Econometrics
A.Y. 2024/2025
Learning objectives
The aim of the course is to provide students with the basic principles of econometrics. All the aspects of econometric models treated during the course will be investigated through modern empirical applications in order to motivate students and respond to important problems coming from the real world with appropriate and specific numerical answers. Specifically, the first aim of the course is to extend the simple linear regression model, already thought in the course of Statistics, in different directions: extend the number of regressors, consider potential departures from the standard assumptions of the model, develop a theoretical framework for making inference on the parameters of the model, both for small sample and asymptotically. The second specific aim, concerns the introduction to non-linear regression models like models for binary dependent variables or non-linear specifications among the regressors.
Expected learning outcomes
At the end of the course students will have received the introductory notions of econometrics. In particular, they will be able to specify a linear regression model, estimate the coefficients and perform tests of hypothesis on them. Moreover, students will be able to read and critically comment on the results of econometric analyses based on linear regression models or on regression models presenting some nonlinearities, like logit and probit ones. These expected outcomes should help students in understanding empirical analysis introduced in different courses, as well as provide them with quantitative tools for the development of the final thesis.
Lesson period: First trimester
Assessment methods: Esame
Assessment result: voto verbalizzato in trentesimi
Single course
This course can be attended as a single course.
Course syllabus and organization
Single session
Responsible
Lesson period
First trimester
Course syllabus
- Economic questions and economic data
- Probability review
- Statistics review
- Simple linear regression
- Multiple linear regression
- Inference in multiple linear regression
- Binary dependent variable regression
- Instrumental variable regression
- Probability review
- Statistics review
- Simple linear regression
- Multiple linear regression
- Inference in multiple linear regression
- Binary dependent variable regression
- Instrumental variable regression
Prerequisites for admission
Introductory course in Statistics, with elements of inferential statistics. Properties of estimators. Basic notions of calculus and matrix algebra.
Teaching methods
Frontal lectures and tutorials. Usage of the econometric software STATA will be discussed throughout the course.
Teaching Resources
Textbook: "Introduzione all'Econometria" by J.H. Stock and M.W. Watson.
Lectures slides.
Lectures slides.
Assessment methods and Criteria
Written Exam. The exam usually include two sections: a first section with multiple choice questions and a second section with open questions on an application of the econometric methods discussed during the course.
Educational website(s)
Professor(s)