Genetic Programming: 8th European Conference, EuroGP 2005, Lausanne, Switzerland, March 30-April 1, 2005, ProceedingsMaarten Keijzer In this volume we present the contributions for the 18th European Conference on Genetic Programming (EuroGP 2005). The conference took place from 30 March to 1 April in Lausanne, Switzerland. EuroGP is a well-established conf- ence and the only one exclusively devoted to genetic programming. All previous proceedings were published by Springer in the LNCS series. From the outset, EuroGP has been co-located with the EvoWorkshops focusing on applications of evolutionary computation. Since 2004, EvoCOP, the conference on evolutionary combinatorial optimization, has also been co-located with EuroGP, making this year’s combined events one of the largest dedicated to evolutionary computation in Europe. Genetic programming (GP) is evolutionary computation that solves complex problems or tasks by evolving and adapting a population of computer programs, using Darwinian evolution and Mendelian genetics as its sources of inspiration. Some of the 34 papers included in these proceedings address foundational and theoretical issues and there is also a wide variety of papers dealing with di?erent application areas, such as computer science, engineering, language processing, biology and computational design, demonstrating that GP is a powerful and practical problem-solving paradigm. |
Contents
Talks | 1 |
Automated Reinvention of a Previously Patented Optical Lens System | 25 |
Bayesian Automatic Programming | 38 |
Evolution of Robot Controller Using Cartesian Genetic Programming | 62 |
Evolving Rules for Document Classification | 85 |
Genetic Transposition in TreeAdjoining Grammar Guided Genetic | 108 |
Using Genetic Programming to Evolve Backgammon | 132 |
Incorporating Learning Probabilistic ContextSensitive Grammar | 155 |
Evolve Schema Directly Using Instruction Matrix Based Genetic | 271 |
Evolving Defence Strategies by Genetic Programming | 281 |
Extending Particle Swarm Optimisation via Genetic Programming | 291 |
Inducing Diverse Decision Forests with Genetic Programing | 301 |
The metaGrammar Genetic Algorithm | 311 |
On Prediction of Epileptic Seizures by Computing Multiple Genetic | 321 |
Relative Fitness and Absolute Fitness for Coevolutionary Systems | 331 |
Teams of Genetic Predictors for Inverse Problem Solving | 341 |
Subtree Crossover | 178 |
Tarpeian Bloat Control and Generalization Accuracy | 203 |
Using Genetic Programming for Multiclass Classification | 227 |
Posters | 240 |
Evolution of Vertex and Pixel Shaders | 261 |
Understanding Evolved Genetic Programs for a Real World Object | 351 |
Undirected Training of Run Transferable Libraries | 361 |
Studies in the Evolution of Language | 371 |
381 | |
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