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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

Understanding heterogeneous treatment effects

Firstly, it’s important to note how the dowhy wrapper of econml has cut down on a few steps with the dowhy.fit method. Usually, when you build a CausalModel such as this one directly with dowhy, it has a method called identify_effect that derives the probability expression for the effect to be estimated (the identified estimand). In this case, this is called the Average Treatment Effect (ATE). Then, another method called estimate_effect takes this expression and the models it’s supposed to tie together (regression and propensity). With them, it computes both the ATE, , and CATE, , for every outcome i and treatment t. However, since we used the wrapper to fit the causal model, it automatically takes care of both the identification and estimation steps.

You can access the identified ATE with the identified_estimand_ property and the estimate results with the estimate_ property for the causal model. The code can be seen...

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