95866 - INTRODUCTION TO STATISTICAL LEARNING

Anno Accademico 2021/2022

  • Docente: Paola Bortot
  • Crediti formativi: 2
  • Lingua di insegnamento: Inglese
  • Modalità didattica: Convenzionale - Lezioni in presenza
  • Campus: Bologna
  • Corso: Laurea in Economics and finance /economia e finanza (cod. 8835)

Conoscenze e abilità da conseguire

The course aims at providing students with some of the main concepts and tools of Statistical Learning for economic and financial applications. These include tools for supervised learning, such as parametric and non-parametric regression and classification models, and resampling methods for model selection and assessment, such as cross-validation and bootstrap. The course emphasizes practical aspects by illustrating the methodology through empirical applications using the R software.

Contenuti

The following topics will be covered:

  1. Introduction and Overview of Statistical Learning
  2. Linear Regression as a Prediction Tool
  3. Moving Beyond linear regression: K-Nearest Neighbors, Smoothing Splines and Generalized Additive Models
  4. Classification: K-Nearest Neighbors, Naive Bayes, Logistic Regression Generalized Additive Models.
  5. Resampling Methods for Model Assessment and Selection: Bias-Variance trade-off; Training set and Validation set; Cross-Validation and the Bootstrap.

Testi/Bibliografia

James, Witten, Hastie and Tibshirani, An Introduction to Statistical Learning, Springer 2021 (second edition).

Lecture notes will be made available at the beginning of the course.

Metodi didattici

The emphasis of the course is on empirical applications. For this reason,  for each topic, after introducing the relevant theory, illustrative real data examples will be given using the R language. Attending classes is highly recommended in order to better develop practical skills.

Modalità di verifica e valutazione dell'apprendimento

The final examination covers the contents of both Module 1 and Module 2 according to the format detailed on the Module 2 website

 

Strumenti a supporto della didattica

The statistical software R will be used to perform empirical studies. Additional resources include the software R Markdown for dynamic documentation and data repositories such as Kaggle, UCI Machine Learning and Google Finance. 

Orario di ricevimento

Consulta il sito web di Paola Bortot