Qualification Course in Econometrics

Qualification Course in Econometrics

Course dates:
8 August, 2022 to 19 August, 2022
Fee:
EU/EEA citizens 6375 DKK/Non-EU/EEA citizens 10025 DKK
Fee advantages:
Full fee
Topics:
Engineering & Sciences
Application deadline:
Friday, 1 April, 2022
University:
University of Copenhagen
Copenhagen, Denmark

General information

The course will be held online.

The course consists of a limited number of lectures, a larger number of teacher-made but self-organized exercises and a lot of independent work and self-study. Learning how to apply econometrics to interesting economic problems quite naturally entails working with economic data. Therefore, a large part of the course focuses on acquainting students with the R programming language, the success of which largely depends on the time and effort the students spend on it. The final learning outcome is therefore closely linked to the students’ ability to work independently and thoroughly with the supplied material.

The course focuses on introducing the linear regression model for data analysis within economics. Emphasis is on the statistical theory behind econometrics, understanding the nature of economic data, and the applications of econometrics to real-world problems. The latter emphasizes a focus on the interpretation of statistical results and a discussion on possible limitations or issues with the chosen application. More formally, this requires a thorough understanding of the assumptions underlying the linear regression model and what to do when these assumptions are violated.

The course is very much an applied econometrics course in the sense that it focuses on using and discussing which econometric approach would best uncover the causal relationship of interest, to a larger extent than deriving properties of estimators (or similar).

A natural part of applying statistical methods to some real-world problem is working with data. Therefore, parts of the curriculum focus explicitly on good practices when managing and collecting economic data. Furthermore, the course continuously works with practical data examples, as these are a necessity when trying to infer anything meaningful about some economic phenomenon.

Accommodation

Please note that the summer courses are non-residential. Participants are responsible for finding and funding accommodation during their stay in Copenhagen.

You can use different online portals to search for accommodation, such as:

Airbnb
Danhostel
Hostel World

UCPH Housing Foundation (acceptance letter from UCPH required).

Registration

https://www.science.ku.dk/english/courses-and-programmes/other-study-opp...

ECTS accreditation

Bachelor level

7,5 ECTS