I want to write a function that evaluates an expression in a data frame, but one that does so using expressions that may or may not contain user-defined objects. I think the magic word is "non-standard evaluation", but I cannot quite figure it out just yet.

One simple example (yet realistic for my purposes): Say, I want to evaluate an lm() call for variables found in a data frame.

mydf <- data.frame(x=1:10, y=1:10)

A function that does so can be written as follows:

f <- function(df, expr){
  expr <- substitute(expr)
  pf <- parent.frame()
  eval(expr, df, pf)

Such that I get what I want using the following command.

f(mydf, lm(y~x))

# Call:
# lm(formula = y ~ x)
# Coefficients:
# (Intercept)            x  
#    1.12e-15     1.00e+00  

Nice. However, there are cases in which it is more convenient to save the model equation in an object before calling lm(). Unfortunately the above function no longer does it.

fml <- y~x

f(mydf, lm(fml))
# Error in eval(expr, envir, enclos): object 'y' not found

Can someone explain why the second call doesn't work? How could the function be altered, such that both calls would lead to the desired results? (desired=fitted model)


1 Answer 1


From ?lm, re data argument:

If not found in data, the variables are taken from environment(formula)

In your first case, the formula is created in your eval(expr, df, pf) call, so the environment of the formula is an environment based on df. In the second case, the formula is created in the global environment, which is why it doesn't work.

Because formulas come with their own environment, they can be tricky to handle in NSE.

You could try:

    fml <- y~x

but that probably isn't ideal for you. Short of checking whether any names in the captured parameter resolve to formulas, and re-assigning their environments, you'll have some trouble. Worse, it isn't even necessarily obvious that re-assigning the environment is the right thing to do. In many cases, you do want to look in the formula environment.

There was a loosely related discussion on this issue on R Chat:

  • I think I know what you mean, even though I would phrase it a little differently. Let me see if I understand this: The problem is that eval() has to look for the object fml before lm() can be evaluated as a whole. Since fml is not available in the data frame, eval resorts to looking for it in pf. The formula is found there because it was created there, but no y or x are to be seen.
    – SimonG
    Commented Apr 22, 2015 at 18:07
  • 1
    @SimonG The problem is not eval. The problem is that lm looks for variables in the environment(formula) irrespective of what frame the lm call is evaluated in.
    – BrodieG
    Commented Apr 22, 2015 at 18:36

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