# Group by id a dataset then create a new column subtracting different columns from current and subsequent row

I have found similar problem like this, but not exactly the same. Here is my problem, I have the following data set:

``````> ds
id      begin        end
1  1 2017-01-15 2017-01-17
2  1 2017-01-01 2017-01-03
3  2 2017-02-01 2017-02-28
4  4 2017-04-11 2017-05-11
5  3 2017-02-05 2017-02-10
6  4 2017-03-10 2017-03-20
7  1 2017-01-30 2017-02-03
8  3 2017-02-28 2017-03-09
9  4 2017-02-26 2017-03-05
``````

I want to create the following column: `check` that verifies the following condition for each rows with the same `id` value:

``````ds[i,]\$begin - ds[i-1,]\$end < 30 => 1 # for each row i
``````

otherwise is `0`. When it is the first element of the group, then there is no previous information, so in such case the value of the new column `check` will be always zero too.

The difference with other questions (solved via: `ave`, `dplyr`) I have seen, is that I need to make a calculation that involves subsequent row but also not the same column.

Here is the code:

Defining the data set

``````id <- c("1", "1", "2", "4", "3", "4", "1", "3")
begin <- c("20170115", "20170101", "20170201",
"20170411",
"20170205", "20170310",
"20170130", "20170228"
)

end <- c("20170117", "20170103", "20170228",
"20170511",
"20170210", "20170320",
"20170203", "20170309"
)

ds <- data.frame(id = id, begin = as.Date(begin, "%Y%m%d"), end = as.Date(end, "%Y%m%d"))
``````

Sorting the information (we need it for the current solution using a for-loop)

``````idx = order(rank(ds\$id), ds\$begin, decreasing = FALSE)
ds <- ds[idx,]
``````

Now using the for-loop for assigning the control variable: `check`:

``````ds\$check <- numeric(nrow(ds))
ds\$check <- NA_integer_

nrep <- -1
for (i in 1:nrow(ds)) {
rowi <- ds[i,]
if (nrep == -1) {# Setting the first element of ds
end.prev <- rowi\$end
id.prev <- rowi\$id
ds[i,]\$check <- 0
nrep = 1
} else {
id.current <- rowi\$id
if(id.prev == id.current) {
ds[i,]\$check <- ifelse(rowi\$begin - end.prev < 30, 1, 0)
} else {
ds[i,]\$check <- 0
}
end.prev <- rowi\$end
id.prev <- id.current
}
}
``````

Finally the expected output:

``````> ds
id      begin        end check
2  1 2017-01-01 2017-01-03     0
1  1 2017-01-15 2017-01-17     1
7  1 2017-01-30 2017-02-03     1
3  2 2017-02-01 2017-02-28     0
5  3 2017-02-05 2017-02-10     0
8  3 2017-02-28 2017-03-09     1
6  4 2017-03-10 2017-03-20     0
4  4 2017-04-11 2017-05-11     1
>
``````

Thanks for any hint.

• Yes, it works! I don't know even how. Please can you explain a little bit how it works, there no so much documentation about `dplyr`, at least I found always very basic examples. Thanks. Feb 27 '17 at 16:01
• Yes, see my answer for explanations. Feb 27 '17 at 16:05

With `dplyr`, using `lag` makes this easy:

``````ds %>%
group_by(id) %>%
arrange(id, begin) %>%
mutate(check = c(0, as.numeric(begin - lag(end) < 30)[-1]))
``````

Gives:

``````Source: local data frame [8 x 4]
Groups: id 

id      begin        end check
<fctr>     <date>     <date> <dbl>
1      1 2017-01-01 2017-01-03     0
2      1 2017-01-15 2017-01-17     1
3      1 2017-01-30 2017-02-03     1
4      2 2017-02-01 2017-02-28     0
5      3 2017-02-05 2017-02-10     0
6      3 2017-02-28 2017-03-09     1
7      4 2017-03-10 2017-03-20     0
8      4 2017-04-11 2017-05-11     1
``````

Explanation:

• First we `group_by`, so calculations are done by `id`.
• We `arrange` to make sure we start with the earliest date.
• For all `check`s, the first value is `0`,
• and the other values are simply whether the current `begin` minus the previous `end` is smaller than 30. We use `as.numeric` to convert from logical to numeric.

Also see: `vignette('window-functions')`.

Note: I think the first value per group can simply be left at `NA`, since it is indeed unknown or undefined, and this will simplify it to:

``````ds %>%
group_by(id) %>%
mutate(check = as.numeric(begin - lag(end, order_by = begin) < 30))
``````
• In my real case I need to put a zero in the first row of the group. I understand for this second approach (with `NA`) in order to have the solution sorted we need to add: `arrange(id, begin) %>%`. What do you mean in your solution by: `[-1]` in this context? Good tip for vignette documentation. Can you share more reference documentation about this topic. It is still for me difficult to understand the syntax. Thanks. Feb 27 '17 at 17:27
• The code `[-1]` excludes the first element of the vector, so we can have 0 instead. That is all the docs there is, as far as I know. Feb 27 '17 at 17:30
• I found this web page with several resources about `dplyr`package. Here is the data camp training. I shared an equivalent one information for `data.table` (comment on @ShenglinChen answer. Feb 28 '17 at 3:20

Use data.table:

``````setDT(ds)[,New:=as.numeric(begin-shift(end,fill=0)<30),id]
``````

Use dplyr:

``````ds%>%group_by(id)%>%mutate(new=as.numeric(begin-lag(end,default=0)<30))%>%arrange(id)
``````
• You are assuming the dates are sorted, but they are not. Good call on the use of `default` though. Feb 27 '17 at 17:16
• @ShenglinChen very nice solution with `setDT` and `data.table`, and by the way this package has a very nice tutorial. In both cases the result is not the expected. See for example the result for: `[1, "200170101", "20170103"]` you get `1` and it should be `0`. We need to specify a grouping first (by `id` then by `begin` in ascending order) otherwise it gets a wrong result I guess. Feb 28 '17 at 0:10
• @ShenglinChen I edited your solution adding the arrange clause, now it get the expected result. Once I will figure it out how to apply the same for `data.table`, and I will edit again the solution. Feb 28 '17 at 18:26
• @ShenglinChen, the edit was rejected, here is the change in order to get the expected result: `ds %>% group_by(id) %>% arrange(id, begin) %>% mutate(new = as.numeric(begin - lag(end, default = 0) < 30))` Mar 1 '17 at 4:15