INTRODUCTION TO ECONOMETRICS-1
- Academic year
- 2026/2027 Syllabus of previous years
- Official course title
- INTRODUZIONE ALL'ECONOMETRIA
- Course code
- ET0038 (AF:507051 AR:291614)
- Teaching language
- Italian
- Modality
- On campus classes
- ECTS credits
- 6
- Subdivision
- Surnames Lb-Z
- Degree level
- Bachelor's Degree Programme
- Academic Discipline
- SECS-P/05
- Period
- 1st Term
- Course year
- 3
- Where
- VENEZIA
Contribution of the course to the overall degree programme goals
Expected learning outcomes
Attendance and active participation in lectures, online activities, exercise sessions, tutoring activities, together with the individual study will allow the student to acquire the following knowledge and understanding skills:
- know and use the main mathematical tools necessary to represent complex economic phenomena;
- know the mathematical techniques useful to solve and analyze the proposed models.
Ability to apply knowledge and understanding.
Through the interaction with the instructors, the tutors, and peers and through the individual study the student acquires the following abilities:
- know how to use quantitative instruments to cope with complex problems related to an economic / business environment;
- know how to choose the most appropriate technique in order to solve the concrete problem under analysis.
Judgment skills, communication skills, learning skills.
Regarding the autonomy of judgment, communication skills and learning abilities, through the personal and group study of the concepts seen in class, the student will be able to:
- formulate rational justifications to the approach used to solve economic / business problems, understanding their relative strengths and weaknesses, by means of hypotheses, data and models;
- know how to formulate and communicate an adequate analysis and interpretation of economic-financial data through the use of mathematical models.
Pre-requirements
Contents
Recalls from sample estimation and testing theory. Recall of linear algebra.
Linear regression model and ordinary least squares. Goodness of fit and test of significance.
Univariate time series models. ARMA processes. Stationarity and unit roots tests.
Selecting regressors. Specification tests.
Heteroskedasticity and Autocorrelation. Generalised least squares.
Static and dynamic forecasts.
Referral texts
Other references:
Cappuccio N. e R. Orsi, Econometria, Il Mulino, 2005
Marcellino M., Econometria Applicata, Egea, Milano 2006
Vogelvang B., Econometrics - Theory and Applications with EViews, FT Prentice Hall, 2005
Guala F. (2006), Filosofia dell'economia - Modelli, causalita, previsione, Il Mulino
Assessment methods
Written exam
The written exam consists of exercises on basic theoretical concepts in econometrics and on examples of hypothesis testing. It includes up to four exercises to be completed within one and a half hours. The use of the textbook is allowed during the exam (open book).
Practical assignment (optional)
The practical assignment is optional and involves developing a linear regression model using a real dataset, with the econometric software GRETL. The assignment must be submitted via the Moodle platform by the end of the course, within the specified deadlines, and discussed with the instructor after passing the written exam with a grade equal to or above 18. The outcome of the discussion may result in a decrease or an increase of up to 2 points in the score obtained on the written exam.
Type of exam
The instructor is responsible for ensuring the authenticity and originality of all examinations and coursework. In cases of suspected academic misconduct, an additional on-site assessment may be required during the exams, which may differ from the standard format.
Grading scale
A. scores in the 18-22 range will be awarded in the presence of:
- sufficient knowledge and ability to understand and apply in relation to the programme;
- limited ability to interpret the exercise and provide arguments regarding its resolution;
B. scores in the 23-26 range will be awarded in the presence of:
- reasonable knowledge and ability to understand and apply in relation to the programme;
- reasonable ability to interpret the exercise and provide arguments regarding its resolution;
C. scores in the 27-30 range will be awarded in the presence of:
- good or excellent knowledge and ability to understand and apply in relation to the programme;
- good or excellent ability to interpret the exercise and provide arguments regarding its resolution;
D. honours will be awarded in the presence of excellent knowledge and applied understanding of the course content, as well as outstanding judgment and communication skills.
Teaching methods
Further information
Written exam on the estimation results of an univariate linear model and solutions of elementary econometric problems. Part of the final note may also depend on a practical exercise, which is not compulsory.
2030 Agenda for Sustainable Development Goals
This subject deals with topics related to the macro-area "Climate change and energy" and contributes to the achievement of one or more goals of U. N. Agenda for Sustainable Development