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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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Prabhanjan Narayanachar Tattar Prabhanjan Narayanachar Tattar
Author Profile Icon Prabhanjan Narayanachar Tattar
Prabhanjan Narayanachar Tattar
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Table of Contents (15) Chapters Close

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?
A. Bibliography Index

Bootstrapping regression models

The US Crime dataset introduced in Chapter 1, Introduction to Ensemble Techniques, is an example of why the linear regression model might be a good fit. In this example, we are interested in understanding the crime rate (R) as a function of thirteen related variables such as average age, the southern state indicator, and so on. Mathematically, the linear regression model is as follows:

Bootstrapping regression models

Here, Bootstrapping regression models are the p-covariates, Bootstrapping regression models is the intercept term, Bootstrapping regression models are the regression coefficients, and Bootstrapping regression models is the error term assumed to follow a normal distribution Bootstrapping regression models. The covariates can be written in a vector form and the ith observation can be summarized as Bootstrapping regression models, where Bootstrapping regression models. The n observations Bootstrapping regression models, are assumed to be stochastically independent. The linear regression model has been detailed in many classical regression books; see Draper and Smith (1999), for instance. A recent book that details the implementation of the linear regression model in R is Ciaburro (2018). As the reader might have guessed...

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