What are the benefits of using
with()? In the help file it mentions it evaluates the expression in an environment it creates from the data. What are the benefits of this? Is it faster to create an environment and evaluate it in there as opposed to just evaluating it in the global environment? Or is there something else I'm missing?
What are the benefits of using
with is a wrapper for functions with no
There are many functions that work on data frames and take a
data argument so that you don't need to retype the name of the data frame for every time you reference a column.
transform are just a few examples.
with is a general purpose wrapper to let you use any function as if it had a data argument.
mtcars data set, we could fit a model with or without using the data argument:
# this is obviously annoying mod = lm(mtcars$mpg ~ mtcars$cyl + mtcars$disp + mtcars$wt) # this is nicer mod = lm(mpg ~ cyl + disp + wt, data = mtcars)
However, if (for some strange reason) we wanted to find the
cyl + disp + wt, there is a problem because
mean doesn't have a data argument like
lm does. This is the issue that
# without with(), we would be stuck here: z = mean(mtcars$cyl + mtcars$disp + mtcars$wt) # using with(), we can clean this up: z = with(mtcars, mean(cyl + disp + wt))
with(data, foo(...)) lets us use any function
foo as if it had a
data argument - which is to say we can use unquoted column names, preventing repetitive
When to use
with whenever you like interactively (R console) and in R scripts to save typing and make your code clearer. The more frequently you would need to re-type your data frame name for a single command (and the longer your data frame name is!), the greater the benefit of using
Also note that
with isn't limited to data frames. From
For the default
withmethod this may be an environment, a list, a data frame, or an integer as in
I don't often work with environments, but when I do I find
with very handy.
When you need pieces of a result for one line only
As @Rich Scriven suggests in comments,
with can be very useful when you need to use the results of something like
rle. If you only need the results once, then his example
with(rle(data), lengths[values > 1]) lets you use the
rle(data) results anonymously.
When to avoid
When there is a
Many functions that have a
data argument use it for more than just easier syntax when you call it. Most modeling functions (like
lm), and many others too (
ggplot!) do a lot with the provided
data. If you use
with instead of a
data argument, you'll limit the features available to you. If there is a
data argument, use the
data argument, not
Adding to the environment
In my example above, the result was assigned to the global environment (
bar = with(...)). To make an assignment inside the list/environment/data, you can use
within. (In the case of
transform is also good.)
with in R packages. There is a warning in
help(subset) that could apply just about as well to
Warning This is a convenience function intended for use interactively. For programming it is better to use the standard subsetting functions like
[, and in particular the non-standard evaluation of argument subset can have unanticipated consequences.
If you build an R package using
with, when you check it you will probably get warnings or notes about using variables without a visible binding. This will make the package unacceptable by CRAN.
Many (mostly dated) R tutorials use
attach to avoid re-typing data frame names by making columns accessible to the global environment.
attach is widely considered to be bad practice and should be avoided. One of the main dangers of attach is that data columns can become out of sync if they are modified individually.
with avoids this pitfall because it is invoked one expression at a time. There are many, many questions on Stack Overflow where new users are following an old tutorial and run in to problems because of
attach. The easy solution is always don't use
with all the time seems too repetitive
If you are doing many steps of data manipulation, you may find yourself beginning every line of code with
with(my_data, .... You might think this repetition is almost as bad as not using
with. Both the
dplyr packages offer efficient data manipulation with non-repetitive syntax. I'd encourage you to learn to use one of them. Both have excellent documentation.
I use it when i don't want to keep typing
dataframe$. For example
with(mtcars, plot(wt, qsec))
The former looks up
qsec in the
mtcars data.frame. Of course
is more appropriate for plot or other functions that take a