The course introduces students to optimization models and decision support methods used for the solution of decision problems arising in economics. Some of the problems have been already studied from a teorethical view point in the 1° and 2° year thus the attention will be focused on the solutions search.
The course aims to provide students with adequate knowledge of the main quantitative methods of support to decision-making in the field of economics and to be able to use, with some mastery, the reference software environments. From a methodological point of view, specific situations of competitive, co-operative, gaming-related interaction situations, and convex programming algorithms will be illustrated to optimize certain objective functions, such as profit maximization and utility and minimization of the Costs.
The aim of the course is to introduce students to models and methods of optimization, decision theory and game theory that can be used to solve decision problems in the economic and social field.
The course aims to present the subject in its theoretical, methodological and applicative aspects in order to provide students with knowledge of the applicable models and methodologies. The theoretical and practical laboratory aims to provide the student with the knowledge and skills to use specific software to solve the practical problems faced.
At the end of the course the students should have acquired skills that allow them to understand, describe and solve different types of real problems, developing models and solution methods and using, with a certain mastery, the reference software environments. In particular, students at the end of the course will:
Mathematics
Lectures, analysis of case studies, computer lab exercises and lessons using ad hoc software tools.
For each part of the course, the theoretical discussion, intended to provide basic content, will be complemented by the practical/laboratory part in the computer classroom through the use of appropriate software tools.
Part I:
- Introduction to decision-making and problem solving: from real problems to mathematical models. - Classification of decision models. - Functional study in multiple variables: maximum and minimum unbounded. - Constrained optimization, Lagrangian functions, and economical interpretation of Lagrange multipliers.
Part II: - Introduction to non-linear, convex, linear, and mathematical mathematical programming models. - Consumer choice models and maximization of utility. - Business choice models: minimizing costs and maximizing profit. - Demand and Supply Models. - Models for selecting investment under risk.
Part III: - Decision trees and decisions theory in uncertainty and risk. - Optimizing the expected economic value of the decisions. - Utility theory. - Introduction to Game Theory. - Studying and modeling situations of interaction between subjects, competitive and cooperative, pure and mixed strategies. Game theory and optimization.
The text books and other additional handouts for foreign students will be communicated at the beginning of the course and published on Aulaweb
Ricevimento: Wednesday h.13.30-14.30 - Department of Economics - I floor
ELENA TANFANI (President)
DANIELA AMBROSINO
ANNA FRANCA SCIOMACHEN
Sem: I
16 Sept 2019 - 13 Dec 2019
DECISION MAKING METHODS FOR ECONOMICS
The verification of the achievement of the expected learning outcomes is evaluated with a written test and with a project work (in groups) and / or a practical test in the computer lab.
The written test is aimed at assessing the degree of knowledge and learning of the theoretical topics discussed during the lessons. While the capacity for critical evaluation and reasoning and the ability to apply the acquired knowledge are evaluated through the project work and/or practical exam.
Not compulsory.
The teaching is present on aulaweb. All students are invited to periodically consult the page of this course on the AulaWeb portal (http://www.aulaweb.unige.it/), where they will find further information and updates.
It should be noted that to take into account the findings of last year's teaching assessment questionnaires, more time will be devoted to the laboratory part and case study analysis.