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Hands-On Data Preprocessing in Python

You're reading from  Hands-On Data Preprocessing in Python

Product type Book
Published in Jan 2022
Publisher Packt
ISBN-13 9781801072137
Pages 602 pages
Edition 1st Edition
Languages
Concepts
Author (1):
Roy Jafari Roy Jafari
Profile icon Roy Jafari

Table of Contents (24) Chapters

Preface 1. Part 1:Technical Needs
2. Chapter 1: Review of the Core Modules of NumPy and Pandas 3. Chapter 2: Review of Another Core Module – Matplotlib 4. Chapter 3: Data – What Is It Really? 5. Chapter 4: Databases 6. Part 2: Analytic Goals
7. Chapter 5: Data Visualization 8. Chapter 6: Prediction 9. Chapter 7: Classification 10. Chapter 8: Clustering Analysis 11. Part 3: The Preprocessing
12. Chapter 9: Data Cleaning Level I – Cleaning Up the Table 13. Chapter 10: Data Cleaning Level II – Unpacking, Restructuring, and Reformulating the Table 14. Chapter 11: Data Cleaning Level III – Missing Values, Outliers, and Errors 15. Chapter 12: Data Fusion and Data Integration 16. Chapter 13: Data Reduction 17. Chapter 14: Data Transformation and Massaging 18. Part 4: Case Studies
19. Chapter 15: Case Study 1 – Mental Health in Tech 20. Chapter 16: Case Study 2 – Predicting COVID-19 Hospitalizations 21. Chapter 17: Case Study 3: United States Counties Clustering Analysis 22. Chapter 18: Summary, Practice Case Studies, and Conclusions 23. Other Books You May Enjoy

Normalization and standardization

At different points during our journey in this book, we've already talked about and used normalization and standardization. For instance, before applying K-Nearest Neighbors (KNN) in Chapter 7, Classification, and before using K-means on our dataset in Chapter 8, Clustering Analysis, we used normalization. Furthermore, before applying Principal Component Analysis (PCA) to our dataset for unsupervised dimension reduction in Chapter 13, Data Reduction, we used standardization.

Here is the general rule of when we need normalization or standardization. We need normalization when we need the range of all the attributes in a dataset to be equal. This will be needed especially for algorithmic data analytics that uses the distance between the data objects. Examples of such algorithms are K-means and KNN. On the other hand, we need standardization when we need the variance and/or the standard deviation of all the attributes to be equal. We saw an example...

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