CAUSAL INFERENCE FOR PUBLIC POLICY ANALYSIS

Academic year
2024/2025 Syllabus of previous years
Official course title
CAUSAL INFERENCE FOR PUBLIC POLICY ANALYSIS
Course code
PHD188 (AF:551731 AR:305522)
Modality
On campus classes
ECTS credits
6
Degree level
Corso di Dottorato (D.M.226/2021)
Educational sector code
SECS-P/02
Period
1st Semester
Course year
2
Where
VENEZIA
Moodle
Go to Moodle page
2nd year PhD course conceived for PhD Economics. In the past the course has been taken by PhD students of other programmes: Management, Climate Change. The course is open to auditors.

Course topics:
- Introduction to Counterfactual Policy Evaluation
- Randomised Experiments (RCTs)
- Matching
- Instrumental Variables (IV)
- Regression Discontinuity Design (RDD)
- Difference-in-Differences (DiD)
- Staggered Difference-in-Differences and Event Studies
- Synthetic Control Method (SCM)
- STATA application of RCTs, matching, IV, DiD, Event Study, RDD, and Synthetic Control Method
The students are expected to learn modern empirical methods assessing the causal effect of public policies, developing the capability to recognise the most suitable setting for each method. They will be able to understand whether the fundamental conditions for the application of a method are met, and whether/when different methods can be combined to make empirical analyses more credible. They are also expected to be able to see the advantages of counterfactual approaches relative to more traditional estimation techniques, and understand their limitations. In addition, they will learn the most appropriate robustness tests to be implemented in each context. By the end of the course, they will also learn how to apply these methodologies using standard econometric software.
Prerequisites: Econometrics, Statistics.
This course focuses on the study of modern empirical methods for causal policy evaluation based on counterfactuals. It will discuss the rationale behind the use of counterfactuals for public policy evaluation, and related key concepts including treatments and controls, different treatment effects (ATE, ATET, ATU, ITT, LATE), selection bias, heterogenous treatment effects, conditional independence, SUTVA. Next, it will present state-of-the-art experimental and quasi-experimental estimation techniques: Randomised Control Trials, Instrumental Variables, Regression Discontinuity Design, Difference-in-Differences, Event Studies, Synthetic Control Method. The course will discuss in depth key literature contributions adopting these methods, analysing advantages, disadvantages, underlying assumptions, and complementarities of each estimation strategy. The textbook used in the course is Cunningham, S. (2021) “Causal Inference. The Mixtape”, Yale University Press. The course will also run computer classes giving students the possibility to see the methods in practice through STATA exercises.
Cunningham, S. (2021) “Causal Inference. The Mixtape”, Yale University Press.
Research (short) paper 5000-words maximum. This will be preferably based on your data, your idea. It will be your elaboration using the techniques learnt in the course.
Lectures and computer classes (bring your own laptop)
written
Definitive programme.
Last update of the programme: 22/05/2024