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Growing Reservoirs with Developmental Graph Cellular Automata

11 August 2025
Matias Barandiaran
James Stovold
    GNN
ArXiv (abs)PDFHTMLGithub
Main:8 Pages
12 Figures
Bibliography:1 Pages
4 Tables
Abstract

Developmental Graph Cellular Automata (DGCA) are a novel model for morphogenesis, capable of growing directed graphs from single-node seeds. In this paper, we show that DGCAs can be trained to grow reservoirs. Reservoirs are grown with two types of targets: task-driven (using the NARMA family of tasks) and task-independent (using reservoir metrics).Results show that DGCAs are able to grow into a variety of specialized, life-like structures capable of effectively solving benchmark tasks, statistically outperforming `typical' reservoirs on the same task. Overall, these lay the foundation for the development of DGCA systems that produce plastic reservoirs and for modeling functional, adaptive morphogenesis.

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