Advanced Statistics
Lecturer: Jan Beyersmann
Exercises: Sandra Schmeller
General Information
Language | English, unless all students have sufficient knowledge of German |
Lectures | 2 h |
Exercises | 1 h |
Lectures Tuesday, 10:00 - 12:00 | |
Exercise Tuesday, 16:00 - 18:00 |
Exam (open): TBA |
Prerequisites
A class on elementary probability theory and statistics, and measure theory. The level of the course is that of a first year's master course in one of the mathematical programs, but 3-year BSc students will also be able to follow the course. Some basic programming knowledge in R would be helpful.
Contents
The lecture "Advanced Statistics" is a fundamental part in statistical education, covering, in particular, estimation and testing in linear models. Linear models are a key discipline in applied statistics, including the modern fields of analytics, prediction, data science and causality. Topics covered include:
- multivariate normal distribution
- random quadratic forms
- least-squares- and BLUE-estimators
- Analysis of Variance (ANOVA)
- regression analysis
- prediction and excursions to causality and/or semiparametric efficiency
Lecture and exercises will combine a thorough mathematical study of linear models theory with more applied aspects, the latter also using R.
Exam TBA
Exercise Sheets and any further information
on Moodle.
https://moodle.uni-ulm.de/course/view.php?id=70331
Moodle keywort will be announced in the first lecture.
Literature
- Agresti, A., Foundations of linear and generalized linear models. Wiley Series in Probability and Statistics, 2015.
- Christensen, R., Plane answers to complex questions: the theory of linear models. Springer Science and Business Media, 2011.
- Faraway, J.J., Linear Models with R. CRC Press, 2015.
- Toutenburg, H., Lineare Modelle: Schätzung, Vorhersage, Modellwahl, Mean-Square-Error-Superiorität, Zusatzinformation, fehlende Werte, Datenanalyse, kategorielle Regression, Matrixtheorie. Physica-Verl., 1992.