Heuristic methodologies appears for solving optimisation problems. Hyper-heuristics focus on search spaces to select or generate the suitable low-level heuristics to solve computationally difficult problems rather than focusing on finding solutions directly. The main goal is to develop more generally applicable search methodologies. The selection hyper-heuristics will be the core of designing the proposed algorithm and consist of two stages: the selection stage of low-level heuristics, and the acceptance stage of the solutions. An Evolutionary Algorithm approach produces high quality hyper-heuristics which can find optimal solutions for optimisation problems effectively. The Memetic Algorithms are evolutionary intelligent algorithms combin...
Adaptation of parameters and operators represents one of the recent most important and promising are...
Over the recent years, there has been increasing research activities made on improving the efficacy ...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
Hyper-heuristics are intended to be reusable domain independent approaches for solving complex compu...
Memetic algorithms are a class of well-studied metaheuristics which combine evolutionary algorithms ...
In solving practically significant problems of global optimization, the objective function is often ...
One of the main challenges in algorithmics in general, and in Memetic Computing, in particular, is t...
Abstract—Adaptation of parameters and operators represents one of the recent most important and prom...
Abstract—Adaptation of parameters and operators represents one of the recent most important and prom...
Heuristic search methods have been applied to a wide variety of optimisation problems. A central ele...
A hyper-heuristic is a search method or learning mechanism for selecting or generating heuristics to...
One of the fastest growing areas of evolutionary algorithm research is the enhancement of genetic al...
The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (M...
A Genetic Algorithm (GA) is a stochastic search method that has been applied successfully for solvin...
The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (M...
Adaptation of parameters and operators represents one of the recent most important and promising are...
Over the recent years, there has been increasing research activities made on improving the efficacy ...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
Hyper-heuristics are intended to be reusable domain independent approaches for solving complex compu...
Memetic algorithms are a class of well-studied metaheuristics which combine evolutionary algorithms ...
In solving practically significant problems of global optimization, the objective function is often ...
One of the main challenges in algorithmics in general, and in Memetic Computing, in particular, is t...
Abstract—Adaptation of parameters and operators represents one of the recent most important and prom...
Abstract—Adaptation of parameters and operators represents one of the recent most important and prom...
Heuristic search methods have been applied to a wide variety of optimisation problems. A central ele...
A hyper-heuristic is a search method or learning mechanism for selecting or generating heuristics to...
One of the fastest growing areas of evolutionary algorithm research is the enhancement of genetic al...
The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (M...
A Genetic Algorithm (GA) is a stochastic search method that has been applied successfully for solvin...
The combination of evolutionary algorithms with local search was named "memetic algorithms" (MAs) (M...
Adaptation of parameters and operators represents one of the recent most important and promising are...
Over the recent years, there has been increasing research activities made on improving the efficacy ...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...