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Data Analysis with R, Second Edition - Second Edition

You're reading from  Data Analysis with R, Second Edition - Second Edition

Product type Book
Published in Mar 2018
Publisher Packt
ISBN-13 9781788393720
Pages 570 pages
Edition 2nd Edition
Languages
Toc

Table of Contents (24) Chapters close

Title Page
Copyright and Credits
Packt Upsell
Contributors
Preface
1. RefresheR 2. The Shape of Data 3. Describing Relationships 4. Probability 5. Using Data To Reason About The World 6. Testing Hypotheses 7. Bayesian Methods 8. The Bootstrap 9. Predicting Continuous Variables 10. Predicting Categorical Variables 11. Predicting Changes with Time 12. Sources of Data 13. Dealing with Missing Data 14. Dealing with Messy Data 15. Dealing with Large Data 16. Working with Popular R Packages 17. Reproducibility and Best Practices 1. Other Books You May Enjoy Index

Linear regression diagnostics


I would be negligent if I failed to mention the boring but very critical topic of the assumptions of linear models, and how to detect violations of those assumptions. Just like the assumptions of the hypothesis tests in Chapter 6, Testing Hypotheses, linear regression has its own set of assumptions, the violation of which jeopardizes the accuracy of our model and any inferences derived from it to varying degrees. The checks and tests that ensure these assumptions are met are called diagnostics.

There are five major assumptions of linear regression:

  • That the errors (residuals) are normally distributed with a mean of zero
  • That the error terms are uncorrelated
  • That the errors have a constant variance
  • That the effect of the independent variables on the dependent variable are linear and additive
  • That multi-collinearity is at a minimum

We'll briefly touch on these assumptions, and how to check for them in this section here. To do this, we will be using a residual-fitted...

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