CFP: Special Issue on Evolutionary Algorithms for Data Mining

Call for Papers: Special Issue on Evolutionary Algorithms for Data MiningJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kon…

Call for Papers: Special Issue on Evolutionary Algorithms for Data Mining
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kong
Editor-in-Chief: Lee Spector, Hampshire College
The corporate and scientific communities are overwhelmed with an influx of data that is stored in on-line databases. Analyzing these data and extracting meaningful information in a timely fashion is intractable without computer assistance and powerful analytical tools. Data Mining is defined as the non-trivial process of identifying valid, novel, potentially useful, and ultimately understandable patterns in data stored in databases (Fayyad et al. 1996). It is an active research area with promise for high payoffs in many business and scientific applications including direct marketing, trend analysis, fraud detection, stock price forecasting, option trading, bond rating, portfolio management, shopping patterns analysis, and medical diagnosis (Simoudis et al. 1996, Groth 1998).
The future of scientific computing is parallel and Artificial Evolution is inherently parallel. Therefore, all the recent successes in Data Mining obtained using Genetic Programming, Genetic Algorithms, Evolutionary Programming, Evolution Strategies, etc. bear a great potential. The grand challenge of using Evolutionary Algorithms for Data Mining is to automatically process large quantities of raw incomplete data with noisy information, identify the most significant and meaningful information/knowledge and present it for achieving the user’s goals.
The aim of this special issue is to provide authors with a possibility to publish their work in a renowned journal and the reader with an understanding of the grand challenge, novel approaches in tackling the grand challenge, and some real-life applications, be they already parallelized or not.
We encourage submission of high quality papers (original work that has neither appeared in, nor is under consideration by, other journals), both theoretical and empirical, discussing novel Evolutionary Algorithms for Data Mining. Practical papers that describe successful applications of Evolutionary Algorithms for challenging real-life data mining problems are also sought. Subjects will include (but are not limited to):
– Parallel evolutionary algorithms for data mining
– Data mining from incomplete, imprecise, noisy, imbalanced, and huge databases
– Evolutionary algorithms for cost-sensitive data mining
– Evolutionary ensemble techniques for data mining
– Evolutionary algorithms for supervised and unsupervised classification of data
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.
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evol. Algorithms for Data Mining” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Guest Editors:
Pierre Collet, Université de Strasbourg, France; pierre.collet@unistra.fr
Man Leung Wong, Lingnan University, Hong Kong. mlwong@ln.edu.hk
== Important Dates:
Paper submission deadline: Dec 15, 2010
First Notification: March 15, 2011
Final manuscript: April 30, 2011
== References:
Fayyad, U. M., Piatetsky-Shapiro, G., and Smyth, P. (1996). From Data Mining to Knowledge Discovery: An Overview. In U. M. Fayyad, G. Piatetsky-Shapiro, P. Smyth, and R. Uthurusamy (eds.), Advances in Knowledge Discovery in Data Mining, pp. 1-34. Menlo Park, CA: AAAI Press.
Groth, R. (1998). Data Mining: A Hands-On Approach for Business Professionals. Upper Saddle River NJ: Prentice Hall.
Simoudis, E., Han, J., and Fayyd, U. (1996). Proceedings of the Second International Conference on Knowledge Discovery and Data Mining. Menlo Park CA: AAAI Press.

CFP: Special Issue on Evolutionary Algorithms for Data Mining

Call for Papers: Special Issue on Evolutionary Algorithms for Data MiningJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kon…

Call for Papers: Special Issue on Evolutionary Algorithms for Data Mining
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kong
Editor-in-Chief: Lee Spector, Hampshire College
The corporate and scientific communities are overwhelmed with an influx of data that is stored in on-line databases. Analyzing these data and extracting meaningful information in a timely fashion is intractable without computer assistance and powerful analytical tools. Data Mining is defined as the non-trivial process of identifying valid, novel, potentially useful, and ultimately understandable patterns in data stored in databases (Fayyad et al. 1996). It is an active research area with promise for high payoffs in many business and scientific applications including direct marketing, trend analysis, fraud detection, stock price forecasting, option trading, bond rating, portfolio management, shopping patterns analysis, and medical diagnosis (Simoudis et al. 1996, Groth 1998).
The future of scientific computing is parallel and Artificial Evolution is inherently parallel. Therefore, all the recent successes in Data Mining obtained using Genetic Programming, Genetic Algorithms, Evolutionary Programming, Evolution Strategies, etc. bear a great potential. The grand challenge of using Evolutionary Algorithms for Data Mining is to automatically process large quantities of raw incomplete data with noisy information, identify the most significant and meaningful information/knowledge and present it for achieving the user’s goals.
The aim of this special issue is to provide authors with a possibility to publish their work in a renowned journal and the reader with an understanding of the grand challenge, novel approaches in tackling the grand challenge, and some real-life applications, be they already parallelized or not.
We encourage submission of high quality papers (original work that has neither appeared in, nor is under consideration by, other journals), both theoretical and empirical, discussing novel Evolutionary Algorithms for Data Mining. Practical papers that describe successful applications of Evolutionary Algorithms for challenging real-life data mining problems are also sought. Subjects will include (but are not limited to):
– Parallel evolutionary algorithms for data mining
– Data mining from incomplete, imprecise, noisy, imbalanced, and huge databases
– Evolutionary algorithms for cost-sensitive data mining
– Evolutionary ensemble techniques for data mining
– Evolutionary algorithms for supervised and unsupervised classification of data
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.
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evol. Algorithms for Data Mining” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Guest Editors:
Pierre Collet, Université de Strasbourg, France; pierre.collet@unistra.fr
Man Leung Wong, Lingnan University, Hong Kong. mlwong@ln.edu.hk
== Important Dates:
Paper submission deadline: Dec 15, 2010
First Notification: March 15, 2011
Final manuscript: April 30, 2011
== References:
Fayyad, U. M., Piatetsky-Shapiro, G., and Smyth, P. (1996). From Data Mining to Knowledge Discovery: An Overview. In U. M. Fayyad, G. Piatetsky-Shapiro, P. Smyth, and R. Uthurusamy (eds.), Advances in Knowledge Discovery in Data Mining, pp. 1-34. Menlo Park, CA: AAAI Press.
Groth, R. (1998). Data Mining: A Hands-On Approach for Business Professionals. Upper Saddle River NJ: Prentice Hall.
Simoudis, E., Han, J., and Fayyd, U. (1996). Proceedings of the Second International Conference on Knowledge Discovery and Data Mining. Menlo Park CA: AAAI Press.

CFP: Special Issue on Evolutionary Algorithms for Data Mining

Call for Papers: Special Issue on Evolutionary Algorithms for Data MiningJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kon…

Call for Papers: Special Issue on Evolutionary Algorithms for Data Mining
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kong
Editor-in-Chief: Lee Spector, Hampshire College
The corporate and scientific communities are overwhelmed with an influx of data that is stored in on-line databases. Analyzing these data and extracting meaningful information in a timely fashion is intractable without computer assistance and powerful analytical tools. Data Mining is defined as the non-trivial process of identifying valid, novel, potentially useful, and ultimately understandable patterns in data stored in databases (Fayyad et al. 1996). It is an active research area with promise for high payoffs in many business and scientific applications including direct marketing, trend analysis, fraud detection, stock price forecasting, option trading, bond rating, portfolio management, shopping patterns analysis, and medical diagnosis (Simoudis et al. 1996, Groth 1998).
The future of scientific computing is parallel and Artificial Evolution is inherently parallel. Therefore, all the recent successes in Data Mining obtained using Genetic Programming, Genetic Algorithms, Evolutionary Programming, Evolution Strategies, etc. bear a great potential. The grand challenge of using Evolutionary Algorithms for Data Mining is to automatically process large quantities of raw incomplete data with noisy information, identify the most significant and meaningful information/knowledge and present it for achieving the user’s goals.
The aim of this special issue is to provide authors with a possibility to publish their work in a renowned journal and the reader with an understanding of the grand challenge, novel approaches in tackling the grand challenge, and some real-life applications, be they already parallelized or not.
We encourage submission of high quality papers (original work that has neither appeared in, nor is under consideration by, other journals), both theoretical and empirical, discussing novel Evolutionary Algorithms for Data Mining. Practical papers that describe successful applications of Evolutionary Algorithms for challenging real-life data mining problems are also sought. Subjects will include (but are not limited to):
– Parallel evolutionary algorithms for data mining
– Data mining from incomplete, imprecise, noisy, imbalanced, and huge databases
– Evolutionary algorithms for cost-sensitive data mining
– Evolutionary ensemble techniques for data mining
– Evolutionary algorithms for supervised and unsupervised classification of data
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.
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evol. Algorithms for Data Mining” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Guest Editors:
Pierre Collet, Université de Strasbourg, France; pierre.collet@unistra.fr
Man Leung Wong, Lingnan University, Hong Kong. mlwong@ln.edu.hk
== Important Dates:
Paper submission deadline: Dec 15, 2010
First Notification: March 15, 2011
Final manuscript: April 30, 2011
== References:
Fayyad, U. M., Piatetsky-Shapiro, G., and Smyth, P. (1996). From Data Mining to Knowledge Discovery: An Overview. In U. M. Fayyad, G. Piatetsky-Shapiro, P. Smyth, and R. Uthurusamy (eds.), Advances in Knowledge Discovery in Data Mining, pp. 1-34. Menlo Park, CA: AAAI Press.
Groth, R. (1998). Data Mining: A Hands-On Approach for Business Professionals. Upper Saddle River NJ: Prentice Hall.
Simoudis, E., Han, J., and Fayyd, U. (1996). Proceedings of the Second International Conference on Knowledge Discovery and Data Mining. Menlo Park CA: AAAI Press.

CFP: Special Issue on Evolutionary Algorithms for Data Mining

Call for Papers: Special Issue on Evolutionary Algorithms for Data MiningJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kon…

Call for Papers: Special Issue on Evolutionary Algorithms for Data Mining
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kong
Editor-in-Chief: Lee Spector, Hampshire College
The corporate and scientific communities are overwhelmed with an influx of data that is stored in on-line databases. Analyzing these data and extracting meaningful information in a timely fashion is intractable without computer assistance and powerful analytical tools. Data Mining is defined as the non-trivial process of identifying valid, novel, potentially useful, and ultimately understandable patterns in data stored in databases (Fayyad et al. 1996). It is an active research area with promise for high payoffs in many business and scientific applications including direct marketing, trend analysis, fraud detection, stock price forecasting, option trading, bond rating, portfolio management, shopping patterns analysis, and medical diagnosis (Simoudis et al. 1996, Groth 1998).
The future of scientific computing is parallel and Artificial Evolution is inherently parallel. Therefore, all the recent successes in Data Mining obtained using Genetic Programming, Genetic Algorithms, Evolutionary Programming, Evolution Strategies, etc. bear a great potential. The grand challenge of using Evolutionary Algorithms for Data Mining is to automatically process large quantities of raw incomplete data with noisy information, identify the most significant and meaningful information/knowledge and present it for achieving the user’s goals.
The aim of this special issue is to provide authors with a possibility to publish their work in a renowned journal and the reader with an understanding of the grand challenge, novel approaches in tackling the grand challenge, and some real-life applications, be they already parallelized or not.
We encourage submission of high quality papers (original work that has neither appeared in, nor is under consideration by, other journals), both theoretical and empirical, discussing novel Evolutionary Algorithms for Data Mining. Practical papers that describe successful applications of Evolutionary Algorithms for challenging real-life data mining problems are also sought. Subjects will include (but are not limited to):
– Parallel evolutionary algorithms for data mining
– Data mining from incomplete, imprecise, noisy, imbalanced, and huge databases
– Evolutionary algorithms for cost-sensitive data mining
– Evolutionary ensemble techniques for data mining
– Evolutionary algorithms for supervised and unsupervised classification of data
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.
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evol. Algorithms for Data Mining” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Guest Editors:
Pierre Collet, Université de Strasbourg, France; pierre.collet@unistra.fr
Man Leung Wong, Lingnan University, Hong Kong. mlwong@ln.edu.hk
== Important Dates:
Paper submission deadline: Dec 15, 2010
First Notification: March 15, 2011
Final manuscript: April 30, 2011
== References:
Fayyad, U. M., Piatetsky-Shapiro, G., and Smyth, P. (1996). From Data Mining to Knowledge Discovery: An Overview. In U. M. Fayyad, G. Piatetsky-Shapiro, P. Smyth, and R. Uthurusamy (eds.), Advances in Knowledge Discovery in Data Mining, pp. 1-34. Menlo Park, CA: AAAI Press.
Groth, R. (1998). Data Mining: A Hands-On Approach for Business Professionals. Upper Saddle River NJ: Prentice Hall.
Simoudis, E., Han, J., and Fayyd, U. (1996). Proceedings of the Second International Conference on Knowledge Discovery and Data Mining. Menlo Park CA: AAAI Press.

CFP: Special Issue on Evolutionary Algorithms for Data Mining

Call for Papers: Special Issue on Evolutionary Algorithms for Data MiningJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kon…

Call for Papers: Special Issue on Evolutionary Algorithms for Data Mining
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kong
Editor-in-Chief: Lee Spector, Hampshire College
The corporate and scientific communities are overwhelmed with an influx of data that is stored in on-line databases. Analyzing these data and extracting meaningful information in a timely fashion is intractable without computer assistance and powerful analytical tools. Data Mining is defined as the non-trivial process of identifying valid, novel, potentially useful, and ultimately understandable patterns in data stored in databases (Fayyad et al. 1996). It is an active research area with promise for high payoffs in many business and scientific applications including direct marketing, trend analysis, fraud detection, stock price forecasting, option trading, bond rating, portfolio management, shopping patterns analysis, and medical diagnosis (Simoudis et al. 1996, Groth 1998).
The future of scientific computing is parallel and Artificial Evolution is inherently parallel. Therefore, all the recent successes in Data Mining obtained using Genetic Programming, Genetic Algorithms, Evolutionary Programming, Evolution Strategies, etc. bear a great potential. The grand challenge of using Evolutionary Algorithms for Data Mining is to automatically process large quantities of raw incomplete data with noisy information, identify the most significant and meaningful information/knowledge and present it for achieving the user’s goals.
The aim of this special issue is to provide authors with a possibility to publish their work in a renowned journal and the reader with an understanding of the grand challenge, novel approaches in tackling the grand challenge, and some real-life applications, be they already parallelized or not.
We encourage submission of high quality papers (original work that has neither appeared in, nor is under consideration by, other journals), both theoretical and empirical, discussing novel Evolutionary Algorithms for Data Mining. Practical papers that describe successful applications of Evolutionary Algorithms for challenging real-life data mining problems are also sought. Subjects will include (but are not limited to):
– Parallel evolutionary algorithms for data mining
– Data mining from incomplete, imprecise, noisy, imbalanced, and huge databases
– Evolutionary algorithms for cost-sensitive data mining
– Evolutionary ensemble techniques for data mining
– Evolutionary algorithms for supervised and unsupervised classification of data
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.
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evol. Algorithms for Data Mining” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Guest Editors:
Pierre Collet, Université de Strasbourg, France; pierre.collet@unistra.fr
Man Leung Wong, Lingnan University, Hong Kong. mlwong@ln.edu.hk
== Important Dates:
Paper submission deadline: Dec 15, 2010
First Notification: March 15, 2011
Final manuscript: April 30, 2011
== References:
Fayyad, U. M., Piatetsky-Shapiro, G., and Smyth, P. (1996). From Data Mining to Knowledge Discovery: An Overview. In U. M. Fayyad, G. Piatetsky-Shapiro, P. Smyth, and R. Uthurusamy (eds.), Advances in Knowledge Discovery in Data Mining, pp. 1-34. Menlo Park, CA: AAAI Press.
Groth, R. (1998). Data Mining: A Hands-On Approach for Business Professionals. Upper Saddle River NJ: Prentice Hall.
Simoudis, E., Han, J., and Fayyd, U. (1996). Proceedings of the Second International Conference on Knowledge Discovery and Data Mining. Menlo Park CA: AAAI Press.

CFP: Special Issue on Evolutionary Algorithms for Data Mining

Call for Papers: Special Issue on Evolutionary Algorithms for Data MiningJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kon…

Call for Papers: Special Issue on Evolutionary Algorithms for Data Mining
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kong
Editor-in-Chief: Lee Spector, Hampshire College
The corporate and scientific communities are overwhelmed with an influx of data that is stored in on-line databases. Analyzing these data and extracting meaningful information in a timely fashion is intractable without computer assistance and powerful analytical tools. Data Mining is defined as the non-trivial process of identifying valid, novel, potentially useful, and ultimately understandable patterns in data stored in databases (Fayyad et al. 1996). It is an active research area with promise for high payoffs in many business and scientific applications including direct marketing, trend analysis, fraud detection, stock price forecasting, option trading, bond rating, portfolio management, shopping patterns analysis, and medical diagnosis (Simoudis et al. 1996, Groth 1998).
The future of scientific computing is parallel and Artificial Evolution is inherently parallel. Therefore, all the recent successes in Data Mining obtained using Genetic Programming, Genetic Algorithms, Evolutionary Programming, Evolution Strategies, etc. bear a great potential. The grand challenge of using Evolutionary Algorithms for Data Mining is to automatically process large quantities of raw incomplete data with noisy information, identify the most significant and meaningful information/knowledge and present it for achieving the user’s goals.
The aim of this special issue is to provide authors with a possibility to publish their work in a renowned journal and the reader with an understanding of the grand challenge, novel approaches in tackling the grand challenge, and some real-life applications, be they already parallelized or not.
We encourage submission of high quality papers (original work that has neither appeared in, nor is under consideration by, other journals), both theoretical and empirical, discussing novel Evolutionary Algorithms for Data Mining. Practical papers that describe successful applications of Evolutionary Algorithms for challenging real-life data mining problems are also sought. Subjects will include (but are not limited to):
– Parallel evolutionary algorithms for data mining
– Data mining from incomplete, imprecise, noisy, imbalanced, and huge databases
– Evolutionary algorithms for cost-sensitive data mining
– Evolutionary ensemble techniques for data mining
– Evolutionary algorithms for supervised and unsupervised classification of data
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.
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evol. Algorithms for Data Mining” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Guest Editors:
Pierre Collet, Université de Strasbourg, France; pierre.collet@unistra.fr
Man Leung Wong, Lingnan University, Hong Kong. mlwong@ln.edu.hk
== Important Dates:
Paper submission deadline: Dec 15, 2010
First Notification: March 15, 2011
Final manuscript: April 30, 2011
== References:
Fayyad, U. M., Piatetsky-Shapiro, G., and Smyth, P. (1996). From Data Mining to Knowledge Discovery: An Overview. In U. M. Fayyad, G. Piatetsky-Shapiro, P. Smyth, and R. Uthurusamy (eds.), Advances in Knowledge Discovery in Data Mining, pp. 1-34. Menlo Park, CA: AAAI Press.
Groth, R. (1998). Data Mining: A Hands-On Approach for Business Professionals. Upper Saddle River NJ: Prentice Hall.
Simoudis, E., Han, J., and Fayyd, U. (1996). Proceedings of the Second International Conference on Knowledge Discovery and Data Mining. Menlo Park CA: AAAI Press.

CFP: Special Issue on Evolutionary Algorithms for Data Mining

Call for Papers: Special Issue on Evolutionary Algorithms for Data MiningJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kon…

Call for Papers: Special Issue on Evolutionary Algorithms for Data Mining
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editors: Pierre Collet, Université de Strasbourg, France; Man Leung Wong, Lingnan University, Hong Kong
Editor-in-Chief: Lee Spector, Hampshire College
The corporate and scientific communities are overwhelmed with an influx of data that is stored in on-line databases. Analyzing these data and extracting meaningful information in a timely fashion is intractable without computer assistance and powerful analytical tools. Data Mining is defined as the non-trivial process of identifying valid, novel, potentially useful, and ultimately understandable patterns in data stored in databases (Fayyad et al. 1996). It is an active research area with promise for high payoffs in many business and scientific applications including direct marketing, trend analysis, fraud detection, stock price forecasting, option trading, bond rating, portfolio management, shopping patterns analysis, and medical diagnosis (Simoudis et al. 1996, Groth 1998).
The future of scientific computing is parallel and Artificial Evolution is inherently parallel. Therefore, all the recent successes in Data Mining obtained using Genetic Programming, Genetic Algorithms, Evolutionary Programming, Evolution Strategies, etc. bear a great potential. The grand challenge of using Evolutionary Algorithms for Data Mining is to automatically process large quantities of raw incomplete data with noisy information, identify the most significant and meaningful information/knowledge and present it for achieving the user’s goals.
The aim of this special issue is to provide authors with a possibility to publish their work in a renowned journal and the reader with an understanding of the grand challenge, novel approaches in tackling the grand challenge, and some real-life applications, be they already parallelized or not.
We encourage submission of high quality papers (original work that has neither appeared in, nor is under consideration by, other journals), both theoretical and empirical, discussing novel Evolutionary Algorithms for Data Mining. Practical papers that describe successful applications of Evolutionary Algorithms for challenging real-life data mining problems are also sought. Subjects will include (but are not limited to):
– Parallel evolutionary algorithms for data mining
– Data mining from incomplete, imprecise, noisy, imbalanced, and huge databases
– Evolutionary algorithms for cost-sensitive data mining
– Evolutionary ensemble techniques for data mining
– Evolutionary algorithms for supervised and unsupervised classification of data
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.
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evol. Algorithms for Data Mining” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Guest Editors:
Pierre Collet, Université de Strasbourg, France; pierre.collet@unistra.fr
Man Leung Wong, Lingnan University, Hong Kong. mlwong@ln.edu.hk
== Important Dates:
Paper submission deadline: Dec 15, 2010
First Notification: March 15, 2011
Final manuscript: April 30, 2011
== References:
Fayyad, U. M., Piatetsky-Shapiro, G., and Smyth, P. (1996). From Data Mining to Knowledge Discovery: An Overview. In U. M. Fayyad, G. Piatetsky-Shapiro, P. Smyth, and R. Uthurusamy (eds.), Advances in Knowledge Discovery in Data Mining, pp. 1-34. Menlo Park, CA: AAAI Press.
Groth, R. (1998). Data Mining: A Hands-On Approach for Business Professionals. Upper Saddle River NJ: Prentice Hall.
Simoudis, E., Han, J., and Fayyd, U. (1996). Proceedings of the Second International Conference on Knowledge Discovery and Data Mining. Menlo Park CA: AAAI Press.

CFP: Special Issue on Evolvable Hardware Challenges

Call for Papers: Special Issue on Evolvable Hardware ChallengesJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editor: Pauline C. Haddow, Norwegian Univ. of Science and TechnologyEditor-in-Chief: Lee Spector, Hampshire Colle…

Call for Papers: Special Issue on Evolvable Hardware Challenges
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editor: Pauline C. Haddow, Norwegian Univ. of Science and Technology
Editor-in-Chief: Lee Spector, Hampshire College
Evolvable Hardware, the application of evolutionary techniques as hardware design techniques, is still in its infancy despite a 15 year lifespan. After the initial excitement in the late 1990s there have been many successes but perhaps not at the rate or to the extent of the original expectations. There are many challenges inherent in Evolvable Hardware that are currently being addressed or need to be addressed so as to unlock the true potential of the field. Such work, together with research on real world applications, will lead to a clearer definition of the field and thus pave a future path for Evolvable Hardware. The aim of this special issue is to provide the reader with contributions that we feel provide strong contributions towards this goal.
Two articles by leading researchers have already been commissioned:
– The Evolution of Standard Cell Libraries for Future Technology Nodes
James Walker, James Hilder & Andy Tyrrell
– An Evolved Anti-Jamming Antenna Beamforming Network
Jason Lohn, Derek Linden & Jonathan Becker
== Open submissions
We encourage submission of high quality papers, both theoretical and practical, describing newer approaches that address key challenges facing Evolvable Hardware today. Application papers that illustrate that Evolvable Hardware can achieve results that are challenging for today’s more traditional hardware design techniques are also sought. In addition, we are interested in contributions that address the computational design challenge in tomorrow’s technologies through the application of bio-inspired techniques. Subjects will include (but are not limited to):
– Evolvable hardware design
– Adaptive hardware
– Evolutionary robotics
– Formal models of bio-inspired hardware
– Generative and developmental approaches
– Real-world applications of evolvable hardware
– Bio-inspired computation on future technology
We encourage all prospective authors to contact the guest editor, at the address below, as early as possible to indicate your intention to submit a paper to this special issue.
Guest Editor:
Pauline C. Haddow pauline@idi.ntnu.no
Dept. of Computer and Information Science
The Norwegian University of Science and Technology
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evolvable Hardware” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Important Dates:
Paper submission deadline: Sept, 1, 2010
Notification of acceptance: Oct 8, 2010
Final manuscript: Oct 29, 2010

CFP: Special Issue on Evolvable Hardware Challenges

Call for Papers: Special Issue on Evolvable Hardware ChallengesJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editor: Pauline C. Haddow, Norwegian Univ. of Science and TechnologyEditor-in-Chief: Lee Spector, Hampshire Colle…

Call for Papers: Special Issue on Evolvable Hardware Challenges
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editor: Pauline C. Haddow, Norwegian Univ. of Science and Technology
Editor-in-Chief: Lee Spector, Hampshire College
Evolvable Hardware, the application of evolutionary techniques as hardware design techniques, is still in its infancy despite a 15 year lifespan. After the initial excitement in the late 1990s there have been many successes but perhaps not at the rate or to the extent of the original expectations. There are many challenges inherent in Evolvable Hardware that are currently being addressed or need to be addressed so as to unlock the true potential of the field. Such work, together with research on real world applications, will lead to a clearer definition of the field and thus pave a future path for Evolvable Hardware. The aim of this special issue is to provide the reader with contributions that we feel provide strong contributions towards this goal.
Two articles by leading researchers have already been commissioned:
– The Evolution of Standard Cell Libraries for Future Technology Nodes
James Walker, James Hilder & Andy Tyrrell
– An Evolved Anti-Jamming Antenna Beamforming Network
Jason Lohn, Derek Linden & Jonathan Becker
== Open submissions
We encourage submission of high quality papers, both theoretical and practical, describing newer approaches that address key challenges facing Evolvable Hardware today. Application papers that illustrate that Evolvable Hardware can achieve results that are challenging for today’s more traditional hardware design techniques are also sought. In addition, we are interested in contributions that address the computational design challenge in tomorrow’s technologies through the application of bio-inspired techniques. Subjects will include (but are not limited to):
– Evolvable hardware design
– Adaptive hardware
– Evolutionary robotics
– Formal models of bio-inspired hardware
– Generative and developmental approaches
– Real-world applications of evolvable hardware
– Bio-inspired computation on future technology
We encourage all prospective authors to contact the guest editor, at the address below, as early as possible to indicate your intention to submit a paper to this special issue.
Guest Editor:
Pauline C. Haddow pauline@idi.ntnu.no
Dept. of Computer and Information Science
The Norwegian University of Science and Technology
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evolvable Hardware” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Important Dates:
Paper submission deadline: Sept, 1, 2010
Notification of acceptance: Oct 8, 2010
Final manuscript: Oct 29, 2010

CFP: Special Issue on Evolvable Hardware Challenges

Call for Papers: Special Issue on Evolvable Hardware ChallengesJournal: Genetic Programming and Evolvable Machines (pub. by Springer)Guest Editor: Pauline C. Haddow, Norwegian Univ. of Science and TechnologyEditor-in-Chief: Lee Spector, Hampshire Colle…

Call for Papers: Special Issue on Evolvable Hardware Challenges
Journal: Genetic Programming and Evolvable Machines (pub. by Springer)
Guest Editor: Pauline C. Haddow, Norwegian Univ. of Science and Technology
Editor-in-Chief: Lee Spector, Hampshire College
Evolvable Hardware, the application of evolutionary techniques as hardware design techniques, is still in its infancy despite a 15 year lifespan. After the initial excitement in the late 1990s there have been many successes but perhaps not at the rate or to the extent of the original expectations. There are many challenges inherent in Evolvable Hardware that are currently being addressed or need to be addressed so as to unlock the true potential of the field. Such work, together with research on real world applications, will lead to a clearer definition of the field and thus pave a future path for Evolvable Hardware. The aim of this special issue is to provide the reader with contributions that we feel provide strong contributions towards this goal.
Two articles by leading researchers have already been commissioned:
– The Evolution of Standard Cell Libraries for Future Technology Nodes
James Walker, James Hilder & Andy Tyrrell
– An Evolved Anti-Jamming Antenna Beamforming Network
Jason Lohn, Derek Linden & Jonathan Becker
== Open submissions
We encourage submission of high quality papers, both theoretical and practical, describing newer approaches that address key challenges facing Evolvable Hardware today. Application papers that illustrate that Evolvable Hardware can achieve results that are challenging for today’s more traditional hardware design techniques are also sought. In addition, we are interested in contributions that address the computational design challenge in tomorrow’s technologies through the application of bio-inspired techniques. Subjects will include (but are not limited to):
– Evolvable hardware design
– Adaptive hardware
– Evolutionary robotics
– Formal models of bio-inspired hardware
– Generative and developmental approaches
– Real-world applications of evolvable hardware
– Bio-inspired computation on future technology
We encourage all prospective authors to contact the guest editor, at the address below, as early as possible to indicate your intention to submit a paper to this special issue.
Guest Editor:
Pauline C. Haddow pauline@idi.ntnu.no
Dept. of Computer and Information Science
The Norwegian University of Science and Technology
Authors are encouraged to submit high-quality, original work that has neither appeared in, nor is under consideration by, other journals.
Manuscripts should be submitted to: http://GENP.edmgr.com. Choose “Evolvable Hardware” as the article type when submitting.
Springer offers authors, editors and reviewers of Genetic Programming and Evolvable Machines a web-enabled online manuscript submission and review system. Our online system offers authors the ability to track the review process of their manuscript with straightforward log-in and submission procedures, and it supports a wide range of submission file formats.
== Important Dates:
Paper submission deadline: Sept, 1, 2010
Notification of acceptance: Oct 8, 2010
Final manuscript: Oct 29, 2010