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Community mining on dynamic weighted directed graphs

机译:动态加权有向图上的社区挖掘

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This paper focuses on community mining including community discovery and change-point detection on dynamic weighted directed graphs(DWDG). Real networks such as e-mail, co-author and financial networks can be modeled as DWDG. Community mining on DWDG has not been studied thoroughly, although that on static(or dynamic undirected unweighted)graphs has been exploited extensively. In this paper, Stream-Group is proposed to solve community mining on DWDG. For community discovery, a two-step approach is presented to discover the community structure of a weighted directed graph(WDG) in one time-slice: (1)The first step constructs compact communities according to each node's single compactness which indicates the degree of a node belonging to a community in terms of the graph's relevance matrix; (2)The second step merges compact communities along the direction of maximum increment of the modularity. For change-point detection, a measure of the similarity between partitions is presented to determine whether a change-point appears along the time axis and an incremental algorithm is presented to update the partition of a graph segment when adding a new arriving graph into the graph segment. The effectiveness and efficiency of our algorithms are validated by experiments on both synthetic and real networks. Results show that our algorithms have a good trade-off between the effectiveness and efficiency in discovering communities and change-points.
机译:本文重点研究社区挖掘,包括在动态加权有向图(DWDG)上进行社区发现和更改点检测。诸如电子邮件,共同作者和财务网络之类的真实网络可以建模为DWDG。尽管已经广泛地利用了静态(或动态无向非加权)图上的DWDG进行社区挖掘,但尚未对其进行深入研究。本文提出了Stream-Group解决DWDG社区挖掘问题。对于社区发现,提出了一种分两步的方法来在一个时间片中发现加权有向图(WDG)的社区结构:(1)第一步根据每个节点的单个紧凑性构建紧凑型社区,该紧凑性表明了节点的程度。就图的相关性矩阵而言,属于社区的节点; (2)第二步沿模块最大增量方向合并紧凑社区。对于变化点检测,提出了分区之间相似性的度量,以确定是否在时间轴上出现了变化点,并且提出了增量算法,用于在向图中添加新到达图时更新图段的分区。分割。我们的算法的有效性和效率通过合成网络和真实网络上的实验得到验证。结果表明,我们的算法在发现社区和变更点的有效性和效率之间具有良好的权衡。

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