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        Lecturer(s)
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                    Pavlačka Ondřej, RNDr. Ph.D.
                
 
            
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                    Fürst Tomáš, RNDr. Ph.D.
                
 
            
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                    Vencálek Ondřej, doc. Mgr. Ph.D.
                
 
            
         
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        Course content
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        1. Machine Learning - introduction, types of problems. 2. Regression - linear, logistic, multivariate, Gradient Descent method for estimating parameters. 3. Validation of model - underfitting, overfitting, regularization, cross-validation. 4. Artificial neural networks: biological motivation, feed forward NN and backpropagation. 5. Support Vector Machines. 6. Decision trees. 7. Recommender systems.
         
         
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        Learning activities and teaching methods
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        Lecture, Dialogic Lecture (Discussion, Dialog, Brainstorming), Demonstration
        
        
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                Learning outcomes
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                Understanding machine learning methods Ability to implement machine learning methods
                 
                Understanding machine learning methods Ability to implement machine learning methods
                 
                
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                Prerequisites
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                linear algebra, calculus, programming, English language
                
                
                    
                    
                        
                         
                        KMA/MA1  and  KMA/BAYES  and  KAG/LA1A
                    
                
                
  
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                Assessment methods and criteria
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                        Student performance, Analysis of Creative works (Music, Pictorial,Literary)
                        
                        
                         
                        
                    
                    
                
                 Colloquium: Active participation. The student shows his ability to chose a ML algorithm for a data set, train the model, diagnose it a present the results before an audience.
                 
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        Recommended literature
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                    (2009). Data Mining, Inference, and Prediction. Second Edition, Springer. 
                
 
            
                
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                    Online přednáška. 
                
 
            
                
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                    Online přednáška. 
                
 
            
                
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                    Online přednáška. 
                
 
            
                
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                    Hastie, Trevor, Tibshirani, Robert, Friedman, Jerome. (2016). The Elements of Statistical Learning. Springer. 
                
 
            
                
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                    Christopher Bishop. (2011). Pattern recognition and machine learning. Springer. 
                
 
            
         
         
         
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