Detecting Smooth Cluster Changes in Evolving Graphs

Sohei Okui, Kaho Osamura, Akihiro Inokuchi
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引用次数: 1

Abstract

Clustering vertices in graphs or in sequences of graphs has important applications in network science, bioinformatics, and other areas. Most research to date has focused on static graphs or sequences where the number of vertices does not change. We propose a new algorithm that successfully partitions the vertices of a graph sequence into smooth clusters, even when the number of vertices is allowed to vary over time. Our approach uses spectral clustering and relies on applying the k partition problem to a graph constructed from the input graph sequence. Several experiments demonstrate the performance of our method and its advantages over existing methods.
进化图中平滑聚类变化的检测
图或图序列中的聚类顶点在网络科学、生物信息学和其他领域具有重要的应用。到目前为止,大多数研究都集中在顶点数量不变的静态图或序列上。我们提出了一种新的算法,即使允许顶点的数量随时间变化,也能成功地将图序列的顶点划分为光滑的簇。我们的方法使用谱聚类,并依赖于将k划分问题应用于由输入图序列构建的图。几个实验证明了该方法的性能及其相对于现有方法的优势。
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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