predict function can take a
newdata parameter and its document reads:
newdata An optional data frame in which to look for variables with which to predict. If omitted, the fitted values are used.
But I found that it is not totally true depending on how the model is fit. For instance, following code works as expected:
x <- rnorm(200, sd=10) y <- x + rnorm(200, sd=1) data <- data.frame(x, y) train = sample(1:length(x), size=length(x)/2, replace=F) dataTrain <- data[train,] dataTest <- data[-train,] m <- lm(y ~ x, data=dataTrain) head(predict(m,type="response")) head(predict(m,newdata=dataTest,type="response"))
But if the model is fit as such:
m2 <- lm(dataTrain$y ~ dataTrain$x) head(predict(m2,type="response")) head(predict(m2,newdata=dataTest,type="response"))
The last two line will produce exactly the same result. The
predict function works in a way ignoring
newdata parameter, i.e. it can't really compute the prediction on new data at all.
The culprit, of course, is
lm(y ~ x, data=dataTrain) versus
lm(dataTrain$y ~ dataTrain$x). But I didn't find any document that mentioned the difference between these two. Is it a known issue?
I'm using R 2.15.2.