``````df <- data.frame(Year1 = c('1','0','0','0','0','0'),
Year2 = c('1','1','1','0','0','0'),
Year3 = c('1','1','1','1','1','0'),
Year4 = c('0','1','0','0','0','1'),
Year5 = c('0','0','1','1','0','1'),
Year6 = c('0','0','0','1','1','1'))

df
Year1 Year2 Year3 Year4 Year5 Year6
1:     1     1     1     0     0     0
2:     0     1     1     1     0     0
3:     0     1     1     0     1     0
4:     0     0     1     0     1     1
5:     0     0     1     0     0     1
6:     0     0     0     1     1     1

``````

Some individuals have sighting gaps (seen one year (1), then not seen the next year (0), but spotted again in the third year (1)). In total there are 400 rows (=individuals).

What I would like to do is fill the gaps (0s between 1s) with 1s, so that the above data frame becomes:

``````df
Year1 Year2 Year3 Year4 Year5 Year6
1:     1     1     1     0     0     0
2:     0     1     1     1     0     0
3:     0     1     1     1     1     0
4:     0     0     1     1     1     1
5:     0     0     1     1     1     1
6:     0     0     0     1     1     1

``````

Zeros before the first 1 and after the last 1 should not be affected.

I have browsed many stackoverflow questions, e.g.:

find and replace numeric sequence in r

Replace a sequence of values by group depending on preceeding values

However, I could not find a solution that works across all columns at once, on a row-by-row basis.

Use `max.col` to find the "first" and "last" `1` in each row, and then compare to the `col()`umn number:

``````df[col(df) >= max.col(df, "first") & col(df) <= max.col(df, "last")] <- 1
df

#  Year1 Year2 Year3 Year4 Year5 Year6
#1     1     1     1     0     0     0
#2     0     1     1     1     0     0
#3     0     1     1     1     1     0
#4     0     0     1     1     1     1
#5     0     0     1     1     1     1
#6     0     0     0     1     1     1
``````

We may do this by row. An efficient option is using `dapply` from `collapse`. Loop over the rows, find the position index of 1s, get the sequence between the first and last, and `replace` those elements to 1.

``````library(collapse)
dapply(df, MARGIN = 1, FUN = function(x)
replace(x,  do.call(`:`, as.list(range(which(x == 1)))),  1 ))
``````

-output

``````  Year1 Year2 Year3 Year4 Year5 Year6
1     1     1     1     0     0     0
2     0     1     1     1     0     0
3     0     1     1     1     1     0
4     0     0     1     1     1     1
5     0     0     1     1     1     1
6     0     0     0     1     1     1
``````

An option is also to get the row/column index with `which` and `arr.ind = TRUE`, then create the sequence, and use the row/column index to do the assignment which is vectorized

``````ind <- which(df ==1, arr.ind = TRUE)
m1 <- as.matrix(transform(stack(lapply(split(ind[,2], ind[,1]),
function(x) x[1]:x[length(x)]))[2:1], ind = as.integer(ind)))
df[m1] <- 1
``````

An approach in base R using `apply` -

``````df[] <- t(apply(df, 1, function(x) {
rg <- range(which(x == 1))
x[rg[1]:rg[2]] <- 1
x
}))

df

#  Year1 Year2 Year3 Year4 Year5 Year6
#1     1     1     1     0     0     0
#2     0     1     1     1     0     0
#3     0     1     1     1     1     0
#4     0     0     1     1     1     1
#5     0     0     1     1     1     1
#6     0     0     0     1     1     1
``````