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VA-index: Quantifying assortativity patterns in networks with multidimensional nodal attributes

机译:VA-index:量化具有多维节点属性的网络中的分类模式

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摘要

© 2016 Pelechrinis, Wei. This is an open access article distributed under the terms of the Creative Commons Attribution License, which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited. Network connections have been shown to be correlated with structural or external attributes of the network vertices in a variety of cases. Given the prevalence of this phenomenon network scientists have developed metrics to quantify its extent. In particular, the assortativity coefficient is used to capture the level of correlation between a single-dimensional attribute (categorical or scalar) of the network nodes and the observed connections, i.e., the edges. Nevertheless, in many cases a multi-dimensional, i.e., vector feature of the nodes is of interest. Similar attributes can describe complex behavioral patterns (e.g., mobility) of the network entities. To date little attention has been given to this setting and there has not been a general and formal treatment of this problem. In this study we develop a metric, the vector assortativity index (VA-index for short), based on network randomization and (empirical) statistical hypothesis testing that is able to quantify the assortativity patterns of a network with respect to a vector attribute. Our extensive experimental results on synthetic network data show that the VA-index outperforms a baseline extension of the assortativity coefficient, which has been used in the literature to cope with similar cases. Furthermore, the VAindex can be calibrated (in terms of parameters) fairly easy, while its benefits increase with the (co-)variance of the vector elements, where the baseline systematically over(under)estimate the true mixing patterns of the network.
机译:©2016 Pelechrinis,Wei。这是根据知识共享署名许可协议的条款分发的开放获取文章,该条款允许在任何媒介中无限制地使用,分发和复制,但要注明原始作者和出处。在各种情况下,网络连接已显示与网络顶点的结构或外部属性相关。考虑到这种现象的普遍性,网络科学家已经开发出量化其程度的指标。特别地,分类系数用于捕获网络节点的一维属性(分类或标量)与所观察到的连接即边缘之间的相关程度。然而,在许多情况下,节点的多维即向量特征是令人关注的。相似的属性可以描述网络实体的复杂行为模式(例如,移动性)。迄今为止,对这种情况的关注很少,还没有对该问题进行一般和正式的处理。在这项研究中,我们基于网络随机化和(经验)统计假设检验,开发了一种度量,即向量分类指数(简称VA指数),该度量能够量化网络相对于向量属性的分类模式。我们在综合网络数据上的大量实验结果表明,VA指数的表现优于分类系数的基线扩展,文献已将其用于应对类似情况。此外,VAindex可以很容易地进行校准(就参数而言),而其优势随着矢量元素的(协)方差而增加,其中基线系统地(过度)估计了网络的真实混合模式。

著录项

  • 作者

    Pelechrinis K; Wei D;

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  • 年度 2016
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  • 原文格式 PDF
  • 正文语种 en
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