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Essential Statistics for Non-STEM Data Analysts

You're reading from   Essential Statistics for Non-STEM Data Analysts Get to grips with the statistics and math knowledge needed to enter the world of data science with Python

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Product type Paperback
Published in Nov 2020
Publisher Packt
ISBN-13 9781838984847
Length 392 pages
Edition 1st Edition
Languages
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Author (1):
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Rongpeng Li Rongpeng Li
Author Profile Icon Rongpeng Li
Rongpeng Li
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Table of Contents (19) Chapters Close

Preface 1. Section 1: Getting Started with Statistics for Data Science
2. Chapter 1: Fundamentals of Data Collection, Cleaning, and Preprocessing FREE CHAPTER 3. Chapter 2: Essential Statistics for Data Assessment 4. Chapter 3: Visualization with Statistical Graphs 5. Section 2: Essentials of Statistical Analysis
6. Chapter 4: Sampling and Inferential Statistics 7. Chapter 5: Common Probability Distributions 8. Chapter 6: Parametric Estimation 9. Chapter 7: Statistical Hypothesis Testing 10. Section 3: Statistics for Machine Learning
11. Chapter 8: Statistics for Regression 12. Chapter 9: Statistics for Classification 13. Chapter 10: Statistics for Tree-Based Methods 14. Chapter 11: Statistics for Ensemble Methods 15. Section 4: Appendix
16. Chapter 12: A Collection of Best Practices 17. Chapter 13: Exercises and Projects 18. Other Books You May Enjoy

Chapter 4: Sampling and Inferential Statistics

In this chapter, we focus on several difficult sampling techniques and basic inferential statistics associated with each of them. This chapter is crucial because in real life, the data we have is, most likely, only a small portion of a whole set. Sometimes, we also need to perform sampling on a given large dataset. Common reasons for sampling are listed as follows:

  • The analysis can run quicker when the dataset is small.
  • Your model doesn't benefit much from having gazillions of pieces of data.

Sometimes, you also don't want sampling. For example, sampling a small dataset with sub-categories may be detrimental. Understanding how sampling works will help you to avoid various kinds of pitfalls.

The following topics will be covered in this chapter:

  • Understanding fundamental concepts in sampling techniques
  • Performing proper sampling under different scenarios
  • Understanding statistics associated...
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