Surrogate fitness functions are a popular technique for speeding up metaheuristics, replacing calls to a costly fitness function with calls to a cheap model. However, surrogates also represent an explicit model of the fitness function, which can be exploited beyond approximating the fitness of solutions. This paper proposes that mining surrogate fitness models can yield useful additional information on the problem to the decision maker, adding value to the optimisation process. An existing fitness model based on Markov networks is presented and applied to the optimisation of glazing on a building facade. Analysis of the model reveals how its parameters point towards the global optima of the problem after only part of the optimisation run, a...
This paper presents a very simple surrogate optimization method - a Tolerance-based Surrogate Method...
Fitness modelling has received growing interest from the evolutionary computation community in recen...
A typical scenario when solving industrial single or multiobjective optimization problems is that no...
Surrogate fitness functions are a popular technique for speeding up metaheuristics, replacing calls ...
Metaheuristics are randomised search algorithms that are effective at finding ”good enough” solution...
Certain problems have characteristics that present difficulties for metaheuristics: their objective ...
Fitness modelling is an area of research which has recently received much interest among the evoluti...
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...
In real-world problems with candidate solutions that are very expensive to evaluate, Surrogate Model...
When searching for input configurations that optimise the output of a system, it can be useful to bu...
A well-known paradigm for optimisation is the evolutionary algorithm (EA). An EA maintains a populat...
To deal with complex optimization problems plagued with computationally expensive fitness functions,...
Le MN, Ong YS, Menzel S, Jin Y, Sendhoff B. Evolution by Adapting Surrogates. Evolutionary Computati...
Surrogate-based optimisation (SBO) algorithms are a powerful technique that combine machine learning...
This paper presents a very simple surrogate optimization method - a Tolerance-based Surrogate Method...
Fitness modelling has received growing interest from the evolutionary computation community in recen...
A typical scenario when solving industrial single or multiobjective optimization problems is that no...
Surrogate fitness functions are a popular technique for speeding up metaheuristics, replacing calls ...
Metaheuristics are randomised search algorithms that are effective at finding ”good enough” solution...
Certain problems have characteristics that present difficulties for metaheuristics: their objective ...
Fitness modelling is an area of research which has recently received much interest among the evoluti...
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...
In real-world problems with candidate solutions that are very expensive to evaluate, Surrogate Model...
When searching for input configurations that optimise the output of a system, it can be useful to bu...
A well-known paradigm for optimisation is the evolutionary algorithm (EA). An EA maintains a populat...
To deal with complex optimization problems plagued with computationally expensive fitness functions,...
Le MN, Ong YS, Menzel S, Jin Y, Sendhoff B. Evolution by Adapting Surrogates. Evolutionary Computati...
Surrogate-based optimisation (SBO) algorithms are a powerful technique that combine machine learning...
This paper presents a very simple surrogate optimization method - a Tolerance-based Surrogate Method...
Fitness modelling has received growing interest from the evolutionary computation community in recen...
A typical scenario when solving industrial single or multiobjective optimization problems is that no...