Universität Wien

290019 PS Environmental Statistics Using R (2013S)

3.00 ECTS (2.00 SWS), SPL 29 - Geographie
Continuous assessment of course work

Termine: MO 15.04.2013 9.00-11.00 / DI 16.04.2013 9.00-11.00 / MI 17.04.2013 9.00-11.00 / DO 18.04.2013 8.00-12.00
MO 06.05.2013 9.00-12.00 / DI 07.05.2013 9.00-12.00 / MI 08.05.2013 8.00-12.00
MO 17.06.2013 9.00-11.00 / DI 18.06.2013 9.00-11.00 / MI 19.06.2013 9.00-11.00 / DO 20.06.2013 8.00-12.00

Ort: Konferenzraum Geographie NIG 5.OG C520

Details

Language: English

Lecturers

Classes

Currently no class schedule is known.

Information

Aims, contents and method of the course

Statistical methods for spatial environmental data include a broad range of techniques such as kriging interpolation, spatial regression and variogram analysis (geostatistics), spatial point pattern analysis, all of which address the common issue of spatial autocorrelation in spatial data. Other environmental applications in remote sensing, geomorphology and biogeography require the use of advanced classification methods such as generalized additive models or the support vector machine. Applied statistical data analysis furthermore requires the integration of statistical software with geographical information systems.
This course will give an introduction to selected statistical techniques for environmental data analysis, and provide an opportunity to acquire statistical computing skills using real-world data sets and hands-on exercises. We will use the high-level scripting language R (www.r-project.org) a free, yet professional data analysis environment that provides flexible and powerful tools needed for the analysis of complex geospatial data.
Students taking this course will furthermore find an opportunity to discuss statistical data analysis challenges encountered in their own Master’s or PhD research.

Assessment and permitted materials

There are three graded assignments, each worth 25% of the final grade, and one written final examination, worth 25%. The assignments consist of statistical analyses of environmental data using the statistical data analysis and programming language R. The final exam covers the lectures and will include multiple-choice questions, short open questions, and the interpretation of graphical and numerical information.

Minimum requirements and assessment criteria

At the end of this course, you should:
Be familiar with the pitfalls and potential of statistics in a variety of spatial and environmental data analysis problems.
Be able to apply selected statistical data analysis methods using R.
Be able to evaluate and critically discuss spatial models and their results based on statistical assessment criteria.

Examination topics

Reading list


Association in the course directory

(MG-S1-PI.m, Block B) (MG-W2-PI.m, Block B) (D5)

Last modified: Fr 31.08.2018 08:56