Metaheuristic search algorithms look for solutions that either max-imise or minimise a set of objectives, such as cost or performance. However most real-world optimisation problems consist of nonlin-ear problems with complex constraints and conflicting objectives. The process by which a GA arrives at a solution remains largely unexplained to the end-user. A poorly understood solution will dent the confidence a user has in the arrived at solution. We propose that investigation of the variables that strongly influence solution quality and their relationship would be a step toward providing an explanation of the near-optimal solution presented by a meta-heuristic. Through the use of four benchmark problems we use the population data generated ...
In both numerical and stochastic optimization methods, surrogate models are often employed in lieu o...
Abstract. The genetic programming (GP) search method can often vary greatly in the quality of soluti...
The many machine learning and data mining techniques produced over the last decades can prove invalu...
Metaheuristic search algorithms look for solutions that either max-imise or minimise a set of object...
Metaheuristics are randomised search algorithms that are effective at finding "good enough" solution...
Metaheuristics are randomised search algorithms that are effective at finding ”good enough” solution...
Certain problems have characteristics that present difficulties for metaheuristics: their objective ...
Surrogate fitness functions are a popular technique for speeding up metaheuristics, replacing calls ...
Explaining the decisions made by population-based metaheuristics can often be considered difficult d...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
To deal with complex optimization problems plagued with computationally expensive fitness functions,...
In this article we propose a formalisation of the concept of exploration performed by metaheuristics...
Le MN, Ong YS, Menzel S, Jin Y, Sendhoff B. Evolution by Adapting Surrogates. Evolutionary Computati...
Lim D, Ong Y-S, Jin Y, Sendhoff B, Lipson H. A study on metamodeling techniques, ensembles, and mult...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
In both numerical and stochastic optimization methods, surrogate models are often employed in lieu o...
Abstract. The genetic programming (GP) search method can often vary greatly in the quality of soluti...
The many machine learning and data mining techniques produced over the last decades can prove invalu...
Metaheuristic search algorithms look for solutions that either max-imise or minimise a set of object...
Metaheuristics are randomised search algorithms that are effective at finding "good enough" solution...
Metaheuristics are randomised search algorithms that are effective at finding ”good enough” solution...
Certain problems have characteristics that present difficulties for metaheuristics: their objective ...
Surrogate fitness functions are a popular technique for speeding up metaheuristics, replacing calls ...
Explaining the decisions made by population-based metaheuristics can often be considered difficult d...
The majority of the algorithms used to solve hard optimization problems today are population metaheu...
To deal with complex optimization problems plagued with computationally expensive fitness functions,...
In this article we propose a formalisation of the concept of exploration performed by metaheuristics...
Le MN, Ong YS, Menzel S, Jin Y, Sendhoff B. Evolution by Adapting Surrogates. Evolutionary Computati...
Lim D, Ong Y-S, Jin Y, Sendhoff B, Lipson H. A study on metamodeling techniques, ensembles, and mult...
International audienceDuring the past few years, research in applying machine learning (ML) to desig...
In both numerical and stochastic optimization methods, surrogate models are often employed in lieu o...
Abstract. The genetic programming (GP) search method can often vary greatly in the quality of soluti...
The many machine learning and data mining techniques produced over the last decades can prove invalu...