I understand how to use aes, but I don't understand the programmatic paradigm.

When I use ggplot, assuming I have a data.frame with column names "animal" and "weight", I can do the following.

ggplot(df, aes(x=weight)) + facet_grid(~animal) + geom_histogram()

What I don't understand is that weight and animal are not supposed to be strings, they are just typed out as is. How is it I can do that? It should be something like this instead:

ggplot(df, aes(x='weight')) + facet_grid('~animal') + geom_histogram()

I don't "declare" weight or animal as vectors anywhere? This seems to be... really unusual? Is this like a macro or something where it gets aes "whole," looks into df for its column names, and then fills in the gaps where it sees those variable names in aes?

I guess what I would like is to see some similar function in R which can take variables which are not declared in the scope, and the name of this feature, so I can read further and maybe implement my own similar functions.

  • 2
    I'd recommend checking out these vignettes. They're more based around dplyr's NSE, but they both talk about the idea that R can evaluate arguments in different enviroments. rpubs.com/lionel-/programming-draft. dplyr.tidyverse.org/articles/programming.html – Conor Neilson Jul 10 '18 at 23:40
  • Are you familiar with the other tidyverse packages? They generally work this way, taking a data frame, passing it along subsequent functions, and operating on columns based on quosures. Here's another tutorial that's helped me wrap my head around this – camille Jul 10 '18 at 23:47
  • 1
    This isn't so unusual--it's the same for base R functions. E.g., plot(mpg~hp,data=mtcars) – Richard Border Jul 11 '18 at 2:25

In R this is called non-standard evaluation. There is a chapter on non-standard evaluation in R in the Advanced R book available free online. Basically R can look at the the call stack to see the symbol that was passed to the function rather than just the value that symbol points to. It's used a lot in base R. And it's used in a slightly different way in the tidyverse which has a formal class called a quosure to make this stuff easier to work with.

These methods are great for interactive programming. They save keystrokes and clutter, but if you make functions that are too dependent on that function, they become difficult to script or include in other functions.

The formula syntax (the one with the ~) probably the safest and more programatic way to work with symbols. It captures symbols that can be later evaluated in the context of a data.frame with functions like model.frame(). And there are build in functions to help manipulate formulas like update() and reformulate.

And since you were explicitly interested in the aes() call, you can get the source code for any function in R just by typing it's name without the quotes. With ggplot2_2.2.1, the function looks like this

# function (x, y, ...) 
# {
#     aes <- structure(as.list(match.call()[-1]), class = "uneval")
#     rename_aes(aes)
# }
# <environment: namespace:ggplot2>

The newest version of ggplot uses different rlang methods to be more consistent with other tidyverse libraries so it looks a bit different.

  • Thanks! This is just what I wanted. Surprising how hard it was to search for this answer on google, as if you don't know what it is, it is so weird it's hard to formulate a query on it, and most of the results just tell you how to use ggplot. Thanks again! – Ryan Jul 13 '18 at 14:08

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