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首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Visibility in the topology of complex networks
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Visibility in the topology of complex networks

机译:复杂网络拓扑中的可见性

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Taking its inspiration from the visibility algorithm, which was proposed by Lacasa et al. (2008) to convert a time-series into a complex network, this paper develops and proposes a novel expansion of this algorithm that allows generating a visibility graph from a complex network instead of a time-series that is currently applicable. The purpose of this approach is to apply the idea of visibility from the field of time-series to complex networks in order to interpret the network topology as a landscape. Visibility in complex networks is a multivariate property producing an associated visibility graph that maps the ability of a node "to see" other nodes in the network that lie beyond the range of its neighborhood, in terms of a control-attribute. Within this context, this paper examines the visibility topology produced by connectivity (degree) in comparison with the original (source) network, in order to detect what patterns or forces describe the mechanism under which a network is converted to a visibility graph. The overall analysis shows that visibility is a property that increases the connectivity in networks, it may contribute to pattern recognition (among which the detection of the scale-free topology) and it is worth to be applied to complex networks in order to reveal the potential of signal processing beyond the range of its neighborhood. Generally, this paper promotes interdisciplinary research in complex networks providing new insights to network science. (C) 2018 Elsevier B.V. All rights reserved.
机译:从知名度算法,其提出的LACASA等人以启示。 (2008),以时间序列转换成一个复杂的网络,本文开发并提出了此算法,允许产生从一个复杂的网络,而不是一个时间序列即目前适用可视性图的新颖的扩展。这种方法的目的是从时间序列的复杂网络领域,以解释网络拓扑作为景观应用可见性的想法。能见度在复杂网络是一个多变量属性产生映射的节点的“看到”的其它节点在网络中的能力的相关联的可视性图横亘超出其附近的范围内,在一个控制属性方面。在这方面,本文考察与原始(源)比较网络由连接(度)产生的可见性拓扑中,为了检测什么图案或力下描述其中网络被转换成可视性图的机制。总体分析表明,能见度是增加在网络中的连接性的性质,它可能有助于模式识别(其中在检测到无标度拓扑的),它是值得以揭示的电位被施加到复杂网络信号的处理超出其附近的范围内。一般来说,本文促进了复杂网络提供新的见解,以网络科学跨学科研究。 (c)2018年elestvier b.v.保留所有权利。

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