1

I am trying to sum the column in another table and put it in my current table based on a number of conditions.

table1 <- tribble(~company_id,~date,
                  1,"2018-01-02",
                  1,"2018-01-03",
                  2,"2018-01-02",
                  2,"2018-01-03")

table2 <- tribble(~other_id, company_id,~date_created,~max_rank,rank,date_closed,
                  1,1,"2018-01-02",20,2,NA,
                  1,1,"2018-01-03",22,1,NA,
                  2,2,"2018-01-02",20,5,NA,
                  2,2,"2018-01-03",22,4,NA)

I want to create a new column in table 1 that will imput the following formula:

= sum( (max_rank-rank)/(max_rank-1))

but only when:

(date<=date_created, date>(date_created+20), date<date_closed, max_rank-1!=0, rank!=0)

Edit

The output I hope to achieve should look like this:

 Table 1 
    | company id | date        | cc score |
    ---------------------------------------
    | 1          |  2018-01-02 |  0.9473  |
    | 1          |  2018-01-03 |  1.9473  |
    | 2          |  2018-01-02 |  0.7895  |
    | 2          |  2018-01-03 |  1.6466  |

The first can be calculated as (20-2)/(20-1) = 0.9473 The second is calculated as (20-2)/(20-1) + (22-1)/(22-1) = 1.9473

  • Can you please show you expected output? – jogo Apr 15 at 12:23
  • 2
    Also, it'd be helpful if you posted your data in a more reproducible format instead of as text. Use dput(head(your_data)) and post the result. – Ben G Apr 15 at 12:28
  • Looks like your dataset is data.frame and not data.table. try setDT(table1) and then apply yiour code – akrun Apr 15 at 12:33
  • @akrun I tried that but it didnt work – Laurence_jj Apr 15 at 15:53
  • Ok, my comment was based on the error you showed. Can you please dput the two examples and copy/paste the output in your post to get the structure of data correct – akrun Apr 15 at 15:54
0

You can use dplyr package. Please try the code below:

> library(dplyr)
> cbind(table1,table2)%>%inner_join(table1)%>%inner_join(table2)%>%filter(date<=date_created|date>(date_created+20)&max_rank-1!=0&rank!=0)%>%mutate(cc_data=(max_rank-rank)/(max_rank-1))%>%group_by(company_id)%>%mutate(cc_data=cumsum(cc_data))%>%select(company_id,date,cc_data)
  • Use of cbind() : We need both date_created and date column.

  • Two times inner_join(): To make sure there is no extra data.

Please suggest a better solution than this.

  • these are very big tables and the dplyr package performance is insufficient as it tries to merge them to create a table that is simply too big – Laurence_jj Apr 17 at 9:40
0

This seems to work:

table1[, cc_score := table2[table1, 
     on = .(company_id = company_id, date_created<=date, date_created_pls_20>date), 
     sum(ifelse(!is.na(rank) & (is.na(date_closed) | date_closed>date),
     ((max_rank-rank)/(max_rank-1)), 0)),
     by = .EACHI][["V1"]]]

Where date_created_pls_20 is a column that takes the date_created column and simply adds 20

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