I have created h20 random forest model for fraud prediction.now while scoring using predict function for test data. I got below dataframe from predict function output.
Now for 2nd records it predicted 1 but probability of p1 is far less than p0. What's the correct probability scores (p0/1) and classification we can use for my fraud prediction model?
If these are not correct probabilities then calibrated probabilities calculated using parameters(calibrate_model = True) as mentioned below will give correct probability?
nfolds=5
rf1 = h2o.estimators.H2ORandomForestEstimator(
model_id = "rf_df1",
ntrees = 200,
max_depth = 4,
sample_rate = .30,
# stopping_metric="misclassification",
# stopping_rounds = 2,
mtries = 6,
min_rows = 12,
nfolds=3,
distribution = "multinomial",
fold_assignment="Modulo",
keep_cross_validation_predictions=True,
calibrate_model = True,
calibration_frame = calib,
weights_column = "weight",
balance_classes = True
# stopping_tolerance = .005)
)
predict p0 p1
1 0 0.9986012 0.000896514
2 1 0.9985695 0.000448676
3 0 0.9981387 0.000477767