I am very new to R. I have data that looks like this:
> head(NB) a s e i 9011 20-30 F Others 10-50K 9012 GT 45 M Others 10-50K
I classify it with naiveBayes like this:
c = i ~ a + s + e cl = naiveBayes(c, head(NB,1500), laplace = 0)
Then I predict its outcome on the new data like this
> p <- predict(classifier, tail(NB, 500), type = c("class", "raw"), threshold = 0.001)
I want to look at the prediction for each datapoint in p and see how well it matches up with the actual value for p -- but I can't figure out what p actually represents. It seems to have no rows and no columns -- but it plots into a histogram that seems to show predictions from the data.
> nrow(p) NULL > ncol(p) NULL > str(p) says Factor w/ 3 levels "10-50K","50-80K",..: 1 1 1 1 1 1 1 1 1 1 ...
What is going on? How do I find out what it predicts, for say, the 3rd value in the P dataset? Why doesn't p have any rows or columns?