24

I would like to create one separate plot per group in a data frame and include the group in the title.

With the iris dataset I can in base R and ggplot do this

plots1 <- lapply(split(iris, iris$Species), 
  function(x) 
    ggplot(x, aes(x=Petal.Width, y=Petal.Length)) +
      geom_point() +
      ggtitle(x$Species[1]))

Is there an equivalent using dplyr?

Here's an attempt using facets instead of title.

p <- ggplot(data=iris, aes(x=Petal.Width, y=Petal.Length)) + geom_point()
plots2 = iris %>% group_by(Species) %>% do(plots = p %+% . + facet_wrap(~Species))

where I use %+% to replace the dataset in p with the subset for each call.

Workaround with facets

or (working but complex) with ggtitle

plots3 = iris %>%
  group_by(Species) %>%
  do(
    plots = ggplot(data=.) +
      geom_point(aes(x=Petal.Width, y=Petal.Length)) +
      ggtitle(. %>% select(Species) %>% mutate(Species=as.character(Species)) %>% head(1) %>% as.character()))

Working example

The problem is that I can't seem to set the title per group with ggtitle in a very simple way.

Thanks!

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43

Use .$Species to pull the species data into ggtitle:

iris %>% group_by(Species) %>% do(plots=ggplot(data=.) +
         aes(x=Petal.Width, y=Petal.Length) + geom_point() + ggtitle(unique(.$Species)))
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  • I tend to solve this problem via a custom-function where I use species[1] to specify the title. But if your actual plot is this simple, this certainly works. IE--my workflow is often plot.cust <- function(...); iris %>% group_by(Species) %>% plot.cust(...) – Alex W Mar 13 '15 at 14:47
  • Very simple solution, did not occur to me! Thanks! – bytesinflight Mar 13 '15 at 14:48
  • 1
    @MatthewPlourde I suppose so, but it looks a bit clearer than .$Species[1]. – James Mar 13 '15 at 15:44
  • 6
    You could also use dplyr-like first(.$Species) – talat Mar 13 '15 at 16:33
  • Actually just using ggtitle(.$Species) seems to work, but I don't know why, and I haven't checked the speed of any of the suggestions. Thanks again! – bytesinflight Mar 16 '15 at 21:06
4

From dplyr 0.8.0 we can use group_map :

library(dplyr, warn.conflicts = FALSE, quietly = TRUE)
#> Warning: le package 'dplyr' a été compilé avec la version R 3.5.2
library(ggplot2)
plots3 <- iris %>%
  group_by(Species) %>%
  group_map(~tibble(plots=list(
    ggplot(.) + aes(x=Petal.Width, y=Petal.Length) + geom_point() + ggtitle(.y[[1]]))))

plots3
#> # A tibble: 3 x 2
#> # Groups:   Species [3]
#>   Species    plots   
#>   <fct>      <list>  
#> 1 setosa     <S3: gg>
#> 2 versicolor <S3: gg>
#> 3 virginica  <S3: gg>
plots3$plots[[2]]

Created on 2019-02-18 by the reprex package (v0.2.0).

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  • Interesting to learn about group_map, though I found this didn't work with dplyr 0.8.3, plots3 returns 3 1x1 tibbles. For the last line I think it should be plots3[[2]]$plots. If one wanted to save those plots within the pipe, you think that's possible? Or better to loop through plots3[[n]]$plots ? Cheers! – dez93_2000 Nov 13 '19 at 22:07
1

This is another option using rowwise:

plots2 = iris %>% 
    group_by(Species) %>% 
    do(plots = p %+% .) %>% 
    rowwise() %>%
    do(x=.$plots + ggtitle(.$Species))
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