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Machine Learning for Streaming Data with Python

You're reading from   Machine Learning for Streaming Data with Python Rapidly build practical online machine learning solutions using River and other top key frameworks

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Product type Paperback
Published in Jul 2022
Publisher Packt
ISBN-13 9781803248363
Length 258 pages
Edition 1st Edition
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Author (1):
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Joos Korstanje Joos Korstanje
Author Profile Icon Joos Korstanje
Joos Korstanje
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Table of Contents (17) Chapters Close

Preface 1. Part 1: Introduction and Core Concepts of Streaming Data
2. Chapter 1: An Introduction to Streaming Data FREE CHAPTER 3. Chapter 2: Architectures for Streaming and Real-Time Machine Learning 4. Chapter 3: Data Analysis on Streaming Data 5. Part 2: Exploring Use Cases for Data Streaming
6. Chapter 4: Online Learning with River 7. Chapter 5: Online Anomaly Detection 8. Chapter 6: Online Classification 9. Chapter 7: Online Regression 10. Chapter 8: Reinforcement Learning 11. Part 3: Advanced Concepts and Best Practices around Streaming Data
12. Chapter 9: Drift and Drift Detection 13. Chapter 10: Feature Transformation and Scaling 14. Chapter 11: Catastrophic Forgetting 15. Chapter 12: Conclusion and Best Practices 16. Other Books You May Enjoy

Chapter 11: Catastrophic Forgetting

In the previous two chapters, we started to look at a number of auxiliary tasks for online machine learning and working with streaming data. Chapter 9 covered drift detection and solutions and Chapter 10 covered feature transformation and scaling in a streaming context. The current chapter introduces a third and final topic to this list of auxiliary tasks, namely catastrophic forgetting.

Catastrophic forgetting, also known as catastrophic interference, is the tendency of machine learning models to forget what they have learned upon new updates, wrongly de-learning correctly learned older tendencies as new tendencies are learned from new data.

As you have seen a lot of examples of online models throughout this book, you will understand that continuous updating of the models creates a large risk of this learning going wrong. It has already been touched upon briefly, in the chapter on drift and drift detection, that model learning going wrong...

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