chore: import upstream snapshot with attribution
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Sebastian Raschka, 2015
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Python Machine Learning - Code Examples
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## Chapter 7 - Combining Different Models for Ensemble Learning
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- Learning with ensembles
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- Implementing a simple majority vote classifier
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- Combining different algorithms for classification with majority vote
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- Evaluating and tuning the ensemble classifier
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- Bagging – building an ensemble of classifiers from bootstrap samples
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- Leveraging weak learners via adaptive boosting
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- Summary
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