UMR CNRS 7253

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en:sci22 [2013/09/10 15:05] tdenoeuxen:sci22 [2014/09/12 11:29] (current) tdenoeux
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 **Instructor:** Thierry Denoeux **Instructor:** Thierry Denoeux
  
-Description: This course presents the main formalisms for uncertainty representation with emphasis on the theory of belief functions, which generalizes both probability theory and the set-membership approach (inclusing interval analysis). Numerous examples taken from different domains (Artificial Intelligence, multi-sensor fusion, numerical modeling) will illustrate the theoretical notions.+Description: This course presents the main formalisms for uncertainty representation with emphasis on the theory of belief functions, which generalizes both probability theory and the set-membership approach (including interval analysis). Numerous examples taken from different domains (Artificial Intelligence, multi-sensor fusion, numerical modeling) will illustrate the theoretical notions.
  
-**Programme (Fall 2013)**+**Program (Fall 2014)** 
  
-  11 September: Introduction to uncertainty +Room O223 (PG2) 
-  - 18 September: Belief functions: representation of evidence + 
-  - 25 September: Belief functionscombination of evidence +  10 September: Introduction to uncertainty  
-  - October: Refinement and coarsening of a frame of discernment +  - 17 September: Representation of evidence  
-  - October: +  - 1 OctoberCombination of evidence 
-  - October: Applications to pattern recognition and information fusion +  - October: Least commitment principle. Coarsening and refinement 
-  - 12 October: Presentation of research papers by students+  - October: Decision analysis. Classification and clustering 
 +  - 15 October:  Applications  
 +  - 18 October: Presentation of research papers by students
  
  

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