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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

Evaluating adversarial robustness

It’s necessary to test your systems in any engineering endeavor to see how vulnerable they are to attacks or accidental failures. However, security is a domain where you must stress-test your solutions to ascertain what level of attacks are needed to make your system break down beyond an acceptable threshold. Furthermore, figuring out what level of defense is needed to curtail an attack is useful information too.

Comparing model robustness with attack strength

We now have two classifiers we can compare against an equally strengthened attack, and we try different attack strengths to see how they fare across all of them. We will use FSGM because it’s fast, but you could use any method!

The first attack strength we can assess is no attack strength. In other words, what is the classification accuracy against the test dataset with no attack? We already had stored the predicted labels for both the base (y_test_pred) and robust...

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