Overview
How can one use observational data to analyse the causal effects of such events? This course provides a hands-on introduction to statistical methods for causal inference.
Key facts
- There is great interest among students and practitioners today to understand the causal mechanisms underlying major events. Identifying cause-and-effect relationships is important for impact evaluation and effective policy design. Such identification can help us answer questions like: "What causes an economic downturn?", "Does universal basic income reduce unemployment?" and "Does a carbon tax reduce greenhouse gas emissions?"
- However, identifying causal relationships using data is often error prone. Differentiating causality from simple correlation requires learning and applying sophisticated quantitative tools. The golden standard of identifying causal linkages relies on designing experiments, often through randomised control trials. But designing a randomised control trial is not always feasible or ethical. Moreover, some events might have already happened in the past, such as a financial crisis or a cyclone. How can one use observational data to analyse the causal effects of such events?
- Over two weeks, students in the Statistical Methods for Causal Inference course from Vrije Universiteit Amsterdam are introduced to experimental and quasi-experimental methods which allow them to infer cause-and-effect relationships robustly.
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Visit programme websiteProgramme Structure
Course structure:
- Understand the difference between correlation and causation.
- Apply quantitative methods of statistical data analysis to infer causal relationships.
- Identify confounding factors that threaten causal inference and hamper the internal and external validity of analytical findings.
- Critically analyse data using statistical methods like experiments, matching analysis, difference-in-differences, regression discontinuity, and instrumental variables estimation.
- Explore challenges and limitations in the use of quantitative methods of causal inference such as data availability, missing data, and measurement errors.
- Apply diagnostic knowledge to inform impact evaluations and develop evidence-based policies
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Visit programme websiteKey information
Duration
- Full-time
- 14 days
Start dates & application deadlines
- Starting
Language
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Credits
Delivered
Campus Location
- Amsterdam, Netherlands
Disciplines
Statistics Computer Sciences Data Analytics View 4 other Short Courses in Statistics in NetherlandsExplore more key information
Visit programme websiteWhat students do after studying
Academic requirements
We are not aware of any specific GRE, GMAT or GPA grading score requirements for this programme.
English requirements
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- Trusted by 300k learners
- 98 accuracy using real exam data
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Other requirements
General requirements
- This course is taught at master's level but also open to PhD students across all disciplines in quantitative social sciences. These include business, criminology, economics, econometrics, education, environmental sciences, finance, health sciences, international studies, psychology, public policy, political science, social policy, sociology, and statistics, all broadly defined.
- Participating students are expected to have prior knowledge of regression analysis and hypothesis testing. If you do not have this knowledge, you can still participate in this course by additionally following the VU Amsterdam Summer School course Data Analysis in R in a previous session. Prior coding experience specifically in R is preferred but is not a prerequisite of the course.
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Visit programme websiteTuition Fees
-
International Applies to you
Applies to youNon-residents938 EUR / full≈ 938 EUR / full -
EU/EEA Applies to you
Applies to youEU/EEA Nationals938 EUR / full≈ 938 EUR / full
Additional Details
- Tuition fee €938 - €1500
Living costs
Amsterdam
The living costs include the total expenses per month, covering accommodation, public transportation, utilities (electricity, internet), books and groceries.