Book Image

Python Feature Engineering Cookbook

By : Soledad Galli
Book Image

Python Feature Engineering Cookbook

By: Soledad Galli

Overview of this book

Feature engineering is invaluable for developing and enriching your machine learning models. In this cookbook, you will work with the best tools to streamline your feature engineering pipelines and techniques and simplify and improve the quality of your code. Using Python libraries such as pandas, scikit-learn, Featuretools, and Feature-engine, you’ll learn how to work with both continuous and discrete datasets and be able to transform features from unstructured datasets. You will develop the skills necessary to select the best features as well as the most suitable extraction techniques. This book will cover Python recipes that will help you automate feature engineering to simplify complex processes. You’ll also get to grips with different feature engineering strategies, such as the box-cox transform, power transform, and log transform across machine learning, reinforcement learning, and natural language processing (NLP) domains. By the end of this book, you’ll have discovered tips and practical solutions to all of your feature engineering problems.
Table of Contents (13 chapters)

Replacing missing values with an arbitrary number

Arbitrary number imputation consists of replacing missing values with an arbitrary value. Some commonly used values include 999, 9999, or -1 for positive distributions. This method is suitable for numerical variables. A similar method for categorical variables will be discussed in the Capturing missing values in a bespoke category recipe.

When replacing missing values with an arbitrary number, we need to be careful not to select a value close to the mean or the median, or any other common value of the distribution.

Arbitrary number imputation can be used when data is not missing at random, when we are building non-linear models, and when the percentage of missing data is high. This imputation technique distorts the original variable distribution.

In this recipe, we will impute missing data by arbitrary numbers using pandas, scikit...