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PAFit: An R Package for the Non-Parametric Estimation of Preferential Attachment and Node Fitness in Temporal Complex Networks

机译:PAFIT:用于时间复合网络中优先附加和节点适合度的非参数估计的R包

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Many real-world systems are profitably described as complex networks that grow over time. Preferential attachment and node fitness are two simple growth mechanisms that not only explain certain structural properties commonly observed in real-world systems, but are also tied to a number of applications in modeling and inference. While there are statistical packages for estimating various parametric forms of the preferential attachment function, there is no such package implementing non-parametric estimation procedures. The non-parametric approach to the estimation of the preferential attachment function allows for comparatively finer-grained investigations of the 'rich-get-richer' phenomenon that could lead to novel insights in the search to explain certain nonstandard structural properties observed in real-world networks. This paper introduces the R package PAFit, which implements non-parametric procedures for estimating the preferential attachment function and node fitnesses in a growing network, as well as a number of functions for generating complex networks from these two mechanisms. The main computational part of the package is implemented in C++ with OpenMP to ensure scalability to large-scale networks. In this paper, we first introduce the main functionalities of PAFit through simulated examples, and then use the package to analyze a collaboration network between scientists in the field of complex networks. The results indicate the joint presence of 'richget-richer' and 'fit-get-richer' phenomena in the collaboration network. The estimated attachment function is observed to be near-linear, which we interpret as meaning that the chance an author gets a new collaborator is proportional to their current number of collaborators. Furthermore, the estimated author fitnesses reveal a host of familiar faces from the complex networks community among the field's topmost fittest network scientists.
机译:许多真实世界的系统有利可图地描述为随着时间的推移而增长的复杂网络。优惠附着和节点适应性是两个简单的生长机制,不仅在现实世界系统中常见的某些结构性,而且还与许多在建模和推理中的应用联系。虽然存在用于估计优先附接功能的各种参数形式的统计包,但是没有这样的包装实现非参数估计过程。估计优惠附着功能的非参数方法允许对“富人 - 富裕”现象进行比较更好的调查,这可能导致搜索中的新颖见解,以解释在现实世界中观察到的某些非标准结构特性网络。本文介绍了R包PAFIT,它实现了用于估计不断增长的网络中优先附加功能和节点适应度的非参数过程,以及用于从这两个机制生成复杂网络的多个功能。包的主要计算部分是用OpenMP的C ++实现的,以确保对大规模网络的可扩展性。在本文中,我们首先通过模拟示例引入PAFIT的主要功能,然后使用包来分析复杂网络领域的科学家之间的协作网络。结果表明协作网络中的“富含富豪”和“Fit-Get-Richer”现象的共同存在。观察到估计的附加功能是近线性的,这将解释为作者获得新的合作者的机会与他们当前的协作者成比例。此外,估计的作者健身揭示了来自该领域最优秀的网络科学家中复杂网络社区的一系列熟悉的面孔。

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