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Interpretable Machine Learning with Python

You're reading from   Interpretable Machine Learning with Python Learn to build interpretable high-performance models with hands-on real-world examples

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Product type Paperback
Published in Mar 2021
Publisher Packt
ISBN-13 9781800203907
Length 736 pages
Edition 1st Edition
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Author (1):
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Serg Masís Serg Masís
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Serg Masís
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Table of Contents (19) Chapters Close

Preface 1. Section 1: Introduction to Machine Learning Interpretation
2. Chapter 1: Interpretation, Interpretability, and Explainability; and Why Does It All Matter? FREE CHAPTER 3. Chapter 2: Key Concepts of Interpretability 4. Chapter 3: Interpretation Challenges 5. Section 2: Mastering Interpretation Methods
6. Chapter 4: Fundamentals of Feature Importance and Impact 7. Chapter 5: Global Model-Agnostic Interpretation Methods 8. Chapter 6: Local Model-Agnostic Interpretation Methods 9. Chapter 7: Anchor and Counterfactual Explanations 10. Chapter 8: Visualizing Convolutional Neural Networks 11. Chapter 9: Interpretation Methods for Multivariate Forecasting and Sensitivity Analysis 12. Section 3:Tuning for Interpretability
13. Chapter 10: Feature Selection and Engineering for Interpretability 14. Chapter 11: Bias Mitigation and Causal Inference Methods 15. Chapter 12: Monotonic Constraints and Model Tuning for Interpretability 16. Chapter 13: Adversarial Robustness 17. Chapter 14: What's Next for Machine Learning Interpretability? 18. Other Books You May Enjoy

Exploring embedded feature selection methods

Embedded methods exist within models themselves by naturally selecting features during training. You can leverage the intrinsic properties of any model that has them to capture the features selected:

  • Tree-based models: For instance, we have used the following code many times to count the number of features used by the RF models, which is evidence of feature selection naturally occurring in the learning process:
    sum(reg_mdls[mdlname]['fitted'].feature_importances_ > 0) 

    XGBoost's RF uses gain by default, which is the average decrease in error in all splits where it used the feature to compute feature importance. We can increase the threshold above 0 to select even fewer features according to this relative contribution. However, by constraining the trees' depth, we forced the model to choose even fewer features already.

  • Regularized models with coefficients: We will study this further in Chapter 12, Monotonic...
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