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Python: Deeper Insights into Machine Learning

You're reading from   Python: Deeper Insights into Machine Learning Deeper Insights into Machine Learning

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Product type Course
Published in Aug 2016
Publisher Packt
ISBN-13 9781787128576
Length 901 pages
Edition 1st Edition
Languages
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Authors (3):
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John Hearty John Hearty
Author Profile Icon John Hearty
John Hearty
Sebastian Raschka Sebastian Raschka
Author Profile Icon Sebastian Raschka
Sebastian Raschka
David Julian David Julian
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David Julian
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Toc

Table of Contents (6) Chapters Close

Preface 1. Module 1 FREE CHAPTER 2. Module 2 3. Module 3 A. Biblography
Index

Chapter 8. Learning with Ensembles

The motivation for creating machine learning ensembles comes from clear intuitions and is grounded in a rich theoretical history. Diversity, in many natural and human-made systems, makes them more resilient to perturbations. Similarly, we have seen that averaging results from a number of measurements can often result in a more stable models that are less susceptible to random fluctuations, such as outliers or errors in data collection.

In this chapter, we will divide this rather large and diverse space into the following topics:

  • Ensemble types
  • Bagging
  • Random forests
  • Boosting

Ensemble types

Ensemble techniques can be broadly divided into two types:

  • Averaging method: This is the method in which several estimators are run independently and their predictions are averaged. This includes random forests and bagging methods.
  • Boosting method: This is the method in which weak learners are built sequentially using weighted distributions of the data based on the...
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