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  1. Insegnamenti

D50064 - ARTIFICIAL INTELLIGENCE AND MACHINE LEARNING

insegnamento
ID:
D50064
Durata (ore):
48
CFU:
6
SSD:
METODI MATEMATICI DELL'ECONOMIA E DELLE SCIENZE ATTUARIALI E FINANZIARIE
Sede:
REGGIO DI CALABRIA
Url:
Dettaglio Insegnamento:
INGEGNERIA INDUSTRIALE/comune Anno: 3
Anno:
2024
  • Dati Generali
  • Syllabus
  • Corsi
  • Persone

Dati Generali

Periodo di attività

Primo Ciclo Semestrale (16/09/2024 - 22/12/2024)

Syllabus

Obiettivi Formativi

In recent years, the convergence of Artificial Intelligence (AI) and Decision-Making processes has become a transformative force across a wide range of industries. The integration of AI technologies is reshaping entrepreneurship and management landscapes in sectors such as healthcare, finance, manufacturing, and retail in particular Supply Chain issues. 

Machine learning models and advanced neural networks, including Convolutional Neural Networks (CNNs), Recurrent Neural Networks (RNNs), and Generative Adversarial Networks (GANs), have achieved significant breakthroughs in fields like computer vision, natural language processing, and predictive analytics. Their capabilities extend to practical applications in healthcare, business, and autonomous vehicles, where they excel in analyzing and leveraging complex data. However, the intricate architectures and inherent opacity of deep learning neural networks and supervised machine learning pose challenges to their comprehensive understanding and limit their application in critical areas, particularly in interdisciplinary domains. To tackle this issue and expand the scope of research, by this course we are broadening the focus of our mission to encompass successful applications of Machine Learning and Deep Learning Neural Networks. This expansion aims to showcase their effectiveness in extracting valuable insights from complex datasets, thereby enhancing understanding and application across various contexts.


Course Main Topics:

Explainable Artificial intelligence; 

Mathematical modeling and forecasting;

Machine and deep learning;

Nonlinear programming and AI;

Decision support Systems.


Prerequisiti

Mathematical Tools, Structures on Vector Spaces, Linear Algebra, Statistics and Informatics.


Metodi didattici

Lectures, Laboratory activities at the Decision LAB, Seminars and Workshops


Verifica Apprendimento

Written and oral examination


Evaluation criteria:


30 cum laude: complete, in-depth and critical knowledge of the topics, excellent language skills, complete and original interpretative ability, full ability to independently apply knowledge to solve the proposed problems;


28 - 30: complete and in-depth knowledge of the topics, excellent language skills, complete and effective interpretative skills, able to independently apply the knowledge to solve the proposed problems;


24 - 27: knowledge of the topics with a good degree of mastery, good command of the language, correct and sure interpretative ability, good ability to correctly apply most of the knowledge to solve the proposed problems;


20 - 23: adequate knowledge of the topics but limited mastery of the same, satisfactory language skills, correct interpretative ability, more than sufficient ability to independently apply the knowledge to solve the proposed problems;


18 - 19: basic knowledge of the main topics, basic knowledge of the technical language, sufficient interpretative ability, sufficient ability to apply the acquired basic knowledge;




Testi

Massimiliano Ferrara: "Lectures Notes on Machine Learning and related tools". MIMEO, Reggio Calabria, 2024

Massimiliano Ferrara: Explainable artificial intelligence and mathematics: new frontiers (and challenges) of research not only as "AppliedMath", International Journal of Mathematical Analysis, Vol. 18, 2024, no. 1, 11-19

Tiziana Ciano and Massimiliano Ferrara: Karush-Kuhn-Tucker conditions and Lagrangian approach for improving machine learning techniques: A survey and new developments, AAPP, Vol 102, n.1, 2024


Further reading (for more):

Stuart Russel, Peter Norving (a cura di Francesco Amigoni): "Intelligenza Artificiale" Volume 2, Quarta edizione. PEARSON 2022 (Chapters from 19 to 24, 27-28)




Contenuti

Contents

Chapter 1. Statistical Learning Theory 

Chapter 2. Local Methods 

Chapter 3. Bias Variance and Cross-Validation 

Chapter 4. Regularized Least Squares 

Chapter 5. Regularized Least Squares Classification 

Chapter 6. Feature, Kernels and Representer Theorem 

Chapter 7. Regularization Networks 

Chapter 8. Logistic Regression 

Chapter 9. From Perceptron to SVM 

Chapter 10. Dimensionality Reduction

Chapter 11. Variable Selection 

Chapter 12. Density Estimation & Related Problems 

Chapter 13. Clustering Algorithms 

Chapter 14. Graph Regularization 

Chapter 15. Bayesian Learning 

Chapter 16. Neural Networks 


Altre informazioni

None


Corsi

Corsi

INGEGNERIA INDUSTRIALE 
Laurea
3 anni
No Results Found

Persone

Persone

FERRARA Massimiliano
AREA MIN. 13 - Scienze economiche e statistiche
Settore STAT-04/A - Metodi matematici dell'economia e delle scienze attuariali e finanziarie
Gruppo 13/STAT-04 - METODI MATEMATICI DELL'ECONOMIA E DELLE SCIENZE ATTUARIALI E FINANZIARIE
Docenti di ruolo di Ia fascia
No Results Found
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