Lectures
The Lectures for this course include:
Lecture 1 - course introduction and fuzzy logic
Lecture 2 - preliminaries and fuzzy logic
Alternative Lecture 2 - Rough Sets in KDD: Tutorial Notes
Lecture 3 - finish fuzzy logic and begin rough sets
fuzzy logic cases
Lecture 4 - more roughsets
Lecture 5 - more roughsets-Various Reducts & Rough Sets Applications
application 1
application 2
application 3
application 4
application 5
Lecture 6 - Neural Networks
Lecture 7 - More on Neural Networks
Lecture 8 - Evolutionary Computing: What
Lecture 9 - Genetic Algorithms & Evolution Strategies
Lecture 10 - Evolutionary & Genetic Programming
Lecture 11 - Probabilistic Reasoning: Why
Lecture 12 - Bayesian Networks
Lecture 13 - Discussion on Bayesian Networks
Lecture 14 - Recurrent Neural Networks
Lecture 14a - The Next Generation Neural Networks - G. Hinton
Lecture 14b - Neural Networks - Single Layer
Lecture 14c - Neural Networks - Probabilistic
Lecture 14d - Neural Networks - Learning
Lecture 14e - Neural Networks - Feed Forward
|Lecture 15 - Web Intelligence, Brain Informatics and Granular Computing
Lecture 15a - Web Intelligence meet Brain Informatics
Lecture 16 - Granular Computing
Lecture 16a - Zadeh's Granular Computing
Lecture 16 - Erich's Granular Computing
Lecture 16c - Skrowon's Granular Computing
Lecture 17 - Introduction to Expert Systems
Lecture 18 - Bayesian Network Modeling for evolutionary genetic structures
Lecture 19 - A graph theory approach to characterize the relationshipbetween protein functions and structure of biological networks
Lecture 20 & 21- Ontology and Representation
Lecture 22 - Course Review