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400007 SE Introduction to linear regression models (2020W)
Continuous assessment of course work
Labels
Registration/Deregistration
Note: The time of your registration within the registration period has no effect on the allocation of places (no first come, first served).
- Registration is open from Tu 01.09.2020 09:00 to We 30.09.2020 17:00
- Deregistration possible until Sa 31.10.2020 17:00
Details
Language: English
Lecturers
Classes (iCal) - next class is marked with N
The first session of this class is likely to take place as planned in the PC room in Schenkenstraße. The class room is very large and provides ample space to spread out. For subsequent sessions, we will see what the situation allows. Those who prefer to take the whole class digitally for health reasons should contact me.
- Monday 12.10. 10:00 - 13:00 PC-Raum 1 Schenkenstraße 8-10, 1.UG
- Monday 19.10. 09:00 - 13:00 PC-Raum 1 Schenkenstraße 8-10, 1.UG
- Monday 09.11. 09:00 - 13:00 PC-Raum 1 Schenkenstraße 8-10, 1.UG
- Monday 16.11. 09:00 - 13:00 PC-Raum 1 Schenkenstraße 8-10, 1.UG
- Monday 23.11. 10:00 - 13:00 PC-Raum 1 Schenkenstraße 8-10, 1.UG
Information
Aims, contents and method of the course
Assessment and permitted materials
Minimum requirements and assessment criteria
Assessment criteria:
1) Problem-set paper on main concepts and interpretation of results, assigned after the last class OR 10-15 page paper using regression models on a substantive topic related to the PhD thesis (50%).
2) Homework and problem sets after each class, to be submitted at five set dates (40%)
3) Continuous assessment of class participation (10%)
Students need to achieve a pass grade (4) on each of these three assessment criteria. Attendance is mandatory.
1) Problem-set paper on main concepts and interpretation of results, assigned after the last class OR 10-15 page paper using regression models on a substantive topic related to the PhD thesis (50%).
2) Homework and problem sets after each class, to be submitted at five set dates (40%)
3) Continuous assessment of class participation (10%)
Students need to achieve a pass grade (4) on each of these three assessment criteria. Attendance is mandatory.
Examination topics
Reading list
Gelman, Hill and Vehtari (2020) Regression and Other Stories, Cambridge UP: Cambridge.
Dougherty, Christopher (2007) Introduction to Econometrics, 3rd edition, Oxford University Press.
Agresti, Alan and Barbara Finlay (2008) Statistical Methods for the Social Sciences, 4th edition, Pearson Education.
Kennedy,Peter (2008) A Guide to Econometrics, 6th edition, Wiley-Blackwell: Oxford.
U. Kohler and U. Kreuter (2012) Data Analysis Using Stata, Third Edition, College Station: Stata Press
Wooldridge, Jeffrey (2009) Introductory Econometrics, 3rd edition, South Western College.
Dougherty, Christopher (2007) Introduction to Econometrics, 3rd edition, Oxford University Press.
Agresti, Alan and Barbara Finlay (2008) Statistical Methods for the Social Sciences, 4th edition, Pearson Education.
Kennedy,Peter (2008) A Guide to Econometrics, 6th edition, Wiley-Blackwell: Oxford.
U. Kohler and U. Kreuter (2012) Data Analysis Using Stata, Third Edition, College Station: Stata Press
Wooldridge, Jeffrey (2009) Introductory Econometrics, 3rd edition, South Western College.
Association in the course directory
Last modified: Tu 22.09.2020 18:50
At the end of this course you will:
- have a solid grounding in theoretical aspects of regression models,
- be able to critically evaluate regression models used in the literature,
- be able to construct and refine a regression-based study design for their own research questions, and
- be able to learn about other regression models through self-study.