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Mastering Machine Learning with scikit-learn

You're reading from   Mastering Machine Learning with scikit-learn Apply effective learning algorithms to real-world problems using scikit-learn

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Product type Paperback
Published in Jul 2017
Publisher
ISBN-13 9781788299879
Length 254 pages
Edition 2nd Edition
Languages
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Author (1):
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Gavin Hackeling Gavin Hackeling
Author Profile Icon Gavin Hackeling
Gavin Hackeling
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Table of Contents (15) Chapters Close

Preface 1. The Fundamentals of Machine Learning 2. Simple Linear Regression FREE CHAPTER 3. Classification and Regression with k-Nearest Neighbors 4. Feature Extraction 5. From Simple Linear Regression to Multiple Linear Regression 6. From Linear Regression to Logistic Regression 7. Naive Bayes 8. Nonlinear Classification and Regression with Decision Trees 9. From Decision Trees to Random Forests and Other Ensemble Methods 10. The Perceptron 11. From the Perceptron to Support Vector Machines 12. From the Perceptron to Artificial Neural Networks 13. K-means 14. Dimensionality Reduction with Principal Component Analysis

Summary

In this chapter, we introduced ensembles. An ensemble is a combination of models that performs better than each of its components. We discussed three methods of training ensembles. Bootstrap aggregating, or bagging, can reduce the variance of an estimator; bagging uses bootstrap resampling to create multiple variants of the training set. The predictions of models trained on these variants are then averaged. Bagged decision trees are called random forests. Boosting is an ensemble meta-estimator that reduces the bias of its base estimators. AdaBoost is a popular boosting algorithm that iteratively trains estimators on training data that is weighted according to the previous estimators' errors. Finally, in stacking a meta-estimator learns to combine the predictions of heterogeneous base estimators.

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