Duration:
1 Semester | Turnus of offer:
irregularly | Credit points:
5 |
Course of studies, specific field and terms: - Master CLS 2023 (optional subject), mathematics, 1st, 2nd, or 3rd semester
- Bachelor CLS 2023 (optional subject), mathematics, 5th and 6th semester
- Bachelor CLS 2016 (optional subject), mathematics, 5th or 6th semester
- Master CLS 2016 (optional subject), mathematics, 1st, 2nd, or 3rd semester
|
Classes and lectures: - Generalized Linear Models (exercise, 1 SWS)
- Generalized Linear Models (lecture, 2 SWS)
| Workload: - 15 Hours exam preparation
- 30 Hours programming
- 45 Hours in-classroom work
- 60 Hours private studies
| |
Contents of teaching: | - General overview of generalized linear models (GLM): - link and response function, - GLM algorithms: Newton-Raphson, Fisher Scoring, iterated weighted least squares, - convergence, - quality of the adaption, - residuals
- Continuous response models: Gaussian, log-normal, Gamma, log-Gamma for survival analysis, inverse Gaussian
- Dichotomous response models: logit, probit, cloglog
- Count data: Poisson, negative binomial with over- and underdispersion
- Ordinal response models: proportional odds model
- Disordered categorial response models: Multinomial logit and probit model
- Censored continuous response models: Tobit model
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Qualification-goals/Competencies: - The students are able to explain the theoretical bases of generalized linear models (GLM).
- They are able to explain areas of application for GLM.
- They are able to select a suitable GLM.
- They are able to estimate GLMs in R.
- They are able to explain the R source code in a presentation.
- They are able to judge the results of GLMs in R critically.
- They are able to evaluate algorithmic challenges of GLMs.
- They are able to explain conceptual problems of GLMs for categorial response variables.
- They are able to implement GLM in R.
- They are able to apply regression diagnostics to GLMs and to judge the results.
- They are able to describe the most important estimation algorithms for GLMs.
- They are able to list the statistical properties of GLMs.
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Grading through: |
Requires: |
Responsible for this module: - Prof. Dr. rer. biol. hum. Inke König
Teachers: - Prof. Dr. rer. biol. hum. Inke König
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Literature: - Agresti, Alan: Foundations of Linear and Generalized Linear Models - Wiley, 2015
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Language: - English, except in case of only German-speaking participants
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Notes:Admission requirements for taking the module: - None (The competencies of the modules listed under 'Requires' are needed for this module, but are not a formal prerequisite) Admission requirements for participation in module examination(s): - Successful completion of homework assignments as specified at the beginning of the semester Module exam(s): - MA4962-L1: Generalized Linear Models, written exam (90 min) or oral exam (30 min), 100 % of module grade |
Letzte Änderung: 22.2.2022 |
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