Advanced statistical models - Advanced Time Series

Alessandra Luati

  • Date:

    18 FEBRUARY
    -
    04 MAY 2026
     from 11:00 to 16:00
  • Event location: Aula IV, Department of Statistical Sciences, Via Belle Arti 41 (STAT PhD Classes Virtual Room on need) - In presence and online event

  • Type: Cycle 41 - Mandatory Courses

Aims: To introduce advanced modelling strategies for independent data or data characterized by spatial or temporal dependence including model selection, inference, prediction.
Learning outcomes: At the end of the course the students will have an appreciation of the different modelling strategies for data characterized by various kinds of dependencies and will be able to deal with estimation issues, to perform model selection and to apply the models to real data situations.

Course content

Module 3. Advanced time series analysis: Time-varying-parameter models

  • Nonlinear non-Gaussian models
  • Maximum likelihood estimation
  • Asymptotic theory