ARTIFICIAL INTELLIGENCE ALGORITHMS
cod. 1009071

Academic year 2021/22
2° year of course - First semester
Professor
- Vincenzo BONNICI
Academic discipline
Informatica (INF/01)
Field
Discipline informatiche
Type of training activity
Characterising
48 hours
of face-to-face activities
6 credits
hub:
course unit
in ITALIAN

Learning objectives

The course offers the theoretical basis for modeling and solving artificial intelligence problems.
The course includes theoretical lessons that introduce the topics of machine learning and the search for solutions from an algorithmic point of view.
With reference to the Dublin Indicators:
Knowledge and understanding
The course introduces concepts relating to the development, application and validation of artificial intelligence algorithms for machine learning and the search for solutions. In particular, supervised and unsupervised machine learning algorithms, randomized search algorithms and swam intelligence are treated.
Ability to apply knowledge and understanding
The theoretical knowledge is introduced in the perspective of both the correct application of state-of-the-art algorithms and interpretation of the results, and in understanding their motivations for the development of new computational solutions.
Autonomy of judgment
A critical approach on the use and understanding of current artificial intelligence algorithms is one of the main objectives of the course. In particular, identify the correct methodology and evaluate its impact on the specific application case.
Communication skills
The discussions on the different methods for solving the proposed problems allow you to improve communication skills through presentation in the form of a seminar.
Learning ability
The autonomous use of external resources and the consultation of scientific literature allows you to develop an autonomous learning ability. The student acquires the ability to adapt to the problem and to apply the most suitable models for the resolution.

Prerequisites

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Course unit content

The course offers the theoretical basis for modeling and solving artificial intelligence problems.
The course includes theoretical lessons that introduce the topics of machine learning and the search for solutions from an algorithmic point of view. In particular, supervised and unsupervised machine learning algorithms, randomized search algorithms and swarm intelligence are treated.

Full programme

knowledge representation
randomness
supervised machine learning
unsupervised machine learning
graph searching algorithms
swarm intelligence
randomized algorithms
genetic algorithms

Bibliography

Stuart, Norvig. Artificial intelligence: a modern approach. Pearson, 2016
Bishop. Pattern recognition and machine learning. Springer, 2016
Dua, Hart, Stork. Pattern classification. Wiley, 2001.
Friedman, Hastie, Tibshirani. The elements of statistical learning. Springer, 2001

Teaching methods

Classes, seminars with open discussion

Assessment methods and criteria

Oral exam integrated with seminar

Other information

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