Chapter 1 Prerequisites

The reader should have some basic knowledge of the following topics:

  • Statistical learning

    • Train/ test split

    • Cross-validation

    • Overfitting

    • Gradient descent

    • Bias variance trade-off

    • Hyperparameters

  • Regression trees and random forest models

  • Basic R knowledge (only for the applied part)