April 2020
Intermediate to advanced
536 pages
16h 55m
English
Chapter 1. Introduction to machine learning
1.1. What is machine learning?
1.2. Classes of machine learning algorithms
1.2.1. Differences between supervised, unsupervised, and semi-supervised learning
1.2.2. Classification, regression, dimension reduction, and clustering
1.3. Thinking about the ethical impact of machine learning
1.4. Why use R for machine learning?
1.5. Which datasets will we use?