In Genetic Programming (GP), the fitness of individuals is normally computed by using a set of fitness cases (FCs). Research on the use of FCs in GP has primarily focused on how to reduce the size of these sets. However, often, only a small set of FCs is available and there is no need to reduce it. In this work, we are interested in using the whole FCs set, but rather than adopting the commonly used GP approach of presenting the entire set of FCs to the system from the beginning of the search, referred as static FCs, we allow the GP system to build it by aggregation over time, named as dynamic FCs, with the hope to make the search more amenable. Moreover, there is no study on the use of FCs in Dynamic Optimisation Problems (DOPs). To this e...
One of the greater issues in Genetic Programming (GP) is the computational effort required to run th...
A well-designed fitness function is essential to the effectiveness and efficiency of evolutionary te...
Genetic programming is a promising variant of genetic algorithms that evolves dynamic, hierarchical ...
In Genetic Programming (GP), the fitness of individuals is normally computed by using a set of fitne...
In Genetic Programming (GP), the fitness of individuals is normally computed by using a set of fitne...
Doctoral Degree. University of KwaZulu- Natal, Pietermaritzburg.This research proposes dynamic fitne...
In Evolutionary Algorithms (EAs), it is well-known that the adoption of diversity is highly benefici...
Optimisation is a challenging research topic that relates to most real-life applications, such as tr...
We present a study of dynamic environments with genetic programming to ascertain if a dynamic enviro...
Genetic programming (GP) is a variant of evolutionary algorithm where the entities undergoing simula...
Genetic programming systems typically use a fixed training population to optimize programs according...
Several optimization problems have features that hinder the capabilities of searching heuristics. To...
Genetic Algorithms are efficient and robust search methods that are being employed in a plethora of ...
We review different techniques for improving GA performance. By analysing the fitness landscape, a c...
Genetic algorithms (GAs) are efficient and robust search methods that are being employed in a pletho...
One of the greater issues in Genetic Programming (GP) is the computational effort required to run th...
A well-designed fitness function is essential to the effectiveness and efficiency of evolutionary te...
Genetic programming is a promising variant of genetic algorithms that evolves dynamic, hierarchical ...
In Genetic Programming (GP), the fitness of individuals is normally computed by using a set of fitne...
In Genetic Programming (GP), the fitness of individuals is normally computed by using a set of fitne...
Doctoral Degree. University of KwaZulu- Natal, Pietermaritzburg.This research proposes dynamic fitne...
In Evolutionary Algorithms (EAs), it is well-known that the adoption of diversity is highly benefici...
Optimisation is a challenging research topic that relates to most real-life applications, such as tr...
We present a study of dynamic environments with genetic programming to ascertain if a dynamic enviro...
Genetic programming (GP) is a variant of evolutionary algorithm where the entities undergoing simula...
Genetic programming systems typically use a fixed training population to optimize programs according...
Several optimization problems have features that hinder the capabilities of searching heuristics. To...
Genetic Algorithms are efficient and robust search methods that are being employed in a plethora of ...
We review different techniques for improving GA performance. By analysing the fitness landscape, a c...
Genetic algorithms (GAs) are efficient and robust search methods that are being employed in a pletho...
One of the greater issues in Genetic Programming (GP) is the computational effort required to run th...
A well-designed fitness function is essential to the effectiveness and efficiency of evolutionary te...
Genetic programming is a promising variant of genetic algorithms that evolves dynamic, hierarchical ...