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Data Wrangling with R

You're reading from  Data Wrangling with R

Product type Book
Published in Feb 2023
Publisher Packt
ISBN-13 9781803235400
Pages 384 pages
Edition 1st Edition
Languages
Concepts
Author (1):
Gustavo R Santos Gustavo R Santos
Profile icon Gustavo R Santos

Table of Contents (21) Chapters

Preface 1. Part 1: Load and Explore Data
2. Chapter 1: Fundamentals of Data Wrangling 3. Chapter 2: Loading and Exploring Datasets 4. Chapter 3: Basic Data Visualization 5. Part 2: Data Wrangling
6. Chapter 4: Working with Strings 7. Chapter 5: Working with Numbers 8. Chapter 6: Working with Date and Time Objects 9. Chapter 7: Transformations with Base R 10. Chapter 8: Transformations with Tidyverse Libraries 11. Chapter 9: Exploratory Data Analysis 12. Part 3: Data Visualization
13. Chapter 10: Introduction to ggplot2 14. Chapter 11: Enhanced Visualizations with ggplot2 15. Chapter 12: Other Data Visualization Options 16. Part 4: Modeling
17. Chapter 13: Building a Model with R 18. Chapter 14: Build an Application with Shiny in R 19. Conclusion 20. Other Books You May Enjoy

Replacing and filling

Replacing values is straightforward. You have a value that does not fit in the data and you need it to be replaced with another value. In the dataset we’re using in this chapter, there is a good example. In the documentation about the data, it is stated that the author will convert unknown values to “?”, meaning that you will not find any standard NA values in this dataset. Therefore, it is our job as data scientists to wrangle this and replace all the ? values with NA.

Note

It’s worth making a note of this, as a lesson learned from this exercise: always look at the data documentation, if and when it is available. Many explanations about the way the data was collected and the meaning of each variable are contained in these documents.

Replacing the values is possible using slicing notation or the gsub() function. In the dataset, there are three variables with ? values: workclass, occupation, and native_country.

We will replace...

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