Modern society is faced with ever more complex problems, many of which can be formulated as generate-and-test optimization problems. General-purpose optimization algorithms are not well suited for real-world scenarios where many instances of the same problem class need to be repeatedly and efficiently solved, such as routing vehicles over highways with constantly changing traffic flows, because they are not targeted to a particular scenario. Hyper-heuristics automate the design of algorithms to create a custom algorithm for a particular scenario. Hyper-heuristics typically employ Genetic Programming (GP) and this project has investigated the relationship between the choice of GP and performance in Hyper-heuristics. Results are presented dem...
Purpose: Hyper-heuristics are a class of high-level search techniques which operate on a search spac...
The current research trends on hyper-heuristics design have sprung up in two different flavours: heu...
Hyper-heuristics are search methodologies that aim to provide high-quality solutions across a wide v...
Modern society is faced with ever more complex problems, many of which can be formulated as generate...
General-purpose optimization algorithms are often not well suited for real-world scenarios where man...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...
A hyper-heuristic is a search method or learning mechanism for selecting or generating heuristics to...
Not so many benchmark problems have been proposed in the area of Genetic Programming (GP). In this s...
Hyper-heuristic approaches aim to automate heuristic design in order to solve multiple problems inst...
Automatically designing algorithms has long been a dream of computer scientists. Early attempts whic...
The development of a heuristic to solve an optimisation problem in a new domain, or a specific varia...
Black-Box Search Algorithms (BBSAs) tailored to a specific problem class may be expected to signific...
Genetic programming (GP) is used to evolve global optimisation test problems. These automatically ge...
Abstract This paper presents a genetic programming (GP) hyper-heuristic approach that optimizes a se...
Purpose: Hyper-heuristics are a class of high-level search techniques which operate on a search spac...
The current research trends on hyper-heuristics design have sprung up in two different flavours: heu...
Hyper-heuristics are search methodologies that aim to provide high-quality solutions across a wide v...
Modern society is faced with ever more complex problems, many of which can be formulated as generate...
General-purpose optimization algorithms are often not well suited for real-world scenarios where man...
Hyper-heuristics represent a novel search methodology that is motivated by the goal of automating th...
Choosing the correct algorithm to solve a problem still remains an issue 40 years after the Algorith...
A hyper-heuristic is a search method or learning mechanism for selecting or generating heuristics to...
Not so many benchmark problems have been proposed in the area of Genetic Programming (GP). In this s...
Hyper-heuristic approaches aim to automate heuristic design in order to solve multiple problems inst...
Automatically designing algorithms has long been a dream of computer scientists. Early attempts whic...
The development of a heuristic to solve an optimisation problem in a new domain, or a specific varia...
Black-Box Search Algorithms (BBSAs) tailored to a specific problem class may be expected to signific...
Genetic programming (GP) is used to evolve global optimisation test problems. These automatically ge...
Abstract This paper presents a genetic programming (GP) hyper-heuristic approach that optimizes a se...
Purpose: Hyper-heuristics are a class of high-level search techniques which operate on a search spac...
The current research trends on hyper-heuristics design have sprung up in two different flavours: heu...
Hyper-heuristics are search methodologies that aim to provide high-quality solutions across a wide v...