大规模社交网络的快速生成,同时包含传递闭包

Joseph J. Pfeiffer, T. L. Fond, Sebastián Moreno, Jennifer Neville
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引用次数: 37

摘要

社交网络社区面临的一个关键挑战是网络生成问题——也就是说,我们如何创建符合大多数现实世界网络传统特征的合成网络?社会网络中存在的重要特征包括幂律度分布、小直径和大量聚类。然而,大多数当前的网络生成器,如Chung Lu和Kronecker模型,在很大程度上忽略了图中存在的聚类,而专注于保留其他网络统计数据,如幂律分布。像指数随机图模型这样的模型有一个可以捕获聚类的传递性参数,但是它们在计算上很难学习,使得扩展到现实世界的大型网络变得难以处理。在这项工作中,我们提出了一个扩展的钟路随机图模型,传递钟路(TCL)模型,其中包含了传递边的概念。具体来说,它将标准的钟路模型与通过传递闭包(例如,通过连接“朋友的朋友”)形成的边结合起来。我们证明了TCL的期望度分布等于原始输入图的度分布,同时仍然提供了捕获网络中聚类的能力。我们的模型所需的单个参数可以在具有数百万条边的图上在几秒钟内学习,网络可以在边缘数量线性的时间内生成。我们在四个现实世界的社交网络上展示了TCL的性能,包括一个具有数十万个节点和数百万条边的电子邮件数据集,显示TCL生成的图与原始网络的度分布、聚类系数和跳线图相匹配。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fast Generation of Large Scale Social Networks While Incorporating Transitive Closures
A key challenge in the social network community is the problem of network generation - that is, how can we create synthetic networks that match characteristics traditionally found in most real world networks? Important characteristics that are present in social networks include a power law degree distribution, small diameter, and large amounts of clustering. However, most current network generators, such as the Chung Lu and Kronecker models, largely ignore the clustering present in a graph and focus on preserving other network statistics, such as the power law distribution. Models such as the exponential random graph model have a transitivity parameter that can capture clustering, but they are computationally difficult to learn, making scaling to large real world networks intractable. In this work, we propose an extension to the Chung Lu random graph model, the Transitive Chung Lu (TCL) model, which incorporates the notion transitive edges. Specifically, it combines the standard Chung Lu model with edges that are formed through transitive closure (e.g., by connecting a 'friend of a friend'). We prove TCL's expected degree distribution is equal to the degree distribution of the original input graph, while still providing the ability to capture the clustering in the network. The single parameter required by our model can be learned in seconds on graphs with millions of edges, networks can be generated in time that is linear in the number of edges. We demonstrate the performance of TCL on four real-world social networks, including an email dataset with hundreds of thousands of nodes and millions of edges, showing TCL generates graphs that match the degree distribution, clustering coefficients and hop plots of the original networks.
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