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        Lecturer(s)
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                    Voženílek Vít, prof. RNDr. CSc.
                
 
            
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                    Hron Karel, prof. RNDr. Ph.D.
                
 
            
         
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        Course content
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        The content of the subject is adapted to the focus of the student's dissertation, it is assumed that the following topics will be selected in particular within object-oriented data analysis (multivariate data, compositional data, functional data, more complex data structures) according to the relevant geoinformatic motivation: - Linear and nonlinear regression and classification methods (including robust ones); - Model selection and evaluation (including cross validation, bootstrap); - Statistical inference (model parameter estimates, hypothesis testing, prediction; Bayesian approach); - Machine learning methods (regression / classification trees, support vector machines, neural networks); - Unsupervised methods (dimension reduction, cluster analysis, detection of outliers); - Methods for high-dimensional data (regression, classification, unreserved methods); Geostatistics, spatial and spatio-temporal statistics. 
         
         
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        Learning activities and teaching methods
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                    - Preparation for the Exam
                        - 40 hours per semester
                    
 
                
             
        
        
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                Learning outcomes
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                To get an overview of modern statistical methods in geoinformatics.
                 
                Application Application of modern statistical methods in geoinformatics.
                 
                
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                Prerequisites
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                Basic knowledge of applied statistics.
                
                
                    
                        
                    
                    
                
                
  
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                Assessment methods and criteria
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                        unspecified
                    
                
                 Specialized text and oral expert debate
                 
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        Recommended literature
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                    Bühlmann, P. van der Geer, S. (2011). Statistics for high-dimensional data. Springer, Heidelberg. 
                
 
            
                
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                    Filzmoser, P., Hron, K., Templ, M. (2018). Applied compositional data analysis. Springer, Heidelberg. 
                
 
            
                
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                    Chun, Y., Griffith, D.A. (2013). Spatial statistics and geostatistics. SAGE Publishing, Thousand Oaks. 
                
 
            
                
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                    James, G., Witten, D., Hastie, T., Tibshirani, R. (2013). An introduction to statistical learning. Springer, New York. 
                
 
            
                
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                    Ramsay, J.O., Silverman, B.W. (2005). Functional data analysis. Springer, New York. 
                
 
            
         
         
         
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