CODE 52480 ACADEMIC YEAR 2016/2017 CREDITS 8 cfu anno 1 MATEMATICA 8760 (L-35) - 8 cfu anno 1 STATISTICA MATEM. E TRATTAM. INFORMATICO DEI DATI 8766 (L-35) - SCIENTIFIC DISCIPLINARY SECTOR SECS-S/01 LANGUAGE Italiano TEACHING LOCATION SEMESTER 2° Semester TEACHING MATERIALS AULAWEB OVERVIEW The course introduces the student to the exploratory statistical analysis of multivariate data by pointing out the mathematical aspects and by developing the essential skills for the interpretation of the data to be investigated. Laboratory sessions provide students with the opportunity to analyse, discuss, and solve real problems. AIMS AND CONTENT LEARNING OUTCOMES To provide the main concepts and methodologies for the exploratory analysis of univariate and multivariate data. SYLLABUS/CONTENT Exploratory analysis of uni- and bi-variate data. Qualitative/categorical variables. Counts and frequencies, distribution of a variable. Joint and marginal distributions of two variables, conditional distributions (row and column profiles). Independence. Graphical representations. Quantitative variables. Distribution and cumulative distribution functions, quantile function, and their graphical representations. Measures of centrality and dispersion based on moments and quantiles; their properties and L1 and L2 metrics. Covariance and correlation between two quantitative variables. Geometrical interpretation of variance, covariance and correlation. Exploratory analysis of multivariate data. Cluster analysis. Hierarchical clustering: linkages based on distance and inertia; dendogram; induced ultra-metric; variable clustering. K-means clustering: initialization and stop of algorithm, stable clusters. Principal component analysis. ``Best’’ representation of multivariate data (row points of data matrix) in a vector space with lower dimension; accuracy of representation. Change of base (eigenvectors of the correlation matrix). Properties of principal components. Geometrical representation of correlations. Multiple regression. Vector space generated by the explanatory variables (column points of data matrix). Linear least square method and geometrical meaning of residual minimization. Variance decomposition of the response variable. Descriptive goodness-of-fit: residual plots and R-sq index (with geometrical interpretation). One-way ANOVA (analysis of variance) and between/within variance decomposition. Pratical sections in lab using software R RECOMMENDED READING/BIBLIOGRAPHY M. P. Rogantin (2016) Statistica descrittiva (available on AulaWeb and at http://www.dima.unige.it/~rogantin/StDescrittiva2/StatDescrittiva.pdf) Maindonald J., Braun W. J, (2010). Data analysis and graphics using R: an example-based approach. 3. ed. Cambridge University press I.T. Jolliffe (2002). Principal Component Analysis. Springer Series in Statistics TEACHERS AND EXAM BOARD MARIA PIERA ROGANTIN ERNESTO DE VITO Exam Board ERNESTO DE VITO (President) MARIA PIERA ROGANTIN (President) EVA RICCOMAGNO LESSONS Class schedule MULTIVARIATE EXPLORATORY DATA ANALYSIS EXAMS Exam schedule Data appello Orario Luogo Degree type Note 14/06/2017 09:00 GENOVA Scritto 16/06/2017 09:00 GENOVA Orale 10/07/2017 09:00 GENOVA Scritto 12/07/2017 09:00 GENOVA Orale 04/09/2017 09:00 GENOVA Scritto 05/09/2017 09:00 GENOVA Orale