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Pfad: VVZ SoSe 2024 > Verzeichnis der LV gegliedert nach Instituten und Abteilungen

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Nr. LV-Typ(en) LV-Titel
5022 PI Empirical Data Analysis Präsenz-Modus
Anmeldung über LPIS
vom 22.02.2024 15:00 bis 25.02.2024 23:59
Abmeldung über LPIS
vom 22.02.2024 15:00 bis 04.03.2024 23:59

LV-Leiter/in Jakob Möller, MSc (WU), Hooman Habibnia, MSc.
Planpunkte Bachelor SBWL Kurs III - Decision Sciences: Game Theory, Psychology, and Data Analysis
Course III - Decision Sciences: Game Theory, Psychology, and Data Analysis
Kurs III - Decision Sciences: Game Theory, Psychology, and Data Analysis
Semesterstunden 2
Unterrichtssprache Englisch

Termine
Do, 07.03.2024 10:30-13:30 Uhr TC.3.07 (Lageplan)
Do, 14.03.2024 10:30-13:30 Uhr TC.3.07 (Lageplan)
Do, 21.03.2024 10:30-13:30 Uhr TC.3.07 (Lageplan)
Do, 11.04.2024 10:30-13:30 Uhr TC.3.07 (Lageplan)
Do, 18.04.2024 10:30-13:30 Uhr TC.3.07 (Lageplan)
Do, 25.04.2024 10:30-13:30 Uhr TC.3.07 (Lageplan)
Do, 02.05.2024 10:30-13:30 Uhr TC.3.07 (Lageplan)
Di, 07.05.2024 12:00-15:00 Uhr D5.1.001 (Lageplan)
Di, 07.05.2024 15:00-16:00 Uhr D5.1.001 (Lageplan)
Do, 16.05.2024 10:30-12:00 Uhr P Ort nach Ankündigung
Termindownload (ical) | Termine abonnieren

Weitere Informationen https://learn.wu.ac.at/vvz/24s/5022

Kontakt:
decision.sciences@wu.ac.at
Inhalte der LV:

Data analysis is the basis of any evidence-based managerial decision-making. Data analysis is about recognizing patterns in data so that inferences about the real world can be made. The course teaches students about causal inference using selected methods of data creation, collection, and analysis. It draws on econometrics and statistical methods developed to estimate economic relationships, testing theoretical hypotheses and evaluating policies.

In particular, this course will provide a review of regression analysis including linear regression with multiple regressors, non-linear regression models and dummy variables. In addition the course will cover the methods of laboratory and field experiments, specific approaches to establish causal relations with observational data, such as Differences-in-Differences Regression and Regression Discontinuities. (We may also cover Instrumental Variables if there is time.)

Lernergebnisse (Learning Outcomes):

On successful completion of the course, you should:

  • understand the concept of evidence-based decision-making;
  • be able to choose the right method of statistical data analysis to answer a research question;
  • have a good understanding of the discussed methods as well as their limitations;
  • understand the difference between causality and correlation;
  • be able to present and discuss findings from your research; 
  • perform simple analysis using statistical software.
Regelung zur Anwesenheit:

Full attendance is expected for all lectures. If you cannot attend a lecture due to exceptional/unforeseen circumstances, please contact the lecturer. 

Lehr-/Lerndesign:

The data course is centered on specific problem-based examples and case studies. Typically, we will start a topic with one or more examples and discuss how to find and/or collect data to answer these questions. This is followed by an introduction of the respective analysis method. In in-class tasks and homework assignments, students are asked to try out data analysis themselves, with data provided to them.

Leistung(en) für eine Beurteilung:

Participation in class and/or homework presentations (15%)

Homework assignments (15%)
There will be homework assigned in nearly all lectures. Homework assignments can be done in groups and need to be submitted before the next lecture. We will discuss homework in class.

Group project (30%)

Final exam (40%)
The final exam will cover the entire course.

Zuletzt bearbeitet: 28.09.2023 13:30

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