A deep and detailed dive into the key aspects and challenges of
machine learning interpretability, complete with the know-how on
how to overcome and leverage them to build fairer, safer, and more
reliable models Key Features * Extract easy-to-understand insights
from any machine learning model * Become well-versed with
interpretability techniques to build fairer, safer, and more
reliable models * Lift the lid on the black box of transformer NLP
models to improve your deep learning understanding Book Description
Do you want to gain a deeper understanding of your models and
better mitigate poor prediction risks associated with machine
learning interpretation? If so, then Interpretable Machine Learning
with Python, Second Edition is the book for you. You'll cover the
fundamentals of interpretability, its relevance in business, and
explore its key aspects and challenges. See how white-box models
work, compare them to black-box and glass-box models, and examine
their trade-offs. Get up to speed with a vast array of
interpretation methods, also known as Explainable AI (XAI) methods,
and how to apply them to different use cases, be it for
classification or regression, tabular data, time-series, images, or
text. In addition to the step-by-step code, this book will also
help you interpret model outcomes using many examples. You'll get
hands-on with tuning models and training data for interpretability
by reducing complexity, mitigating bias, placing guardrails, and
enhancing reliability. The methods you'll explore here range from
state-of-the-art feature selection and dataset debiasing methods to
monotonic constraints and adversarial retraining. You'll also look
under the hood of the latest NLP transformer models using the
Language Interpretability Tool. By the end of this book, you'll
understand ML models better and enhance them through
interpretability tuning. What you will learn * Recognize the
importance of interpretability in business * Study models that are
intrinsically interpretable such as linear models, decision trees,
Naive Bayes, and glass-box models, such as EBM and Gami-NET *
Become well-versed in interpreting black-box models with
model-agnostic methods * Use monotonic and interaction constraints
to make fairer and safer models * Understand how to mitigate the
influence of bias in datasets * Discover how to make models more
reliable with adversarial robustness * Understand how transformer
models work and how to interpret them Who This Book Is For This
book is for data scientists, machine learning developers, MLOps
engineers, and data stewards who have an increasingly critical
responsibility to explain how the AI systems they develop work,
their impact on decision making, and how they identify and manage
bias It's also a useful resource for self-taught ML enthusiasts and
beginners who want to go deeper into the subject matter, though a
good grasp of the Python programming language is needed to
implement the examples.
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