We propose a novel surrogate-assisted Evolutionary Algorithm for solving expensive combinatorial optimization problems. We integrate a surrogate model, which is used for fitness value estimation, into a state-of-the-art P3-like variant of the Gene-Pool Optimal Mixing Algorithm (GOMEA) and adapt the resulting algorithm for solving non-binary combinatorial problems. We test the proposed algorithm on an ensemble learning problem. Ensembling several models is a common Machine Learning technique to achieve better performance. We consider ensembles of several models trained on disjoint subsets of a dataset. Finding the best dataset partitioning is naturally a combinatorial non-binary optimization problem. Fitness function evaluations can be extre...
Building ensembles of classifiers is an active area of research for machine learning, with the funda...
International audienceA number of surrogate-assisted evolutionary algorithms are being developed for...
Lim D, Ong Y-S, Jin Y, Sendhoff B, Lipson H. A study on metamodeling techniques, ensembles, and mult...
We propose a novel surrogate-assisted Evolutionary Algorithm for solving expensive combinatorial opt...
We introduce a novel surrogate-assisted Genetic Algorithm (GA) for expensive optimization of problem...
We propose to apply typed Genetic Programming (GP) to the problem of finding surrogate-model ensembl...
Surrogate-assisted evolutionary algorithms have been developed mainly for solving expensive optimiz...
In this work, a novel surrogate-assisted memetic algorithm is proposed which is based on the preserv...
Evolutionary, and especially genetic algorithms have become one of the most successful methods for t...
Surrogate-assisted, or meta-model based evolutionary computation uses efficient computational models...
The recently introduced Real-Valued Gene-pool Optimal Mixing Evolutionary Algorithm (RV-GOMEA) has b...
Surrogate-assisted evolutionary algorithms have received a surge of attentions for their promising a...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
In solving many real-world optimization problems, neither mathematical functions nor numerical simul...
Gaussian processes are the most popular model used in surrogate-assisted evolutionary optimization o...
Building ensembles of classifiers is an active area of research for machine learning, with the funda...
International audienceA number of surrogate-assisted evolutionary algorithms are being developed for...
Lim D, Ong Y-S, Jin Y, Sendhoff B, Lipson H. A study on metamodeling techniques, ensembles, and mult...
We propose a novel surrogate-assisted Evolutionary Algorithm for solving expensive combinatorial opt...
We introduce a novel surrogate-assisted Genetic Algorithm (GA) for expensive optimization of problem...
We propose to apply typed Genetic Programming (GP) to the problem of finding surrogate-model ensembl...
Surrogate-assisted evolutionary algorithms have been developed mainly for solving expensive optimiz...
In this work, a novel surrogate-assisted memetic algorithm is proposed which is based on the preserv...
Evolutionary, and especially genetic algorithms have become one of the most successful methods for t...
Surrogate-assisted, or meta-model based evolutionary computation uses efficient computational models...
The recently introduced Real-Valued Gene-pool Optimal Mixing Evolutionary Algorithm (RV-GOMEA) has b...
Surrogate-assisted evolutionary algorithms have received a surge of attentions for their promising a...
This is the author accepted manuscript. The final version is available from the publisher via the DO...
In solving many real-world optimization problems, neither mathematical functions nor numerical simul...
Gaussian processes are the most popular model used in surrogate-assisted evolutionary optimization o...
Building ensembles of classifiers is an active area of research for machine learning, with the funda...
International audienceA number of surrogate-assisted evolutionary algorithms are being developed for...
Lim D, Ong Y-S, Jin Y, Sendhoff B, Lipson H. A study on metamodeling techniques, ensembles, and mult...