- Docente: Giuliano Galimberti
- Credits: 10
- SSD: SECS-S/01
- Language: Italian
- Teaching Mode: In-person learning (entirely or partially)
- Campus: Bologna
- Corso: Second cycle degree programme (LM) in STATISTICAL SCIENCES (cod. 8055)
Learning outcomes
Students will learn the basic notions to define statistical models.
In particular, students will be able to:
- estimate parameters, test hypotesis about them and build confidence intervals for generalized linear models,
- choose the most suitable model for the specific problem at hand.
Course contents
- Statistical models: introduction.
- Revision of linear regression models.
- Generalized linear models. Exponential families, linear predictor, link functions. Maximum likelihood estimators. Goodness of fit: the deviance of a model. Residual analysis. Inference on the parameters: likelihood ratio statistic.
- Poisson regression for count data.
- Logistic regression for categorical data.
- Linear mixed models: basic concepts. Fixed and random effects. Variance-covariance matrix structures. maximum likelihood and restricted maximum likelihood estimators. Residual analysis. Goodness of fit of a linear mixed model. Inference about the parameters: confidence intervals and hypothesis testing.
Readings/Bibliography
Dobson, A. J. (2002) An Introduction to Generalized Linear Models. Second Edition. Chapman & Hall/CRC.
West, B. T., Welch, K. B. and Galecki, A. T. (2007) Linear Mixed Models. A Practical Guide Using Statistical Software. Chapman & Hall/CRC.
Everitt, B. S., Hothorn, T. (2006) A Handbook of Statistical Analysis Using R. Chapman & Hall/CRC.
Handsouts.
Azzalini, A. (2001) Inferenza Statistica. Una Presentazione Basata sul Concetto di Verosimiglianza. Seconda Edizione. Springer-Verlag.
Teaching methods
Lectures
Tutorial sessions in computer laboratory
Assessment methods
Written exam
Oral exam (optional)
Office hours
See the website of Giuliano Galimberti