Data mining and computational statistics

A.A. 2024/2025
9
Crediti massimi
60
Ore totali
SSD
SECS-S/01
Lingua
Inglese
Obiettivi formativi
This is an introductory course to basic techniques and applications in finance and economics of Data Mining and Computational Statistics, also in the more general framework of data science. We will allow students to develop programming skills using the R software in the Data Mining part, and the OpenBUGS software for Bayesian Markov Chain Monte Carlo random variable generation. Students will acquire independence in studying Data Mining & Computational Statistics subjects and will be able to solve practical problems in economic and financial data analysis.
Risultati apprendimento attesi
At the end of the course students will be able to perform machine learning techniques and algorithms and use them in economic and financial applications. Specifically, students will be familiar with supervised and unsupervised models. In particular, in the supervised framework students will be able to perform advanced regression models like the ridge and lasso regression, classification techniques like the Bayes classifier, the K-NN classifier and the logistic model, whereas in the unsupervised framework students will become familiar with dimensional reduction techniques and cluster analysis. More sophisticated techniques like decision tree-based classification will be presented to the students. In Computational statistics, resampling techniques, random number and random variable generation and numerical integration will be part of the acquired knowledge the students will have at the end of the course.
Corso singolo

Questo insegnamento non può essere seguito come corso singolo. Puoi trovare gli insegnamenti disponibili consultando il catalogo corsi singoli.

Programma e organizzazione didattica

Edizione unica

Responsabile
Periodo
Terzo trimestre
SECS-S/01 - STATISTICA - CFU: 9
Lezioni: 60 ore
Docente: Tommasi Chiara
Docente/i
Ricevimento:
Mercoledì dalle 9:00 alle 12:00 (controllare la bacheca su ARIEL per eventuali cambiamenti).
Ufficio n.35, III piano di via Conservatorio