The course aims at providing the Ph.D students the advanced statistical and mathematical skills needed in order to analyze economic models. The use of such advanced methods implies to think critically about the mathematical representation of social phenomena and the limit of a model; i.e., ability to simplify reality focusing only to relevant aspects to the analyst, and to analyze the range of conditions under which the model gives reasonable answers.
Prerequisites:
The above parts of the textbook are considered, during teaching and for the final exam, in the knowledge of an undergraduate student. Please, refresh them before the beginning of the class.
The students will be assessed on these prerequisites at the beginning of the course.
Learning Outcomes:
Syllabus:
Math
Stat
(*) When there is only a chapter indication we mean K. Dadkhah (2011).
(**) B. E. Hansen: Probability and Statistics for Economists (2022).
Exam:
At the end of the course, students will have an exam consisting of a written part and another part based on research paper reports. After the exam there will be the possibility of a colloquium with the professors of the course during witch students have to explain their exam assessments.
Students that will not pass the exam will resit it later in the year: the resit of the exam will be agreed upon with the professors.
Lecturers:
Textbooks
M. Sugiyama (2015) Introduction to Statistical Machine Learnin. Morgan Kaufmann.