FINTECH: TECHNOLOGY FOR FINANCE AND INSURANCE

Academic year
2024/2025 Syllabus of previous years
Official course title
FINTECH: TECHNOLOGY FOR FINANCE AND INSURANCE
Course code
EM2091 (AF:449570 AR:257635)
Modality
On campus classes
ECTS credits
6
Degree level
Master's Degree Programme (DM270)
Educational sector code
SECS-S/06
Period
3rd Term
Course year
2
Where
VENEZIA
Moodle
Go to Moodle page
Modern finance cannot exist without the support of technologies originating from other fields. Among these technologies, an increasingly important role is played by Artificial Intelligence, in its various forms. This course aims to provide knowledge on intelligent methodologies and machine learning techniques, generally inspired by the problem-solving abilities typical of higher living beings, for solving problems of interest in the financial and insurance domains. For example: intelligent metaheuristics inspired by the principles of natural evolution and swarm intelligence are presented for solving complex portfolio selection problems; predictive methods inspired by the functioning of the biological brain are introduced; and systems for identifying optimal financial trading policies based on machine learning techniques inspired by the learning modalities of higher living beings are discussed. Additionally, the course introduces and utilizes software tools to implement all the presented methodologies.
1. Knowledge and understanding:
1.1. To grasp the theoretical aspects of intelligent methodologies and machine learning techniques presented in the course;
1.2. To comprehend, apply, and, when necessary, adapt such methodologies and techniques for solving financial problems.

2. Ability to apply knowledge and understanding:
2.1. To identify and apply appropriate intelligent methodologies and machine learning techniques for operational problem-solving;
2.2. To set up problem-solving processes and perform necessary computations using software tools.

3. Judgement skill:
3.1. To interpret financial implications of the computational results;
3.2. To understand the merits and limitations of learned intelligent methodologies and machine learning techniques.
Having clear the contents of the following courses in the undergraduate programs in the economic field: Mathematics-1, Mathematics-2, Computing Skills for Economics. Additionally, having some experience in software programming is advisable.
- Introduction to Artificial Intelligence and to Machine Learninf in finance and in insurance.
- Intelligent metaheuristics for complex optimization and financial/insurance applications.
- Supervised learning (Perceptron, Adaline, Madaline and Multi Layer Perceptron) and financial/insurance applications.
- Reinforcement Learning and financial/insurance applications.
- Elements of Natural Language Processingand financial/insurance applications.
- Elements of Group Method of Data Handling and financial/insurance applications.
- Implementations in Matlab.
- Teaching materials available at the web page of the e-learning platform Moodle. [Reference materials]

- Alpaydin E. (2014) Introduction to Machine Learning. The MIT Press [Integrative reading]
The exam consists in three homeworks and in an oral examination.
The homeworks: 1) must be carried out in couple; 2) are valid for the whole academic year and not beyond; 3) their carrying out must be sent no later than a pre-established deadline (the way of sending and the deadline will be indicated during the course).
Regarding the oral examination: 1) it must be carried out individually; 2) it is divided into three parts: in the first part one has to critically present a research article; in the second part one has to apply one or more methodologies learned during the course to reply the results presented in the research paper; in the third part one has has to answer some questions about one topic among three arguments dealt with in the course, all three chosen by the student her/himself.
Concerning the evaluation: 1) each homework is worth 0 to 3 possible points, for a total from 0 to 12 points; 2) the oral examination is worth 0 to 18 possible points.
The sum of the points obtained from the homeworks and from the oral examination constitutes the final mark.
The course is articulated into:
a) lectures;
b) implementation and use of intelligent methdologies through software tools;
c) individual study.
Students are strongly encouraged to actively attend classes.
English
Site of the course present on the e-learning platform Moodle.
oral
Definitive programme.
Last update of the programme: 10/04/2024