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Hands-On Ensemble Learning with Python

You're reading from  Hands-On Ensemble Learning with Python

Product type Book
Published in Jul 2019
Publisher Packt
ISBN-13 9781789612851
Pages 298 pages
Edition 1st Edition
Languages
Authors (2):
George Kyriakides George Kyriakides
Profile icon George Kyriakides
Konstantinos G. Margaritis Konstantinos G. Margaritis
Profile icon Konstantinos G. Margaritis
View More author details
Toc

Table of Contents (20) Chapters close

Preface 1. Section 1: Introduction and Required Software Tools
2. A Machine Learning Refresher 3. Getting Started with Ensemble Learning 4. Section 2: Non-Generative Methods
5. Voting 6. Stacking 7. Section 3: Generative Methods
8. Bagging 9. Boosting 10. Random Forests 11. Section 4: Clustering
12. Clustering 13. Section 5: Real World Applications
14. Classifying Fraudulent Transactions 15. Predicting Bitcoin Prices 16. Evaluating Sentiment on Twitter 17. Recommending Movies with Keras 18. Clustering World Happiness 19. Another Book You May Enjoy

Summary

In this chapter, we presented the concepts of bias and variance, as well as the trade-off between them. They are essential in understanding how and why a model may under-perform, either in-sample or out-of-sample. We then introduced the concept and motivation of ensemble learning, how to identify bias and variance in models, as well as basic categories of ensemble learning methods. We presented ways to measure and plot bias and variance, using scikit-learn and matplotlib. Finally, we talked about the difficulties and drawbacks of implementing ensemble learning methods. Some key points to remember are the following.

High-bias models usually have difficulty performing well in-sample. This is also called underfitting. It is due to the model's simplicity (or lack of complexity). High-variance models usually have difficulty generalizing or performing well out-of-sample...

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