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Forecasting Time Series Data with Facebook Prophet

You're reading from  Forecasting Time Series Data with Facebook Prophet

Product type Book
Published in Mar 2021
Publisher Packt
ISBN-13 9781800568532
Pages 270 pages
Edition 1st Edition
Languages
Author (1):
Greg Rafferty Greg Rafferty
Profile icon Greg Rafferty

Table of Contents (18) Chapters

Preface 1. Section 1: Getting Started
2. Chapter 1: The History and Development of Time Series Forecasting 3. Chapter 2: Getting Started with Facebook Prophet 4. Section 2: Seasonality, Tuning, and Advanced Features
5. Chapter 3: Non-Daily Data 6. Chapter 4: Seasonality 7. Chapter 5: Holidays 8. Chapter 6: Growth Modes 9. Chapter 7: Trend Changepoints 10. Chapter 8: Additional Regressors 11. Chapter 9: Outliers and Special Events 12. Chapter 10: Uncertainty Intervals 13. Section 3: Diagnostics and Evaluation
14. Chapter 11: Cross-Validation 15. Chapter 12: Performance Metrics 16. Chapter 13: Productionalizing Prophet 17. Other Books You May Enjoy

Summary

We began this chapter with a discussion of why k-fold cross-validation was developed in traditional machine learning applications, and we then learned why it will not work with time series. You then learned about forward-chaining, also called rolling-origin cross-validation, for use with time series data.

You learned the keywords of initial, horizon, period, and cutoffs, which are used to define your cross-validation parameters, and you learned how to implement them in Prophet. Finally, you learned the different options Prophet has for parallelization, in order to speed up model evaluation.

These techniques provide you with a statistically robust way to evaluate and compare models. By isolating the data used in training and testing, you remove any bias in the process and can be more certain that your model will perform well when making new predictions about the future.

In the next chapter, you'll apply what you learned here to measure your model's performance...

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