Wednesdays: 14.15-16.00 in room MA24.
Thursdays: 14:15-16:00 in room MA24.
Fridays 09:15-10:00 (NB! changed) in room MA24. First time 06.09. Three of the exercises will be compulsory in order to be allowed to take the exam. The rest are not, but they are also extemely important for the exam.
Exercise 1, 06.09: 2.33ac, 2.35, 2.38, 3.28abd, 3.39. lf
Exercise 2, 13.09: Exercise 2 lf
Exercise 3, 19.09: 3,46, 3.47 (hard), 4.1, 4.4, 4.10, 4.34. lf
Exercise 4: 27.09: 4.15, 4.30, 4.31, 4.32, 4.35, 4.36, 4.58. This exercise is compulsory and must be handed
in before 15.00 October 1. Use preferably Blackboard for handing in the exercise. In case of problems you may send
in by email to Jacopo Paglia. lf
Exercise 5: 04.10: 5.6, 5.17, 5.31, 5.35 lf
Exercise 6: 11.10: 5.36, 5.43a), 5.44, 6.1.lf
Exercise 7: Exercise 7
lf
Exercise 8: Exercise 8 This exercise is compulsory and must be handed
in before 15.00 October 29. Use preferably Blackboard for handing in the exercise. In case of problems you may send
in by email to Jacopo Paglia. lf
Exercise 9: Exercise 9. lf
Exercise 10: Exercise 10. lf
Exercise 11: Exercise 11 This exercise is compulsory and must be handed
in before 15.00 November 19. Use preferably Blackboard for handing in the exercise. In case of problems you may send
in by email to Jacopo Paglia. lf
Exercise 10: Exercise 12. lf
John Tyssedal, room 1132, SII. Email: John [dot] tyssedal [at] ntnu [dot] no
Meeting hour Fridays 9.00 - 10.00.
Jacopo Paglia, room 1001, SII. Email: jacopo [dot] paglia [at] ntnu [dot] no
Elen Ekeberg Klippen elenek [at] stud [dot] ntnu [dot] no
Eliane Huygens Olsen elianeho [at] stud [dot] ntnu [dot] no
Leonardo Constantini leonarco [at] stud [dot] ntnu [dot] no
The curriculum is defined to be all that is covered in lectures and exercises, as described on the course homepage under "Lecture plan and progress" and "Exercises".
The following list gives references to the planned topics covered from the course book: Statistical Inference by George Casella and Roger Berger (Second Edition)
Chapter 1: Probability theory. Assumed known
Chapter 2: Transformations and expectations. 2.1 (assumed known); 2.2-2.4
Chapter 3: Common families of distributions. 3.1-3.3 (assumed known); 3.4, 3.5, 3.6.1
Chapter 4: Multiple random variables. 4.1-4.6 (4.5 only partly); 4.7 (only Cauchy-Schwarz and Jensen's inequality)
Chapter 5: Properties of a random sample. 5.1-5.3 (not all in detail),5.5.1, 5.5.3, 5.5.4.
Chapter 6: Principles of data reduction. 6.1, 6.2.1, 6.2.2, Def. 6.2.21, Examples 6.22.22-23, Theorem 6.2.25
Chapter 7: Point estimation. 7.1, 7.2.1, 7.2.2, 7.2.3, 7.3.1 (except from "In certain situations…" on p. 333), 7.3.2, 7.3.3 (from beginning to Example 7.3.18, then from top of page 347 and rest of section 7.3.3; Theorem 7.5.1.
Chapter 8: Hypothesis testing. 8.1, 8.2.1, 8.3.1 (except page 387), 8.3.2 until Def. 8.3.16 (only part a in Theorem 8.3.12).
Chapter 9: Interval estimation. 9.1, 9.2
Chapter 10: Asymptotic evaluations. 10.1.1, 10.1.2, 10.1.3, 10.3.1 to theorem 10.3.3, Score statistic on page 494.
It will be a written exam on December 19. at 9.00. It lasts for four hours. You are allowed to bring with you:
Tabeller og formler i statistikk
NTNU certified calculator
Personal, handwritten, stamped yellow sheet, A5-format. You get the sheet in the Department office, 7. floor
The exam text will contain a collections of results from the text-book as given here
Earlier exams with solutions can be found here:earlier exams
The exam 2017 with suggested solution
The exam 2018 with suggested solution
The exam 2019 with suggested solution
The curriculum should make you able to solve the problems in most of the earlier exams, but you will meet questions about ARE or Square Loss function in a Bayesian setting in some of them. That is not covered by our curriculum, and you will not meet such questions on the exam.
Meeting hours before the exam in my offfice
Monday 16. December 12-14
Tuesday 17. December 13-15
Wednesday 18. December 13-15