Book Image

Python Feature Engineering Cookbook - Second Edition

By : Soledad Galli
Book Image

Python Feature Engineering Cookbook - Second Edition

By: Soledad Galli

Overview of this book

Feature engineering, the process of transforming variables and creating features, albeit time-consuming, ensures that your machine learning models perform seamlessly. This second edition of Python Feature Engineering Cookbook will take the struggle out of feature engineering by showing you how to use open source Python libraries to accelerate the process via a plethora of practical, hands-on recipes. This updated edition begins by addressing fundamental data challenges such as missing data and categorical values, before moving on to strategies for dealing with skewed distributions and outliers. The concluding chapters show you how to develop new features from various types of data, including text, time series, and relational databases. With the help of numerous open source Python libraries, you'll learn how to implement each feature engineering method in a performant, reproducible, and elegant manner. By the end of this Python book, you will have the tools and expertise needed to confidently build end-to-end and reproducible feature engineering pipelines that can be deployed into production.
Table of Contents (14 chapters)

Implementing feature binarization

Some datasets contain sparse variables. Sparse variables are those where the majority of the values are 0. The classical example of sparse variables are those derived from text data through the bag-of-words model, where each variable is a word, and each value represents the number of times the word appears in a certain document. Given that a document contains a limited number of words, whereas the feature space contains the words that appear across all documents, most documents, that is, most rows, will show the value of 0 for most columns. But words are not the sole example. If we think about house details data, the variable number of saunas will also be 0 for most houses. In summary, some variables have very skewed distributions, where most observations show the same value, usually 0, and only a few observations show different, usually higher, values.

A more robust representation of these sparse or highly skewed variables is to binarize them by...