A Parallel Multiobjective Approach to Evolving Cellular Automata Rules by Cell State Change Dynamics

David Iclanzan, Camelia Chira
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Abstract

The complex regimes of operation situated between ordered and chaotic behavior are hypothesized to give rise to computational capabilities. Lacking an universal blueprint for the emergence of complexity, a costly search is typically used to find the configurations of distributed artificial systems that can facilitate global computation. In this paper, we address the tedious task of searching for complex cellular automata rules able to lead to a certain global behavior based on local interactions. The discovery of rules exhibiting a high degree of global self-organization is of major importance in the study and understanding of complex systems. A classical heuristic search guided only by a coarse approximation of the ability of a rule to perform in certain conditions will generally not reach beyond an ordered regime of operation. To overcome this limitation, in this paper we incorporate a promising heuristic that rewards increased dynamics with regard to cell state changes in a multiobjective, parallel evolutionary framework. The scope of the multiobjective formulation is to balance the search between ordered and chaotic regimes in order to facilitate the discovery of rules exhibiting complex behaviors. Experimental results confirm that the combined approach represents an efficient way for supporting the emergence of complexity as in all runs we were able to find cellular automata exhibiting a high degree of global self-organization.
基于元胞状态变化动力学的元胞自动机规则演化并行多目标方法
位于有序和混沌行为之间的复杂操作制度被假设为产生计算能力。由于缺乏复杂性出现的通用蓝图,因此通常使用昂贵的搜索来寻找能够促进全局计算的分布式人工系统的配置。在本文中,我们解决了搜索复杂的元胞自动机规则的繁琐任务,这些规则能够导致基于局部相互作用的某种全局行为。发现具有高度全局自组织的规则对于研究和理解复杂系统具有重要意义。经典的启发式搜索仅以规则在某些条件下执行能力的粗略近似值为指导,通常不会超出有序的操作范围。为了克服这一限制,在本文中,我们采用了一种有前途的启发式方法,奖励在多目标并行进化框架中关于细胞状态变化的增加动态。多目标公式的范围是平衡有序和混沌状态之间的搜索,以便于发现显示复杂行为的规则。实验结果证实,组合方法代表了支持复杂性出现的有效方法,因为在所有运行中,我们能够发现元胞自动机表现出高度的全局自组织。
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