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It seems to be generally considered poor programming practise to use variable names that have functions in base R with the same name.

For example, it is tempting to write:

data <- data.frame(...)
df   <- data.frame(...)

Now, the function data loads data sets while the function df computes the f density function.

Similarly, it is tempting to write:

a <- 1
b <- 2
c <- 3

This is considered bad form because the function c will combine its arguments.

But: In that workhorse of R functions, lm, to compute linear models, data is used as an argument. In other words, data becomes an explicit variable inside the lm function.

So: If the R core team can use identical names for variables and functions, what stops us mere mortals?

The answer is not that R will get confused. Try the following example, where I explicitly assign a variable with the name c. R doesn't get confused at all with the difference between variable and function:

c("A", "B")
[1] "A" "B"

c <- c("Some text", "Second", "Third")
c(1, 3, 5)
[1] 1 3 5

c[3]
[1] "Third"

The question: What exactly is the problem with having variable with the same name as base R function?

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Great question. After seeing this mentioned a few times lately I was about to ask it myself. –  Aaron May 26 '11 at 12:36

7 Answers 7

up vote 17 down vote accepted

There isn't really one. R will not normally search objects (non function objects) when looking for a function:

> mean(1:10)
[1] 5.5
> mean <- 1
> mean(1:10)
[1] 5.5
> rm(mean)
> mean(1:10)
[1] 5.5

The examples shown by @Joris and @Sacha are where poor coding catches you out. One better way to write foo is:

foo <- function(x, fun) {
    fun <- match.fun(fun)
    fun(x)
}

Which when used gives:

> foo(1:10, mean)
[1] 5.5
> mean <- 1
> foo(1:10, mean)
[1] 5.5

There are situations where this will catch you out, and @Joris's example with na.omit is one, which IIRC, is happening because of the standard, non-standard evaluation used in lm().

Several Answers have also conflated the T vs TRUE issue with the masking of functions issue. As T and TRUE are not functions that is a little outside the scope of @Andrie's Question.

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Good example of how to fix the foo function using match.fun. That's a function I should probably be using more. –  Aaron May 26 '11 at 12:42
    
In all these responses -- many of them excellent -- I'm surprised that no-one has suggested the possibility of R warning when you assign a non-function to a function name. Such a warning could be one of the myriad options that already exist, and one I probably would use. In a similar way, Perl for instance has "use strict" and "use warnings" which warn of dangerous, but not illegal, constructs. If at all possible, a language should make things easier for the user, not vice-versa. And I don't see why this would be particularly hard to implement or adverse to performance. –  c-urchin Aug 8 '11 at 22:19
    
@c-urchin one reason might be that a user could do foo <- function(x) x+1 and use it for a while and then do foo <- "bar" and use that for a while etc. Why should the language warn you in this situation? User functions are first class citizens in R and what you suggest probably would interfere with the smooth running of this. –  Gavin Simpson Aug 8 '11 at 22:23

The problem is not so much the computer, but the user. In general, code can become a lot harder to debug. Typos are made very easily, so if you do :

c <- c("Some text", "Second", "Third")
c[3]
c(3)

You get the correct results. But if you miss somewhere in a code and type c(3) instead of c[3], finding the error will not be that easy.

The scoping can also lead to very confusing error reports. Take following flawed function :

my.foo <- function(x){
    if(x) c <- 1
    c + 1
}

> my.foo(TRUE)
[1] 2
> my.foo(FALSE)
Error in c + 1 : non-numeric argument to binary operator

With more complex functions, this can lead you on a debugging trail leading nowhere. If you replace c with x in the above function, the error will read "object 'x' not found". That will lead a lot faster to your coding error.

Next to that, it can lead to rather confusing code. Code like c(c+c(a,b,c)) asks more from the brain than c(d+c(a,b,d)). Again, this is a trivial example, but it can make a difference.

And obviously, you can get errors too. When you expect a function, you won't get it, which can give rise to another set of annoying bugs :

my.foo <- function(x,fun) fun(x)
my.foo(1,sum)
[1] 1
my.foo(1,c)
Error in my.foo(1, c) : could not find function "fun"

A more realistic (and real-life) example of how this can cause trouble :

x <- c(1:10,NA)
y <- c(NA,1:10)
lm(x~y,na.action=na.omit)
# ... correct output ...
na.omit <- TRUE
lm(x~y,na.action=na.omit)
Error in model.frame.default(formula = x ~ y, na.action = na.omit, 
drop.unused.levels = TRUE) : attempt to apply non-function

Try figuring out what's wrong here if na.omit <- TRUE occurs 50 lines up in your code...

Answer edited after comment of @Andrie to include the example of confusing error reports

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1  
Nice example about scoping, but in my view this answers another very important problem - scoping, not so much variable naming. Your example will lead to confusing results even if you didn't use a base R function name as a variable name. –  Andrie May 26 '11 at 9:20
    
@Andrie : it's a real-life experience. The error "object 'x' not found" tells me immediately what is wrong. The error "non-numeric argument to binary operator" can lead you on a long trail of debugging that leads nowhere. –  Joris Meys May 26 '11 at 9:26
    
thank you. Your new example is brilliant. –  Andrie May 26 '11 at 9:49

R is very robust to this, but you can think of ways to break it. For example, consider this funcion:

foo <- function(x,fun) fun(x)

Which simply applies fun to x. Not the prettiest way to do this but you might encounter this from someones script or so. This works for mean():

> foo(1:10,mean)
[1] 5.5

But if I assign a new value to mean it breaks:

mean <- 1
foo(1:10,mean)

Error in foo(1:10, mean) : could not find function "fun"

This will happen very rarely, but it might happen. It is also very confusing for people if the same thing means two things:

mean(mean)

Since it is trivial to use any other name you want, why not use a different name then base R functions? Also, for some R variables this becomes even more important. Think of reassigning the '+' function! Another good example is reassignment of T and F which can break so much scripts.

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1  
Very good comment about using T and F. My view is that it's poor practise to use these shortcuts to indicate TRUE or FALSE. Always use TRUE and FALSE in your code - these are reserved words in R and can not be reassigned. –  Andrie May 26 '11 at 9:13
1  
Yeah I do that too now after learning the hard way how someone's script can break mine:) –  Sacha Epskamp May 26 '11 at 9:15
    
+1 for the breaking. Funny I had about almost exactly the same approach. That will teach me to load new answers before posting. –  Joris Meys May 26 '11 at 9:16
1  
Once upon a time I spend half a night to looking bug before I realized that my training set is called T and I use T in some function instead of TRUE. It was last time when I use T as TRUE. –  Marek May 26 '11 at 9:22
    
This only breaks things because your foo() is poorly coded. If you want to do things like this then you need to do fun <- match.fun(fun) in the function. Otherwise R is quit rightly telling you there is no function 1 (IIRC). R is robust to masking of functions by user objects (non function objects anyway); it only searches functions to find a match, not all objects. –  Gavin Simpson May 26 '11 at 11:20

I think the problem is when people use these functions in global environment and can cause frustration due to some unexpected error you should not be getting. Imagine you just ran a reproducible example (maybe pretty lengthy one) that overwrote one of the function you're using in your simulation that takes ages to get to where you want it and then suddenly it breaks down with a funny error. Using already existing function names for variables in a closed environment (like a function) are removed after the function closes and should not cause harm. Assuming the programmer is aware of all the consequences of such behavior.

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But the point of my example is that assigning a variable name does not overwrite the function. Your function is safe, unless you explicitly modify the function. –  Andrie May 26 '11 at 8:55
    
@Andrie : nope, it isn't. See the construct @Sacha en I refer to. –  Joris Meys May 26 '11 at 9:18
    
+1 good point of overwriting user-defined functions. –  Joris Meys May 26 '11 at 9:39

The answer is simple. Well, kind of.

The bottom line is that you should avoid confusion. Technically there is no reason to give your variables proper names, but it makes your code easier to read.

Imagine having a line of code containing something like data()[1] or similar (this line probably doesn't make sense, but it's only an example): although it is clear to you now that you're using function data here, a reader who noticed there being a data.frame named data there, may be confused.

And if you're not altruisticly inclined, remember that the reader could be you in half a year, trying to figure out what you were doing with 'that old code'.

Take it from a man who has learned to use long variable names and naming conventions: it pays back!

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I agree with @Gavin Simpson and @Nick Sabbe that there is not really a problem, but that this is more a question of readability of code. Hence, as much things in life, it is a question of convention and consensus.

And I think it is a good convention to give the general advice: Do not name your variables like base R functions!

This advice works like other good advices. For example, we all know that we shall not drink too much booze and do not eat too much unhealthy food, but from time to time we cannot follow these advices and get drunk while eating too much junk food.

The same is true for this advice. It does obviously make sense to name the data argument data. But it makes a lot less sense to name a data vector mean. Although there may be situations in which even this seems appropriate. But try to avoid those situations for clarity.

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While some languages might allow it, IF IF THEN THEN ELSE ELSE come to mind. In general it is considered very poor practice. Its not that we don't want to give you the opportunity to show off your advanced knowledge of the language, its that one day, we will have to deal with that code and we are but mortals.

So save your programming tricks from breaking the nightly builds and give your variables reasonable names, with consistent casing if you are feeling extra warm and fuzzy.

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