- Title
- A review of generalized linear models for count data with emphasis on current geospatial procedures
- Creator
- Michell, Justin Walter
- Subject
- Spatial analysis (Statistics)
- Subject
- Bayesian statistical decision theory
- Subject
- Geospatial data
- Subject
- Malaria -- Botswana -- Statistics
- Subject
- Malaria -- Botswana -- Research -- Statistical methods
- Date Issued
- 2016
- Date
- 2016
- Type
- Thesis
- Type
- Masters
- Type
- MCom
- Identifier
- vital:5582
- Identifier
- http://hdl.handle.net/10962/d1019989
- Description
- Analytical problems caused by over-fitting, confounding and non-independence in the data is a major challenge for variable selection. As more variables are tested against a certain data set, there is a greater risk that some will explain the data merely by chance, but will fail to explain new data. The main aim of this study is to employ a systematic and practicable variable selection process for the spatial analysis and mapping of historical malaria risk in Botswana using data collected from the MARA (Mapping Malaria Risk in Africa) project and environmental and climatic datasets from various sources. Details of how a spatial database is compiled for a statistical analysis to proceed is provided. The automation of the entire process is also explored. The final bayesian spatial model derived from the non-spatial variable selection procedure using Markov Chain Monte Carlo simulation was fitted to the data. Winter temperature had the greatest effect of malaria prevalence in Botswana. Summer rainfall, maximum temperature of the warmest month, annual range of temperature, altitude and distance to closest water source were also significantly associated with malaria prevalence in the final spatial model after accounting for spatial correlation. Using this spatial model malaria prevalence at unobserved locations was predicted, producing a smooth risk map covering Botswana. The automation of both compiling the spatial database and the variable selection procedure proved challenging and could only be achieved in parts of the process. The non-spatial selection procedure proved practical and was able to identify stable explanatory variables and provide an objective means for selecting one variable over another, however ultimately it was not entirely successful due to the fact that a unique set of spatial variables could not be selected.
- Format
- 126 leaves
- Format
- Publisher
- Rhodes University
- Publisher
- Faculty of Science, Statistics
- Language
- English
- Rights
- Michell, Justin Walter
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