Authors
Alexander Hagg, Sebastian Berns, Alexander Asteroth, Simon Colton, Thomas Bäck
Publication date
2021/6/26
Book
Proceedings of the Genetic and Evolutionary Computation Conference
Pages
678-686
Description
We consider multi-solution optimization and generative models for the generation of diverse artifacts and the discovery of novel solutions. In cases where the domain's factors of variation are unknown or too complex to encode manually, generative models can provide a learned latent space to approximate these factors. When used as a search space, however, the range and diversity of possible outputs are limited to the expressivity and generative capabilities of the learned model. We compare the output diversity of a quality diversity evolutionary search performed in two different search spaces: 1) a predefined parameterized space and 2) the latent space of a variational autoencoder model. We find that the search on an explicit parametric encoding creates more diverse artifact sets than searching the latent space. A learned model is better at interpolating between known data points than at extrapolating or …
Total citations
20212022202320241771
Scholar articles
A Hagg, S Berns, A Asteroth, S Colton, T Bäck - Proceedings of the Genetic and Evolutionary …, 2021