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I often want to run a list of models, like so:

data(mtcars)
ms <- lapply(list(
      mpg ~ disp
    , mpg ~ hp
    ), lm, data=mtcars

I'd then like to be able to extract the call from these models, like so:

lapply(ms, getCall)

But I get this:

[[1]]
FUN(formula = X[[1L]], data = ..1)
[[2]]
FUN(formula = X[[2L]], data = ..1)                  

How can I get this:

[[1]]
lm(formula = mpg ~ disp, data=mtcars)
[[2]]
lm(formula = mpg ~ hp, data=mtcars)

(I figured out I could get it by just making a list of the models, like this:

ms <- list(
      lm(mpg ~ disp, data=mtcars)
    , lm(mpg ~ hp, data=mtcars)
    )

But I'd prefer to avoid the repetition.

I have a sense that this has to do with evaluating the formula in the right environment, but I don't know how to.

share|improve this question
up vote 1 down vote accepted

I think lapply is invoking lm under a different name, maybe try this:

data(mtcars)
ms <- lapply(list(
      mpg ~ disp
    , mpg ~ hp
    ), function(x) lm(x, data=mtcars) )

EDIT:

We'll have to mess with substitute too then:

data(mtcars)
f <- function(x) {z <- x; eval(substitute(lm(z, data=mtcars))) }
ms <- lapply(list(
      mpg ~ disp
    , mpg ~ hp
    ), f)

R>
R>ms
[[1]]

Call:
lm(formula = mpg ~ disp, data = mtcars)

Coefficients:
(Intercept)         disp  
29.59985476  -0.04121512  


[[2]]

Call:
lm(formula = mpg ~ hp, data = mtcars)

Coefficients:
(Intercept)           hp  
30.09886054  -0.06822828  
share|improve this answer
    
This is closer, but the now the formula is replaced by 'x', eg: lm(formula = x, data = mtcars) – ajerneck Jan 26 '14 at 18:05
    
The edited version with eval and substitute does exactly what I need. – ajerneck Feb 28 '14 at 19:27

I think this is an issue with the scoping rules of lapply and non-standard evaluation in lm. However, you can get around it by creating a base model, and using update in an lapply call:

tlm <- lm(data=mtcars)
lapply(list(mpg~disp,mpg~hp), update, object=tlm)
[[1]]

Call:
lm(formula = mpg ~ disp, data = mtcars)

Coefficients:
(Intercept)         disp  
   29.59985     -0.04122  


[[2]]

Call:
lm(formula = mpg ~ hp, data = mtcars)

Coefficients:
(Intercept)           hp  
   30.09886     -0.06823  
share|improve this answer

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