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Evolutionary Synthesis of Cellular Automata
Author(s) -
Jernej Zupanc,
Bogdan Filipi�
Publication year - 2011
Publication title -
journal of computing and information technology
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.169
H-Index - 27
eISSN - 1846-3908
pISSN - 1330-1136
DOI - 10.2498/cit.1001419
Subject(s) - cellular automaton , computer science , nondeterministic algorithm , genetic programming , mobile automaton , theoretical computer science , heuristics , stochastic cellular automaton , evolutionary algorithm , population , context (archaeology) , automaton , algorithm , automata theory , artificial intelligence , biology , paleontology , demography , sociology , operating system
Synthesis of cellular automata is an important area of modeling and describing complex systems. Large amounts of combinations and candidate solutions render the usage of deterministic approaches impractical and thus nondeterministic optimization methods have to be employed. Two of the typical evolutionary approaches to synthesizing cellular automata are the evolution of a single automaton and a genetic algorithm that evolves a population of automata. The first approach, with addition of some heuristics, is known as the cellular programming algorithm. In this paper we address the second approach and develop a genetic algorithm that evolves a population of cellular automata. We test both approaches on the density classification task, which is one of the most widely studied computational problems in the context of evolving cellular automata. Comparison of the synthesized cellular automata demonstrates unexpected similarity of the evolved rules and comparable classification accuracy performance of both approaches

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