Mining Subgraphs from Propagation Networks through Temporal Dynamic Analysis

S. Hosseini, Hongzhi Yin, Meihui Zhang, Y. Elovici, Xiaofang Zhou
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引用次数: 17

Abstract

An alarm is raised due to a defect in a transportation system. Given a graph over which the alarms propagate, we aim to exploit a set of subgraphs with highly correlated nodes (or entities). The edge weight between each pair of entities can be computed using the temporal dynamics of the propagation process. We retrieve the top k edge weights and each group of connected entities can consequently form a tightly coupled subgraph. However, numerous challenges abound. First, the textual contents associated with the alarms of the same type differ during the propagation process. Hence, in the lack of textual data, the temporal information can only be employed to compute the correlation weights. Second, in many scenarios, the same alarm does not propagate. Third, given a pair of entities, the propagation can occur in both directions. Most of the prior work only consider the time-window and assume that the propagation between a pair of entities occurs sequentially. But, the propagation process should be inferred using miscellaneous temporal features. Therefore, we devise a generative approach that, on the one hand, utilizes infinite temporal latent factors (e.g. hour, day, and etc.) to compute the correlation weights, and on the other hand, analyzes how an alarm in one entity can cause a set of alarms in another. We also conduct an extensive set of experiments to compare the performance of the subgraph mining methods. The results show that our unified framework can effectively exploit the tightly coupled subgraphs.
基于时间动态分析的传播网络子图挖掘
由于运输系统的缺陷而发出警报。给定一个警报传播的图,我们的目标是利用一组具有高度相关节点(或实体)的子图。每对实体之间的边权可以利用传播过程的时间动态来计算。我们检索前k个边的权值,每组连接的实体可以形成一个紧密耦合的子图。然而,许多挑战依然存在。首先,同类型告警在传播过程中所关联的文本内容存在差异。因此,在缺乏文本数据的情况下,只能利用时间信息来计算相关权重。其次,在许多情况下,相同的警报不会传播。第三,给定一对实体,传播可以在两个方向上发生。以往的工作大多只考虑时间窗口,并假设一对实体之间的传播是顺序发生的。但是,传播过程应该使用各种时间特征来推断。因此,我们设计了一种生成方法,一方面利用无限的时间潜在因素(例如小时,天等)来计算相关权重,另一方面分析一个实体中的警报如何引起另一个实体中的一组警报。我们还进行了一组广泛的实验来比较子图挖掘方法的性能。结果表明,我们的统一框架可以有效地利用紧耦合子图。
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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