Universität Wien
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570007 WS Methods in Statistics (2023W)

Continuous assessment of course work
ON-SITE

Registration/Deregistration

Note: The time of your registration within the registration period has no effect on the allocation of places (no first come, first served).

Details

max. 20 participants
Language: English

Lecturers

Classes

Place: Seminarraum 2.1, UBB, Djerassiplatz 1
Date/Time: 19.2.2024-01.03.2024, 9:00-13:00. Note the last lecture on the 1st March falls formally in the 2024 summer term... but we'll do it anyway :-)
There is no "akademische Viertelstunde", we will start at 9 am sharp every day!

List of lectures:
- Programming with R: Mon-Tue 19.02-20.02
- Think statistics! with R: Wed-Thu 21.02-22.02
- Scientific visualisation with ggplot: Fri 23.02
- Linear regression: Mon 26.02
- Analysis of Variance (ANOVA): Tue 27.02
- Nonlinear regression: Wed 28.02
- Generalised linear models (GLM): Thu 29.02
- Bayesian statistics intro: Fri 01.03


Information

Aims, contents and method of the course

The following topics will be taught in the course:
- R programming
- Statistics with R: sampling theory, distributions, hypothesis testing, testing "recipes"
- Linear models: linear regression, LASSO, Ridge regression, PCA, linearization
- Nonlinear models: nonlinear regression, model comparisons, local smoothing, GAM
- ANOVA: One-way and two-way ANOVA, ANOVA as regression, ANCOVA
- Generalized linear models: Binomial GLM, Poisson GLM, negative binomial GLM, OLS as Gaussian GLM
- Bayesian statistics: basic theory, parameter estimation, Bayesian Networks
- ggplot: principles of visualisation, ggplot basics, plotting recipes

Hands-on exercises will be done during the lectures on small data sets.
Detailed information on the course contents can be found at: https://training.vbcf.ac.at/training/datasci.php

Please bring a laptop with internet access to the course!

Assessment and permitted materials

The course will be evaluated through participation efforts and homework exercises which can be completed online. There will be no final examination.

Minimum requirements and assessment criteria

Lecture attendance is mandatory.
For most lectures homework exercises will have to be completed afterwards.

Examination topics

Reading list


Association in the course directory

PhD

Last modified: Fr 16.02.2024 12:27