Duration: 
  1 Semester |  Turnus of offer: 
  each winter semester |  Credit points: 
  4 |  
    Course of studies, specific field and terms: - Master Biophysics 2023 (module part), advanced curriculum, 1st semester
 - Master Computer Science 2019 (module part), Module part, Arbitrary semester
 - Master MES 2020 (module part), computer science / electrical engineering, Arbitrary semester
 - Master Entrepreneurship in Digital Technologies 2020 (module part), Module part, Arbitrary semester
 - Master Biophysics 2019 (module part), advanced curriculum, 1st semester
 - Master IT-Security 2019 (module part), Module part, 1st or 2nd semester
 - Master Entrepreneurship in Digital Technologies 2014 (module part), Module part, Arbitrary semester
 - Master MES 2014 (module part), computer science / electrical engineering, 1st or 2nd semester
 - Master Computer Science 2014 (module part), Module part, Arbitrary semester
  
  |  
      Classes and lectures:   - Machine Learning (exercise, 1 SWS)
 - Machine Learning (lecture, 2 SWS)
     |   Workload:   - 20 Hours exam preparation
 - 55 Hours private studies
 - 45 Hours in-classroom work
     |       |  
      Contents of teaching:   |       - Representation learning, including manifold learning
 - Statistical learning theory
 - VC dimension and support vector machines
 - Boosting
 - Deep learning
 - Limits of induction and importance of data ponderation
     |       |  
   Qualification-goals/Competencies:   - Students can understand and explain various machine-learning problems.
 - They can explain and apply different machine learning methods and algorithms.
 - They can chose and then evaluate an appropriate method for a particular learning problem.
 - They can understand and explain the limits of automatic data analysis.
     |  
   Grading through:   - exam type depends on main module
     |  
    Responsible for this module:    Teachers:     |  
  Literature:  - Chris Bishop: Pattern Recognition and Machine Learning - Springer ISBN 0-387-31073-8
 - Vladimir Vapnik: Statistical Learning Theory - Wiley-Interscience, ISBN 0471030031
 - Tom Mitchell: Machine Learning - McGraw Hill. ISBN 0-07-042807-7
     |  
    Language: - English, except in case of only German-speaking participants
  
  |  
    Notes:Admission requirements for taking the module:  - None    Admission requirements for participation in module examination(s):  - Successful completion of exercise assignments as specified at the beginning of the semester.    Module Exam(s):  - CS5450-L1: Machine Learning, oral exam, 100% of module grade.    (Is part of the module CS4290, CS4511, CS5400, CS4251-KP08)   |  
   Letzte Änderung: 13.9.2021  |  
 
 
	
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