Book Image

Interpretable Machine Learning with Python - Second Edition

By : Serg Masís
4 (4)
Book Image

Interpretable Machine Learning with Python - Second Edition

4 (4)
By: Serg Masís

Overview of this book

Interpretable Machine Learning with Python, Second Edition, brings to light the key concepts of interpreting machine learning models by analyzing real-world data, providing you with a wide range of skills and tools to decipher the results of even the most complex models. Build your interpretability toolkit with several use cases, from flight delay prediction to waste classification to COMPAS risk assessment scores. This book is full of useful techniques, introducing them to the right use case. Learn traditional methods, such as feature importance and partial dependence plots to integrated gradients for NLP interpretations and gradient-based attribution methods, such as saliency maps. In addition to the step-by-step code, you’ll get hands-on with tuning models and training data for interpretability by reducing complexity, mitigating bias, placing guardrails, and enhancing reliability. By the end of the book, you’ll be confident in tackling interpretability challenges with black-box models using tabular, language, image, and time series data.
Table of Contents (17 chapters)
15
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16
Index

Tuning models for interpretability

Traditionally, regularization was only achieved by imposing penalty terms such as L1, L2, or elastic net on the coefficients or weights, which shrink the impact of the least relevant features. As seen in the Embedded methods section of Chapter 10, Feature Selection and Engineering for Interpretability, this form of regularization results in feature selection while also reducing overfitting. And this brings us to another broader definition of regularization, which does not require a penalty term. Often, this comes as imposing a limitation, or a stopping criterion that forces the model to curb its complexity.

In addition to regularization, both in its narrow (penalty-based) and broad sense (overfitting methods), there are other methods that tune a model for interpretability—that is, improve the fairness, accountability, and transparency of a model through adjustments to the training process. For instance, the class imbalance hyperparameters...