Exercise solutions for "Introduction to Statistical Learning with Applications in R, 2nd edition", written in R using org mode.
- Lab
- The validation set approach
- Leave-one-out cross-validation
- k-fold cross-validation
- The bootstrap
- Exercises
- Exercise 1
- Exercise 2
- Exercise 3
- Exercise 4
- Exercise 5
- Exercise 6
- Exercise 7
- Exercise 8
- Exercise 9
- Lab
- Subset selection methods
- Ridge regression and the lasso
- PCR and PLS regression
- Exercises
- Exercise 1
- Exercise 2
- Exercise 3
- Exercise 4
- Exercise 5
- Exercise 6
- Exercise 7
- Exercise 8
- Exercise 9
- Exercise 10
- Exercise 11
- Lab
- Polynomial regression and step functions
- Splines
- GAMs
- Exercises
- Exercise 1
- Exercise 2
- Exercise 3
- Exercise 4
- Exercise 5
- Exercise 6
- Exercise 7
- Exercise 8
- Exercise 9
- Exercise 10
- Exercise 11
- Exercise 12
- Lab
- Fitting classification trees
- Fitting regression trees
- Bagging and random forests
- Boosting
- Bayesian additive regression trees
- Exercises
- Exercise 1
- Exercise 2
- Exercise 3
- Exercise 4
- Exercise 5
- Exercise 6
- Exercise 7
- Exercise 8
- Exercise 9
- Exercise 10
- Exercise 11
- Exercise 12