Problem-specific knowledge is often implemented in search algorithms using heuristics to determine which search paths are to be explored at any given instant. As in other search methods, utilizing this knowledge will more quickly lead a genetic algorithm (GA) towards better results. In many problems, crucial knowledge is not found in individual components, but in the interrelations between those components. For such problems, we develop an interrelation (linkage) based crossover operator that has the advantage of liberating GAs from the constraints imposed by the fixed representations generally chosen for problems. The strength of linkages between components of a chromosomal structure can be explicitly represented in a linkage matrix and us...
Linkage learning techniques are employed to discover dependencies between problem variables. This kn...
There are two primary objectives of this dissertation. The first goal is to identify certain limits ...
We present a new knowledge-based non-uniform crossover (KNUX) operator for genetic algorithms (GA\...
Problem-specific knowledge is often implemented in search algorithms using heuristics to determine w...
The complicated nature of modern scientific endeavors often times requires the employment of black-b...
One variance of Genetic Algorithms is a Linkage Learning Genetic Algorithm (LLGA) enhances the effic...
Recombination operators with high positional bias are less disruptive against adjacent genes. Theref...
Genetic algorithms (GA) are stimulated by population genetics and evolution at the population level ...
Genetic Algorithms (GAs) are commonly used today worldwide. Various observations have been theorized...
Genetic algorithms (GAs) are stochastic adaptive algorithms whose search method is based on simulati...
Genetic Algorithm (GA) has been widely used in many fields of optimization; one of them is Traveling...
Genetic algorithm (GA) is a popular technique of optimization that is bio-inspired and based on Char...
The original analysis of genetic algorithms presents combination to be the primary mechanism of cros...
One of the issues in evolutionary algorithms (EAs) is the relative importance of two search operator...
Exploiting a problem\u92s structure to arrive at the most efficient optimization algorithm is key in...
Linkage learning techniques are employed to discover dependencies between problem variables. This kn...
There are two primary objectives of this dissertation. The first goal is to identify certain limits ...
We present a new knowledge-based non-uniform crossover (KNUX) operator for genetic algorithms (GA\...
Problem-specific knowledge is often implemented in search algorithms using heuristics to determine w...
The complicated nature of modern scientific endeavors often times requires the employment of black-b...
One variance of Genetic Algorithms is a Linkage Learning Genetic Algorithm (LLGA) enhances the effic...
Recombination operators with high positional bias are less disruptive against adjacent genes. Theref...
Genetic algorithms (GA) are stimulated by population genetics and evolution at the population level ...
Genetic Algorithms (GAs) are commonly used today worldwide. Various observations have been theorized...
Genetic algorithms (GAs) are stochastic adaptive algorithms whose search method is based on simulati...
Genetic Algorithm (GA) has been widely used in many fields of optimization; one of them is Traveling...
Genetic algorithm (GA) is a popular technique of optimization that is bio-inspired and based on Char...
The original analysis of genetic algorithms presents combination to be the primary mechanism of cros...
One of the issues in evolutionary algorithms (EAs) is the relative importance of two search operator...
Exploiting a problem\u92s structure to arrive at the most efficient optimization algorithm is key in...
Linkage learning techniques are employed to discover dependencies between problem variables. This kn...
There are two primary objectives of this dissertation. The first goal is to identify certain limits ...
We present a new knowledge-based non-uniform crossover (KNUX) operator for genetic algorithms (GA\...