Machine Learning
- Anno accademico
- 2024/2025 Programmi anni precedenti
- Titolo corso in inglese
- Machine Learning
- Codice insegnamento
- PHD176 (AF:545180 AR:311561)
- Lingua di insegnamento
- Inglese
- Modalità
- In presenza
- Crediti formativi universitari
- 3 su 6 di Introduction to Programming for Statistics and Machine Learning
- Livello laurea
- Corso di Dottorato (D.M.226/2021)
- Settore scientifico disciplinare
- INF/01
- Periodo
- I Semestre
- Anno corso
- 1
- Sede
- VENEZIA
- Spazio Moodle
- Link allo spazio del corso
Inquadramento dell'insegnamento nel percorso del corso di studio
Through this course, students will learn about the basic machine-learning techniques for clustering, classification, and prediction. They will also learn how to preprocess and analyze large datasets, extract relevant features, and evaluate the performance of machine learning models.
Risultati di apprendimento attesi
The following arguments will be addressed:
1. Knowledge and understanding:
- understanding the theoretical bases of the main algorithms presented during lectures;
- understanding principles and differences of non-supervised learning algorithms;
- understanding principles and differences of supervised learning algorithms.
2. Applying knowledge and understanding in practical situations:
- being able to apply proper supervised and unsupervised analysis techniques to data;
- being able to use data analysis software tools used during lectures (e.g., scikit-learn);
- being able to compare and correctly interpret different analysis results from different algorithms
Prerequisiti
Contenuti
- What is Machine Learning and Data Mining: concepts of supervised and unsupervised approaches
- Kinds of data
2. Clustering:
- Dimensionality reduction
- Clustering quality evaluation;
3. Supervised Learning
- Model training, validation and tuning; Feature Engineering
- Classification; Regression;
- Neural Networks (MLP and RNNs)
Modalità di verifica dell'apprendimento
- an (original) application of machine learning to a climate change related problem
- a detailed literature review of existing methods tackling a specific problem in climate change