Difference between revisions of "SC:Knowledge Engineering"

From Chrome
Jump to: navigation, search
Line 70: Line 70:
 
* [http://home.dei.polimi.it/matteucc/lectures/IC/ga_tutorial.pdf Genetic Algorithm Tutorial]: a neat tutorial by Darrel Whitley
 
* [http://home.dei.polimi.it/matteucc/lectures/IC/ga_tutorial.pdf Genetic Algorithm Tutorial]: a neat tutorial by Darrel Whitley
 
* [http://www.obitko.com/tutorials/genetic-algorithms/ Genetic Algorithm with applets]: a nice website/tutorial about genetic algorithm I've been inspired for my lectures :-)
 
* [http://www.obitko.com/tutorials/genetic-algorithms/ Genetic Algorithm with applets]: a nice website/tutorial about genetic algorithm I've been inspired for my lectures :-)
* [http://home.dei.polimi.it/matteucc/lectures/IC/AppuntiMatteucci.pdf Appunti (bigino)]: these are notes taken in the past by some students of mine ... they are in Italian!
+
* [http://home.dei.polimi.it/matteucc/lectures/IC/AppuntiMatteucci.zip Appunti (bigino)]: these are notes taken in the past by some students of mine ... they are in Italian!

Revision as of 02:38, 5 January 2010


The following are last minute news you should be aware of ;-)

09/03/2010: The course starts today!

Course Aim & Organization

The course introduces the general principles of Artificial Intelligence and its applications. Two approaches to model building and knowledge representation will be presented: the traditional one, based on symbolic representation of knowledge (e.g., frames, rules, fuzzy logic, ...), and one inspired to biological models (e.g., neural networks and genetic algorithms).

Teachers

The course is composed by a blending of lectures and exercises by the course teacher and the teaching assistant.

Course Program and Schedule

Lectures will cover the following topics:

  • Artificial intelligence: problems, approaches and applications
  • Models for knowledge representation biologically inspired and adaptive models.
  • Machine Learning: supervised methods, unsupervised methods, reinforcement learning.
  • Artificial Neural Networks and Genetic Algorithms.
  • Knowledge representation techniques: semantic networks, frames, objects, production rules.
  • Uncertainty and approximate knowledge representation. Fuzzy systems.
  • Knowledge engineering: methods to develop knowledge based systems.
  • Knowledge acquisition, conceptualization and modeling.

Lectures are on:

  • Tuesday 8:15-10:15 in room A3.6
  • Wednesday 10:15-12:15 in room A3.6

Course Evaluation

The course evaluation is performed by a written exam divided in two parts (lasting usually 2.5 hours in total):

  1. Topics covered by the course teacher during the course
  2. Topics covered by the teaching assistant during the course

Each part will score 16/32 and the exam is passed if the sum of the two parts, after rounding, is at least 18.

Teaching Material

The textbooks used for the course are:

In the following you can find the lecture slides used by the teacher and the teaching assistant during classes. Some additional material that could be used to prepare the oral examination is provided as well.

Neural Networks and Evolutionary Computation

Knowledge Engineering

  • ...

Fuzzy Logic

  • ...

Additional Lectures to complement Slides and Textbooks