Login for PhD students/staff at UCPH      Login for others
Causality
Provider: Faculty of Science

Activity no.: 5587-22-07-31 
Enrollment deadline: 20/04/2022
PlaceDepartment of Mathematical Sciences
Universitetsparken 5, 2100 København Ø
Date and time25.04.2022, at: 08:00 - 24.06.2022, at: 16:00
Regular seats50
ECTS credits7.50
Contact personNina Weisse    E-mail address: weisse@math.ku.dk
Enrolment Handling/Course OrganiserJonas Martin Peters    E-mail address: jonas.peters@math.ku.dk
Written languageEnglish
Teaching languageEnglish
Semester/BlockBlock 4
Scheme groupC
Exam formContinuous assessment
Exam formOral examination
Exam detailsThere will be between 4 and 6 group assignments (up to two students), which the students have to hand in. All assignments except for one need to get approved.
Grading scale7 point grading scale. For PhD students: Passed / Not Passed
Course workload
Course workload categoryHours
Lectures28.00
Exercises28.00
Preparation149.00
Exam1.00

Sum206.00


Content
In statistics, we are used to search for the best predictors of some random variable. In many situations, however, we are interested in predicting a system's behavior under manipulations. For such an analysis, we require knowledge about the underlying causal structure of the system. In this course, we study concepts and theory behind causal inference.

Formel requirements
Basic knowledge of probability theory and regression, e.g. MI, Stat1 or equivalent courses. Basic knowledge of programming in R.

Learning outcome
Knowledge:
- causal models versus observational models
- observational distribution, intervention distribution, and counterfactuals
- graphical models and Markov conditions
- identifiability conditions for learning causal relations from observational and/or interventional data

Skills:
- working with graphs and graphical models
- derivation of causal effects and predicting the result of interventional experiments
- performing variable adjustment for computing causal effects
- understanding of and ability to apply different methods for causal structure learning

Competences:
- causal reasoning
- learning causal structure from data

Literature
See Absalon for a list of course literature.

Teaching and learning methods
4 hours lectures and 4 hours of exercises per week for 7 weeks.

Search
Click the search button to search Courses.


Course calendar
See which courses you can attend and when
JanFebMarApr
MayJunJulAug
SepOctNovDec



Publication of new courses
All planned PhD courses at the PhD School are visible in the course catalogue. Courses are published regularly.