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Python Feature Engineering Cookbook

Python Feature Engineering Cookbook - Third Edition

By : Galli
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Python Feature Engineering Cookbook

Python Feature Engineering Cookbook

By: Galli

Overview of this book

Streamline data preprocessing and feature engineering in your machine learning project with this third edition of the Python Feature Engineering Cookbook to make your data preparation more efficient. This guide addresses common challenges, such as imputing missing values and encoding categorical variables using practical solutions and open source Python libraries. You’ll learn advanced techniques for transforming numerical variables, discretizing variables, and dealing with outliers. Each chapter offers step-by-step instructions and real-world examples, helping you understand when and how to apply various transformations for well-prepared data. The book explores feature extraction from complex data types such as dates, times, and text. You’ll see how to create new features through mathematical operations and decision trees and use advanced tools like Featuretools and tsfresh to extract features from relational data and time series. By the end, you’ll be ready to build reproducible feature engineering pipelines that can be easily deployed into production, optimizing data preprocessing workflows and enhancing machine learning model performance.
Table of Contents (14 chapters)
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Implementing target mean encoding

Mean encoding or target encoding maps each category to the probability estimate of the target attribute. If the target is binary, the numerical mapping is the posterior probability of the target conditioned to the value of the category. If the target is continuous, the numerical representation is given by the expected value of the target given the value of the category.

In its simplest form, the numerical representation for each category is given by the mean value of the target variable for a particular category group. For example, if we have a City variable, with the categories of London, Manchester, and Bristol, and we want to predict the default rate (the target takes values of 0 and 1); if the default rate for London is 30%, we replace London with 0.3; if the default rate for Manchester is 20%, we replace Manchester with 0.2; and so on. If the target is continuous – say we want to predict income – then we would replace London,...

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Python Feature Engineering Cookbook
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