How can I manipulate a GLM object in order to bypass this error? I would like for predict to treat the unseen levels as base cases (that is, give them a coefficient of zero.)
> master <- data.frame(x = factor(floor(runif(100,0,3)), labels=c("A","B","C")), y = rnorm(100)) > part.1 <- master[master$x == 'C',] > part.2 <- master[master$x == 'A' | master$x == 'B',] > model.2 <- glm(y ~ x, data=part.2) > predict.1 <- predict(model.2, part.1) Error in model.frame.default(Terms, newdata, na.action = na.action, xlev = object$xlevels) : factor 'x' has new level(s) C
I tried doing this:
> model.2$xlevels$x <- c(model.2$xlevels, "C") > predict.1 <- predict(model.2, part.1)
But it's not scoring the model correctly:
> predict.1[1:5] 2 3 6 8 10 0.03701494 0.03701494 0.03701494 0.03701494 0.03701494 > summary(model.2) Call: glm(formula = y ~ x, data = part.2) <snip> Coefficients: Estimate Std. Error t value Pr(>|t|) (Intercept) 0.12743 0.18021 0.707 0.482 xB -0.09042 0.23149 -0.391 0.697
predict.1 should only be 0.12743.
This is obviously just a trimmed down version--my real model has 25 or so variables in it, so an answer of
predict.1 <- rep(length(part.1), 0.12743) is not useful to me.
Thanks for any help!