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PAFit: A Statistical Method for Measuring Preferential Attachment in Temporal Complex Networks

机译:PAFit:一种用于测量时间复杂网络中的优先依恋的统计方法

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摘要

Preferential attachment is a stochastic process that has been proposed to explain certain topological features characteristic of complex networks from diverse domains. The systematic investigation of preferential attachment is an important area of research in network science, not only for the theoretical matter of verifying whether this hypothesized process is operative in real-world networks, but also for the practical insights that follow from knowledge of its functional form. Here we describe a maximum likelihood based estimation method for the measurement of preferential attachment in temporal complex networks. We call the method PAFit, and implement it in an R package of the same name. PAFit constitutes an advance over previous methods primarily because we based it on a nonparametric statistical framework that enables attachment kernel estimation free of any assumptions about its functional form. We show this results in PAFit outperforming the popular methods of Jeong and Newman in Monte Carlo simulations. What is more, we found that the application of PAFit to a publically available Flickr social network dataset yielded clear evidence for a deviation of the attachment kernel from the popularly assumed log-linear form. Independent of our main work, we provide a correction to a consequential error in Newman’s original method which had evidently gone unnoticed since its publication over a decade ago.
机译:优先连接是一个随机过程,已经提出来解释来自不同域的复杂网络的某些拓扑特征。优惠依恋的系统研究是网络科学研究的重要领域,不仅是为了验证该假设过程是否在现实世界的网络中有效的理论问题,而且是从其功能形式的知识中获得的实践见解。 。在这里,我们描述了一种基于最大似然的估计方法,用于评估时间复杂网络中的优先依附。我们调用方法PAFit,并在同名的R包中实现它。 PAFit构成了相对于先前方法的一种进步,主要是因为我们基于非参数统计框架,该框架使得对附件内核的估算无需任何关于其功能形式的假设。我们在PAFit中显示了这一结果,胜过了Jeong和Newman在蒙特卡洛模拟中的流行方法。此外,我们发现,将PAFit应用于可公开使用的Flickr社交网络数据集,为依恋内核与通常假定的对数线性形式之间的偏差提供了清晰的证据。与我们的主要工作无关,我们提供了对纽曼原始方法中相应结果错误的更正,该错误自十多年前发布以来就一直未被发现。

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