Oliver Kramer

A Brief Introduction to Continuous Evolutionary Optimization [Repost]  eBooks & eLearning

Posted by ChrisRedfield at April 3, 2014
A Brief Introduction to Continuous Evolutionary Optimization [Repost]

Oliver Kramer - A Brief Introduction to Continuous Evolutionary Optimization
Published: 2013-12-31 | ISBN: 3319034219 | PDF | 102 pages | 2 MB

Computational Intelligence: Eine Einführung (Repost)  eBooks & eLearning

Posted by step778 at Nov. 21, 2018
Computational Intelligence: Eine Einführung (Repost)

Oliver Kramer, "Computational Intelligence: Eine Einführung"
2009 | pages: 163 | ISBN: 3540797386 | PDF | 1,3 mb

Machine Learning for Evolution Strategies (Repost)  eBooks & eLearning

Posted by AvaxGenius at Nov. 18, 2018
Machine Learning for Evolution Strategies (Repost)

Machine Learning for Evolution Strategies by Oliver Kramer
English | PDF | 2016 | 120 Pages | ISBN : 331933381X | 5.57 MB

This book introduces numerous algorithmic hybridizations between both worlds that show how machine learning can improve and support evolution strategies. The set of methods comprises covariance matrix estimation, meta-modeling of fitness and constraint functions, dimensionality reduction for search and visualization of high-dimensional optimization processes, and clustering-based niching. After giving an introduction to evolution strategies and machine learning, the book builds the bridge between both worlds with an algorithmic and experimental perspective.

Dimensionality Reduction with Unsupervised Nearest Neighbors  eBooks & eLearning

Posted by ChrisRedfield at May 5, 2015
Dimensionality Reduction with Unsupervised Nearest Neighbors

Oliver Kramer - Dimensionality Reduction with Unsupervised Nearest Neighbors
Published: 2013-05-31 | ISBN: 3642386512, 3642386539 | PDF | 132 pages | 6 MB

A Brief Introduction to Continuous Evolutionary Optimization  eBooks & eLearning

Posted by arundhati at Jan. 22, 2014
A Brief Introduction to Continuous Evolutionary Optimization

Oliver Kramer, "A Brief Introduction to Continuous Evolutionary Optimization"
2014 | ISBN-10: 3319034219 | 102 pages | PDF | 2,8 MB

Self-Adaptive Heuristics for Evolutionary Computation  eBooks & eLearning

Posted by tot167 at Oct. 14, 2008
Self-Adaptive Heuristics for Evolutionary Computation

Oliver Kramer “Self-Adaptive Heuristics for Evolutionary Computation"
Springer | 2008-09-26 | ISBN: 3540692800 | 182 pages | PDF | 3,35 MB

Genetic Algorithm Essentials  eBooks & eLearning

Posted by AvaxGenius at April 2, 2022
Genetic Algorithm Essentials

Genetic Algorithm Essentials By Oliver Kramer
English | PDF | 2017 | 92 Pages | ISBN : 3319521551 | 2.3 MB

This book introduces readers to genetic algorithms (GAs) with an emphasis on making the concepts, algorithms, and applications discussed as easy to understand as possible. Further, it avoids a great deal of formalisms and thus opens the subject to a broader audience in comparison to manuscripts overloaded by notations and equations.

Computational Intelligence: Eine Einführung (repost)  eBooks & eLearning

Posted by tot167 at Nov. 16, 2010
Computational Intelligence: Eine Einführung (repost)

Oliver Kramer, "Computational Intelligence: Eine Einführung"
S…r | 2009 | ISBN: 3540797386 | 171 pages | PDF | 1,1 MB

Self-Adaptive Heuristics for Evolutionary Computation [Repost]  eBooks & eLearning

Posted by ChrisRedfield at Aug. 3, 2013
Self-Adaptive Heuristics for Evolutionary Computation [Repost]

Oliver Kramer - Self-Adaptive Heuristics for Evolutionary Computation
Published: 2008-08-19 | ISBN: 3540692800 | PDF | 182 pages | 4 MB

Genetic Algorithm Essentials  eBooks & eLearning

Posted by AvaxGenius at March 2, 2017
Genetic Algorithm Essentials

Genetic Algorithm Essentials By Oliver Kramer
English | EPUB | 2017 | 92 Pages | ISBN : 3319521551 | 1.02 MB

This book introduces readers to genetic algorithms (GAs) with an emphasis on making the concepts, algorithms, and applications discussed as easy to understand as possible. Further, it avoids a great deal of formalisms and thus opens the subject to a broader audience in comparison to manuscripts overloaded by notations and equations.