Difference between revisions of "SC:SC2012"

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The following is some suggested material to follow the course lectures organized by topic.
 
The following is some suggested material to follow the course lectures organized by topic.
  
===Fuzzy Systems
+
===Fuzzy Systems===
 
*[http://www.abo.fi/~rfuller/fuzs.html Robert Fuller's page on Fuzzy Systems]
 
*[http://www.abo.fi/~rfuller/fuzs.html Robert Fuller's page on Fuzzy Systems]
 
*TUTORIALS
 
*TUTORIALS

Revision as of 01:33, 8 November 2011

This is a description page for the PhD course on SC2012.


Course Aim & Organization

Soft Computing includes technologies (Fuzzy Systems, Neural Networks, Stochastic Algorithms , Bayesian Networks, ...) to model complex systems and offer a powerful tool both for research and companies in different, rapidly growing application areas, such as, for instance: data analysis, automatic control, modeling of artificial and natural phoenomena, modeling of behaviors (e.g., of users), decision support. The course will introduce rigorously the fundamentals of the different modeling approaches, will put in evidence the application possibilities, by comparing different models, examples and application cases, will describe how to design systems based on these technologies. No specific background is required. In past editions the course has been followed by people with many different backgrounds among which: all engineering specialties, biology, vulcanology, architecture.

Teachers

The course will be held by:

Course Schedule

 Please consider this schedule as tentative ... 
 The course will start in September 2012, details about lecture time will be available soon

In the following you find the detailed schedule for the course and the rooms booked for it. In brackets you find also the lecturer for each specific topic.

  • 12/09/2012: Fuzzy Logic (4h by Andrea Bonarini)
  • 14/09/2012: Fuzzy Logic (4h by Andrea Bonarini)
  • 17/09/2012: Feed Forwards Neural Networks (4h by Matteo Matteucci)
  • 19/09/2012: Feed Forwards Neural Networks (4h by Matteo Matteucci)
  • 21/09/2012: Genetic Algorithms (4h by Andrea Bonarini)
  • 24/09/2012: Bayesian Networks (4h by Matteo Matteucci)
  • 26/09/2012: Estimation of Distribution Algorithms (4h by Matteo Matteucci)
  • 28/09/2012: Reinforcement Learning (4h by Andrea Bonarini)

Course Material & Referencies

The following is some suggested material to follow the course lectures organized by topic.

Fuzzy Systems

T. Ross, Fuzzy Logic with Engineering Applications, Third Edition, Wiley, 2010 (in alternative, only for Italian Students: A. G. Pizzaleo. Fuzzy Logic: come insegneremo alle macchine a ragionare da uomini. Castelvecchi, Roma) B. Kosko. Il Fuzzy pensiero. Baldini e Castoldi. (In English: Fuzzy Thinking. Hyperion Press) A. Sangalli, The Importance of Being Fuzzy, Princeton University Press DEVELOPMENT TOOLS XFuzzy - a set of free tools to develop fuzzy systems FuzzyCLIPS - an extension of the NASA-developed CLIPS, a tool to implement AI systems Tools to develop Fuzzy systems are included in Matlab and many other modeling and applicative tools.

Neural Networks Collecton of resources about NN TUTORIALS Tutorial by Christos Stergiou and Dimitrios Siganos BOOKS C. Bishop, Neural Networks and Pattern Recognition, Oxford University Press, 1995 DEVELOPMENT TOOLS Tools to develop NN are included in many packages like Matlab and WEKA. A list of SW is available from http://www.makhfi.com/tools.htm

Genetic Algorithms Portal for GA The Illinois Genetic Algorithms Laboratory TUTORIALS Tutorial and demos by Marek Obitko BOOKS M. Mitchell. An Introduction to Genetic Algorithms. MIT Press. Reinforcement Learning Portal for RL Sutton's Lab at University of Alberta. BOOKS R. Sutton, A. G. Barto. Reinforcement Learning: an introduction. Addison-Wesley. (http://webdocs.cs.ualberta.ca/~sutton/book/the-book.html)


Slides and lecture notes

TBC

Suggested Bibliography

TBC

Libraries and Demos

TBC

Course Evaluation

TBC