7

I would like to use a variable of the dataframe passed to the data parameter of function the ggplot in another ggplot2 function in the same call.

For instance, in the following example I want to refer to the variable x in the dataframe passed to the data parameter in ggplot in another function scale_x_continuous such as in:

library(ggplot2)

set.seed(2017)

samp <- sample(x = 20, size= 1000, replace = T)

ggplot(data = data.frame(x = samp), mapping = aes(x = x)) + geom_bar() +
scale_x_continuous(breaks = seq(min(x), max(x)))

And I get the error :

Error in seq(min(x)) : object 'x' not found

which I understand. Of course I can avoid the problem by doing :

df <- data.frame(x = samp)
ggplot(data = df, mapping = aes(x = x)) + geom_bar() +
scale_x_continuous(breaks = seq(min(df$x), max(df$x)))

but I don't want to be forced to define the object df outside the call to ggplot. I want to be able to directly refer to the variables in the dataframe I passed in data.

Thanks a lot

1
  • Thanks MrFlick for this precision, and since I mostly use a unique data source, I didn't see the drawbacks you mentionned.. Do you think that it is possible to force scale_x_continuous to look up in the same environment as the one in ggplot call ? By creating helper function do you mean creating function such as in : helper <- function(df) { ggplot(data = df, mapping = aes(x = x)) + scale_x_continuous(breaks = seq(min(df$x), max(df$x))) } then call : helper(data.frame(x = samp)) + geom_bar() ? Apr 7, 2017 at 15:31

2 Answers 2

6

The scale_x_continuous function does not evaluate it's parameters in the data environment. One reason for this is that each layer can have it's own data source so by the time you got to the scales it wouldn't be clear which data environment is the "correct" one any more.

You could write a helper function to initialize the plot with your default. For example

helper <- function(df, col) { 
    ggplot(data = df, mapping = aes_string(x = col)) + 
    scale_x_continuous(breaks = seq(min(df[[col]]), max(df[[col]])))
}

and then call

helper(data.frame(x = samp), "x") + geom_bar()

Or you could write a wrapper around just the scale part. For example

scale_x_custom <- function(x) {
   scale_x_continuous(breaks = seq(min(x) , max(x)))
}

and then you can add your custom scale to your plot

ggplot(data = df, mapping = aes(x = x)) + 
  geom_bar() +
  scale_x_custom(df$x)

Or since you just want breaks at integer values, you can calculate the breaks from the default limits without needed to actually specify the data. For example

scale_x_custom <- function() {
  scale_x_continuous(expand=expansion(0, .3),
    breaks = function(x) {
    seq(ceiling(min(x)), floor(max(x)))
  })
}

ggplot(data = df, mapping = aes(x = x)) + 
  geom_bar() +
  scale_x_custom()

enter image description here

0
4

Another less than ideal alternative would be to utilize the . special symbol in combination with {} which is imported from magrittr.

Enclosing the ggplot call in curly brackets allows one to reference . multiple times.

data.frame(x = samp) %>% 
  {ggplot(data = ., mapping = aes(x = x)) + geom_bar() +
      scale_x_continuous(breaks = seq(min(.$x), max(.$x)))}

enter image description here

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