Machine learning, statistical learning, deep learning and artificial intelligence
A.A. 2022/2023
Obiettivi formativi
The course introduces students to the most important algorithmical and statistical machine learning tools. The first part of the course focuses on the statistical foundations and on the methodological aspects. The second part is more hands-on, with laboratories to help students develop their software skills.
Risultati apprendimento attesi
Upon completion of the course students will be able to:
1. understand the notion of overfitting and its role in controlling the statistical risk
2. describe some of the most important machine learning algorithms and explain how they avoid overfitting
3. run machine learning experiments using the correct statistical methodology
4. provide statistical interpretations of the results.
1. understand the notion of overfitting and its role in controlling the statistical risk
2. describe some of the most important machine learning algorithms and explain how they avoid overfitting
3. run machine learning experiments using the correct statistical methodology
4. provide statistical interpretations of the results.
Modalità di valutazione: Esame
Giudizio di valutazione: voto verbalizzato in trentesimi
Corso singolo
Questo insegnamento non può essere seguito come corso singolo. Puoi trovare gli insegnamenti disponibili consultando il catalogo corsi singoli.
Programma e organizzazione didattica
Edizione unica
Edizione non attiva
Moduli o unità didattiche
Module Machine Learning
INF/01 - INFORMATICA - CFU: 6
Lezioni: 40 ore
Module Statistical Learning, Deep Learning and Artificial Intellingence
SECS-S/01 - STATISTICA - CFU: 6
Lezioni: 40 ore