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Percorso della pagina
  1. Economics
  2. Bachelor Degree
  3. Statistica e Gestione delle Informazioni [E4104B - E4102B]
  4. Courses
  5. A.A. 2023-2024
  6. 3rd year
  1. Statistical Models
  2. Summary
Insegnamento Course full name
Statistical Models
Course ID number
2324-3-E4102B089
Course summary SYLLABUS

Course Syllabus

  • Italiano ‎(it)‎
  • English ‎(en)‎
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Obiettivi formativi

The course aims to introduce the Bayesian approach, both from a theoretical and applied point of view. The freeware statistical software R Project will be used for the applied part of the course.

Contenuti sintetici

Introduction to Bayesian Statistics

Programma esteso

  1. Introduction: framework and priors
  2. Decision-theoretic foundations: evaluation of estimators and loss functions
  3. Priors: models, subjectivity, conjugacy and noninformativeness
  4. Bayesian point estimation: inference, normal model, dynamic models
  5. Bayesian calculations: approximation methods, Markov chain Monte Carlo
  6. Other topics: tests and model choice, hierarchical models, empirical Bayes

Prerequisiti

There are no formal prerequisites, but basic knwoledge of the following topics is needed: Mathematical Analysis, Linear Algebra, Probability Calculus, Statistical Inference, R programming.

Metodi didattici

Theoretical and applied (with R statistical software) frontal lectures.

Modalità di verifica dell'apprendimento

The exam will be consist of a written test with exercises and open questions, to assess knowledge and autonomous reproduction of the study material proposed during the course.

In the exercises we will assess theoretical and applied aspects of the course, on how to correctly build, estimate and implement statistical models and inferential methodologies being studied.

In the open questions we will assess the capacity of the student in the interpretation of complex problems and in the communication of elaborated answers requiring formal reasoning, logic discretion, and coherente language.

No different exams will be provided between attending and no attending students.

Testi di riferimento

There is no specific textbook.

Class notes will be provided during the course.

A good reference book is P.D. Hoff (2009) A First Course in Bayesian Statistical Methods, Springer https://link.springer.com/book/10.1007/978-0-387-92407-6.

For the applied part of the course students are referred to the online material available available at http://www.r-project.org.

Periodo di erogazione dell'insegnamento

First semester

Lingua di insegnamento

English

Export

Learning objectives

The course aims to introduce the Bayesian approach, both from a theoretical and applied point of view. The freeware statistical software R Project will be used for the applied part of the course.

Contents

Introduction to Bayesian Statistics

Detailed program

  1. Introduction: framework and priors
  2. Decision-theoretic foundations: evaluation of estimators and loss functions
  3. Priors: models, subjectivity, conjugacy and noninformativeness
  4. Bayesian point estimation: inference, normal model, dynamic models
  5. Bayesian calculations: approximation methods, Markov chain Monte Carlo
  6. Other topics: tests and model choice, hierarchical models, empirical Bayes

Prerequisites

There are no formal prerequisites, but basic knwoledge of the following topics is needed: Mathematical Analysis, Linear Algebra, Probability Calculus, Statistical Inference, R programming.

Teaching methods

Theoretical and applied (with R statistical software) frontal lectures.

Assessment methods

The exam will be consist of a written test with exercises and open questions, to assess knowledge and autonomous reproduction of the study material proposed during the course.

In the exercises we will assess theoretical and applied aspects of the course, on how to correctly build, estimate and implement statistical models and inferential methodologies being studied.

In the open questions we will assess the capacity of the student in the interpretation of complex problems and in the communication of elaborated answers requiring formal reasoning, logic discretion, and coherente language.

No different exams will be provided between attending and no attending students.

Textbooks and Reading Materials

There is no specific textbook.

Class notes will be provided during the course.

A good reference book is P.D. Hoff (2009) A First Course in Bayesian Statistical Methods, Springer https://link.springer.com/book/10.1007/978-0-387-92407-6.

For the applied part of the course students are referred to the online material available available at http://www.r-project.org.

Semester

First semester

Teaching language

English

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Key information

Field of research
SECS-S/01
ECTS
6
Term
First semester
Activity type
Mandatory to be chosen
Course Length (Hours)
42
Degree Course Type
Degree Course
Language
English

Staff

    Teacher

  • SP
    Stefano Peluso

Students' opinion

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Bibliography

Find the books for this course in the Library

Enrolment methods

Self enrolment (Student)
Manual enrolments

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