Disclaimer: This project started out as someone else's code, and I'm sure there are non-optimal design decisions, but my hands are a little bit more tied than if it were my own project.
I have a machine learning algorithm that uses a trained model object in combination with a set of scoring data to create a data frame of scored data. The model object is a list with a formula and a data frame.
One of the roles of the model's data frame is to ensure that the scoring data frame has the same columns as those the model expects and that the factor levels of those columns are the same. To accomplish this, we store one arbitrary row of the training data in the
model$df (data frame), because a data frame with no rows is forced to have no factor levels. We then use the somewhat kludgy line
scoring.set$df <- rbind(model$df, scoring.set$df)[-1, ]
which results in a scoring data frame with identical values but expanded factor levels. My understanding is that
rbind forces levels in the factor variables of both data frames to be equal to the union of the levels in the two individual frames, so this does pretty much exactly what I need.
However, I'm sure that it's not the right way. Any recommendations?
Thanks in advance, and I'll be standing by to elaborate.