RT Conference Proceedings T1 Evolutionary cellular configurations for designing feed-forward neural networks architectures A1 Gutiérrez Sánchez, Germán A1 Isasi, Pedro A1 Molina López, José Manuel A1 Sanchis de Miguel, María Araceli A1 Galván, Inés M. AB In the recent years, the interest to develop automatic methods to determine appropriate architectures of feed-forward neural networks has increased. Most of the methods are based on evolutionary computation paradigms. Some of the designed methods are based on direct representations of the parameters of the network. These representations do not allow scalability, so to represent large architectures, very large structures are required. An alternative more interesting are the indirect schemes. They codify a compact representation of the neural network. In this work, an indirect constructive encoding scheme is presented. This scheme is based on cellular automata representations in order to increase the scalability of the method. PB Springer SN 978-3-540-42235-8 SN 1611-3349 (Online) YR 2001 FD 2001 LK https://hdl.handle.net/10016/4003 UL https://hdl.handle.net/10016/4003 LA eng NO Proceeding of: 6th International Work-Conference on Artificial and Natural Neural Networks, IWANN 2001 Granada, Spain, June 13–15, 2001 DS e-Archivo RD 2 may. 2024