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Python Data Cleaning Cookbook

You're reading from   Python Data Cleaning Cookbook Prepare your data for analysis with pandas, NumPy, Matplotlib, scikit-learn, and OpenAI

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Product type Paperback
Published in May 2024
Publisher Packt
ISBN-13 9781803239873
Length 486 pages
Edition 2nd Edition
Languages
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Author (1):
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Michael Walker Michael Walker
Author Profile Icon Michael Walker
Michael Walker
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Table of Contents (14) Chapters Close

Preface 1. Anticipating Data Cleaning Issues When Importing Tabular Data with pandas 2. Anticipating Data Cleaning Issues When Working with HTML, JSON, and Spark Data FREE CHAPTER 3. Taking the Measure of Your Data 4. Identifying Outliers in Subsets of Data 5. Using Visualizations for the Identification of Unexpected Values 6. Cleaning and Exploring Data with Series Operations 7. Identifying and Fixing Missing Values 8. Encoding, Transforming, and Scaling Features 9. Fixing Messy Data When Aggregating 10. Addressing Data Issues When Combining DataFrames 11. Tidying and Reshaping Data 12. Automate Data Cleaning with User-Defined Functions, Classes, and Pipelines 13. Index

Encoding categorical features: one-hot encoding

There are several reasons why we may need to encode features before using them in most machine learning algorithms. First, these algorithms typically require numeric data. Second, when a categorical feature is represented with numbers, for example, 1 for female and 2 for male, we need to encode the values so that they are recognized as categorical. Third, the feature might actually be ordinal, with a discrete number of values that represent some meaningful ranking. Our models need to capture that ranking. Finally, a categorical feature might have a large number of values (known as high cardinality), and we might want our encoding to collapse categories.

We can handle the encoding of features with a limited number of values, say 15 or fewer, with one-hot encoding. We go over one-hot encoding in this recipe and then discuss ordinal encoding in the next recipe. We will look at strategies for handling categorical features with high cardinality...

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