Syllabus

Title
5663 Bayesian Econometrics
Instructors
Univ.Prof. Dr. Sylvia Frühwirth-Schnatter
Contact details
Type
PI
Weekly hours
2
Language of instruction
Englisch
Registration
02/01/24 to 02/18/24
Registration via LPIS
Notes to the course
Dates
Day Date Time Room
Wednesday 03/06/24 09:00 AM - 12:30 PM D4.0.127
Wednesday 03/13/24 09:00 AM - 12:30 PM D4.0.127
Wednesday 03/20/24 09:00 AM - 12:30 PM D4.0.127
Wednesday 04/10/24 09:00 AM - 12:30 PM D4.0.127
Wednesday 04/17/24 09:00 AM - 12:30 PM D4.0.127
Wednesday 04/24/24 09:00 AM - 12:30 PM D4.0.127
Wednesday 05/08/24 09:00 AM - 12:00 PM D4.0.047
Contents

The course starts with a concise coverage of elementary concepts and computational tools for Bayesian modeling of financial data. Furthermore, it aims at complementing students' econometric competence in data analysis with a focus on Bayesian approaches. Towards the end of this course, state-of-the art univariate and multivariate volatility models are discussed and applied to real world data. Focus will be placed on topics that are of particular interest to the participants.

Learning outcomes

After completing this course the student will have the ability to:

  • fundamentally understand concepts, techniques and tools in Bayesian data analysis
  • know about various computational approaches towards Bayesian econometrics
  • acquire a comprehensive understanding of Bayesian regression analysis, including shrinkage estimation 
  • apply univariate and multivariate models for capturing heteroskedasticity in financial time series
  • understand different approaches to point- and density-prediction and evaluation of forecasting techniques
  • connect to state-of-the art literature in Bayesian modeling of economic and financial data
Attendance requirements

For this lecture participation is obligatory. Students are allowed to miss a maximum of 20% (no matter if excused or not excused).

Teaching/learning method(s)

The course consists of a mix between lectures, reading assignments, case studies and students' presentations. Participants are required to independently apply the methods discussed to actual data problems.

Assessment

The grade is composed as follows:

60 points: case studies / homework
15 points: students' presentations
20 points: final exam

  5 points: active classroom participation

Overall, 100 points can be achieved. The final grade is computed according to

 1 (at least 90),  2 (at least 80),  3 (at least  70),  4 (at least 60)

Readings

Please log in with your WU account to use all functionalities of read!t. For off-campus access to our licensed electronic resources, remember to activate your VPN connection connection. In case you encounter any technical problems or have questions regarding read!t, please feel free to contact the library at readinglists@wu.ac.at.

Recommended previous knowledge and skills

A solid understanding of “classical” (financial) econometrics. Good programming skills in a high-level language such as R.

Last edited: 2024-01-23



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