Exercises for 29. November
Extra exercise 6 (try this first) and 4, available here
Week 46 (22. November). Extra exercise 9.1
The R code for solution consists of the file:
solution.extra.ex.9.1.r
Everything in a pdf-file, including results.
Week 45 (15. November). Extra exercise 7.1
The R code for solution consists of the following files:
solution.extra.ex.7.1a.r
solution.extra.ex.7.1bc.r
cv.k.perm.r
model.selection.r
div.sim.r
cv.k.r
calc.err.r
calc.res.r
Everything in a pdf-file, including results.
Exercises for 8. november
Exam 2006, problem 2
Exam 2012, problem 2
Challenge: Exercise 5.7
Exercises for 1. november
Exercise 5.1 (Hint: Consider only two intervals first and write both intervals as a_j+b_j*(x-xi_1)+c_j(x-xi_1)^2+d_j(x-xi_1)^3)
Exercise 5.3 (Hint: Remember that all methods are linear in the beta's and also remember eq (3.8) which can be used to obtain prediction variances), exer5_3.r
Exercise 5.4
Exercises for 25. october
Extra exercise 2, available here
Challenge: Exercise 4.6
Exercises for 18. october:
Exercise 4.2, solution available here
Extra exercise 1, avaliable here
Exercises for 11. october:
(Exercise 4.2, this we postphone to next week)
Exercise 4.9: Extensions to this exercise:
- Start by defining binary outputs for each class and for each of the following regression methods, construct classification rules (by writting computer programs):
- linear regression
- logistic regression
- Write a computer program to perform a linear discriminant analysis
- Then finally implement quadratic discriminant analysis
- Compare the different methods and conclude.
Note: The vowel data contain both a training and a test set. Use the training set to construct the classifiers and the test set to compare the different methods!
Hint: The file exer4_9_hint.r contain code for the first part of the exercise.
Week 40 (4. October). Extra exercise 3.4
The R code for solution consists of the following files:
solution.extra.ex.3.4a.r
solution.extra.ex.3.4b.r
solution.extra.ex.3.4c.r
cv.k.r
Everything in a pdf-file, including results.
Exercise for 27. September: Extra exercise 3.3
The R code for solution consists of the following files:
solution.extra.ex.3.3a.r
solution.extra.ex.3.3b.r
cv.k.r
Everything in a pdf-file, including results.
Exercise for 20. September: Extra exercise 3.2
If doing the whole exercise requires too much work, you can try to solve only part a).
The R code for solution consists of the following files:
solution.extra.ex.3.2a.r
solution.extra.ex.3.2b.r
div.sim.r
lm.best.subset.r
cv.k.r
calc.err.r
calc.res.r
Everything in a pdf-file, including results.
Exercise for 6. September: Extra exercise 3.1
R code for solution
R code in a pdf-file, including results.
Exercises for August 30:
- Derive equation (2.13)
- Exercise 2.2
- Exercise 2.5
- Exercise 2.7
In some of the exercises, there will be need for using a statistical package.
We will use R in the course. R is a free software available both for linux and windows and
can be downloaded from the R home page. A good reference for use of R are
Kuhnert and Venables: An introduction to R (free).