Cooperative Coevolutionary Spatial Topologies for Autoencoder Training
Author(s)
Hemberg, Erik; O'Reilly, Una-May; Toutouh, Jamal
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Training autoencoders is non-trivial. Convergence to the identity function or overfitting are common pitfalls. Population based algorithms like coevolutionary algorithms can provide diversity. To more robustly train autoencoders, we introduce a novel cooperative coevolutionary algorithm that exploits a spatial topology. We investigate the impact of algorithm parameters and design choices on the performance. On a simple tunable benchmark problem we observe that the performance can be improved over that of an conventionally trained autoencoder. However, the training convergence can be slow, despite the final model performance being competitive with a conventional autoencoder.
Description
GECCO ’24, July 14–18, 2024, Melbourne, VIC, Australia
Date issued
2024-07-14Department
Massachusetts Institute of Technology. Computer Science and Artificial Intelligence LaboratoryPublisher
ACM|Genetic and Evolutionary Computation Conference
Citation
Hemberg, Erik, O'Reilly, Una-May and Toutouh, Jamal. 2024. "Cooperative Coevolutionary Spatial Topologies for Autoencoder Training."
Version: Final published version
ISBN
979-8-4007-0494-9
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