Degrees incorporating this pedagocial element :
Description
This course brings together programming techniques for recognition and symbolic reasoning. Techniques for symbolic reasoning are provided based on rule based programming and structured knowledge representations using schema. Programming of rules and schema are illustrated with exercises in the CLIPS Expert-System environment (developed by NASA). Techniques for recognition are presented based on Bayesian pattern recognition and machine learning. Linear and quadratic discrimination functions are presented, followed by feature space reduction techniques based on the Fisher discriminant function and principal Components analysis. An introduction to learning theory is provided using the EM algorithm to estimate Gaussian Mixture Models.
Recommended prerequisite
Recommended: Probability and Statistics,Predicate Calculus
In brief
Period : Semester 8Credits : 3
Number of hours
- Lectures (CM) : 19.5h
- Tutorials (TD) : 13.5h
Hing methods : In person
Location(s) : Grenoble
Language(s) : English
Contact(s)
Pierre Gaillard