Fuzzy Logic and Computational Intelligence:
Lectures #2 and #3 Content




Material Covered in Lecture #2


Recap of Lecturse #1a &and #1b

Fuzziness vs. Probability

  1. Interpretations and Differences
  2. Inference Mechanism: Modus Ponens vs.Conditioning
  3. Possibility Measure

Approximate Reasoning

  1. Fuzzy relations
  2. Fuzzy Composition
  3. Geometric and algebraic representation of Modus Ponens
  4. Implementational issues

Homework Set 0

TBD

  • PDF Files of Slides for Lectures 2 and 3

  • Material Covered in Lecture #3


    Recap of Lecture #2

    Generalized Modus Ponens

    1. Numerical Example
    2. Three possible implementations of Modus Ponens
    3. Computational Issues

    Extension Principle

    1. Extension Principle: Theory and Implementation
    2. Representation: Discrete (Sampling) and Parametrized
    3. Fuzzy numbers
    4. Interval and fuzzy arithmetics
    5. Table of Close-formed Formulae for convex normal fuzzy numbers
    6. Algebraic properties of positive normal convex fuzzy numbers (commutative semi-ring)


    Author: Piero P. Bonissone E-Mail: bonissone@crd.ge.com


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