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Ensemble Machine Learning Cookbook

You're reading from   Ensemble Machine Learning Cookbook Over 35 practical recipes to explore ensemble machine learning techniques using Python

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Product type Paperback
Published in Jan 2019
Publisher Packt
ISBN-13 9781789136609
Length 336 pages
Edition 1st Edition
Languages
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Authors (2):
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Vijayalakshmi Natarajan Vijayalakshmi Natarajan
Author Profile Icon Vijayalakshmi Natarajan
Vijayalakshmi Natarajan
Dipayan Sarkar Dipayan Sarkar
Author Profile Icon Dipayan Sarkar
Dipayan Sarkar
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Toc

Table of Contents (14) Chapters Close

Preface 1. Get Closer to Your Data FREE CHAPTER 2. Getting Started with Ensemble Machine Learning 3. Resampling Methods 4. Statistical and Machine Learning Algorithms 5. Bag the Models with Bagging 6. When in Doubt, Use Random Forests 7. Boosting Model Performance with Boosting 8. Blend It with Stacking 9. Homogeneous Ensembles Using Keras 10. Heterogeneous Ensemble Classifiers Using H2O 11. Heterogeneous Ensemble for Text Classification Using NLP 12. Homogenous Ensemble for Multiclass Classification Using Keras 13. Other Books You May Enjoy

Implementing AdaBoost for disease risk prediction using scikit-learn

AdaBoost is one of the earliest boosting algorithms that was used for binary classification. It was proposed by Freund and Schapire in 1996. Many other boosting-based algorithms have since been developed on top of AdaBoost.

Another variation of adaptive boosting is known as AdaBoost-abstain. AdaBoost-abstain allows each baseline classifier to abstain from voting if its dependent feature is missing.

AdaBoost focuses on combining a set of weak learners into a strong learner. The process of an AdaBoost classifier is as follows:

  1. Initially, a short decision tree classifier is fitted onto the data. The decision tree can just have a single split, which is known as a decision stump. The overall errors are evaluated. This is the first iteration.
  2. In the second iteration, whatever data is correctly classified...
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