I would like to join all three files based on Time. I want to add NA if the data frame does not have a value for that particular date. In total, there should be 7 columns in the output.

> head(Dax1,3)
        Time      Res     Accum
1 2017-10-20  1174.60 172278.21
2 2017-10-18  -109.41 171103.61
3 2017-08-28 -2670.84 171213.02
> head(Dax2,3)
        Time     Res     Accum
1 2017-10-23 1473.25 185076.53
2 2017-08-24 1001.50 183603.28
3 2017-07-31 -144.96 182601.79
> head(Dax3,3)
        Time     Res      Accum
1 2017-11-07 -348.37 189 023.90
2 2017-10-26  398.16 189 372.27
3 2017-10-25  -80.19 188 974.10

I tried join_all but it seems to jon them in a long-format. I want them side-by-side as 7 columns in total:

> join_all(list, by = "Time",match = "all",type="full")
        Time      Res      Accum
1 2017-10-20  1174.60  172278.21
2 2017-10-18  -109.41  171103.61
3 2017-08-28 -2670.84  171213.02
4 2017-10-23  1473.25  185076.53
5 2017-08-24  1001.50  183603.28
6 2017-07-31  -144.96  182601.79
7 2017-11-07  -348.37 189 023.90
8 2017-10-26   398.16 189 372.27
9 2017-10-25   -80.19 188 974.10
  • 1
    rbind(Dax1, Dax2, Dax3) You may want to resort afterwards – G5W Nov 11 '17 at 19:07
  • 1
    @G5W Probaby cbind you meant? – akrun Nov 11 '17 at 19:09
  • cbind creates 3 output rows. there are more unique dates in the inputs. – user2300940 Nov 11 '17 at 19:11
  • 1
    Try creating unique column names i.e. plyr::join_all(Map(function(x,y) {names(x)[-1] <- paste0(names(x)[-1], y); x}, lst, seq_along(lst)), by = "Time",match = "all",type="full") – akrun Nov 11 '17 at 19:13
  • 1
    @akrun You are right. I misread the question. But cbind won't work either. – G5W Nov 11 '17 at 19:17
up vote 1 down vote accepted

We could rename the columns of the datasets in the list except the 'Time' column and apply the join_all

res1 <- plyr::join_all(Map(function(x,y) {
         names(x)[-1] <- paste0(names(x)[-1], y)
         x}, lst, seq_along(lst)), by = "Time",match = "all",type="full")

Or this can be done in a chain using some of the functions from tidyverse

library(purrr)
library(dplyr)
res2 <- lst %>%
          map2(., seq_along(.), ~setNames(.x, c('Time', paste0(names(.x)[-1], .y)))) %>% 
          plyr::join_all(., by = 'Time', match = 'all', type = 'full')

identical(res1, res2)
#[1] TRUE

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