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Detecting Outliers in Your Data With Python

The Real Python Podcast

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Proxy Models and Feature Importance in Model Interpretation

Proxy models, such as decision trees with a manageable number of leaf nodes, offer a comprehensible explanation of a model's behavior, especially when 100% precision is not necessary. Feature importance methods like SHAP values help identify key decision-making features in models, which is crucial for understanding predictions and outcomes. While knowing why a model works as it does is useful, outlier detection typically requires a deeper understanding to address specific cases.

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