In R, you might have estimated a model with a log-transformed dependent variable:
mfit <- lm(
formula = log(salary) ~ yrs.service + yrs.since.phd,
data = Salaries
)
Then you might want to alter the model frame and call an update to refit the model:
n <- nrow(Salaries)
mfr <- model.frame(mfit)[sample(1:n, size=n, replace=TRUE),]
mfit2 <- update(mfit, data = mfr)
This will cause an error:
Error in eval(expr, envir, enclos) : object 'salary' not found
The reason is that the formula still has dependent variable log(salary)
and the variable in the model frame is called log(salary)
. R thinks that it can find salary
and then call log
on it. The same error would occur without the resampling, the example just shows why one might want to do it.
The procedure above is from a bootstrap package where resampling rows is performed. Is this behavior to be expected, or is it a bug? I know that one can get around it by transforming the variables in the data argument, but this seems annoying and overlooked...
glm(salary~yrs.service + yrs.since.phd,family=gaussian(link="log"))