We re-investigate a fundamental question: how effective is crossover in Genetic Algorithms in combining building blocks of good solutions? Although this has been discussed controversially for decades, we are still lacking a rigorous and intuitive answer. We provide such answers for royal road functions and OneMax, where every bit is a building block. For the latter we show that using crossover makes every (\mu+\lambda) Genetic Algorithm at least twice as fast as the fastest evolutionary algorithm using only standard bit mutation, up to small-order terms and for moderate \mu and \lambda. Crossover is beneficial because it effectively turns fitness-neutral mutations into improvements by combining the right building blocks at a later stage. Co...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...
The role of crossover and mutation in Genetic Programming (GP) has been the subject of much debate s...
One of the most controversial yet enduring hypotheses about what genetic algorithms (GAs) are good f...
We re-investigate a fundamental question: how effective is crossover in Genetic Algo-rithms in combi...
Explaining to what extent the real power of genetic algorithms lies in the ability of crossover to r...
Explaining to what extent the real power of genetic algorithms lies in the ability of crossover to r...
Explaining to what extent the real power of genetic algorithms lies in the ability of crossover to r...
Explaining to what extent the real power of genetic algorithms lies in the ability of crossover to r...
Theoretically and empirically it is clear that a genetic algorithm with crossover will outperform a ...
Population diversity is essential for avoiding premature convergence in Genetic Algorithms and for ...
Population diversity is essential for avoiding premature convergence in Genetic Algorithms (GAs) an...
AbstractMutation and crossover are the main search operators of different variants of evolutionary a...
Mutation and crossov r are th main s arch op rators of different variants of evolutionary algorithms...
The role of crossover and mutation in Genetic Programming (GP) has been the subject of much debate s...
AbstractWe show that a natural evolutionary algorithm for the all-pairs shortest path problem is sig...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...
The role of crossover and mutation in Genetic Programming (GP) has been the subject of much debate s...
One of the most controversial yet enduring hypotheses about what genetic algorithms (GAs) are good f...
We re-investigate a fundamental question: how effective is crossover in Genetic Algo-rithms in combi...
Explaining to what extent the real power of genetic algorithms lies in the ability of crossover to r...
Explaining to what extent the real power of genetic algorithms lies in the ability of crossover to r...
Explaining to what extent the real power of genetic algorithms lies in the ability of crossover to r...
Explaining to what extent the real power of genetic algorithms lies in the ability of crossover to r...
Theoretically and empirically it is clear that a genetic algorithm with crossover will outperform a ...
Population diversity is essential for avoiding premature convergence in Genetic Algorithms and for ...
Population diversity is essential for avoiding premature convergence in Genetic Algorithms (GAs) an...
AbstractMutation and crossover are the main search operators of different variants of evolutionary a...
Mutation and crossov r are th main s arch op rators of different variants of evolutionary algorithms...
The role of crossover and mutation in Genetic Programming (GP) has been the subject of much debate s...
AbstractWe show that a natural evolutionary algorithm for the all-pairs shortest path problem is sig...
Holland's analysis of the sources of power of genetic algorithms has served as guidance for the...
The role of crossover and mutation in Genetic Programming (GP) has been the subject of much debate s...
One of the most controversial yet enduring hypotheses about what genetic algorithms (GAs) are good f...