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Time Series Analysis with Python Cookbook

You're reading from   Time Series Analysis with Python Cookbook Practical recipes for exploratory data analysis, data preparation, forecasting, and model evaluation

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Product type Paperback
Published in Jun 2022
Publisher Packt
ISBN-13 9781801075541
Length 630 pages
Edition 1st Edition
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Author (1):
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Tarek A. Atwan Tarek A. Atwan
Author Profile Icon Tarek A. Atwan
Tarek A. Atwan
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Table of Contents (18) Chapters Close

Preface 1. Chapter 1: Getting Started with Time Series Analysis 2. Chapter 2: Reading Time Series Data from Files FREE CHAPTER 3. Chapter 3: Reading Time Series Data from Databases 4. Chapter 4: Persisting Time Series Data to Files 5. Chapter 5: Persisting Time Series Data to Databases 6. Chapter 6: Working with Date and Time in Python 7. Chapter 7: Handling Missing Data 8. Chapter 8: Outlier Detection Using Statistical Methods 9. Chapter 9: Exploratory Data Analysis and Diagnosis 10. Chapter 10: Building Univariate Time Series Models Using Statistical Methods 11. Chapter 11: Additional Statistical Modeling Techniques for Time Series 12. Chapter 12: Forecasting Using Supervised Machine Learning 13. Chapter 13: Deep Learning for Time Series Forecasting 14. Chapter 14: Outlier Detection Using Unsupervised Machine Learning 15. Chapter 15: Advanced Techniques for Complex Time Series 16. Index 17. Other Books You May Enjoy

Understanding outliers

The presence of outliers requires special handling and further investigation before hastily jumping to decisions on how to handle them. First, you will need to detect and spot their existence, which this chapter is all about. Domain knowledge can be instrumental in determining whether these identified points are outliers, their impact on your analysis, and how you should deal with them.

Outliers can indicate bad data due to a random variation in the process, known as noise, or due to data entry error, faulty sensors, bad experiment, or natural variation. Outliers are usually undesirable if they seem synthetic, for example, bad data. On the other hand, if outliers are a natural part of the process, you may need to rethink removing them and opt to keep these data points. In such circumstances, you can rely on non-parametric statistical methods that do not make assumptions on the underlying distribution.

Generally, outliers can cause side effects when building...

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