| Detailinformationen | 
                    
                                
                    
                      | Quellcurriculum | 
                      Bachelorstudium Artificial Intelligence 2019W | 
                    
                      
                    
                      | Ziele | 
                      (*)Data analysis and visualization are essential to most fields in science and engineering. The goal of this course is to provide students with a basic tool chest of methods for pre-processing, analyzing, and visualizing scientific data.
 | 
                    
                      
                    
                      | Lehrinhalte | 
                      (*)- Scatter plots and box plots
 - Basics of classification
 - Basics of regression
 - ANOVA
 - Clustering
 - Principal component analysis (+ visualization, including spectral maps)
 - Singular value decomposition (+ visualization)
 - Matrix factorization (+ visualization)
 - Independent component analysis
 
  | 
                    
                                                            
                    
                      | Beurteilungskriterien | 
                      (*)The final grade is based on a combined assessment of homework and a final exam.
 | 
                    
                       
                    
                                 
                    
                      | Lehrmethoden | 
                      (*)Slide presentations complemented by online demos and examples presented on the blackboard; demos are based on the scientific computing platform R
 | 
                    
                                     
                    
                      | Abhaltungssprache | 
                      Englisch | 
                    
                      
                    
                      | Literatur | 
                      (*)Electronic course material and example code are made available for download 
 | 
                    
                      
                    
                      | Lehrinhalte wechselnd? | 
                      Nein | 
                    
                                        
                      | Sonstige Informationen | 
                      (*)Until term 2019S known as: 875BIMLMDAK16 KV Basic Methods of Data Analysis until term 2016S known as: 675MLDAMDAK13 KV Basic Methods of Data Analysis
 | 
                    
    
                                        
                      | Frühere Varianten | 
                      Decken ebenfalls die Anforderungen des Curriculums ab (von - bis) 875BIMLMDAK16: KV Basic Methods of Data Analysis (2016W-2019S) 675MLDAMDAK13: KV Basic Methods of Data Analysis (2013W-2016S)
  |