STK9021 – Applied Bayesian Analysis

Course content

Combining various data sources and other types of information is becoming increasingly important in various types of analyses. Certain classes of Bayesian hierarchical models have shown to be particularly useful in such contexts. Bayesian approaches are strongly connected to statistical computational methods, and in particular to Monte Carlo techniques. This course considers the foundation of Bayesian analysis, how to use Bayesian methods in practice, and computational methods for hierarchical models.

Learning outcome

After completing the course you:

  • can handle the general Bayesian principles and the foundation for Bayesian analysis
  • have knowledge about how a priori insight can be formulated as a priori distributions through Bayes’ formula
  • know of the relations between Bayesian and non-Bayesian methods, including empirical Bayes methods
  • have knowledge about the principles behind hierarchical models
  • can handle various computational methods for simple and hierarchical models (including asymptotic considerations, Monte Carlo methods and Markov Chain Monte Carlo methods)
  • are able to use the computational methods taught in the course on real problems and data, and also interpret the results
  • will be able to present, on a scientific level, a short thesis on a chosen topic of relevance, selected in collaboration with the lecturer.

Admission to the course

PhD candidates from the University of Oslo should apply for classes and register for examinations through Studentweb.

If a course has limited intake capacity, priority will be given to PhD candidates who follow an individual education plan where this particular course is included. Some national researchers’ schools may have specific rules for ranking applicants for courses with limited intake capacity.

PhD candidates who have been admitted to another higher education institution must apply for a position as a visiting student within a given deadline.

Overlapping courses

Teaching

3 hours of lectures/exercises per week throughout the semester.

The course may be taught in Norwegian if the lecturer and all students at the first lecture agree to it.

Upon the attendance of three or fewer students, the lecturer may, in conjunction with the Head of Teaching, change the course to self-study with supervision.

Examination

Final written exam or final oral exam, which counts 100 % towards the final grade.

The form of examination will be announced by the lecturer by 15 October/15 March for the autumn semester and the spring semester respectively.

This course has 1 mandatory assignment that must be approved before you can sit the final exam.

In addition, each PhD candidate is expected to give an oral presentation on a topic of relevance chosen in cooperation with the lecturer. The presentation has to be approved by the lecturer before you can sit the final exam.

It will also be counted as one of the three attempts to sit the exam for this course, if you sit the exam for one of the following courses: STK4021 – Applied Bayesian Analysis

Examination support material

Written examination: Approved calculators are allowed. Information about approved calculators in Norwegian.

Oral examination: No examination support material is allowed.

Language of examination

Courses taught in English will only offer the exam paper in English. You may write your examination paper in Norwegian, Swedish, Danish or English.

Grading scale

Grades are awarded on a pass/fail scale. Read more about the grading system.

Resit an examination

This course offers both postponed and resit of examination. Read more:

More about examinations at UiO

You will find further guides and resources at the web page on examinations at UiO.

Last updated from FS (Common Student System) Nov. 5, 2024 3:36:16 AM

Facts about this course

Level
PhD
Credits
10
Teaching
Spring and autumn

Taught according to demand and resources. Contact?studieinfo@math.uio.no if you are interested in this course.

Examination
Autumn
Teaching language
English