I’m executing lm() with arguments formula, data, na.action, and weights. My weights are stored in a numeric variable.
- When I specify formula as a character (i.e.
formula = "Response~0+."), I get an error that weights is not of the proper length (even though it is). - When I specify formula without the quotes (i.e.
formula = Response~0+.), the function works fine.
I stumbled upon this sentence in the lm() documentation:
All of weights, subset and offset are evaluated in the same way as variables in formula, that is first in data and then in the environment of formula.
This is difficult for me to interpret, but I sense that it contains the answer to my question.
(This has nothing to do with the real problem you have, [@DWin has addressed that, as have commentators on your Q] but is by way of explanation of the part of the documentation you quote)
The quoted help information means that the same process is used to find the variables/objects references in a model formula as is used to find variables/objects supplied to the arguments weights, subset etc.
R looks for for the objects referenced in the formula and by arguments weights, subset, and offset, first in the data object and then in the environment of the formula (which is usually the global environment during interactive use).
The reason why the docs mention this explicitly is because
lm()as with many R functions that employ model-formula interfaces use the so-called standard non-standard evaluation. The up-shot is that say one suppliesweights = foo, R won’t necessarily look for objectfooin evaluating the argument. Instead, it will look for an object with the namefooin the object supplied to thedataargument, and if it doesn’t find it there, then in the environment attached to the model formula, which as mentioned, doesn’t always have to be the global environment.