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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

Imputing values with regression

We ended the previous recipe by assigning a group mean to missing values rather than the overall sample mean. As we discussed, this is useful when the variable that determines the groups is correlated with the variable that has the missing values. Using regression to impute values is conceptually similiar to this, but we typically use it when the imputation will be based on two or more variables.

Regression imputation replaces a variable’s missing values with values predicted by a regression model of correlated variables. This particular kind of imputation is known as deterministic regression imputation, since the imputed values all lie on the regression line, and no error or randomness is introduced.

One potential drawback of this approach is that it can substantially reduce the variance of the variable with missing values. We can use stochastic regression imputation to address this drawback. We explore both approaches in this recipe...

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