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Hands-On Ensemble Learning with Python

You're reading from   Hands-On Ensemble Learning with Python Build highly optimized ensemble machine learning models using scikit-learn and Keras

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Product type Paperback
Published in Jul 2019
Publisher Packt
ISBN-13 9781789612851
Length 298 pages
Edition 1st Edition
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Authors (2):
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Konstantinos G. Margaritis Konstantinos G. Margaritis
Author Profile Icon Konstantinos G. Margaritis
Konstantinos G. Margaritis
George Kyriakides George Kyriakides
Author Profile Icon George Kyriakides
George Kyriakides
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Table of Contents (20) Chapters Close

Preface 1. Section 1: Introduction and Required Software Tools FREE CHAPTER
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

Voting

In this section, we will try to classify the dataset by using voting ensembles. For our initial ensemble, we will utilize a Naive Bayes classifier, a logistic regression, and a decision tree. This will be implemented in two parts, first by testing each base learner itself and then combining the base learners into an ensemble.

Testing the base learners

To test the base learners, we will benchmark the base learners by themselves, which will help us gauge how well they perform on their own. In order to do so, first, we load the libraries and dataset and then split the data with 70% in the train set and 30% in the test set. We use pandas in order to easily import the CSV. Our goal is to train and evaluate each individual...

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