Skip to Main content Skip to Navigation
Conference papers

Evolving Structures in Complex Systems

Abstract : In this paper we propose an approach for measuring growth of complexity of emerging patterns in complex systems such as cellular automata. We discuss several ways how a metric for measuring the complexity growth can be defined. This includes approaches based on compression algorithms and artificial neural networks. We believe such a metric can be useful for designing systems that could exhibit open-ended evolution, which itself might be a prerequisite for development of general artificial intelligence. We conduct experiments on 1D and 2D grid worlds and demonstrate that using the proposed metric we can automatically construct computational models with emerging properties similar to those found in the Conway's Game of Life, as well as many other emergent phenomena. Interestingly, some of the patterns we observe resemble forms of artificial life. Our metric of structural complexity growth can be applied to a wide range of complex systems, as it is not limited to cellular automata.
Complete list of metadata
Contributor : Hugo Cisneros Connect in order to contact the contributor
Submitted on : Wednesday, January 22, 2020 - 9:49:18 AM
Last modification on : Wednesday, June 8, 2022 - 12:50:06 PM

Links full text




Hugo Cisneros, Josef Sivic, Tomas Mikolov. Evolving Structures in Complex Systems. SSCI 2019 - IEEE Symposium Series on Computational Intelligence, Dec 2019, Xiamen, China. ⟨10.1109/SSCI44817.2019.9002840⟩. ⟨hal-02448134⟩



Record views