Model Explainer

Feature Importances

Feature Importances

Model performance metrics

metric Score
accuracy 1.0
precision 1.0
recall 1.0
f1 1.0
roc_auc_score 1.0
pr_auc_score 1.0
log_loss 0.021

Confusion Matrix

How many false positives and false negatives?

Precision Plot

Does fraction positive increase with predicted probability?

Classification Plot

Distribution of labels above and below cutoff

ROC AUC Plot

Trade-off between False positives and false negatives

PR AUC Plot

Trade-off between Precision and Recall

Lift Curve

Performance how much better than random?

Cumulative Precision

Expected distribution for highest scores

Individual Predictions

Select Random Index

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Prediction

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Contributions Plot

How has each feature contributed to the prediction?
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Partial Dependence Plot

Contributions Table

How has each feature contributed to the prediction?
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Feature Dependence

Shap Summary

Ordering features by shap value

Shap Dependence

Relationship between feature value and SHAP value

Decision Trees

Select Random Index

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Decision Trees

Displaying individual decision trees inside Random Forest
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Decision path table

Decision path through decision tree
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