I run my model with H2o library. I run with 5 folds cross-validation.
model = H2OGradientBoostingEstimator( balance_classes=True, nfolds=5, keep_cross_validation_fold_assignment=True, seed=1234) model.train(x=predictors,y=response,training_frame=data) print('rmse: ',model.rmse(xval=True)) print('R2: ',model.r2(xval=True)) data_nfolds = model.cross_validation_fold_assignment()
I got the cross-validation fold assignment. I try to reuse it for a new model with other parameters such as ntrees or stopping_rounds, but I did not find it in the documents.