DATA ANALYSIS AND STATISTICAL LEARNING

12 CFU - 1° e 2° semestre

Docenti titolari dell'insegnamento

ANTONIO PUNZO - Modulo DATA ANALYSIS - SECS-S/01 - 6 CFU
SALVATORE INGRASSIA - Modulo STATISTICAL LEARNING - SECS-S/01 - 6 CFU


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Contenuti del corso



Testi di riferimento


Altro materiale didattico



Programmazione del corso

DATA ANALYSIS
 ArgomentiRiferimenti testi
1Statistical Models for Univariate Random VariablesSlides 
2Basics of MatricesBishop (2007, Appendix C) 
3Basics of Multivariate ModellingMcNeil, Frey and Embrechts (2005, Chapter 3) 
4Principal Component Analysis (PCA)James, Witten, Hastie, Tibshirani (2017, Chapter 10) 
5Cluster Analysis (CA)Kassambara (2017a, Chapter 3) 
6Hierarchical clustering methodsKassambara (2017a, Chapter 7) 
7Partitioning (or partitional) clustering methodsKassambara (2017a, Chapters 4–5) 
8Cluster ValidationKassambara (2017a, Chapters 11–14) 
9Model-Based ClusteringKassambara (2017a, Chapter 18) and Giordani, Ferraro, Martella (2020, Part IV) 
STATISTICAL LEARNING
 ArgomentiRiferimenti testi
1Fundamentals of Statistical Learning: Estimation of dependencies based on empirical data; supervised and unsupervised learning; regression and classification problemsTextbook #1: Chap 1 and Chap 2, Sect. 2.1 
2Fundamentals of Statistical Learning: Parametric and non-parametric models; assessing model accuracy; Lab: introduction to RTextbook #1: Chap 2, Sect. 2.2 and 2.3 
3Linear Regression: simple linear regression and multiple linear regression; least squares criterion and parameter estimationTextbook #1: Chap 3, Sect. 3.1 and 3.2 
4Linear Regression: assessment of model fit; qualitative predictors; extension of the linear model and non-linear relationship; Lab with RTextbook #1: Chap 3, Sect. 3.3 and 3.6 
5Classification: logistic regression; linear and quadratic discriminant analysis; Lab with RTextbook #1: Chap. 4 
6Resampling Methods: cross-validation, bootstrap; Lab with RTextbook #1: Chap. 5 
7Linear model selection and regularization. Variable selection; dimension reduction methods; Lab with RTextbook #1: Chap. 6, Sect 6.1 and 6.3 
8Tree-Based Methods: regression trees; classification trees; bagging; random forests; boosting; Lab with RTextbook #1: Chap. 8 
9Support Vector Machines: support vector classifiers; lab with RTextbook #1: Chap. 9. 
10Neural networks: deep learning and multilayer perceptrons; Lab with RCourse notes 


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