# Grouping by multiple dimensions, summarise and add calculated column

I have this df:

``````  boxChange   sameCat
# C1 > C2     TRUE
# C1 > C2     TRUE
# A0 > A1     TRUE
# A1 > E4     FALSE
# C3 > E6     FALSE
# E0 > E3     TRUE
# ...         ...
``````

I would like to group by both columns, count the occurrences and arrange by their number. By using `dplyr` I would go like this:

``````df2 <- df %>%
group_by(boxChange, sameCat) %>%
summarise(occs = n()) %>%
arrange(desc(occs))
``````

Obtaining:

``````  boxChange   sameCat   occs
# C1 > C2     TRUE      312
# A0 > A1     TRUE      189
# E0 > E3     TRUE      13
# C3 > E6     FALSE     123
# A1 > E4     FALSE     70
``````

Now I would like to compute the percentage of each `occs` over the total and the cumulative percentage, obtaining something like this

``````  boxChange   sameCat   occs   perc   cump
# C1 > C2     TRUE      312    44      44
# A0 > A1     TRUE      189    27      71
# E0 > E3     TRUE       13     2      73
# C3 > E6     FALSE     123    17      90
# A1 > E4     FALSE      70    10     100
``````

I tried with the following

``````df2 <- df %>%
group_by(boxChange, sameCat) %>%
summarise(occs = n()) %>%
arrange(desc(occs)) %>%
mutate(perc = occs/sum(occs)*100) %>%
mutate(cump = cumsum(perc))
``````

But the output is the following

``````  boxChange   sameCat   occs   perc   cump
# C1 > C2     TRUE      312    100     100
# A0 > A1     TRUE      189    100     100
# E0 > E3     TRUE       13    100     100
# C3 > E6     FALSE     123    100     100
# A1 > E4     FALSE      70    100     100
``````

I cannot understand why it is like this and couldn't find any other thread reporting a similar issue. Do you have any insight?

We may need `ungroup`

``````df2 <- df %>%
group_by(boxChange, sameCat) %>%
summarise(occs = n()) %>%
arrange(desc(occs)) %>%
ungroup %>%
mutate(perc = occs/sum(occs)*100,
cump = cumsum(perc))
``````

--

Or if we need to keep the grouping intact, use `sum(.\$occs)`

### Update

If we start from the OP's `arraged` 'occs'

``````df %>%
ungroup %>%
mutate(perc = round(occs/sum(occs) * 100),
cump = cumsum(perc))
#   boxChange sameCat occs perc cump
#1   C1 > C2    TRUE  312   44   44
#2   A0 > A1    TRUE  189   27   71
#3   E0 > E3    TRUE   13    2   73
#4   C3 > E6   FALSE  123   17   90
#5   A1 > E4   FALSE   70   10  100
``````
• Thank you! `sum(.\$occs)` get the `perc` column right, though I keep getting the wrong cumulative sum, it's output exactly equal to `perc` Commented Jun 17, 2019 at 21:24
• @tuspazio I started with the input example from 'df2' having the 'occs' column and have no difficultly in getting the 'cump' Commented Jun 17, 2019 at 21:33
• Thanks again, don't know what I got wrong but now it works properly. Thanks again Commented Jun 17, 2019 at 21:43
• @tuspazio If you have loaded `plyr`, then the `plyr::mutate` could mask the `dplyr::mutate` and leads to misleading results. Commented Jun 17, 2019 at 21:44
• No 'plyer' is not loaded Commented Jun 17, 2019 at 21:45