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Evolution of Social-Attribute Networks: Measurements, Modeling, and Implications using Google+

机译:社会属性网络的演变:使用Google+的测量,建模和含义

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Understanding social network structure and evolution has important implications for many aspects of network and system design including provisioning, bootstrapping trust and reputation systems via social networks, and defenses against Sybil attacks. Several recent results suggest that augmenting the social network structure with user attributes (e.g., location, employer, communities of interest) can provide a more fine-grained understanding of social networks. However, there have been few studies to provide a systematic understanding of these effects at scale. We bridge this gap using a unique dataset collected as the Google+ social network grew over time since its release in late June 2011. We observe novel phenomena with respect to both standard social network metrics and new attribute-related metrics (that we define). We also observe interesting evolutionary patterns as Google+ went from a bootstrap phase to a steady invitation-only stage before a public release. Based on our empirical observations, we develop a new generative model to jointly reproduce the social structure and the node attributes. Using theoretical analysis and empirical evaluations, we show that our model can accurately reproduce the social and attribute structure of real social networks. We also demonstrate that our model provides more accurate predictions for practical application contexts.
机译:了解社交网络结构和进化对网络和系统设计的许多方面具有重要意义,包括通过社交网络提供,自动启动信任和声誉系统,并防止来自Sybil攻击的防御。最近的几个结果表明,使用用户属性(例如,位置,雇主,兴趣社区)增强社交网络结构,可以为对社交网络提供更细微的理解。然而,很少有研究能够在规模上对这些效果进行系统理解。我们使用收集的独特数据集进行了此差距,因为Google+社交网络随着时间的推移而在2011年末发布以来,我们观察了关于标准社交网络指标和新属性相关的指标的新颖现象(我们定义)。我们还观察到有趣的进化模式,因为Google+从引导阶段到公开发布之前的稳定邀请阶段。基于我们的经验观察,我们开发了一个新的生成模型,共同再现了社会结构和节点属性。使用理论分析和实证评估,我们表明我们的模型可以准确地重现真实社交网络的社会和属性结构。我们还表明我们的模型为实际应用上下文提供了更准确的预测。

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