Summary of 6_Default_RandomForest
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Random Forest
- criterion: gini
- max_features: 0.9
- min_samples_split: 30
- max_depth: 4
- num_class: 4
- explain_level: 2
Validation
- validation_type: split
- train_ratio: 0.75
- shuffle: True
- stratify: True
Optimized metric
logloss
Training time
9.9 seconds
Metric details
|
0 |
1 |
2 |
3 |
accuracy |
macro avg |
weighted avg |
logloss |
precision |
0 |
0 |
0.617685 |
0.639295 |
0.62699 |
0.314245 |
0.592945 |
0.79978 |
recall |
0 |
0 |
0.708427 |
0.614717 |
0.62699 |
0.330786 |
0.62699 |
0.79978 |
f1-score |
0 |
0 |
0.659951 |
0.626765 |
0.62699 |
0.321679 |
0.608318 |
0.79978 |
support |
282 |
19 |
2682 |
2419 |
0.62699 |
5402 |
5402 |
0.79978 |
Confusion matrix
|
Predicted as 0 |
Predicted as 1 |
Predicted as 2 |
Predicted as 3 |
Labeled as 0 |
0 |
0 |
229 |
53 |
Labeled as 1 |
0 |
0 |
15 |
4 |
Labeled as 2 |
0 |
0 |
1900 |
782 |
Labeled as 3 |
0 |
0 |
932 |
1487 |
Learning curves
Permutation-based Importance
SHAP Importance
SHAP Dependence plots
Dependence 0 (Fold 1)
Dependence 1 (Fold 1)
Dependence 2 (Fold 1)
Dependence 3 (Fold 1)
SHAP Decision plots
Worst decisions for selected sample 1 (Fold 1)
Worst decisions for selected sample 2 (Fold 1)
Worst decisions for selected sample 3 (Fold 1)
Worst decisions for selected sample 4 (Fold 1)
Best decisions for selected sample 1 (Fold 1)
Best decisions for selected sample 2 (Fold 1)
Best decisions for selected sample 3 (Fold 1)
Best decisions for selected sample 4 (Fold 1)
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