DRE 7030 Introduction to Bayesian Econometrics

DRE 7030 Introduction to Bayesian Econometrics

Course code: 
DRE 7030
Department: 
Economics
Credits: 
3
Course coordinator: 
Hilde Christiane Bjørnland
Course name in Norwegian: 
Introduction to Bayesian Econometrics
Product category: 
PhD
Portfolio: 
PhD Economics courses
Semester: 
2020 Autumn
Active status: 
Active
Level of study: 
PhD
Teaching language: 
English
Course type: 
One semester
Learning outcomes - Knowledge

This is a course in Bayesian econometrics at the PhD level. This includes:

1.      A knowledge of Bayesian theory

2.      Posterior simulation: Monte Carlo Integration, Gibbs Sampling and Metropolis-Hastings

3.      Application of various models: linear regressions, vector autoregressions and state-space model

Learning outcomes - Skills

After completion of the course, the students should have foundations for applying Bayesian Econometrics methods. This includes being able to:

1.      Understand both the theoretical and practical challenges underlying posterior simulation

2.      Estimate various Bayesian models, including linear regression, vector autoregression and state space models

3.      Be able to understand and create research articles with Bayesian econometric

General Competence

After completing the course, the students should have developed the ability to contrast classical and Bayesian thinking in econometrics, and be able to apply Bayesian methods in qualitative research.

Course content

Bayesian methods are increasingly used in econometrics, particularly in the field of macroeconomics. This is a course in Bayesian econometrics with a focus on the models used in empirical macroeconomics. It begins with a brief introduction to Bayesian econometrics, describing the main concepts underlying Bayesian theory and seeing how Bayesian methods work in the familiar context of the regression model. In light of the Big Data revolution, applied economists often face the situation where the number of variables under consideration is large relative to the number of observations and conventional econometric methods do not work well. We describe various methods that can be used with Big Data in the context of the regression model and emphasize the wider applicability of these methods in other modelling contexts. Subsequently, the course shows how Bayesian methods are used with models which are currently popular in macroeconomics such as Vector Autoregressions (VARs) and state space models.

Teaching and learning activities

The course takes place over 4 days. Each day will consist of a two hour lecture in the morning and a two hour computer lab in the afternoon.

 

·         Topic 1: An Overview of Bayesian Econometrics.

·         Topic 2: Bayesian Inference in the Normal Linear Regression Model with Natural Conjugate Priors

·         Topic 3: Bayesian Inference in the Normal Linear Regression Model with Independent Normal Gamma Prior

·         Topic 4: Bayesian Methods for Regression Models with Big Data

·         Topic 5:  Bayesian Vector Autoregressions (VARs)

·         Topic 6: Bayesian Inference in the Normal Linear State Space Model

·         Topic 7: Stochastic Volatility

·         Topic 8: Time-varying Parameter VARs

 

The exam will be a research paper in which course participant will be asked to produce an original piece of analysis using the tools learned in the course.

The course material will draw on the following readings. Koop (2003) and Chan, Koop, Poirier and Tobias (2019) are textbooks protected by copyright. The remaining readings are monographs or manuscripts which will be made available on the course website.

Software tools
No specified computer-based tools are required.
Qualifications

Enrollment in a PhD programme is a general requirement for participation in PhD courses at BI Norwegian Business School.
External candidates are kindly asked to attach confirmation of enrollment in a PhD programme when signing up for a course. Other candidates may be allowed to sit in on courses by approval of the course leader. Sitting in on a course does not permit registration for the course, handing in exams or gaining credits for the course. Course certificates or confirmation letters will not be issued for sitting in on courses.

Covid-19

Due to the Covid-19 pandemic, there may be deviations in teaching and learning activities as well as exams, compared with what is described in this course description.

Exam categoryWeightInvigilationDurationGroupingComment exam
Exam category:
Submission
Form of assessment:
Written submission
Exam code:
DRE 70301
Grading scale:
Pass/fail
Grading rules:
Internal and external examiner
Resit:
Examination when next scheduled course
100No1 Semester(s)Individual
Exams:
Exam category:Submission
Form of assessment:Written submission
Weight:100
Invigilation:No
Grouping (size):Individual
Duration:1 Semester(s)
Comment:
Exam code:DRE 70301
Grading scale:Pass/fail
Resit:Examination when next scheduled course
Type of Assessment: 
Ordinary examination
Total weight: 
100
Student workload
ActivityDurationComment
Teaching
15 Hour(s)
Feedback activities and counselling
3 Hour(s)
Student's own work with learning resources
32 Hour(s)
Prepare for teaching
10 Hour(s)
Examination
20 Hour(s)
Sum workload: 
80

A course of 1 ECTS credit corresponds to a workload of 26-30 hours. Therefore a course of 3 ECTS credit corresponds to a workload of at least 80 hours.