基于动态超图嵌入的重要结构变化可视化与提取

Shuta Ito, Takayasu Fushimi
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引用次数: 0

摘要

一些现实世界的网络结构会随时间动态变化。这些更改包括节点和边的添加或删除,以及边的重新布线。即使发生了边缘重新布线,影响的程度也会根据发生的位置和节点的性质而有所不同。在这项研究中,我们提出了一种嵌入方法,可以很容易地从视觉上捕捉动态超图中的结构变化。此外,通过量化每个超级节点的影响程度,我们试图提取改变网络中许多节点位置的有影响的结构变化。具体来说,节点的位置是通过一种嵌入方法计算的,该方法根据超节点和超边的邻接关系将它们嵌入到单位超球中,对节点的影响程度是通过结构变化前后嵌入向量的角度计算的。然后,我们提出了一个度量,即所有节点的影响程度的平均值。基于使用几个合成数据集的实验评估,我们证实了我们提出的测量方法将重要的结构变化量化为较大的分数,相反,将微不足道的变化量化为较小的分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualization and Extraction of Important Structural Changes via Dynamic Hypergraph Embedding
Some real-world networks have structures that change dynamically over time. These changes include the addition or deletion of nodes and edges, and the rewiring of edges. Even when edge rewiring occurs, the degree of impact tends to vary depending on the location where it occurs and the nature of the node. In this study, we propose an embedding method that makes it easy to visually capture structural changes in dynamic hypergraphs. Furthermore, by quantifying the degree of influence of each hypernode, we attempt to extract influential structural changes that alter the location of many nodes in the network. Specifically, the positions of nodes are calculated by an embedding method that embeds hypernodes and hyperedges into the unit hypersphere based on their adjacencies, and the degree of influence on the nodes is calculated by the angle of the embedding vectors before and after the structural change occurs. We then propose a measure which is the average value of the influence degree of all nodes. Based on experimental evaluation using several synthetic datasets, we confirmed that our proposed measure quantifies the important structural changes as larger scores, conversely trivial changes as smaller ones.
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