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scikit-learn Cookbook , Second Edition

You're reading from   scikit-learn Cookbook , Second Edition Over 80 recipes for machine learning in Python with scikit-learn

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Product type Paperback
Published in Nov 2017
Publisher Packt
ISBN-13 9781787286382
Length 374 pages
Edition 2nd Edition
Languages
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Authors (2):
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Trent Hauck Trent Hauck
Author Profile Icon Trent Hauck
Trent Hauck
Julian Avila Julian Avila
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Julian Avila
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Table of Contents (13) Chapters Close

Preface 1. High-Performance Machine Learning – NumPy FREE CHAPTER 2. Pre-Model Workflow and Pre-Processing 3. Dimensionality Reduction 4. Linear Models with scikit-learn 5. Linear Models – Logistic Regression 6. Building Models with Distance Metrics 7. Cross-Validation and Post-Model Workflow 8. Support Vector Machines 9. Tree Algorithms and Ensembles 10. Text and Multiclass Classification with scikit-learn 11. Neural Networks 12. Create a Simple Estimator

 Bagging regression with nearest neighbors

Bagging is an additional ensemble type that, interestingly, does not necessarily involve trees. It builds several instances of a base estimator acting on random subsets of the first training set. In this section, we try k-nearest neighbors (KNN) as the base estimator.

Pragmatically, bagging estimators are great for reducing the variance of a complex base estimator, for example, a decision tree with many levels. On the other hand, boosting reduces the bias of weak models, such as decision trees of very few levels, or linear models.

To try out bagging, we will find the best parameters, a hyperparameter search, using scikit-learn's random grid search. As we have done previously, we will go through the following process:

  1. Figure out which parameters to optimize in the algorithm (these are the parameters researchers view as the best...
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