Universität Wien
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040088 UE Empirical Methods I (MA) (2021S)

4.00 ECTS (2.00 SWS), SPL 4 - Wirtschaftswissenschaften
Prüfungsimmanente Lehrveranstaltung
DIGITAL

Zusammenfassung

2 Meissner , Moodle

An/Abmeldung

Hinweis: Ihr Anmeldezeitpunkt innerhalb der Frist hat keine Auswirkungen auf die Platzvergabe (kein "first come, first served").
An/Abmeldeinformationen sind bei der jeweiligen Gruppe verfügbar.

Gruppen

Gruppe 1

max. 30 Teilnehmer*innen
Sprache: Englisch
Lernplattform: Moodle

Lehrende

Termine (iCal) - nächster Termin ist mit N markiert

* Due to the current situation, this course is held in a fully digital form!
** This course uses the (fee-based) statistics software STATA. We are still working out a solution and hope to be able to provide you with licenses. However, please count on an eventual expense of ca. 15€. You will receive more detailed information about getting this software as soon as possible.

  • Montag 08.03. 09:45 - 13:00 Digital
  • Montag 15.03. 09:45 - 13:00 Digital
  • Montag 22.03. 08:00 - 11:15 Digital
  • Montag 12.04. 09:45 - 13:00 Digital
  • Montag 19.04. 09:45 - 13:00 Digital
  • Montag 26.04. 09:45 - 13:00 Digital
  • Montag 03.05. 09:45 - 13:00 Digital
  • Montag 10.05. 08:00 - 11:15 Digital
  • Montag 17.05. 09:45 - 11:15 Digital
  • Montag 31.05. 09:45 - 13:00 Digital

Ziele, Inhalte und Methode der Lehrveranstaltung

This course is an introductory class on empirical methods and data analysis which precedes the follow-up class “Empirical Methods II”. The goal of this introductory course is for students to learn the fundamental techniques and obtain the basic skills required in empirical research. Our theoretical sessions will cover tools and stages required for running empirical projects (e.g. research design, measurement, methods of data collection) with a special focus on the pre-evaluation stage of an empirical work. Our applied sessions will introduce the students to basic programming skills, allowing them to prepare their data for analysis using statistical programming software. Students will participate by reading and presenting scientific articles in some of the highest ranked strategy journals. Knowledge gained in this course is also applied during a project where students actively develop the necessary steps for conducting their own empirical research projects.
This course is highly interactive and built around the idea of a laboratory setup as is typical for social sciences. The setup necessitates certain software and IT equipment. To provide every student the same opportunity to successfully participate in the course, it is usually held in one of the PC-labs at the OMP 1. Since the current situation seems not to allow this setting, but we still want to maintain a high quality and interactive class, this semester, the class will be held online using MS Teams or Zoom. In this spirit, students are required to ensure stable Internet connection and be able to join using their web cameras as well! Hence, not only an audio connection, also a video connection is required!

Art der Leistungskontrolle und erlaubte Hilfsmittel

Students will be assessed based on their class participation (class work, home assignments and a presentation of an empirical paper), a written exam and an empirical project (own paper and a presentation of own findings). The final project (including presentation) accounts for 35%, the exam for 35% and class participation accounts for 30% of the final grade.

Mindestanforderungen und Beurteilungsmaßstab

Please be aware that attendance during the first session of this course is absolutely mandatory. If students miss the first session without contacting the lecturer in writing (at the very latest until 24 hours before the first session), giving a relevant reason/proof (e.g. illness=doctor's certificate, exam=confirmation by the examiner) for their absence, they will be deregistered from the course and their place will automatically be awarded to the next in line on the waiting list. After that, students are allowed to miss 10% of the classes without any consequences (2.25 hours). Exceeding this threshold would result in failing the class. In order to pass the course, at least 50% of the total 100% are required. Please note that TURNITIN will be used in order to test all written coursework (e.g. the final project) for possible plagiarism.
Grading scheme: [0%;50%) [50%;62.5%) [62.5%;75%) [75%;87.5%) [87.5%;100%]

Prüfungsstoff

Students are required to know and have understood all topics discussed in class and presented on the lecture slides.

Literatur

Necessary literature will be discussed in class.

For further information, please refer to: https://strategy.univie.ac.at/

Gruppe 2

max. 30 Teilnehmer*innen
Sprache: Englisch
Lernplattform: Moodle

Lehrende

Termine (iCal) - nächster Termin ist mit N markiert

Attendance during live sessions is mandatory. Evaluation is partly based on active participation during sessions; This means that failing to attend sessions might result in penalties and/or additional home assignments to compensate.
Attending the first session and the sessions in April (-> written online exam) is absolutely mandatory (to pass this class), please keep these slots free!

  • Montag 01.03. 08:00 - 12:00 Digital
  • Mittwoch 03.03. 08:00 - 12:00 Digital
  • Montag 08.03. 08:00 - 12:00 Digital
  • Mittwoch 10.03. 08:00 - 12:00 Digital
  • Montag 15.03. 08:00 - 12:00 Digital
  • Mittwoch 17.03. 08:00 - 12:00 Digital
  • Montag 12.04. 08:00 - 12:00 Digital
  • Mittwoch 21.04. 08:00 - 12:00 Digital

Ziele, Inhalte und Methode der Lehrveranstaltung

This course is an introductory class in which you learn the fundamental knowledge and skills to conduct empirical research. In specific, we will focus on the early stages of an empirical research project, namely basic principles of empirical research in the social sciences, research design, data collection, data preparation, data visualization and some (descriptive) analysis. Applied sessions introduce you to basic programming skills with statistical software, allowing you to start working with real data(sets). Furthermore, you’ll be improving your (digital) soft skills by collaborating and discussing ideas in student teams online – an experience that is very close to how many scientific research collaborations work (especially nowadays).

TEACHING STYLE AND COURSE DESIGN: This course is taught entirely online; consisting of both live sessions (-> expect mandatory attendance) and asynchronous exercises and assignments [I will send to all registered students a syllabus with further details at the end of February through email].
I designed the course in a way to be very interactive (and hopefully fun) to maximize your learning outcomes. Such a concept depends on your active participation:
1) You’ll have to attend and actively give input during sessions; this means that you’ll be to some extend exposed when sharing your opinion, giving/receiving feedback to/from others, asking questions or sharing other details. This requires openness, curiosity, treating others respectfully and some discipline.
2) We’ll use a variety of tools to support this and communicate in our live sessions (including also external software tools, such as padlet, miro, doodle, google forms, break-out discussion rooms in BBB/ BBCollaborate, potentially also zoom; some of these tools require you to set up an account/ install software). By signing up for this course, I assume your consent with this; please do contact me up-front before the first session via email in case you have any concerns.
3) We’ll use software for statistical computing and graphics; there are some minimum hardware requirements (i.e. a laptop with some free disk space), since you need to install software after the first session. There will be exercises and elements you’ll have to work on, both during as well as between live sessions.

** Self-study is a fundamental element of this course, enabling you to learn both more effectively as well as more efficiently. I’ll provide materials and expect you to independently acquire some knowledge and skills at home. This leaves more precious time during live sessions for interactions and your questions, for deepening your understanding and giving you feedback on your learning progress. **
** This course has 4 ECTS-Credits, i.e. an overall workload of roughly 100-120 hours: Live sessions require ~25hours, each(!) live session (of 4 hours) requires the same additional amount of time for self-study, revision of class discussions/ slides and preparation for the next session (+4hours, in total about ~25 hours). You further need to work ~25 hours for the individual assessment/exam and ~25 hours on the team project. **
==> Live sessions are very intense and dense in March. You need to reserve 4-5 hours for self-study and work after each session (and before the next one!) **

We’ll immediately deep-dive into contents and tool-supported interactions in the first session. Therefore, I’ll distribute the syllabus a couple of days before the first sessions (via email) and ask you to read it and come prepared; the first session may already contain some smaller assignments, contributing to your participation score.

I’m looking forward to seeing you online in class!

Art der Leistungskontrolle und erlaubte Hilfsmittel

Assessment is based on individual class participation and individual exercises (40% of overall grade, both during live sessions as well as take-home exercises), an individual, written exam (30%), and a research proposal (30%, team project). This class is taught fully online (-> teaching and assessment is done online). You need to achieve an overall score of 50% (of maximum points) or higher in order to pass this class.

Mindestanforderungen und Beurteilungsmaßstab

Minimum requirements: You need to have a basic understanding of linear algebra and statistics. Please check the syllabus for details and recommended readings.

Prüfungsstoff

Live sessions, readings (distributed during live sessions, readings typically require independent self-study), outcomes from class discussions, exercise materials; see syllabus for full details.

Literatur

Live sessions, readings (e.g. case studies, technical notes and journal articles, distributed during live sessions; readings typically require independent self-study), outcomes from class discussions, exercise materials; see syllabus for full details. There will be also references to optional materials for deepening your understanding.

Zuordnung im Vorlesungsverzeichnis

Letzte Änderung: Fr 12.05.2023 00:12