Convolutional Neural Networks for Automated Cellular Automaton Classification

Michiel Rollier, Aisling J. Daly, Jan M. Baetens
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Abstract

The emergent dynamics in spacetime diagrams of cellular automata (CAs) is often organised by means of a number of behavioural classes. Whilst classification of elementary CAs is feasible and well-studied, non-elementary CAs are generally too diverse and numerous to exhaustively classify manually. In this chapter we treat the spacetime diagram as a digital image, and implement simple computer vision techniques to perform an automated classification of elementary cellular automata into the five Li-Packard classes. In particular, we present a supervised learning task to a convolutional neural network, in such a way that it may be generalised to non-elementary CAs. If we want to do so, we must divert the algorithm's focus away from the underlying 'microscopic' local updates. We first show that previously developed deep learning approaches have in fact been trained to identify the local update rule, rather than directly focus on the mesoscopic patterns that are associated with the particular behavioural classes. By means of a well-argued neural network design, as well as a number of data augmentation techniques, we then present a convolutional neural network that performs nearly perfectly at identifying the behavioural class, without necessarily first identifying the underlying microscopic dynamics.
用于细胞自动机自动分类的卷积神经网络
细胞自动机(CA)时空图中出现的动力学通常是通过一些行为类来组织的。在本章中,我们将时空图视为数字图像,并采用简单的计算机视觉技术,将基本细胞自动机自动分类为五个李-帕卡类。特别是,我们向卷积神经网络提出了一项监督学习任务,以便将其推广到基本细胞自动机。要做到这一点,我们必须将算法的重点从底层的 "微观 "局部更新上转移开。我们首先证明,以前开发的深度学习方法实际上是为了识别局部更新规则而训练的,而不是直接关注与特定行为类别相关的中观模式。通过论证充分的神经网络设计以及大量数据增强技术,我们提出了一种卷积神经网络,它在识别行为类别方面表现近乎完美,而无需首先识别底层微观动态。
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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