In weka, how do I check if an induced tree overfits the training data?
So now these are the results of my Random Forest classifier building on a large training set and a much-smaller validation set (generated dynamically based on the class ratio of the large training set).
You said that if there is overfitting, the performance of the test set (I call it validation set) would drop terribly? But in this case it doesn't seem to drop much.
Large training set (25000 records)
=== Evaluation on training set === === Summary === Correctly Classified Instances 24849 99.3563 % Incorrectly Classified Instances 161 0.6437 % Kappa statistic 0.9886 Mean absolute error 0.0344 Root mean squared error 0.0887 Relative absolute error 30.31 % Root relative squared error 37.2327 % Total Number of Instances 25010
Validation set (IID?) (5000 records)
=== Evaluation on training set === === Summary === Correctly Classified Instances 4951 99.02 % Incorrectly Classified Instances 49 0.98 % Kappa statistic 0.9827 Mean absolute error 0.0402 Root mean squared error 0.0999 Relative absolute error 35.269 % Root relative squared error 41.8963 % Total Number of Instances 5000