Authors
Alexander Hagg, Martin Zaefferer, Jörg Stork, Adam Gaier
Publication date
2019/7/13
Book
Proceedings of the Genetic and Evolutionary Computation Conference Companion
Pages
1576-1582
Description
Surrogate models are used to reduce the burden of expensive-to-evaluate objective functions in optimization. By creating models which map genomes to objective values, these models can estimate the performance of unknown inputs, and so be used in place of expensive objective functions. Evolutionary techniques such as genetic programming or neuroevolution commonly alter the structure of the genome itself. A lack of consistency in the genotype is a fatal blow to data-driven modeling techniques: interpolation between points is impossible without a common input space. However, while the dimensionality of genotypes may differ across individuals, in many domains, such as controllers or classifiers, the dimensionality of the input and output remains constant. In this work we leverage this insight to embed differing neural networks into the same input space. To judge the difference between the behavior of two …
Total citations
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Scholar articles
A Hagg, M Zaefferer, J Stork, A Gaier - Proceedings of the Genetic and Evolutionary …, 2019