Locally adaptive cellular automata for goal-oriented self-organization

Sina Khajehabdollahi, Emmanouil Giannakakis, Victor Buendia, Georg Martius, Anna Levina
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Abstract

The essential ingredient for studying the phenomena of emergence is the ability to generate and manipulate emergent systems that span large scales. Cellular automata are the model class particularly known for their effective scalability but are also typically constrained by fixed local rules. In this paper, we propose a new model class of adaptive cellular automata that allows for the generation of scalable and expressive models. We show how to implement computation-effective adaptation by coupling the update rule of the cellular automaton with itself and the system state in a localized way. To demonstrate the applications of this approach, we implement two different emergent models: a self-organizing Ising model and two types of plastic neural networks, a rate and spiking model. With the Ising model, we show how coupling local/global temperatures to local/global measurements can tune the model to stay in the vicinity of the critical temperature. With the neural models, we reproduce a classical balanced state in large recurrent neuronal networks with excitatory and inhibitory neurons and various plasticity mechanisms. Our study opens multiple directions for studying collective behavior and emergence.
面向目标自组织的局部自适应元胞自动机
研究涌现现象的基本要素是产生和操纵大规模涌现系统的能力。元胞自动机是一类以其有效的可扩展性而闻名的模型,但也通常受到固定的局部规则的约束。在本文中,我们提出了一种新的自适应元胞自动机模型类,它允许生成可扩展和表达的模型。我们展示了如何通过局部方式将元胞自动机的更新规则与自身和系统状态耦合来实现计算有效的自适应。为了演示这种方法的应用,我们实现了两个不同的紧急模型:一个自组织的Ising模型和两种类型的塑性神经网络,一个速率和峰值模型。使用Ising模型,我们展示了如何将局部/全球温度与局部/全球测量相耦合,从而调整模型以保持在临界温度附近。利用神经模型,我们再现了具有兴奋性和抑制性神经元以及多种可塑性机制的大型循环神经网络的经典平衡状态。我们的研究为研究集体行为和涌现开辟了多个方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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