EvoAAA: An evolutionary methodology for automated neural autoencoder architecture search

TitleEvoAAA: An evolutionary methodology for automated neural autoencoder architecture search
Publication TypeJournal Article
Year of Publication2020
AuthorsCharte, Francisco, Rivera-Rivas A.J., Martínez Francisco, and del Jesus M. J.
JournalIntegrated Computer-Aided Engineering
Volume27
Number3
Pagination211-231
Date Published05/2020
KeywordsAutoencoder, evolutionary methods, Representation learning
Abstract

Machine learning models work better when curated features are provided to them. Feature engineering methods have been usually used as a preprocessing step to obtain or build a proper feature set. In late years, autoencoders (a specific type of symmetrical neural network) have been widely used to perform representation learning, proving their competitiveness against classical feature engineering algorithms. The main obstacle in the use of autoencoders is finding a good architecture, a process that most experts confront manually. An automated autoencoder symmetrical architecture search procedure, based on evolutionary methods, is proposed in this paper. The methodology is tested against nine heterogeneous data sets. The obtained results show the ability of this approach to find better architectures, able to concentrate most of the useful information in a minimized encoding, in a reduced time.

DOI10.3233/ICA-200619