1

I've been using group_walk() to make plots of split sections of a dataframe within a dplyr pipe. This has been working well but I can't figure out how to add multiple functions for each split section.

I have a dataframe

df = data.frame(x = rep(rnorm(5),5), y = rep(rnorm(5),5), col = rep(c(1:5),5), 
                lab = rep(c('a','b','c','d','e'),5),
                section = c(rep(1,5),rep(2,5),rep(3,5),rep(4,5),rep(5,5)))
##group_walk plotting
df %>% 
  group_by(section) %>%
  group_walk(~ plot(.x$y~.x$x, col = .x$col))

What I would like to add is a second function within group_walk to add a legend to each subplot, something like this:

df %>% 
  group_by(section) %>%
  group_walk(~ plot(.x$y~.x$x, col = .x$col),
             ~ legend('bottomright',col = .x$col, legend = .x$lab))

But I don't know what the appropriate syntax is for this. I'd prefer working within dplyr pipes as opposed to going back to for loops. Is there a way to do this or does group_walk not support multiple function calls for each section of the data?

2

The option would be to use braces ({}) to keep it as a single block

library(tidyverse)
df %>% 
 group_by(section)  %>% 
 group_walk(~ {
    plot(.x$y ~ .x$x, col = .x$col)
    legend('bottomright', col = .x$col, legend = .x$lab)
  })

enter image description here


Note that in the formula, we can pass the column name if we specify the data as parameter and this will also remove the .x$ in the plot axis title

df %>%
    group_by(section)  %>% 
    group_walk(~ {
        plot(y ~ x, col = col, data = .x)
        legend('bottomright', col = .x$col, legend = .x$lab)
   })
  • 1
    Perfect thank you. – C. Denney Mar 29 at 16:59

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