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Interpretable Machine Learning with Python

You're reading from   Interpretable Machine Learning with Python Build explainable, fair, and robust high-performance models with hands-on, real-world examples

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Product type Paperback
Published in Oct 2023
Publisher Packt
ISBN-13 9781803235424
Length 606 pages
Edition 2nd 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 (17) Chapters Close

Preface 1. Interpretation, Interpretability, and Explainability; and Why Does It All Matter? 2. Key Concepts of Interpretability FREE CHAPTER 3. Interpretation Challenges 4. Global Model-Agnostic Interpretation Methods 5. Local Model-Agnostic Interpretation Methods 6. Anchors and Counterfactual Explanations 7. Visualizing Convolutional Neural Networks 8. Interpreting NLP Transformers 9. Interpretation Methods for Multivariate Forecasting and Sensitivity Analysis 10. Feature Selection and Engineering for Interpretability 11. Bias Mitigation and Causal Inference Methods 12. Monotonic Constraints and Model Tuning for Interpretability 13. Adversarial Robustness 14. What’s Next for Machine Learning Interpretability? 15. Other Books You May Enjoy
16. Index

Mission accomplished

The mission of this chapter was twofold, as outlined here:

  • Create a fair predictive model to predict which customers are most likely to default.
  • Create a robust causal model to estimate which policies are most beneficial to customers and the bank.

Regarding the first goal, we have produced four models with bias mitigation methods that are objectively fairer than the base model, according to four fairness metrics (SPD, DI, AOD, EOD)—when comparing privileged and underprivileged age groups. However, only two of these models are intersectionally fairer using both age group and gender, according to DFBA (see Figure 11.7). We can still improve fairness significantly by combining methods, yet any one of the four models improves the base model.

As for the second goal, the causal inference framework determined that any of the policies tested is better than no policy for both parties. Hooray! However, it yielded estimates that didn...

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