A Quarto Book that provides guidance for machine learning methods and advanced data visualiziation in R. For each method the theory behind it is explained and an example of usage in R is given. https://eddabra.github.io/guides-for-supervised-learning/
Index:
- Introduction
- Visualization
- Model accuracy and Fit
- Linear Regression
- Classification
- Beyond Linearity
- Tree-based Methods
- Text Mining
Based on the course “Applied Data Analysis & Visualisation” from the Department of Methodology and Statistics (University Utrecht).