递归结构相似度:一种新的图聚类算法

Yixin Fang, R. Jin, Wei Xiong, Xiaoning Qian, D. Dou, HaiNhat Phan
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引用次数: 0

摘要

各种各样的图聚类算法已经被提出并应用于现实世界的应用,如网络分析、生物信息学、社会计算等。然而,现有的算法通常侧重于在全局网络层面上优化特定的质量度量,而没有仔细考虑在实践中可能具有信息和意义的局部结构的破坏。本文提出了一种新的无向图聚类算法,该算法基于递归计算的结构相似性度量。我们的方法可以提供鲁棒性和高质量的聚类结果,同时保留原始图中信息丰富的局部结构。在各种基准和蛋白质数据集上进行的严格实验表明,我们的算法始终优于现有算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recursive Structure Similarity: A Novel Algorithm for Graph Clustering
A various number of graph clustering algorithms have been proposed and applied in real-world applications such as network analysis, bio-informatics, social computing, and etc. However, existing algorithms usually focus on optimizing specified quality measures at the global network level, without carefully considering the destruction of local structures which could be informative and significant in practice. In this paper, we propose a novel clustering algorithm for undirected graphs based on a new structure similarity measure which is computed in a recursive procedure. Our method can provide robust and high-quality clustering results, while preserving informative local structures in the original graph. Rigorous experiments conducted on a variety of benchmark and protein datasets show that our algorithm consistently outperforms existing algorithms.
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