Many real world problems can be solved effectively by metaheuristics in combination with neighbourhood search. However, implementing neighbourhood search for a particular problem domain can be time consuming and so it is important to get the most value from it. Hyper-heuristics aim to get such value by using a specific API such as`HyFlex' to cleanly separate the search control structure from the details of the domain. Here, we discuss various longer-term additions to the HyFlex interface that will allow much richer information exchange, and so enhance learning via data science techniques, but without losing domain independence of the search control
Hyper-heuristics are general-purpose heuristic search methodologies for solving combinatorial optim...
Designing a dedicated search and optimisation algorithm is a time-consuming process requiring an in-...
Selection hyper-heuristics concentrate on using the strength of multiple low-level search mechanisms...
Many real world problems can be solved effectively by metaheuristics in combination with neighbourho...
Abstract. Many real world problems can be solved effectively by meta-heuristics in combination with ...
Abstract Automating the design of heuristic search methods is an active research field within comput...
Selection hyper-heuristics perform search over the space of heuristics by mixing and controlling a p...
Selection hyper-heuristics perform search over the space of heuristics by mixing and controlling a p...
Reusability is a desired feature for search and optimisation strategies. Low-level, problem-dependen...
This paper presents HyFlex, a software framework for the development of cross-domain search methodol...
Since most real-world computational problems are difficult to solve, significant attention has been ...
The final publication is available at Springer via http://dx.doi.org/10.1007/978-1-4471-2155-8_71Hyp...
Hyper-heuristics have emerged as effective general methodologies that are motivated by the goal of b...
Hyper-heuristics are a class of high-level search methodologies which operate over a search space of...
Abstract This chapter introduces and overviews an emerging methodology in search and optimisation. O...
Hyper-heuristics are general-purpose heuristic search methodologies for solving combinatorial optim...
Designing a dedicated search and optimisation algorithm is a time-consuming process requiring an in-...
Selection hyper-heuristics concentrate on using the strength of multiple low-level search mechanisms...
Many real world problems can be solved effectively by metaheuristics in combination with neighbourho...
Abstract. Many real world problems can be solved effectively by meta-heuristics in combination with ...
Abstract Automating the design of heuristic search methods is an active research field within comput...
Selection hyper-heuristics perform search over the space of heuristics by mixing and controlling a p...
Selection hyper-heuristics perform search over the space of heuristics by mixing and controlling a p...
Reusability is a desired feature for search and optimisation strategies. Low-level, problem-dependen...
This paper presents HyFlex, a software framework for the development of cross-domain search methodol...
Since most real-world computational problems are difficult to solve, significant attention has been ...
The final publication is available at Springer via http://dx.doi.org/10.1007/978-1-4471-2155-8_71Hyp...
Hyper-heuristics have emerged as effective general methodologies that are motivated by the goal of b...
Hyper-heuristics are a class of high-level search methodologies which operate over a search space of...
Abstract This chapter introduces and overviews an emerging methodology in search and optimisation. O...
Hyper-heuristics are general-purpose heuristic search methodologies for solving combinatorial optim...
Designing a dedicated search and optimisation algorithm is a time-consuming process requiring an in-...
Selection hyper-heuristics concentrate on using the strength of multiple low-level search mechanisms...