Causal Inference & Policy Evaluation
Welcome to this M.Sc module Causal Inference and Policy Evaluation (ECON42470), taught by Ben Elsner at University College Dublin. On this webpage you will find the syllabus and resources that will help you learn the material. UCD students can access the slides via Brightspace. Please check Brightspace as well for forum entries and announcements. The official module descriptor of UCD can be found here.
About Causal Inference
Causal questions are everywhere in the social sciences. We strive to understand the impact of educational interventions on student outcomes, the effectiveness of public health campaigns in reducing disease rates, the influence of economic policies on employment rates, the causal factors driving voter behavior and electoral outcomes, or the effects of media framing on public opinion and political decision-making. Unlike in the sciences, however, conducting randomised experiments to answer these questions is often impractical or unethical. This is where causal inference becomes a highly useful toolbox. Causal inference allows us to estimate causal effects even in the absence of randomised experiments. It provides us with rigorous methods to untangle cause-and-effect relationships from observational data, enabling us to make informed decisions , evaluate policies, and guide evidence-based policymaking.
Who Can Take this Module?
This is a M.Sc course offered by the UCD School of Economics. The techniques taught in this course have applications across many disciplines such as sociology, political science, education, social policy, health policy, or epidemiology. Students should have a good knowledge of multivariate regression and panel regressions. In addition, they should be able to write code with R. We will do a re-cap of regression early in the course, but we do not have time to teach R from scratch.