RSS02.D11 Causal Inference with Natural Experiments: DiD, RDD, IV, & Matched Designs
This course is an introduction to causal inference for the social using observational data. We will discuss:
- the nature of causal research,
- how to design research to answer different types of causal questions,
- how to analyze observational data to enable causal interpretations of phenomena
- that were not randomized,
- how to implement analysis using the R statistical language,
- and how to interpret the results of causal analyses.
Specific topics will include:
- potential outcomes,
- ideal experiments,
- observational matching,
- sensitivity analysis,
- instrumental variables,
- discontinuity designs,
- difference-in-differences,
- multiple time period difference-in-differences designs,
- synthetic controls,
- and other special topics as permitted, including causal mediation and dynamic or time-varying treatments.
Dates |
26 June 2023 - 30 June 2023 |
Course Fee |
Regular: €995 Early Bird Regular: €895 (application deadline* April 1st) |
Scholarships and discounts | Find more information here |
Application deadline |
May 1st *Your application is only completed when the course fee has been paid |
Course leader | Ryan T Moore |
Level of participant |
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Admission requirements | Students should be familiar with introductory inferential statistics (such as tests of statistical significance), the rudiments of the linear model, and analysing data with software. The course will employ R as the language of analysis, but will support the interpretation of R code for those with background in Stata, SPSS, Python, or similar. |
Admission documents |
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Mode of Study | On Campus |
ECTS | 2 or 4 Find more information here |
Location | Radboud University |