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*[[Media:Altenberg_Lecture_1_4up.pdf | Lecture 1: Introduction to Evolutionary Computation]] (7 MB)
*[[Media:Altenberg_Lecture_1_4up.pdf | Lecture 1: Introduction to Evolutionary Computation]] (7 MB)


*[http://www.santafe.edu/~altenber/CSSS_BEIJING/2008/Analysis_2008_4up.pdf Lecture 2: Mathematical Analysis of Evolutionary Algorithms] (1 MB)
*[[Media:Altenberg_Lec2_08.pdf | Lecture 2: Mathematical Analysis of Evolutionary Algorithms]]


Pending uploading of my 2008 lecture notes, here are the lectures from the 2007 CSSS Beijing:
*[http://www.santafe.edu/~altenber/CSSS_BEIJING/2008/Lecture_3_4up.pdf Lecture 3: Higher Order Evolutionary Phenomena] (8MB)
*[http://www.santafe.edu/~altenber/CSSS_BEIJING/2007/Lecture_3.4up.pdf Lecture 3: Higher Order Evolutionary Phenomena] (9MB)


===Additional Reading===
===Additional Reading===
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* Evolutionary Art at [http://electricsheep.org/ Electric Sheep]
* Evolutionary Art at [http://electricsheep.org/ Electric Sheep]
== David Feldman ==
*[[Media:Feldman.research.slides-2x2.08.pdf | Thoughts on Research Topics, Questions, and Problems ]]
*[[Media:Feldman.presentation.slides-2x2.08.pdf | Tips and Advice for giving Effective Research Presentations ]]




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==Susanne Still==
==Susanne Still==


==Lecture Notes==
===Lecture Notes===


July 14. [[Media:Still_CSSS1.pdf | A brief introduction to uses of information theory in machine learning ]]
July 14. [[Media:Still_CSSS1.pdf | A brief introduction to uses of information theory in machine learning ]]
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July 15. [[Media:Still_CSSS2.pdf | Optimal Causal Inference ]]
July 15. [[Media:Still_CSSS2.pdf | Optimal Causal Inference ]]


==Additional reading==
===Additional reading===


You can find links to the following papers (and more) [http://www2.hawaii.edu/~sstill/ICS491S08.html here].
You can find links to the following papers (and more) [http://www2.hawaii.edu/~sstill/ICS491S08.html here].
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* N. Tishby, F. C. Pereira, & W. Bialek, “The information bottleneck method”, in Proceedings of the 37th Annual Allerton Conference on Communication, Control and Computing, B Hajek & RS Sreenivas, eds, pp 368-377 (University of Illinois, 1999)
* N. Tishby, F. C. Pereira, & W. Bialek, “The information bottleneck method”, in Proceedings of the 37th Annual Allerton Conference on Communication, Control and Computing, B Hajek & RS Sreenivas, eds, pp 368-377 (University of Illinois, 1999)


* Book: T. M. Cover and J. A. Thomas, "Elements of Information Theory", Wiley.
* Books:  
** [http://www.inference.phy.cam.ac.uk/mackay/itila/book.html D. MacKay, "Information Theory, Inference and Learning Algorithms"]
** T. M. Cover and J. A. Thomas, "Elements of Information Theory", Wiley.
 
Please visit [http://www2.hawaii.edu/~sstill/pubs.html my website] for my papers related to the material covered in the lectures:  
Please visit [http://www2.hawaii.edu/~sstill/pubs.html my website] for my papers related to the material covered in the lectures:  


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** pvalueology
** pvalueology
** Information theoretic methods
** Information theoretic methods
Slides for Chris's third lecture: [[Media:Wiggins_08.pdf | Inferring and Encoding Graph Partitions ]].  Also available [http://www.stanford.edu/group/mmds/slides2008/wiggins.pdf here].


=== Additional Reading ===
=== Additional Reading ===

Latest revision as of 13:51, 18 July 2008

CSSS 2008 Beijing


Lee Altenberg

Lecture Notes

Additional Reading

  • Altenberg, L. , 1994. The Schema Theorem and Price's Theorem delves into the claims about schema processing as the source of power in genetic algorithms, and recasts the Schema Theorem (Holland 1975) by using Price's Theorem (1970). It is shown that the Schema Theorem says nothing about a GA's power, but a modification with a different measurement function produces a theorem about evolvability that is a local measure of GA power. The concept of rugged landscapes is also deconstructed in terms of operator-defined distance.


David Feldman


(Samuel) Qing-Shan Jia

Lecture Notes

Additional Reading


Susanne Still

Lecture Notes

July 14. A brief introduction to uses of information theory in machine learning

July 15. Optimal Causal Inference

Additional reading

You can find links to the following papers (and more) here.

  • C. E. Shannon: A mathematical theory of communication, Bell System Technical Journal, vol. 27, pp. 379-423 and 623-656, July and October, 1948.
  • K. Rose, "Deterministic Annealing for Clustering, Compression, Classification, Regression, and Related Optimization Problems," Proceedings of the IEEE, vol. 80, pp. 2210-2239, November 1998.
  • N. Tishby, F. C. Pereira, & W. Bialek, “The information bottleneck method”, in Proceedings of the 37th Annual Allerton Conference on Communication, Control and Computing, B Hajek & RS Sreenivas, eds, pp 368-377 (University of Illinois, 1999)

Please visit my website for my papers related to the material covered in the lectures:

  • S. Still and W. Bialek. “How many clusters? An information theoretic perspective”. 2004
  • S. Still, W. Bialek and L. Bottou. “Geometric Clustering using the Information Bottleneck method”. 2004.
  • S. Still and J. P. Crutchfield. Structure or Noise? 2007.
  • S. Still, J. P. Crutchfield and C. J. Ellison. Optimal Causal Inference. 2007.
  • S. Still. Statistical Mechanics approach to interactive learning. 2007.

Chris Wiggins

Lecture Notes

  • Bayes
    • History
    • What he said
    • What he didn't say
  • Bayes rule in Dynamics
    • Random walks
      • Pollen grains
      • Wall street
    • Chemical kinetics
    • Polymer Physics
  • Bayes rule in Statistics
    • Why we fit
    • Regularization
    • Latent variables / Mixture modeling
    • Model selection the Bayesian way
    • Bayesian density estimation / unsupervised learning
  • Alternatives to Bayes
    • Cross validation
    • pvalueology
    • Information theoretic methods

Slides for Chris's third lecture: Inferring and Encoding Graph Partitions . Also available here.

Additional Reading