I have the following dummy data:

dt <- expand.grid(Year = 1990:2014, Product=LETTERS[1:8], Country = paste0(LETTERS, "I")) %>%   select(Product, Country, Year)
dt$value <- rnorm(nrow(dt))

I pick two product-country combinations

sdt <- dt %>% filter((Product == "A" & Country == "AI") | (Product == "B" & Country =="EI"))

and I want to see the values side by side for each combination. I can do this with dcast:

sdt %>% dcast(Year ~ Product + Country)

Is it possible to do this with spread from the package tidyr?


One option would be to create a new 'Prod_Count' by joining the 'Product' and 'Country' columns by paste, remove those columns with the select and reshape from 'long' to 'wide' using spread from tidyr.

 sdt %>%
 mutate(Prod_Count=paste(Product, Country, sep="_")) %>%
 select(-Product, -Country)%>% 
 spread(Prod_Count, value)%>%
 #  Year      A_AI       B_EI
 #1 1990 0.7878674  0.2486044
 #2 1991 0.2343285 -1.1694878

Or we can avoid a couple of steps by using unite from tidyr (from @beetroot's comment) and reshape as before.

 unite(Prod_Count, Product,Country) %>%
 spread(Prod_Count, value)%>% 
 #   Year      A_AI       B_EI
 # 1 1990 0.7878674  0.2486044
 # 2 1991 0.2343285 -1.1694878
  • 9
    well there is unite() but it appears to only work with numeric data (on purpose though?). – beetroot Jul 24 '14 at 10:05
  • 4
    @beetroot, thanks, Yes, It seems to work sdt%>% unite(Prod_Count, Product,Country) %>% spread(Prod_Count, value)%>% head() – akrun Jul 24 '14 at 10:10
  • 27
    This is the Hadley approved way of solving this problem ;) – hadley Jul 25 '14 at 21:55
  • 5
    After having consulted this thread multiple times the last months, I find the reshape2/dcast-based solution the most elegant. See also stackoverflow.com/questions/27418919/dplyr-with-subgroup-join, where the spread-based solution cannot be generalized to multiple grouping columns, but the reshape-based can. – Dieter Menne Jan 7 '15 at 11:02
  • 7
    @hadley this is an unusually ugly solution for the tidyverse. All the columns have to be listed out multiple times, and what's worse they lose types, so everything has to be cast back to numeric. – dfrankow May 24 '17 at 19:46

With the current development version of tidyr, this can be accomplished with one function call (pivot_wider()).

pivot_wider() (counterpart: pivot_longer()) works similar to spread(). However, it offers additional functionality such as using multiple key/name columns (and/or multiple value columns). To this end, the argument names_from—that indicates from which column(s) the names of the new variables are taken—may take more than one column name (here Product and Country).

#> [1] ''

sdt %>% 
    pivot_wider(id_cols = Year, names_from = c(Product, Country)) %>% 
#> # A tibble: 2 x 3
#>     Year   A_AI    B_EI
#>    <int>  <dbl>   <dbl>
#>  1  1990 -2.08  -0.113 
#>  2  1991 -1.02  -0.0546

See also: https://tidyr.tidyverse.org/dev/articles/pivot.html

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