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Exploring Spatio-temporal Dynamics of Cellular Automata for Pattern Recognition in Networks

机译:探索细胞自动机的时空动力学用于网络中的模式识别

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摘要

Network science is an interdisciplinary field which provides an integrative approach for the study of complex systems. In recent years, network modeling has been used for the study of emergent phenomena in many real-world applications. Pattern recognition in networks has been drawing attention to the importance of network characterization, which may lead to understanding the topological properties that are related to the network model. In this paper, the Life-Like Network Automata (LLNA) method is introduced, which was designed for pattern recognition in networks. LLNA uses the network topology as a tessellation of Cellular Automata (CA), whose dynamics produces a spatio-temporal pattern used to extract the feature vector for network characterization. The method was evaluated using synthetic and real-world networks. In the latter, three pattern recognition applications were used: (i) identifying organisms from distinct domains of life through their metabolic networks, (ii) identifying online social networks and (iii) classifying stomata distribution patterns varying according to different lighting conditions. LLNA was compared to structural measurements and surpasses them in real-world applications, achieving improvement in the classification rate as high as 23%, 4% and 7% respectively. Therefore, the proposed method is a good choice for pattern recognition applications using networks and demonstrates potential for general applicability.
机译:网络科学是一个跨学科领域,为复杂系统的研究提供了一种综合方法。近年来,网络建模已用于研究许多实际应用中的突发现象。网络中的模式识别已引起人们对网络表征的重要性的关注,网络表征可能会导致理解与网络模型相关的拓扑属性。本文介绍了一种类似于网络的自动机(LLNA)方法,该方法专门用于网络中的模式识别。 LLNA使用网络拓扑作为细胞自动机(CA)的细分,其动态产生时空模式,用于提取特征向量以进行网络表征。使用合成和现实网络评估了该方法。在后者中,使用了三种模式识别应用程序:(i)通过其代谢网络从生命的不同领域识别生物,(ii)识别在线社交网络,以及(iii)根据不同光照条件对气孔分布模式进行分类。将LLNA与结构测量结果进行比较,并在实际应用中超越了LLNA,将分类率分别提高了23%,4%和7%。因此,所提出的方法对于使用网络的模式识别应用是一个很好的选择,并证明了其潜在的普遍适用性。

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