
Simulated Evolution and Learning
8th International Conference, SEAL 2010, Kanpur, India, December 1-4, 2010, Proceedings
Springer (Verlag)
Erschienen am 16. November 2010
Buch
Softcover
XVII, 719 Seiten
978-3-642-17297-7 (ISBN)
Beschreibung
ThisLNCSvolumecontainsthepaperspresentedatthe8thSimulatedEvolution and Learning (SEAL 2010) Conference held during December 1-4, 2010 at the Indian Institute of Technology Kanpur in India. SEAL is a prestigious inter- tional conference series in evolutionaryoptimization and machine learning. This biennial event started in Seoul, South Korea in 1996 and was thereafter held in Canberra, Australia in 1998, Nagoya, Japan in 2000, Singapore in 2002, Busan, South Korea in 2004,Hefei, China in 2006and Melbourne, Australia in 2008. SEAL 2010 received 141 paper submissions in total from 30 countries. After a rigorous peer-review process involving 431 reviews in total (averaging a little morethan3reviewsperpaper),60full-lengthand19shortpaperswereaccepted for presentation (both oral and poster) at the conference. The full-length papers alonecorrespondtoa42. 6%acceptancerateandshortpapersaddanother13. 5%. ThepapersincludedinthisLNCSvolumecoverawiderangeoftopicsinsi- latedevolutionandlearning. Theacceptedpapershavebeenclassi?edintothef- lowingmaincategories:(a)theoreticaldevelopments,(b)evolutionaryalgorithms andapplications,(c)learningmethodologies,(d)multi-objectiveevolutionary- gorithms and applications,(e) hybrid algorithms and (f) industrial applications.
The conference featured three distinguished keynote speakers. Narendra Karmarkar's talk on "Beyond Convexity: New Perspectives in Computational Optimization" focused on providing new theoretical concepts for non-convex optimization and indicated a rich connection between optimization and ma- ematical physics and also showed a deep signi?cance of advanced geometry to optimization. The advancement of optimization theory for non-convex problems is bene?cial for meta-heuristic optimization algorithms such as evolutionary - gorithms. Manindra Agrawal's talk on "PRIMES is in P" provided a mu- improved version of his celebrated and ground-breaking 2002 work on poly- mial time algorithm for testing prime numbers. The theoretical computation work presented in this keynote lecture should be motivating for the evolutionary optimization and machine learning community at large.
The conference featured three distinguished keynote speakers. Narendra Karmarkar's talk on "Beyond Convexity: New Perspectives in Computational Optimization" focused on providing new theoretical concepts for non-convex optimization and indicated a rich connection between optimization and ma- ematical physics and also showed a deep signi?cance of advanced geometry to optimization. The advancement of optimization theory for non-convex problems is bene?cial for meta-heuristic optimization algorithms such as evolutionary - gorithms. Manindra Agrawal's talk on "PRIMES is in P" provided a mu- improved version of his celebrated and ground-breaking 2002 work on poly- mial time algorithm for testing prime numbers. The theoretical computation work presented in this keynote lecture should be motivating for the evolutionary optimization and machine learning community at large.
Weitere Details
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Auflage
2010 ed.
Sprache
Englisch
Verlagsort
Berlin
Deutschland
Verlagsgruppe
Springer Berlin
Zielgruppe
Für Beruf und Forschung
Research
Illustrationen
173 s/w Abbildungen
XVII, 719 p. 173 illus.
Maße
Höhe: 0 mm
Breite: 0 mm
Gewicht
1100 gr
ISBN-13
978-3-642-17297-7 (9783642172977)
DOI
10.1007/978-3-642-17298-4
Schweitzer Klassifikation
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Andere Ausgaben

Kalyanmoy Deb | Arnab Bhattacharya | Nirupam Chakraborti
Simulated Evolution and Learning
8th International Conference, SEAL 2010, Kanpur, India, December 1-4, 2010, Proceedings
E-Book
11/2010
Springer
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Inhalt
Invited Paper.- Theoretical Developments.- Evolutionary Algorithms and Applications.- Learning Methodologies.- Multi-Objective Evolutionary Algorithms and Applications.- Hybrid Algorithms.- Industrial Applications.