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t.BA.XX.STMO.20HS (Statistical Modelling)
Module: Statistical Modelling
This information was generated on: 04 November 2024
No.
t.BA.XX.STMO.20HS
Title
Statistical Modelling
Organised by
T IDP
Credits
4
Description
Version: 2.0 start 01 February 2021
Short description
The module introduces students to the basics of statistical modelling using linear regression analysis. Aspects of the model structure, inference, prediction, residuals analysis and model building, including variable selection, are examined in detail, both theoretically and in case studies.
Module coordinator
Ruckstuhl, Andreas (rkst)
Learning objectives (competencies)
Objectives
Competences
Taxonomy levels
You are familiar with practice-relevant methods of simple and multiple linear regression analysis and are able to interpret corresponding results
F, M
K3, K4
You can recognize from which principles the methods are derived
F, M
K2
You can assess whether the regression model fits the data
F, M
K3, K4, K6
You can develop a regression model using data
F, M
K3, K4, K5
You can apply the methods covered practically with a statistics program package.
F, M
K3
Module contents
imple and multiple regression models, estimations (incl. principle of maximum likelihood and robust methods), parameter tests, confidence and prediction intervals, model adequacy checking (residual analysis), model comparison, variable selection (incl. information criterion of Akaike), model building, smoothing (local regression, smoothing spline), additive models.
Statistics program package R: Statistics and graphics routines for the treated methods.
Teaching materials
Lecture notes, tutorial sheets, possibly other supplementary materials such as slides, handouts etc.
Supplementary literature
Montgomery, Peck and Vining (2012), Introduction to linear Regression Analysis, 5th Ed., Wiley Series in Probability and Statistics
Prerequisites
You are familiar with the basic concepts of statistics (WAST3).
Teaching language
(X) German ( ) English
Part of International Profile
( ) Yes (X) No
Module structure
Type 2a
For more details please click on this link:
T_CL_Modulauspraegungen_SM2025
Exams
Description
Type
Form
Scope
Grade
Weighting
Graded assignments during teaching semester
exam
In writing
max 60 min
grading
max 20%
End-of-semester exam
exam
In writing
90 min
grading
min 80%
Remarks
Exam during the teaching period and its weighting is defined in the module agreement.
Legal basis
The module description is part of the legal basis in addition to the general academic regulations. It is binding. During the first week of the semester a written and communicated supplement can specify the module description in more detail.
Course: Statistisches Modellieren - Vorlesung
No.
t.BA.XX.STMO.20HS.V
Title
Statistisches Modellieren - Vorlesung
Note
No module description is available in the system for the cut-off date of 02 August 2099.