We study the scalability and efficiency of a GA that we developed earlier to solve the practical cartographic problem of labeling a map with point features. We argue that the special characteristics of our GA make that it fits in well with theoretical models predicting the optimal population size (the Gambler’s Ruin model) and the number of generations until convergence. We then verify these predictions experimentally. It turns out that our algorithm indeed performs according to the theory, leading to a scale-up for the total amount of computational effort that is linear in the problem size
A multi-agent system is divided into groups forming sub-populations of agents. These groups of agent...
Among the evolutionary methods, one that is quite prominent is genetic programming. In recent years,...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
We study the scalability and efficiency of a GA that we developed earlier to solve the practical car...
Map labeling is the cartographic problem of placing the names of features (for example cities or riv...
Genetic algorithms (GAs) are powerful combinatorial optimizers that are able to find close-to-optima...
The problem of placing labels on maps has been around for about twenty years and has proven to be a ...
Abstract. The population size of genetic algorithms (GAs) affects the quality of the solutions and t...
We show that biogeography-based optimization (BBO) is a generalization of a genetic algorithm with g...
A multi-population genetic algorithm (MPGA) is introduced to search for as many as possible of the l...
The graph-based Cartesian genetic programming system has an unusual genotype representation with a n...
Genetic algorithms provide an alternative to traditional optimization techniques by using directed r...
Abstract. Genetic algorithms are adaptive search techniques which have been used to learn high-perfo...
This thesis examines a conversion of a solution produced by geometric semantic genetic programming (...
Abstract—Generated realizations of random fields are used to quantify the natural variability of geo...
A multi-agent system is divided into groups forming sub-populations of agents. These groups of agent...
Among the evolutionary methods, one that is quite prominent is genetic programming. In recent years,...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...
We study the scalability and efficiency of a GA that we developed earlier to solve the practical car...
Map labeling is the cartographic problem of placing the names of features (for example cities or riv...
Genetic algorithms (GAs) are powerful combinatorial optimizers that are able to find close-to-optima...
The problem of placing labels on maps has been around for about twenty years and has proven to be a ...
Abstract. The population size of genetic algorithms (GAs) affects the quality of the solutions and t...
We show that biogeography-based optimization (BBO) is a generalization of a genetic algorithm with g...
A multi-population genetic algorithm (MPGA) is introduced to search for as many as possible of the l...
The graph-based Cartesian genetic programming system has an unusual genotype representation with a n...
Genetic algorithms provide an alternative to traditional optimization techniques by using directed r...
Abstract. Genetic algorithms are adaptive search techniques which have been used to learn high-perfo...
This thesis examines a conversion of a solution produced by geometric semantic genetic programming (...
Abstract—Generated realizations of random fields are used to quantify the natural variability of geo...
A multi-agent system is divided into groups forming sub-populations of agents. These groups of agent...
Among the evolutionary methods, one that is quite prominent is genetic programming. In recent years,...
Dissertation presented as the partial requirement for obtaining a Master's degree in Data Science a...