3

I am not surprised that this function doesn't work, but I cannot quite understand why.

computeMeans <- function(data,dv,fun) {
    x <- with(data,aggregate(dv,
        list(
            method=method,
            hypo=hypothesis,
            pre.group=pre.group,
            pre.smooth=pre.smooth
        ),
        fun ) )
    return(x)
}

computeMeans(df.basic,dprime,mean)

Where df.basic is a dataframe with factors method, hypothesis, etc, and several dependent variables (and I specify one with the dv parameter, dprime).

I have multiple dependent variables and several dataframes all of the same form, so I wanted to write this little function to keep things "simple". The error I get is:

Error in aggregate(dv, list(method = method, hypo = hypothesis, 
pre.group = pre.group,  : 
    object 'dprime' not found

But dprime does exist in df.basic, which is referenced with with(). Can anyone explain the problem? Thank you!

EDIT: This is the R programming language. http://www.r-project.org/

3
  • Which programming language is this?
    – Yogu
    Jul 30, 2012 at 21:27
  • R, r-project.org (sorry, I thought I tagged it. Thanks for the edit).
    – Chris Cox
    Jul 30, 2012 at 21:28
  • Give us a sample of what df.basic looks like with dput(head(df.basic))
    – nograpes
    Jul 30, 2012 at 21:41

3 Answers 3

3

Although dprime exists in df.basic, when you call it at computeMeans it has no idea what you are referring to, unless you explicitly reference it.

computeMeans(df.basic,df.basic$dprime,mean)

will work.

2
  • Ah, that is a good point. Thank you! Sorry, turned out to be a silly question I guess.
    – Chris Cox
    Jul 30, 2012 at 21:46
  • @ChrisCox -- Not a silly question! The 'problem' is actually with the way with() works, as alluded to by @Michael. (This is why it's generally poor practice to use with() programatically). Try the following to see that (thanks to lazy evaluation) there is in fact no need for dprime to be available in the environment of computeMeans(): computeMeans <- function(a,b) a; computeMeans(9, dprime). Jul 30, 2012 at 22:22
3

Alternatively

computeMeans <- function(data,dv,fun) {
    dv <- eval(substitute(dv), envir=data)
    x <- with(data,aggregate(dv,
        list(
            method=method,
            hypo=hypothesis,
            pre.group=pre.group,
            pre.smooth=pre.smooth
        ),
        fun ) )
    return(x)
}

You might think that since dv is in the with(data, (.)) call, it gets evaluated within the environment of data. It does not.

When a function is called the arguments are matched and then each of the formal arguments is bound to a promise. The expression that was given for that formal argument and a pointer to the environment the function was called from are stored in the promise.

Until that argument is accessed there is no value associated with the promise. When the argument is accessed, the stored expression is evaluated in the stored environment, and the result is returned. The result is also saved by the promise.

source

A promise is therefore evaluated within the environment in which it was created (ie, the environment where the function was called), regardless of the environment in which the promise is first called. Observe:

delayedAssign("x", y)
local({
    y <- 10
    x
})  
Error in eval(expr, envir, enclos) : object 'y' not found

w <- 10
delayedAssign("z", w)
local({
    w <- 11
    z
})
[1] 10

Note that delayedAssign creates a promise. In the first example, x is assigned the value of y via a promise in the global environemnt, but y has not been defined in the global enviornment. x is called in an enviornment where y has been defined, yet calling x still results in an error indicating that y does not exist. This demonstrates that x is evaluated in environment in which the promise was defined, not in its current environment.

In the second example, z is assigned the value of w via a promise in the global environment, and w is defined in the global environment. z is then called in an enviornment where w has been assigned a different value, yet z still returns the value of the w in the environment where the promise has been created.

2

Passing in the dprime argument as a character string would allow you to sidestep any consideration of the involved scoping and evaluation rules discussed in @Michael's answer:

computeMeans <- function(data, dv, fun) {
    x <- aggregate(data[[dv]],
        list(
            method = data[["method"]],
            hypo = data[["hypothesis"]],
            pre.group = data[["pre.group"]],
            pre.smooth = data[["pre.smooth"]]
        ),
        fun )
    return(x)
}
computeMeans(df.basic, "dprime", mean)

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