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Model Selection for Social Networks Using Graphlets

机译:使用图集的社交网络模型选择

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Several network models have been proposed to explain the link structure observed in online social networks. This paper addresses the problem of choosing the model that best fits a given real-world network. We implement a model-selection method based on unsupervised learning. An alternating decision tree is trained using synthetic graphs generated according to each of the models under consideration. We use a broad array of features, with the aim of representing different structural aspects of the network. Features include the frequency counts of small subgraphs (graphlets) as well as features capturing the degree distribution and small-world property. Our method correctly classifies synthetic graphs, and is robust under perturbations of the graphs. We show that the graphlet counts alone are sufficient in separating the training data, indicating that graphlet counts are a good way of capturing network structure. We tested our approach on four Facebook graphs from various American universities. The models that best fit these data are those that are based on the principle of preferential attachment.View full textDownload full textRelated var addthis_config = { ui_cobrand: "Taylor & Francis Online", services_compact: "citeulike,netvibes,twitter,technorati,delicious,linkedin,facebook,stumbleupon,digg,google,more", pubid: "ra-4dff56cd6bb1830b" }; Add to shortlist Link Permalink http://dx.doi.org/10.1080/15427951.2012.671149
机译:已经提出了几种网络模型来解释在线社交网络中观察到的链接结构。本文解决了选择最适合给定实际网络的模型的问题。我们实现了基于无监督学习的模型选择方法。使用根据所考虑的每个模型生成的合成图来训练交替决策树。我们使用各种各样的功能,目的是代表网络的不同结构方面。特征包括小子图(小图)的频率计数,以及捕获度分布和小世界属性的特征。我们的方法正确地分类了合成图,并且在图的扰动下具有鲁棒性。我们表明,仅小图计数足以分离训练数据,这表明小图计数是捕获网络结构的一种好方法。我们在来自美国各大学的四张Facebook图上测试了我们的方法。最适合这些数据的模型是基于优先附件原则的模型。查看全文下载全文相关变量add add_id linkedin,facebook,stumbleupon,digg,google,更多“,发布ID:” ra-4dff56cd6bb1830b“};添加到候选列表链接永久链接http://dx.doi.org/10.1080/15427951.2012.671149

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