Evolutionary multitask learning has achieved great success due to its ability to handle multiple tasks simultaneously. However, it is rarely used in the hyperheuristic domain, which aims at generating a heuristic for a class of problems rather than solving one specific problem. The existing multitask hyperheuristic studies only focus on heuristic selection, which is not applicable to heuristic generation. To fill the gap, we propose a novel multitask generative hyperheuristic approach based on genetic programming (GP) in this article. Specifically, we introduce the idea in evolutionary multitask learning to GP hyperheuristics with a suitable evolutionary framework and individual selection pressure. In addition, an origin-based offspring res...
The Job Shop Scheduling (JSS) problem is considered to be a challenging one due to practical require...
Dynamic Flexible Job Shop Scheduling (DFJSS) is an important and challenging problem, and can have m...
Scheduling is an important planning activity in manufacturing systems to help optimise the usage of ...
Evolutionary multitask learning has achieved great success due to its ability to handle multiple tas...
Dynamic flexible job shop scheduling (JSS) is an important combinatorial optimization problem with c...
Dynamic flexible job shop scheduling (DFJSS) has received widespread attention from academia and ind...
Genetic programming based hyper-heuristic (GP-HH) approaches that evolve ensembles of dispatching ru...
Scheduling problems arise whenever there is a choice of order in which a number of tasks should be p...
Dynamic flexible job shop scheduling (JSS) has received widespread attention from academia and indus...
In recent research, hyper-heuristics have attracted increasing attention among researchers in variou...
Scheduling is an important problem in artificial intelligence and operations research. In production...
A scheduling policy strongly influences the performance of a manufacturing system. However, the desi...
Dynamic flexible job shop scheduling (JSS) is a challenging combinatorial optimization problem due t...
Evolving production scheduling heuristics is a challenging task because of the dynamic and complex p...
© 2020, Springer Nature Switzerland AG. Dynamic flexible job shop scheduling (DFJSS) is a very valua...
The Job Shop Scheduling (JSS) problem is considered to be a challenging one due to practical require...
Dynamic Flexible Job Shop Scheduling (DFJSS) is an important and challenging problem, and can have m...
Scheduling is an important planning activity in manufacturing systems to help optimise the usage of ...
Evolutionary multitask learning has achieved great success due to its ability to handle multiple tas...
Dynamic flexible job shop scheduling (JSS) is an important combinatorial optimization problem with c...
Dynamic flexible job shop scheduling (DFJSS) has received widespread attention from academia and ind...
Genetic programming based hyper-heuristic (GP-HH) approaches that evolve ensembles of dispatching ru...
Scheduling problems arise whenever there is a choice of order in which a number of tasks should be p...
Dynamic flexible job shop scheduling (JSS) has received widespread attention from academia and indus...
In recent research, hyper-heuristics have attracted increasing attention among researchers in variou...
Scheduling is an important problem in artificial intelligence and operations research. In production...
A scheduling policy strongly influences the performance of a manufacturing system. However, the desi...
Dynamic flexible job shop scheduling (JSS) is a challenging combinatorial optimization problem due t...
Evolving production scheduling heuristics is a challenging task because of the dynamic and complex p...
© 2020, Springer Nature Switzerland AG. Dynamic flexible job shop scheduling (DFJSS) is a very valua...
The Job Shop Scheduling (JSS) problem is considered to be a challenging one due to practical require...
Dynamic Flexible Job Shop Scheduling (DFJSS) is an important and challenging problem, and can have m...
Scheduling is an important planning activity in manufacturing systems to help optimise the usage of ...