| [ 951STMOSTLK14 ]                                         KV                                         Statistical Learning | 
                
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                | Es ist eine neuere Version 2025W dieser LV im Curriculum Master's programme Statistics and Data Science 2025W vorhanden. | 
                
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                      | Workload | Education level | Study areas | Responsible person | Hours per week | Coordinating university |  
                      | 4 ECTS | M1 - Master's programme 1. year | Statistics | Helmut Waldl | 2 hpw | Johannes Kepler University Linz |  | 
                
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                      | Detailed information |  
                      | Original study plan | Master's programme Statistics 2021W |  
                      | Objectives | Students are familiar with methods for supervised and unsupervised learning |  
                      | Subject | classification methods discriminant analysis
 regression trees
 boosting
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                      | Criteria for evaluation | Exam
Project |  
                      | Methods | Lecture |  
                      | Language | English |  
                      | Study material | Hastie T., Tibshirani R. and  Friedman J. (2009). The elements of statistical learning. |  
                      | Changing subject? | No |  
                      | Corresponding lecture | in collaboration with 951STMOARAK14: KV Advanced Regression Analysis (4 ECTS) equivalent to 4MSMV2KV: KV Multivariate Verfahren II (8 ECTS)
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                      | On-site course |  
                        | Maximum number of participants | 40 |  
                      | Assignment procedure | Assignment according to priority |  |