In this work we present IHDNs: an original model of computation for the simulation of interacting, dynamic, multi-scale systems. We show that a novel message passing mechanism that operates across layers of abstraction in hierarchical dynamic networks is effective in expressing the complex dependencies of living systems. Using a conventional computational model of cell evolution in cancerous tumour growth for comparison, we demonstrate the validity of IHDNs in emulating the behaviour of life-like systems, as well as the additional capabilities in enabling Neo4j Cypher pattern-matching queries, demonstrated here in the analysis of evolutionary cell heritage.
CITATION STYLE
Meltzer, P., & Bentley, P. J. (2020). Interacting hierarchical dynamic networks. In ALIFE 2018 - 2018 Conference on Artificial Life: Beyond AI (pp. 582–589). MIT Press. https://doi.org/10.1162/isal_a_00108
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