1

I have a list of dfs. The dfs all have the same column names. I would like to:

(1) Change one of the column names to the name of the df within the list

(2) full_join all the dfs after name change

Example of my list:

my_list <- list(one = data.frame(Type  = c(1,2,3), Class = c("a", "a", "b")),
                two = data.frame(Type  = c(1,2,3), Class = c("a", "a", "b")))

Output that I want:

data.frame(Type = c(1,2,3),
           one  = c("a", "a", "b"),
           two  = c("a", "a", "b"))

  Type one two
    1   a   a
    2   a   a
    3   b   b
4

You could possible use dplyr::bind_rows combined with tidyr::spread to achieve the same result (if you are happy to consider alternative approaches). For example:

library(tidyverse)
my_list %>% bind_rows(.id = "groups") %>% spread(groups, Class)

#>   Type one two
#> 1    1   a   a
#> 2    2   a   a
#> 3    3   b   b
1
  • This is fantastic. – zlipp Feb 4 '18 at 19:16
1

The first step can be tricky, but it's simple if you iterate over names(my_list).

transformed <- sapply(names(my_list), function(name) {
  df <- my_list[[name]]
  colnames(df)[colnames(df) == 'Class'] <- name
  df
}, simplify = FALSE, USE.NAMES = TRUE)

With purrr::reduce and dplyr::full_join the result can be obtained:

purrr::reduce(transformed, dplyr::full_join)
#   Type one two
# 1    1   a   a
# 2    2   a   a
# 3    3   b   b

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