| 
        Lecturer(s)
     | 
    
        
            
                - 
                    Fačevicová Kamila, Mgr. Ph.D.
                
 
            
                - 
                    Hron Karel, prof. RNDr. Ph.D.
                
 
            
         
     | 
    | 
        Course content
     | 
    
        1. Basics of statistical learning 2. Linear regression 3. Classification 4. Resampling methods - cross validation and bootstrap 5. Linear model selection and regularization 6. Beyond linearity - splines, generalized additive models 7. Deep learning 7. Survival analysis 8. Unsupervised learning (PCA, cluster analysis)
         
         
     | 
    | 
        Learning activities and teaching methods
     | 
    
        
        Lecture, Dialogic Lecture (Discussion, Dialog, Brainstorming), Demonstration
        
            
                    
                
                    
                    - Preparation for the Exam
                        - 40 hours per semester
                    
 
                
                    
                    - Preparation for the Course Credit
                        - 20 hours per semester
                    
 
                
                    
                    - Attendace
                        - 52 hours per semester
                    
 
                
             
        
        
     | 
    
    
        
        
            | 
                Learning outcomes
             | 
        
        
            
                
                Understand popular advanced methods of statistical learning including their implementation in statistical software R.
                 
                Application Apply probability theory and multivariate statistics to methods of statistical learning.
                 
                
             | 
        
        
            | 
                Prerequisites
             | 
        
        
            
                
                
                Basic knowledge of probability theory and multivariate statistics. 
                
                
                    
                        
                    
                    
                
                
  
             | 
        
        
            | 
                Assessment methods and criteria
             | 
        
        
            
                
                    
                        Oral exam, Seminar Work
                        
                        
                         
                        
                    
                    
                
                 Credit: Presentation of a project covering topics of statistical learning. Exam: oral.
                 
             | 
        
    
    | 
        Recommended literature
     | 
    
        
            
                
                - 
                    B. Efron, R. Hastie. (2017). Computer age statistical inference. Cambridge University Press, Cambridge. 
                
 
            
                
                - 
                    Everitt, B., Hothorn, T. (2011). An introduction to applied multivariate analysis with R. Springer, Heidelberg. 
                
 
            
                
                - 
                    I. Goodfellow, Y. Bengio, A. Courville. (2016). Deep Learning. MIT Press, Boston. 
                
 
            
                
                - 
                    James, G., Witten, D., Hastie, T., Tibshirani, R. (2021). An introduction to statistical learning. An introduction to statistical learning. 
                
 
            
                
                - 
                    T. Hastie, R. Tibshirani, J. Friedman. (2016). The elements of statistical learning. Springer, New York. 
                
 
            
         
         
         
     |