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The Statistics and Machine Learning with R Workshop

You're reading from   The Statistics and Machine Learning with R Workshop Unlock the power of efficient data science modeling with this hands-on guide

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Product type Paperback
Published in Oct 2023
Publisher Packt
ISBN-13 9781803240305
Length 516 pages
Edition 1st Edition
Languages
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Author (1):
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Liu Peng Liu Peng
Author Profile Icon Liu Peng
Liu Peng
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Table of Contents (20) Chapters Close

Preface 1. Part 1:Statistics Essentials
2. Chapter 1: Getting Started with R FREE CHAPTER 3. Chapter 2: Data Processing with dplyr 4. Chapter 3: Intermediate Data Processing 5. Chapter 4: Data Visualization with ggplot2 6. Chapter 5: Exploratory Data Analysis 7. Chapter 6: Effective Reporting with R Markdown 8. Part 2:Fundamentals of Linear Algebra and Calculus in R
9. Chapter 7: Linear Algebra in R 10. Chapter 8: Intermediate Linear Algebra in R 11. Chapter 9: Calculus in R 12. Part 3:Fundamentals of Mathematical Statistics in R
13. Chapter 10: Probability Basics 14. Chapter 11: Statistical Estimation 15. Chapter 12: Linear Regression in R 16. Chapter 13: Logistic Regression in R 17. Chapter 14: Bayesian Statistics 18. Index 19. Other Books You May Enjoy

Introducing penalized linear regression

Penalized regression models, such as ridge and lasso, are techniques that are used to handle problems such as multicollinearity, reduce overfitting, and even perform variable selection, especially when dealing with high-dimensional data with multiple input features.

Ridge regression (also called L2 regularization) is a method that adds a penalty equivalent to the square of the magnitude of coefficients. We would add this term to the loss function after weighting it by an additional hyperparameter, often denoted as λ, to control the strength of the penalty term.

Lasso regression (L1 regularization), on the other hand, is a method that, similar to ridge regression, adds a penalty for non-zero coefficients, but unlike ridge regression, it can force some coefficients to be exactly equal to zero when the penalty tuning parameter is large enough. The larger the value of the hyperparameter, λ, the greater the amount of shrinkage. The...

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