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I am trying to join two dataframe. The condition of the join is not ColumnA=ColumnB but ColumnA=ColumnB*Function. With the function merge, I dont see how i can handle it

There a exemple,

df1 <- data.frame(ID=c(5,4,3,2), CASE=c("A","B","C","D"))
df2 <- data.frame(ID=c(6,5,4,3), RESULT=c("ResultA","ResultB","ResultC","ResultD"))

I would like to join df1 and df2 with somethng like df1$ID = df2$ID - 1, to have the result:

df_result<- data.frame(ID_df1=c(5,4,3,2), CASE=c("A","B","C","D"), RESULT=c("Result5","Result4","Result3","Result2"))

I have tried to delete the quotation marks in the join, but it does not work:

df_result <- merge ( x = df1, y = df2, by.x = ID , by.y = ID - 1 , all.x = TRUE)

Could some one helps me? : )

Thank you !

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  • I'm not at my computer so can't check to figure out if there is a way to do it directly with merge. But you could always make a new column that is ID-1 in df2 and merge on that.
    – Dason
    Jul 3 '19 at 12:49
  • Hey ! Thank you for your quick reply. In fact I simplied my issue with a simple exemple. Actually, i would like to use fonction with multiple conditions. Like: df1$date=df2$date , if no result then df1$date=df2$date-2 and so on
    – Karibuu
    Jul 3 '19 at 12:56
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A tidyverse solution to reproduce your expected output would be

library(tidyverse)
left_join(df1, df2 %>% mutate(ID = ID - 1)) %>%
    mutate(RESULT = str_replace(RESULT, "^(.+)[A-Z]$", paste0("\\1", ID)))
#Joining, by = "ID"
#  ID CASE  RESULT
#1  5    A Result5
#2  4    B Result4
#3  3    C Result3
#4  2    D Result2

Explanation: If you only want to merge by ID and ID - 1 a simple

left_join(df1, df2 %>% mutate(ID = ID - 1))
#  ID CASE  RESULT
#1  5    A ResultA
#2  4    B ResultB
#3  3    C ResultC
#4  2    D ResultD

is sufficient. The additional mutate takes care of renaming RESULT according to your expected output.


Or a base R option would start from

merge(df1, transform(df2, ID = ID - 1), by = "ID")
#  ID CASE  RESULT
#1  2    D ResultD
#2  3    C ResultC
#3  4    B ResultB
#4  5    A ResultA

and including renaming RESULT

transform(
    merge(df1, transform(df2, ID = ID - 1), by = "ID"),
    RESULT = paste0(substr(RESULT, 1, nchar(as.character(RESULT)) - 1), ID))
#  ID CASE  RESULT
#1  2    D Result2
#2  3    C Result3
#3  4    B Result4
#4  5    A Result5

reproducing your expected output (with a slightly different row ordering).

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Such a join is easy to do with SQL. In this case every row of df1 has a match in df2 so we could omit the left keyword but if there were rows in df1 with no match in df2 the left would ensure that they are retained.

library(sqldf)

sqldf("select 
    a.*, 
    substr(b.RESULT, 1, length(b.RESULT)-1) || cast(a.ID as integer) as RESULT
  from df1 as a 
  left join df2 as b on a.id = b.id - 1")

The on clause can have complex conditions connected with and and/or or in case you need more complicated conditions.

Alternately do the join in SQL and then the transformation of RESULT separately.

s <- sqldf("select a.*, b.RESULT
  from df1 as a 
  left join df2 as b on a.id = b.id - 1")
transform(s, RESULT = paste0(sub(".$", "", RESULT), ID))
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  • Thanks ! It can be usefull if I want to connect with the condition "Or"
    – Karibuu
    Jul 3 '19 at 14:49

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