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Computer Science - Interpreting Machine Learning Models With SHAP: A Guide With Python Examples And Theory On Shapley Values

Description

Book Synopsis: Machine learning is transforming fields from healthcare diagnostics to climate change predictions through their predictive performance. However, these complex machine learning models often lack interpretability, which is becoming more essential than ever for debugging, fostering trust, and communicating model insights. This book takes readers on a comprehensive journey from foundational concepts to practical applications of SHAP. It conveys clear explanations, step-by-step instructions, and real-world case studies designed for beginners and experienced practitioners to gain the knowledge and tools needed to leverage Shapley Values for model interpretability/explainability effectively. - Carlos Mougan, Marie Skłodowska-Curie AI Ethics Researcher Introducing SHAP, the Swiss army knife of machine learning interpretability:
  • SHAP can be used to explain individual predictions.
  • By combining explanations for individual predictions, SHAP allows to study the overall model behavior.
  • SHAP is model-agnostic – it works with any model, from simple linear regression to deep learning.
  • With its flexibility, SHAP can handle various data formats, whether it’s tabular, image, or text.
The Python package shap makes the application of SHAP for model interpretation easy. This book will be your comprehensive guide to mastering the theory and application of SHAP. It starts with the quite fascinating origins in game theory and explores what splitting taxi costs has to do with explaining machine learning predictions. Starting with using SHAP to explain a simple linear regression model, the book progressively introduces SHAP for more complex models. You’ll learn the ins and outs of the most popular explainable AI method and how to apply it using the shap package. In a world where interpretability is key, this book is your roadmap to mastering SHAP. For machine learning models that are not only accurate but also interpretable. This book is a comprehensive guide in dealing with SHAP values and acts as an excellent companion to the interpretable machine learning book. Christoph Molnar's expertise as a statistician shines through as he distills the theory of SHAP values and their crucial role in understanding Machine Learning predictions into an accessible and easy-to-read text. - Junaid Butt, Research Software Engineer at IBM Research Who This Book Is For This book is for data scientists, statisticians, machine learners, and anyone who wants to learn how to make machine learning models more interpretable. Ideally, you are already familiar with machine learning to get the most out of this book. And you should know your way around Python to follow the code examples. What's in the Book
  • Introduction
  • A Short History of Shapley Values and SHAP
  • Theory of Shapley Values
  • From Shapley Values to SHAP
  • Estimating SHAP Values
  • SHAP for Linear Models
  • Classification with Logistic Regression
  • SHAP for Additive Models
  • Understanding Feature Interactions with SHAP
  • The Correlation Problem
  • Regressing Using a Random Forest
  • Image Classification with Partition Explainer
  • Image Classification with Deep and Gradient Explainer
  • Explaining Language Models
  • Limitations of SHAP
  • Building SHAP Dashboards with Shapash
  • Alternatives to the shap Library
  • Extensions of SHAP
  • Other Applications of Shapley Values in Machine Learning
  • SHAP Estimators
  • The Role of Maskers and Background Data
About me (Christoph Molnar) Author of the free online book Interpretable Machine Learning. I have a background in both statistics and machine learning and did my Ph.D. in interpretable machine learning. After a mix of data scientist jobs and academia, I'm now a full-time machine learning book author.

Details

If you're ready to take your machine learning model interpretations to the next level, look no further than "Interpreting Machine Learning Models With SHAP." Finally understand the inner workings of your models with the power of SHAP, the Swiss army knife of model interpretability. Gain the confidence to debug, communicate insights, and build trust - essential skills for any data scientist or machine learning practitioner.

Unlock the black box of complex machine learning models with ease using SHAP. This book offers a comprehensive guide from foundational concepts to practical applications, making it suitable for both beginners and experienced practitioners. Take advantage of SHAP's model-agnostic nature and its ability to explain individual predictions, study overall model behavior, and handle various data formats effortlessly.

Mastering SHAP will set you apart in a world where interpretability is key. Dive deep into the theory and application of Shapley Values with clear explanations, step-by-step instructions, and real-world case studies. Whether you're a data scientist, statistician, or machine learner, this book will equip you with the knowledge and tools needed to elevate your machine learning interpretability game.

Ready to conquer the world of machine learning interpretability? Start your journey with "Interpreting Machine Learning Models With SHAP" today!

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Disclosure: I get commissions for purchases made through links in this website