Course content
The course introduces students to quantitative methods at an intermediate level. An initial focus of the course is to introduce students to the theoretical concepts behind causal inference. Next, the course focuses on how to design research to identify the causal effects of policy choices as well as impact / program evaluations (both public and private). The course includes a more advanced treatment of regression analysis and introductions to more advanced research methods. Students will learn how to design research and analyze data to better make evidence based decisions (NN2 & NN3).
The course consists of a mix of lectures and applied statistical analysis and exercises in lab sessions. Students are expected to participate actively during lectures and exercises. For the exercises, students will be given short assignments, similar to case studies. In these assignments, the students will work in groups to apply one of the covered methods and estimate the causal effect of a policy or other treatment. The group work will help students to practice critical thinking and collaborating constructively (NN6). In the exercise classes, students are expected to discuss their approaches to each problem. We will then go over the solution together. This will allow students to receive feedback on their own work, while also seeing the correct solution.
The aim of this course is to provide students with both theoretical and practical knowledge about quantitative methods such as multivariate OLS, panel data methods, and other identification strategies for causal inference at an intermediate and advanced level. The course will enable the student to be analytical with data (NN2) and further develop the knowledge and skills achieved in the RDQM course.
Students will learn to understand the fundamental principles behind each of the statistical tools covered in the course and will be able to apply these to specific research problems.
See course description in course catalogue