About the GPEMjournal blog

This is the editor's blog for the journal Genetic Programming and Evolvable Machines. The official web site for the journal, maintained by the publisher (Springer) is here. The GPEMjournal blog is authored and maintained by Lee Spector.

Thursday, February 24, 2011

CFP: Special Issue on Systems Identification

Guest Editors:

Steven Gustafson
GE Global Research, USA
steven D0T gustafson AT research D0T ge D0T com

Una-May O’Reilly
MIT, USA
unamay AT csail D0T mit D0T edu

Genetic programming is a valuable tool for reverse engineering data. Solutions found by Genetic Programming are in the form of algorithms that can be inspected, model checked, verified, and optimized. While this is possible with other classification methods, the intuitive representations GP employs makes it amenable to systems identification, defined here as: 

Systems Identification: the process of exploring and identifying the variables, coefficients, and
model forms that best or most efficiently represent a system.

A recent example of GP for systems identification can be found in Schmidt and Lipson’s 2009 Science article “Distilling Free-form Natural Laws from Experimental Data” (Schmidt and Lipson 2009). Similarly, scientists at Dow Chemical, University of Antwerp, and Evolved Analytics LLC, have developed flexible and robust GP systems that provide key statistics and visualizations during the evolutionary process to guide the human user (Kotanchek, Vladislavleva, and Smits 2009). In this Special Issue, we would like to bring a focus on this unique but extremely valuable application of GP for Systems Identification. Topics of interest include:

• GP approaches to learn laws of various systems, e.g. biological, mechanical and artificial.

• GP approaches to uncover nonlinear relationships between variables in complex systems

• Scalable GP systems that can handle one or more orders of magnitude more than typical systems to enable more real-world Systems Identification, e.g. financial anomaly detection.

• GP systems that provide an improved understanding of the solutions, from variable interaction to improved confidence bounding, e.g. providing statistics of similar to modern packages like Minitab, Matlab, R.

• Approaches that move GP closer to systems like CART as a way to explore variables, relationships, and data, where users can quickly inspect solutions and modify the system to improve performance and capability.

We encourage all prospective authors to contact the guest editors, at the address below, as early as possible, to indicate your intention to submit a paper to this special issue.

Submission Deadline: September 1, 2011

Acceptance Notification: November 15, 2011

Final Manuscript Deadline: January 15, 2012

References

Kotanchek, M. E., Vladislavleva, E. Y., and Smits, G. F. (2009). Symbolic Regression via GP
as a Discovery Engine: Insights on Outliers and Prototypes. In Riolo, R., O'Reilly, U.-M., and

McConaghy, T. Genetic Programming Theory and Practice VII, pp. 55-72, Springer.
http://www.springerlink.com/content/p508hr96008h61t5/

Schmidt, M., and Lipson, H. (2009). Distilling Free-Form Natural Laws from Experimental
Data. Science 324(5923) pp. 81 - 85.

Sunday, January 30, 2011

GPEM 12(1) now available online

The first issue of volume 12 of Genetic Programming and Evolvable Machines is now available online, with the following articles:

"Editorial introduction"
by Lee Spector

"Acknowledgement"
by Lee Spector

"Expert-driven genetic algorithms for simulating evaluation functions"
by Omid David-Tabibi, Moshe Koppel & Nathan S. Netanyahu

"Autonomous experimental design optimization of a flapping wing"
by Markus Olhofer, Dilyana Yankulova & Bernhard Sendhoff

"Redundancies in linear GP, canonical transformation, and its exploitation: a demonstration on image feature synthesis"
by Ukrit Watchareeruetai, Yoshinori Takeuchi, Tetsuya Matsumoto, Hiroaki Kudo & Noboru Ohnishi

Book Review: "Justin Lee: Morphogenetic Evolvable Hardware"
by Martin A. Trefzer

Book Review: "Gisele L. Pappa, Alex Freitas: Automating the design of data mining algorithms, an evolutionary computation approach"
by John Woodward

Book Review: "Arthur K. Kordon: Applying computational intelligence: how to create value"
by Guillermo Leguizamón

"Erratum to: Stochastic optimization of a biologically plausible spino-neuromuscular system model"
by Stanley Gotshall, Kathy Browder, Jessica Sampson, Terence Soule & Richard Wells

"Erratum to: Dario Floreano and Claudio Mattiussi: Bio-inspired artificial intelligence: theories, methods, and technologies"
by Ivan Garibay

Thursday, January 20, 2011

Friday, December 10, 2010

GECCO in Dublin, deadlines approaching

GECCO will be in Dublin in 2011, July 12-16. The main paper submission deadline is January 26, 2011. Full details (including track descriptions) are at: http://www.sigevo.org/gecco-2011/

Sunday, December 5, 2010

Deadline extended for Special Issue on Evolutionary Algorithms for Data Mining

The submission deadline for the Special Issue on Evolutionary Algorithms for Data Mining has been extended by 15 days. The new sunmission deadline is January 1st, 2011. The CFP (including the other dates) remains otherwise unchanged.

Friday, August 27, 2010

BibTex citations available from SpringerLink

With the new version of SpringerLink that runs the journal's website you can now get citations for articles in BibTex format, for easy inclusion in new articles prepared with LaTex. From the main page you can get to article listings through the search field or links such as Online First Articles or Current Issue. Then when you click on a particular article's title you'll get a page with the abstract and (among other things) an "EXPORT CITATION" link. Click that and then set the options as follows:

Export: Citation Only
Select Format: Plain Text
Select Citation Manager: BibTex

Then when you click "EXPORT CITATION" it will download a text file containing the citation in BibTex.

The other options should help those of you using other citation formats or citation managers, but since several people had specifically requested support for BibTex I'm quite happy to see that this is working.

Wednesday, July 28, 2010

David Goldberg wins EC Pioneer Award

Many congratulations to David Goldberg (Advisory Board Member of GPEM) who has been awarded the IEEE's Computational Intelligence Society Evolutionary Computation Pioneer Award at IEEE World Congress on Computational Intelligence in Barcelona last week.