Temporal Network Change Detection Using Network Centralities

Yoshitaro Yonamoto, K. Morino, K. Yamanishi
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引用次数: 2

Abstract

In this paper, we propose a novel change detection method for temporal networks. In usual change detection algorithms, change scores are generated from an observed time series. When this change score reaches a threshold, an alert is raised to declare the change. Our method aggregates these change scores and alerts based on network centralities. Many types of changes in a network can be discovered from changes to the network structure. Thus, nodes and links should be monitored in order to recognize changes. However, it is difficult to focus on the appropriate nodes and links when there is little information regarding the dataset. Network centrality such as PageRank measures the importance of nodes in a network based on certain criteria. Therefore, it is natural to apply network centralities in order to improve the accuracy of change detection methods. Our analysis reveals how and when network centrality works well in terms of change detection. Based on this understanding, we propose an aggregating algorithm that emphasizes the appropriate network centralities. Our evaluation of the proposed aggregation algorithm showed highly accurate predictions for an artificial dataset and two real datasets. Our method contributes to extending the field of change detection in temporal networks by utilizing network centralities.
利用网络中心性进行时态网络变化检测
本文提出了一种新的时间网络变化检测方法。在通常的变化检测算法中,变化分数是由观察到的时间序列生成的。当此更改得分达到阈值时,将引发警报以声明更改。我们的方法基于网络中心性聚合这些变化分数和警报。从网络结构的变化中可以发现网络中许多类型的变化。因此,应该监视节点和链接,以便识别更改。然而,当关于数据集的信息很少时,很难关注适当的节点和链接。网络中心性(如PageRank)根据一定的标准衡量网络中节点的重要性。因此,为了提高变化检测方法的准确性,应用网络中心性是很自然的。我们的分析揭示了网络中心性如何以及何时在变化检测方面发挥作用。基于这种理解,我们提出了一种强调适当的网络中心性的聚合算法。我们对所提出的聚合算法的评估显示了对人工数据集和两个真实数据集的高度准确的预测。该方法利用网络中心性扩展了时态网络的变化检测领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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