I have 3.25 years of time-based data and I'm using scikit-learn's RandomForestClassifier to try and classify live data as it comes in. My dataset has roughly 75,000 rows and 1,100 columns, and my train/test split is the first 3 years for train (66,000 rows), and the last 0.25 years (3 months or 9,000 rows) for test.
Since there's variability each time you train, I don't always see good precision on classifying the test data...but sometimes I do. So what I've tried doing is re-training the classifier over and over until I do see good precision on classifying the test data, then save that version to disk for use in live classification as new data comes in.
Some may say this is over-fitting the model to the test data...which is likely true, but I have decided that, due to randomness in training, finding a good fit on the first iteration versus the 100th makes no difference, because the iteration in which a good fit occurs happens completely by chance. Hence my determination to keep re-training until I find a good fit.
What I've seen is that I can find a fit that will have good/stable precision for the entire 3 months of the test period, but then when I use that model to classify live data as it comes in for the 4th month it's not stable, and the precision is drastically worse.
Question 1: how could a model have great/stable precision for 3 months straight but then flounder in the 4th month?
Question 2: how can I change or augment my setup or process to achieve classification precision stability on live data?
mtry
. However, you can see from the charts in the RF chapter that the error will level off as you increase the number of trees. That point would be approximately the same each time you run a RF, but will differ by dataset. Since RF almost never overfits, you can use a relatively high number of trees (>500 or even a few thousand) and you won't see the variability you're seeing. I'd also recommend looking at other algorithms -xgboost
is particularly popular at the moment.