Home Page Icon
Home Page
Table of Contents for
Tidy Modeling with R
Close
Tidy Modeling with R
by Max Kuhn, Julia Silge
Tidy Modeling with R
Preface
I. Introduction
1. Software for Modeling
2. A Tidyverse Primer
3. A Review of R Modeling Fundamentals
II. Modeling Basics
4. The Ames Housing Data
5. Spending Our Data
6. Fitting Models with parsnip
7. A Model Workflow
8. Feature Engineering with Recipes
9. Judging Model Effectiveness
III. Tools for Creating Effective Models
10. Resampling for Evaluating Performance
11. Comparing Models with Resampling
12. Model Tuning and the Dangers of Overfitting
13. Grid Search
14. Iterative Search
15. Screening Many Models
IV. Beyond the Basics
16. Dimensionality Reduction
17. Encoding Categorical Data
18. Explaining Models and Predictions
19. When Should You Trust Your Predictions?
20. Ensembles of Models
21. Inferential Analysis
A. Recommended Preprocessing
References
Index
About the Authors
Search in book...
Toggle Font Controls
Playlists
Add To
Create new playlist
Name your new playlist
Playlist description (optional)
Cancel
Create playlist
Sign In
Email address
Password
Forgot Password?
Create account
Login
or
Continue with Facebook
Continue with Google
Sign Up
Full Name
Email address
Confirm Email Address
Password
Login
Create account
or
Continue with Facebook
Continue with Google
Prev
Previous Chapter
Tidy Modeling with R
Next
Next Chapter
Tidy Modeling with R
Tidy Modeling with R
A Framework for Modeling in the Tidyverse
Max Kuhn and Julia Silge
Add Highlight
No Comment
..................Content has been hidden....................
You can't read the all page of ebook, please click
here
login for view all page.
Day Mode
Cloud Mode
Night Mode
Reset