Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I'm trying to write a simple plot function, using the ggplot2 library. But the call to ggplot doesn't find the function argument.

Consider a data.frame called means that stores two conditions and two mean values that I want to plot (condition will appear on the X axis, means on the Y).

library(ggplot2)
m <- c(13.8, 14.8)
cond <- c(1, 2)
means <- data.frame(means=m, condition=cond)
means
# The output should be:
#     means    condition
#   1 13.8     1
#   2 14.8     2

testplot <- function(meansdf)
{
  p <- ggplot(meansdf, aes(fill=meansdf$condition, y=meansdf$means, x = meansdf$condition))
  p + geom_bar(position="dodge", stat="identity")
}

testplot(means)
# This will output the following error:
# Error in eval(expr, envir, enclos) : object 'meansdf' not found

So it seems that ggplot is calling eval, which can't find the argument meansdf. Does anyone know how I can successfully pass the function argument to ggplot?

(Note: Yes I could just call the ggplot function directly, but in the end I hope to make my plot function do more complicated stuff! :) )

share|improve this question
2  
Please, don't put "create a dataframe that looks like this". Give the CODE, so we don't have to figure out what exactly you did to construct "the dataframe that looks like that". –  Joris Meys Feb 24 '11 at 15:53
    
Thx. I also changed your title to reflect the question a bit more clear –  Joris Meys Feb 24 '11 at 16:49

7 Answers 7

up vote 7 down vote accepted

This is an example of a problem that is discussed earlier. Basically, it comes down to ggplot2 being coded for use in the global environment mainly. In the aes() call, the variables are looked for either in the global environment or within the specified dataframe.

library(ggplot2)
means <- data.frame(means=c(13.8,14.8),condition=1:2)

testplot <- function(meansdf)
{
  p <- ggplot(meansdf, aes(fill=condition, 
          y=means, x = condition))
  p + geom_bar(position="dodge", stat="identity")
}

EDIT:

update: After seeing the other answer and updating the ggplot2 package, the code above works. Reason is, as explained in the comments, that ggplot will look for the variables in aes in either the global environment (when the dataframe is specifically added as meandf$... ) or within the mentioned environment.

For this, be sure you work with the latest version of ggplot2.

share|improve this answer
    
This is incorrect. ggplot evaluates variable names inside the aes() with respect to the data argument. You just need to do as the other answer states. –  Aaron Feb 24 '11 at 22:24
    
@Aaron : The ggplot package has to be updated to the latest version for this to work. See explanation in the edit –  Joris Meys Feb 24 '11 at 22:32
    
Shouldn't aes_string() be used here?? –  Martín Bel Jan 3 '14 at 17:37

Here is a simple trick I use a lot to define my variables in my functions environment (second line):

FUN<-function(fun.data,fun.y){
             fun.data$fun.y<-fun.data[,fun.y]
             ggplot(fun.data,aes(x,fun.y))+geom_point()+scale_y_continuous(fun.y)    
             }

datas<-data.frame(x=rnorm(100,0,1),y=x+rnorm(100,2,2),z=x+rnorm(100,5,10)) FUN(datas,"y") FUN(datas,"z")

Note how the y-axis label also changes when different variables or data-sets are used.

share|improve this answer

I don't think you need to include the meansdf$ part in your function call itself. This seems to work on my machine:

meansdf <- data.frame(means = c(13.8, 14.8), condition = 1:2)

testplot <- function(meansdf)
{
p <- ggplot(meansdf, aes(fill=condition, y=means, x = condition))
p + geom_bar(position="dodge", stat="identity")
}


testplot(meansdf)

to produce:

enter image description here

share|improve this answer
    
There's a subtle thing here - meansdf is defined in the global environment. However, even without doing that, it does work as you suggest (without the meansdf$). Anyone know why that is?? –  trev Feb 24 '11 at 17:15
1  
@trev : because ggplot looks for the variables within the "environment" of the dataframe meansdf. –  Joris Meys Feb 24 '11 at 17:25
    
+1 as you had the correct solution. –  Joris Meys Feb 24 '11 at 22:45

The "proper" way to use ggplot programmatically is to use aes_string() instead of aes() and use the names of the columns as characters rather than as objects:

For more programmatic uses, for example if you wanted users to be able to specify column names for various aesthetics as arguments, or if this function is going in a package that needs to pass R CMD CHECK without warnings about variable names without definitions, you can use aes_string(), with the columns needed as characters.

testplot <- function(meansdf, xvar = "condition", yvar = "means",
                     fillvar = "condition") {
    p <- ggplot(meansdf,
                aes_string(x = xvar, y= yvar, fill = fillvar)) +
             geom_bar(position="dodge", stat="identity")
}
share|improve this answer
    
it's only useful when the variable names need to be user-defined; the accepted answer is perfectly valid –  baptiste Dec 13 '14 at 18:46
    
This solution is exactly what I needed; thank you. –  fredtal Jan 19 at 21:52

This frustrated me for some time. I wanted to send different data frames with different variable names and I wanted the ability to plot different columns from the data frame. I finally got a work around by creating some dummy (global) variables to handle plotting and forcing assignment inside the function

plotgraph function(df,df.x,df.y) {

dummy.df <<- df
dummy.x <<- df.x
dummy.y <<- df.y

p = ggplot(dummy.df,aex(x=dummy.x,y=dummy.y,.....)
print(p)

}

then in the main code I can just call the function

plotgraph(data,data$time,data$Y1)
plotgraph(data,data$time,data$Y2)
share|improve this answer
    
IMHO this is the most pragmatic solution, even if I really dislike globals. –  Daniel Lee Mar 24 at 17:53

Short answer: Use qplot

Long answer: In essence you want something like this:

my.barplot <- function(x=this.is.a.data.frame.typically) {
   # R code doing the magic comes here
   ...
}

But that lacks flexibility because you must stick to consistent column naming to avoid the annoying R scope idiosyncrasies. Of course the next logic step is:

my.barplot <- function(data=data.frame(), x=..., y....) {
   # R code doing something really really magical here
   ...
}

But then that starts looking suspiciously like a call to qplot(), right?

qplot(data=my.data.frame, x=some.column, y=some.other column,
      geom="bar", stat="identity",...)

Of course now you'd like to change things like scale titles but for that a function comes handy... the good news is that scoping issues are mostly gone.

my.plot <- qplot(data=my.data.frame, x=some.column, y=some.other column,...)
set.scales(p, xscale=scale_X_continuous, xtitle=NULL,
           yscale=scale_y_continuous(), title=NULL) {
  return(p + xscale(title=xtitle) + yscale(title=ytitle))
}
my.plot.prettier <- set.scale(my.plot, scale_x_discrete, 'Days',
                              scale_y_discrete, 'Count')
share|improve this answer

Another workaround is to define the aes(...) as a variable of your function :

func<-function(meansdf, aes(...)){}

This just worked fine for me on a similar topic

share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.