April 2020
Intermediate to advanced
536 pages
16h 55m
English
Chapter 1. Introduction to machine learning
Chapter 2. Tidying, manipulating, and plotting data with the tidyverse
Chapter 3. Classifying based on similarities with k-nearest neighbors
Chapter 4. Classifying based on odds with logistic regression
Chapter 5. Classifying by maximizing separation with discriminant analysis
Chapter 6. Classifying with naive Bayes and support vector machines
Chapter 7. Classifying with decision trees
Chapter 8. Improving decision trees with random forests and boosting