predict.lm() with an unknown factor level

I am fitting a model to factor data and predicting. If the `newdata` in `predict.lm()` contains a single factor level that is unknown to the model, all of `predict.lm()` fails and returns an error.

Is there a good way to have `predict.lm()` return a prediction for those factor levels the model knows and NA for unknown factor levels, instead of only an error?

Example code:

``````foo <- data.frame(response=rnorm(3),predictor=as.factor(c("A","B","C")))
model <- lm(response~predictor,foo)
foo.new <- data.frame(predictor=as.factor(c("A","B","C","D")))
predict(model,newdata=foo.new)
``````

I would like the very last command to return three "real" predictions corresponding to factor levels "A", "B" and "C" and an `NA` corresponding to the unknown level "D".

-

Edited after Hadleys comment in an attempt to clarify the message I'm trying to bring across

You have to remove the extra levels before any calculation, like:

``````> id <- which(!(foo.new\$predictor %in% levels(foo\$predictor)))
> foo.new\$predictor[id] <- NA
> predict(model,newdata=foo.new)
1          2          3          4
-0.1676941 -0.6454521  0.4524391         NA
``````

This is a more general way of doing it, it will set all levels that do not occur in the original data to NA. As Hadley mentioned in the comments, they could have chosen to include this in the `predict()` function, but they didn't

Why you have to do that becomes obvious if you look at the calculation itself. Internally, the predictions are calculated as :

``````model.matrix(~predictor,data=foo) %*% coef(model)
[,1]
1 -0.1676941
2 -0.6454521
3  0.4524391
``````

At the bottom you have both model matrices. You see that the one for `foo.new` has an extra column, so you can't use the matrix calculation any more. If you would use the new dataset to model, you would also get a different model, being one with an extra dummy variable for the extra level.

``````> model.matrix(~predictor,data=foo)
(Intercept) predictorB predictorC
1           1          0          0
2           1          1          0
3           1          0          1
attr(,"assign")
[1] 0 1 1
attr(,"contrasts")
attr(,"contrasts")\$predictor
[1] "contr.treatment"

> model.matrix(~predictor,data=foo.new)
(Intercept) predictorB predictorC predictorD
1           1          0          0          0
2           1          1          0          0
3           1          0          1          0
4           1          0          0          1
attr(,"assign")
[1] 0 1 1 1
attr(,"contrasts")
attr(,"contrasts")\$predictor
[1] "contr.treatment"
``````

You can't just delete the last column from the model matrix either, because even if you do that, both other levels are still influenced. The code for level `A` would be (0,0). For `B` this is (1,0), for `C` this (0,1) ... and for `D` it is again (0,0)! So your model would assume that `A` and `D` are the same level if it would naively drop the last dummy variable.

On a more theoretical part: It is possible to build a model without having all the levels. Now, as I tried to explain before, that model is only valid for the levels you used when building the model. If you come across new levels, you have to build a new model to include the extra information. If you don't do that, the only thing you can do is delete the extra levels from the dataset. But then you basically lose all information that was contained in it, so it's generally not considered good practice.

Hope it's clear now.

-
I'm not entirely sure why this would be impossible in theory... if (if! I should have specified this in advance) I use a contr.treatment model matrix, the other factor levels should not be influenced, should they? –  Stephan Kolassa Nov 26 '10 at 13:04
I very much appreciate your explanations, but I still don't get it... Yes, of course a 3-level factor and a 4-level factor don't carry the same information. But why shouldn't one make predictions for the factor levels one has already seen? Yes, the model matrix for the 4-level factor won't fit the coefficients for the 3-level factor, but one could simply remove the column that corresponds to the unknown level. My application is forecasting sales depending on day of week - and shouldn't one be able to forecast sales for a Monday (which we have seen), even if the store was never open on Sunday? –  Stephan Kolassa Nov 26 '10 at 15:02
@Stephan : Off course. But not if you have sale data on sunday that you didn't bring into the original model. Because a shop that sells on sunday will not sell the same amount on monday as a shop that didn't open on sunday. Hence, model and new data are not compatible because they don't talk about exactly the same thing. That's the thing with statistics: it's math, it's not some general theory. –  Joris Meys Nov 26 '10 at 15:06
@Stephan: added another angle to look at it, maybe that clears things up. –  Joris Meys Nov 26 '10 at 16:31
I think you're off base here - there are many situations in which you might not know all of the possible values in advance, and when encountering a new value returning a missing value is a sensible choice. The fact that the model matrix would have a different representation is a red herring. –  hadley Nov 26 '10 at 20:38