When I try to do operation on 2 lists i get a error messages and the calculation does not work properly.(see end of question)

list2 <- list2 %>% 
mutate(sum_of_part = sum(list1$part[(list1$id < list2$id) & (list1$id >= lag(list2$id))]))

So what I want to do is: Get the sum of "part" of all rows in list1 where the "id" is between the "id" of the current row in list2 and the "id" of the row before. I also want to count the number of rows which are used to calculate the column sum_of_parts.

list1

  id    Part   ...
  1      2
  2      3
  3      4
  4      6
  99     11
  100     11
  191    11
  222     11
  333    11

list2

id   ...
 1
 3
 4
 88
 99

solution

id   ...  sum_of_parts    count
 1   ...        2           1   
 3   ...        9           3
 4   ...        10          2
88   ...        6           1
99   ...        11          1

But because my list2 is a lot smaller then my list1, I do get this errors(there are some more but they look almost the same): In list1$id < list2$id : longer object length is not a multiple of shorter object length Help please.

up vote 0 down vote accepted

You were really close, this one gets me all the time!

mutate operates by group I believe, so if you haven't specified a group it will try to use the whole column in a vectorised operation (which is usually more efficient), and thus the error about different lengths.

If you want to operate on each row, you can use rowwise(), to make the following calculations treat each row as a group. So id will be a length one vector in the mutate call.

Note we need to specify the lag before grouping, otherwise using the logic above, there will be no previous id in a length one vector.

library(dplyr)

list1 <- readr::read_csv(
'id,part
1,2
2,3
3,4
4,6
99,11
100,11
191,11
222,11
333,11')

list2 <- readr::read_csv(
'id
 1
 3
 4
 88
 99'
)

list2 %>% 
  mutate(lag_id = lag(id, default = 0)) %>% 
  rowwise() %>%  
  mutate(sum_of_part = sum(list1$part[(list1$id <= id) & (list1$id > lag_id)]),
         count = length(list1$part[(list1$id <= id) & (list1$id > lag_id)])) %>% 
  select(-lag_id)
#> Source: local data frame [5 x 3]
#> Groups: <by row>
#> 
#> # A tibble: 5 x 3
#>      id sum_of_part count
#>   <int>       <int> <int>
#> 1     1           2     1
#> 2     3           7     2
#> 3     4           6     1
#> 4    88           0     0
#> 5    99          11     1
  • 1
    you could use rowwise instead of specifying the group (key) explicitly and then grouping by it. – jjl Dec 8 '17 at 0:03
  • Great idea, much more readable and concise. This will save me so much unnecessary typing in future :) – hrabel Dec 8 '17 at 0:07
  • Could have used list2$id-lag(list2$id) for count guess. Thank you for your answer. It works and it saved me :)) – Haze Dec 8 '17 at 0:11

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