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220050 SE SE Advanced Data Analysis 2 (2020S)
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 Mo 17.02.2020 09:00 to We 19.02.2020 18:00
- Deregistration possible until We 19.02.2020 18:00
Details
max. 30 participants
Language: English
Lecturers
Classes (iCal) - next class is marked with N
- Tuesday 10.03. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 17.03. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 24.03. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 31.03. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 21.04. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 28.04. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 05.05. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 12.05. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 19.05. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 26.05. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 09.06. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 16.06. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 23.06. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
- Tuesday 30.06. 16:45 - 18:15 Seminarraum H10, Rathausstraße 19, Stiege 2, Hochparterre
Information
Aims, contents and method of the course
Assessment and permitted materials
There are two take-home exams that will be distributed at some points during the semester. The two assignments deal with critically demonstrating your understandings of key concepts in linear modeling fundamentals and its extensions. This constitutes a total of 30% of the final grade.The rest of your grade (70%) will be based on a final data analysis project that you complete using either your own data or data available to you through an advisor or through a public archive (I do not place any restrictions on the scope of possible data you could use).
Minimum requirements and assessment criteria
Your grade will be calculated based on largely a percentage based system where 90%+ = A (=1), 80% - 90%+ = B (=2), 70% - 80%+ = C (=3), 60% - 70%+ = D (=4), less than 60% = E (=5).
I reserve the right to modify this system downward or upward depending on the distribution of grades. In other words, if only one student exceeds the 90% threshold, but five hit 89%, I may choose to move the cutoff for an A to 89%.For successfully passing the course, participants have to achieve at least 51% of the total points. Full details on the course grading (e.g., grading system) will be given in the first session. Ongoing in-class participation is required.
I reserve the right to modify this system downward or upward depending on the distribution of grades. In other words, if only one student exceeds the 90% threshold, but five hit 89%, I may choose to move the cutoff for an A to 89%.For successfully passing the course, participants have to achieve at least 51% of the total points. Full details on the course grading (e.g., grading system) will be given in the first session. Ongoing in-class participation is required.
Examination topics
Required knowledge and practical skills will be conveyed in the workshop sessions and tutorials. In addition, participants are expected to read widely on the subject. Here, participants are required to consult the required basic reading and the additional literature in order to successfully complete the assignments.
Reading list
Association in the course directory
Last modified: Fr 01.10.2021 00:22
- interpret the results of basic moderation and mediation models within regression framework
- know how test competing theories of mechanisms statistically through the comparison of indirect effects in models with multiple mediators,
- have the ability to visualize and probe interactions in regression models in order to interpret interaction effects in the appropriate ways,
- have learned how to estimate the contingencies of mechanisms through the computation and inference about conditional indirect effects,
- and use SPSS PROCESS Macro and/or R language to run and understand moderation, mediation, and conditional process models.