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Estimating Node Characteristics from Topological Structure of Social Networks

机译:从社交网络的拓扑结构估计节点特征

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摘要

In this paper, for systematically evaluating estimation methods of node characteristics, we first propose a social network generation model called LRE (Linkage with Relative Evaluation). LRE is a network generation model, which aims to reproduce the characteristics of a social network. LRE utilizes the fact that people generally build relationships with others based on relative evaluation, rather than absolute evaluation. We then extensively evaluate the accuracy of the estimation method called SSI (Structural Superiority Index). We reveal that SSI is effective for finding good nodes (e.g., top 10% nodes), but cannot be used for finding excellent nodes (e.g., top 1% nodes). For alleviating the problems of SSI, we propose a novel scheme for enhancing existing estimation methods called RENC (Recursive Estimation of Node Characteristic). RENC reduces the effect of noise by recursively estimating node characteristics. By investigating the estimation accuracy with RENC, we show that RENC is quite effective for improving the estimation accuracy in practical situations.
机译:在本文中,为了系统地评估节点特征的估计方法,我们首先提出一种称为LRE(与相对评估的链接)的社交网络生成模型。 LRE是一种网络生成模型,旨在重现社交网络的特征。 LRE利用了这样一个事实,即人们通常基于相对评估而不是绝对评估来与他人建立关系。然后,我们广泛评估称为SSI(结构优势指数)的估算方法的准确性。我们揭示了SSI可有效地找到良好的节点(例如,前10%的节点),但不能用于发现优秀的节点(例如,前1%的节点)。为了减轻SSI的问题,我们提出了一种用于增强现有估计方法的新方案,称为RENC(节点特征的递归估计)。 RENC通过递归估计节点特征来减少噪声的影响。通过研究RENC的估计精度,我们表明RENC在实际情况下对于提高估计精度非常有效。

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