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Hands-On Ensemble Learning with R

You're reading from   Hands-On Ensemble Learning with R A beginner's guide to combining the power of machine learning algorithms using ensemble techniques

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Product type Paperback
Published in Jul 2018
Publisher Packt
ISBN-13 9781788624145
Length 376 pages
Edition 1st Edition
Languages
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Author (1):
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 Tattar Tattar
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Tattar
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Table of Contents (17) Chapters Close

Hands-On Ensemble Learning with R
Contributors
Preface
1. Introduction to Ensemble Techniques FREE CHAPTER 2. Bootstrapping 3. Bagging 4. Random Forests 5. The Bare Bones Boosting Algorithms 6. Boosting Refinements 7. The General Ensemble Technique 8. Ensemble Diagnostics 9. Ensembling Regression Models 10. Ensembling Survival Models 11. Ensembling Time Series Models 12. What's Next?
Bibliography Index

Ensemble diversity


In an ensemble, we have many base models—say L number of them. For the classification problem, we have base models as classifiers. If we have a regression problem, we have the base models as learners. Since the diagnostics are performed on the training dataset only, we will drop the convention of train and valid partitions. For simplicity, during the rest of the discussion, we will assume that we have N observations. The L number of models implies that we have L predictions for each of the N observations, and thus the number of predictions is . It is in these predictions that we try to find the diversity of the ensemble. The diversity of the ensemble is identified depending on the type of problem we are dealing with. First, we will take the regression problem.

Numeric prediction

In the case of regression problems, the predicted values of the observations can be compared directly with their actual values. We can easily see which base models' predictions are closer to the...

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