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首页> 外文期刊>Journal of the American statistical association >Scalable Bayesian Modeling, Monitoring, and Analysis of Dynamic Network Flow Data
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Scalable Bayesian Modeling, Monitoring, and Analysis of Dynamic Network Flow Data

机译:动态网络流数据的可扩展贝叶斯建模,监视和分析

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Traffic flow count data in networks arise in many applications, such as automobile or aviation transportation, certain directed social network contexts, and Internet studies. Using an example of Internet browser traffic flow through site-segments of an international news website, we present Bayesian analyses of two linked classes of models which, in tandem, allow fast, scalable, and interpretable Bayesian inference. We first develop flexible state-space models for streaming count data, able to adaptively characterize and quantify network dynamics efficiently in real-time. We then use these models as emulators of more structured, time-varying gravity models that allow formal dissection of network dynamics. This yields interpretable inferences on traffic flow characteristics, and on dynamics in interactions among network nodes. Bayesian monitoring theory defines a strategy for sequential model assessment and adaptation in cases when network flow data deviate from model-based predictions. Exploratory and sequential monitoring analyses of evolving traffic on a network of web site-segments in e-commerce demonstrate the utility of this coupled Bayesian emulation approach to analysis of streaming network count data.
机译:网络中的流量统计数据出现在许多应用中,例如汽车或航空运输,某些定向的社交网络环境以及Internet研究。使用一个国际新闻网站的站点段中的Internet浏览器流量流的示例,我们介绍了两个链接的模型类别的贝叶斯分析,这些模型相辅相成,可以进行快速,可扩展和可解释的贝叶斯推理。我们首先为流计数数据开发灵活的状态空间模型,能够实时高效地自适应地表征和量化网络动态。然后,我们将这些模型用作结构化,时变重力模型的仿真器,这些模型允许对网络动力学进行正式剖析。这样就可以得出关于流量流特征以及网络节点之间交互动态的可解释的推论。当网络流量数据偏离基于模型的预测时,贝叶斯监测理论定义了一种用于顺序模型评估和调整的策略。对电子商务中的网站段网络上不断发展的流量进行的探索性和顺序监视分析表明,这种耦合贝叶斯仿真方法可用于分析流网络计数数据。

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