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Glossary
Semester (Sem)
1First Semester
2Second Semester
AAnnual course
Educational activities
CSimilar or integrative activities
Language
Course completely offered in italian
Course completely offered in english
--Not available
Innovative teaching
The credits shown next to this symbol indicate the part of the course CFUs provided with Innovative teaching.
These CFUs include:
  • Subject taught jointly with companies or organizations
  • Blended Learning & Flipped Classroom
  • Massive Open Online Courses (MOOC)
  • Soft Skills
Course Details
Context
Academic Year 2019/2020
School School of Industrial and Information Engineering
Name (Master of Science degree)(ord. 270) - MI (487) Mathematical Engineering
Track MMF - Quantitative Finance
Programme Year 2

Course Details
ID Code 052742
Course Title APPLIED STATISTICS
Course Type Mono-Disciplinary Course
Credits (CFU / ECTS) 8.0
Semester Second Semester
Course Description "Exploring a multivariate dataset: descriptive statistics and graphical displays. The geometry of a multivariate sample. The distance induced by the covariance matrix. Analysis of covariance structure: principal components and dimensional reduction. Inferences about a mean vector: Hotelling T^2 test. Confidence regions and simultaneous comparisons of component means. Bonferroni method. ANOVA and MANOVA. Linear models: matrix approach to multiple regression with simple or multivariate response. The collinearity problem. Ridge regression and shrinkage methods. Introduction to generalized linear models. Discrimination, classification, clustering: Statistical classification: model, miscalassification costs and prior probability. Bayesian supervised classification and the Fisher approach to discriminant analysis. Alternative approaches to classification: logistic regression, CART. Similarity measures. Unsupervised classification; hierarchical and nonhierarchical methods. Multidimensional scaling."
Scientific-Disciplinary Sector (SSD)
Educational activities SSD Code SSD Description CFU
C
SECS-S/01
STATISTICS
8.0
Innovative teaching The course includes  3.0  credits in Innovative Teaching as follows:
  • Blended Learning & Flipped Classroom

Schedule, add and removeAlphabetical groupProfessorLanguageTeaching Assignment Details
From (included)To (excluded)
--AZZZZSecchi Piercesare
manifesti v. 3.5.10 / 3.5.10
Area Servizi ICT
07/12/2023