Content (Syllabus outline)
Statistics and computing. Coursework with statistical software R.
Preliminary statistical analysis. Graphical presentation, basic descriptive statistics and analysis.
Regression and correlation.
- Simple linear regression model.
- Correlation: different correlation coefficients (Pearson, Spearman, Kendall).
- Nonlinear regression models which can be linearized.
- Multiple regression.
- Specific regression models in bioeconomics.
Multivariate statistics.
- Distances for numerical and for categorical variables: Euclidean, Manhattan, Jaccard, itd…
- Cluster analysis. Hierarchical methods, dendrogram. Optimization methods: Kmeans.
- Ordination methods: classical multidimensional scaling, graphical presentation.
- Principal component analysis.
- An overview of other multivariate methods.
Prerequisites
Prerequisites for inclusion in study process:
Enrolment in the corresponding year of study programme.
Formative coursework and assessment:
Completed homeworks.
Written exam.