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首页> 外文期刊>JMLR: Workshop and Conference Proceedings >Influential Node Detection in Implicit Social Networks using Multi-task Gaussian Copula Models
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Influential Node Detection in Implicit Social Networks using Multi-task Gaussian Copula Models

机译:多任务高斯Copula模型在隐式社交网络中的影响节点检测

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Influential node detection is a central research topic in social network analysis. Many existing methods rely on the assumption that the network structure is completely known a priori. However, in many applications, network structure is unavailable to explain the underlying information diffusion phenomenon. To address the challenge of information diffusion analysis with incomplete knowledge of network structure, we develop a multi-task low rank linear influence model. By exploiting the relationships between contagions, our approach can simultaneously predict the volume (i.e. time series prediction) for each contagion (or topic) and automatically identify the most influential nodes for each contagion. The proposed model is validated using synthetic data and an ISIS twitter dataset. In addition to improving the volume prediction performance significantly, we show that the proposed approach can reliably infer the most influential users for specific contagions.
机译:影响节点检测是社交网络分析中的核心研究主题。现有的许多方法都基于这样的假设,即网络结构是先验的。但是,在许多应用中,网络结构无法解释潜在的信息扩散现象。为了解决不完整的网络结构知识来应对信息扩散分析的挑战,我们开发了一种多任务低秩线性影响模型。通过利用感染之间的关系,我们的方法可以同时预测每个感染(或主题)的数量(即时间序列预测),并自动识别每个感染最有影响力的节点。使用综合数据和ISIS twitter数据集验证了提出的模型。除了显着提高音量预测性能外,我们还表明,所提出的方法可以可靠地推断出最有影响力的用户对特定传染病的影响。

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