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GRA 6039 Econometrics with Programming

GRA 6039 Econometrics with Programming

Course code: 
GRA 6039
Department: 
Economics
Credits: 
6
Course coordinator: 
Christian Brinch
Course name in Norwegian: 
Econometrics with Programming
Product category: 
Master
Portfolio: 
MSc - Core course
Semester: 
2024 Autumn
Active status: 
Active
Level of study: 
Master
Teaching language: 
English
Course type: 
One semester
Introduction

The course teaches basic econometrics at a level expected among master students in economics, finance and related disciplines. The course also gives an introduction to programming in the context of data analysis. The programming is also applied to simulation techniques that we use to assess the properties of the econometric methods.

Learning outcomes - Knowledge

After taking this course:

  • students should have a solid knowledge of linear regression models and the theory used for estimation of such models from data.

  • students should be familiar with the assumptions for interpreting regression. estimates, know some techniques for assessing these assumptions and know some strategies for estimation when the standard assumption may fail.

Learning outcomes - Skills

After taking this course:

  • students should be able to perform regression analysis, including using techniques for panel data, instrumental variable techniques and techniques for limited dependent variables

  • students should be able to independently write programs for data analysis, perform simulation experiments, and develop their critical reasoning for econometric investigations.

General Competence

Through experience with econometric models and computer experiments, the student will reflect on the limitations of econometrics, the issue of subjectivity in reaching statistical conclusions, and the level of trust one may place in statistically based decisions. Further, simulation will be introduced as a tool to assess the validity of econometric techniques. The student will reflect on using large-sample techniques in finite samples, the assessment of econometric assumptions and the concept of robustness in econometrics.

Course content
  1. Linear Regression
  2. Statistical inference
  3. Instrumental Variables Estimation and Two Stage Least Squares
  4. Panel Data Analysis
  5. Limited Dependent Variables
Software tools
R/R-Studio
Additional information

Please note that while attendance is not compulsory in all courses, it is the student’s own responsibility to obtain any information provided in class.

All parts of the assessment must be passed in order to receive a final grade in the course.

Qualifications

All courses in the Masters programme will assume that students have fulfilled the admission requirements for the programme. In addition, courses in second, third and/or fourth semester can have specific prerequisites and will assume that students have followed normal study progression. For double degree and exchange students, please note that equivalent courses are accepted.

Disclaimer

Deviations in teaching and exams may occur if external conditions or unforeseen events call for this.

 

Assessments
Assessments
Exam category: 
Submission
Form of assessment: 
Submission PDF
Exam/hand-in semester: 
First Semester
Weight: 
40
Grouping: 
Group (3 - 4)
Duration: 
1 Week(s)
Comment: 
Assignment. An oral defense of the assignment might be required.
Exam code: 
GRA 60393
Grading scale: 
ECTS
Resit: 
Examination when next scheduled course
Exam category: 
School Exam
Form of assessment: 
Written School Exam - pen and paper
Exam/hand-in semester: 
First Semester
Weight: 
60
Grouping: 
Individual
Support materials: 
  • BI-approved exam calculator
  • Simple calculator
  • Bilingual dictionary
Duration: 
3 Hour(s)
Exam code: 
GRA 60394
Grading scale: 
ECTS
Resit: 
Examination when next scheduled course
Type of Assessment: 
Ordinary examination
All exams must be passed to get a grade in this course.
Total weight: 
100
Student workload
ActivityDurationComment
Teaching
36 Hour(s)
Lectures and Tutorials
Examination
15 Hour(s)
Home-exam related work
Examination
3 Hour(s)
Final exam
Student's own work with learning resources
100 Hour(s)
Sum workload: 
154

A course of 1 ECTS credit corresponds to a workload of 26-30 hours. Therefore a course of 6 ECTS credits corresponds to a workload of at least 160 hours.